39 results on '"medical image analysis"'
Search Results
2. Presegmenter Cascaded Framework for Mammogram Mass Segmentation.
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Oza, Urvi, Gohel, Bakul, Kumar, Pankaj, Oza, Parita, and Abu-Qasmieh, Isam
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BREAST tumor diagnosis ,BREAST tumor treatment ,EARLY detection of cancer ,DESCRIPTIVE statistics ,MAMMOGRAMS ,DEEP learning ,DIGITAL image processing ,COMPARATIVE studies - Abstract
Accurate segmentation of breast masses in mammogram images is essential for early cancer diagnosis and treatment planning. Several deep learning (DL) models have been proposed for whole mammogram segmentation and mass patch/crop segmentation. However, current DL models for breast mammogram mass segmentation face several limitations, including false positives (FPs), false negatives (FNs), and challenges with the end‐to‐end approach. This paper presents a novel two‐stage end‐to‐end cascaded breast mass segmentation framework that incorporates a saliency map of potential mass regions to guide the DL models for breast mass segmentation. The first‐stage segmentation model of the cascade framework is used to generate a saliency map to establish a coarse region of interest (ROI), effectively narrowing the focus to probable mass regions. The proposed presegmenter attention (PSA) blocks are introduced in the second‐stage segmentation model to enable dynamic adaptation to the most informative regions within the mammogram images based on the generated saliency map. Comparative analysis of the Attention U‐net model with and without the cascade framework is provided in terms of dice scores, precision, recall, FP rates (FPRs), and FN outcomes. Experimental results consistently demonstrate enhanced breast mass segmentation performance by the proposed cascade framework across all three datasets: INbreast, CSAW‐S, and DMID. The cascade framework shows superior segmentation performance by improving the dice score by about 6% for the INbreast dataset, 3% for the CSAW‐S dataset, and 2% for the DMID dataset. Similarly, the FN outcomes were reduced by 10% for the INbreast dataset, 19% for the CSAW‐S dataset, and 4% for the DMID dataset. Moreover, the proposed cascade framework's performance is validated with varying state‐of‐the‐art segmentation models such as DeepLabV3+ and Swin transformer U‐net. The presegmenter cascade framework has the potential to improve segmentation performance and mitigate FNs when integrated with any medical image segmentation framework, irrespective of the choice of the model. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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3. Reproduction study using public data of: Development and validation of a deep learning algorithm for detection of diabetic retinopathy in retinal fundus photographs.
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Voets, Mike, Møllersen, Kajsa, and Bongo, Lars Ailo
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DEEP learning ,DIABETIC retinopathy ,MACHINE learning ,RECEIVER operating characteristic curves ,SOURCE code - Abstract
We have attempted to reproduce the results in Development and validation of a deep learning algorithm for detection of diabetic retinopathy in retinal fundus photographs, published in JAMA 2016; 316(22), using publicly available data sets. We re-implemented the main method in the original study since the source code is not available. The original study used non-public fundus images from EyePACS and three hospitals in India for training. We used a different EyePACS data set from Kaggle. The original study used the benchmark data set Messidor-2 to evaluate the algorithm's performance. We used another distribution of the Messidor-2 data set, since the original data set is no longer available. In the original study, ophthalmologists re-graded all images for diabetic retinopathy, macular edema, and image gradability. We have one diabetic retinopathy grade per image for our data sets, and we assessed image gradability ourselves. We were not able to reproduce the original study's results with publicly available data. Our algorithm's area under the receiver operating characteristic curve (AUC) of 0.951 (95% CI, 0.947-0.956) on the Kaggle EyePACS test set and 0.853 (95% CI, 0.835-0.871) on Messidor-2 did not come close to the reported AUC of 0.99 on both test sets in the original study. This may be caused by the use of a single grade per image, or different data. This study shows the challenges of reproducing deep learning method results, and the need for more replication and reproduction studies to validate deep learning methods, especially for medical image analysis. Our source code and instructions are available at: . [ABSTRACT FROM AUTHOR]
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- 2019
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4. Awareness and perceptions of artificial intelligence in dentistry: A cross-sectional survey among Indian dental professionals.
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Benakatti, Veena, Lagali-Jirge, Vasanti, and Nayakar, Ramesh P.
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DENTAL students ,ARTIFICIAL intelligence ,PRACTICE of dentistry ,DENTISTRY ,GRADUATE students ,AWARENESS - Abstract
Introduction: Artificial intelligence (AI) is inevitably going to impact healthcare including dentistry and will become an essential tool in medical diagnosis and decision-making. Dental professionals must be familiar with growing trends in dentistry such as AI and its future scope. Despite the positive developments in AI research, there are divergent perspectives on its benefits and risks among stakeholders. We intended to understand the knowledge, awareness, and perceptions of dental professionals towards AI and its applications in dentistry. Material and Methods:A semi-structured, 25-item Google form questionnaire consisting of closed and open-ended questions was made and the link to answer the survey was circulated among postgraduate students, dental academicians, and practitioners across India in an online mode, and the responses were collected and analyzed. Results: 83.3% of participants were aware of AI and its applications. Most of the participants understood the attributes, advantages, and disadvantages of AI. Interestingly 72% of participants agreed that they have witnessed AI being used in clinical practice and 92.7% agreed to use AI for diagnosis. 65.3% expressed concern over unemployment due to AI and 85% agreed that AI has ethical issues. Over 85% of participants agreed AI should be a part of the postgraduate dental curriculum. Conclusion:We found that dental professionals are updated with AI technology and showed a willingness to adopt AI into dental practice. The participants lacked a deeper understanding of AI and concerned about the potential risk of unemployment resulting from AI and trusting AI alone in dental diagnosis. [ABSTRACT FROM AUTHOR]
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- 2024
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5. Nutritional management recommendation systems in polycystic ovary syndrome: a systematic review.
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Shahmoradi, Leila, Azadbakht, Leila, Farzi, Jebraeil, Kalhori, Sharareh Rostam Niakan, Yazdipour, Alireza Banaye, and Solat, Fahimeh
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POLYCYSTIC ovary syndrome ,RECOMMENDER systems ,ARTIFICIAL intelligence ,FOOD habits ,DECISION support systems ,GRANULOSA cell tumors - Abstract
Background: People with polycystic ovary syndrome suffer from many symptoms and are at risk of developing diseases such as hypertension and diabetes in the future. Therefore, the importance of self-care doubles. It is mainly to modify the lifestyle, especially following the principles of healthy eating. The purpose of this study is to review artificial intelligence-based systems for providing management recommendations, especially food recommendations. Materials and methods: This study started by searching three databases: PubMed, Scopus, and Web of Science, from inception until 6 June 2023. The result was the retrieval of 15,064 articles. First, we removed duplicate studies. After the title and abstract screening, 119 articles remained. Finally, after reviewing the full text of the articles and considering the inclusion and exclusion criteria, 20 studies were selected for the study. To assess the quality of articles, we used criteria proposed by Malhotra, Wen, and Kitchenham. Out of the total number of included studies, seventeen studies were high quality, while three studies were moderate quality. Results: Most studies were conducted in India in 2021. Out of all the studies, diagnostic recommendation systems were the most frequently researched, accounting for 86% of the total. Precision, sensitivity, specificity, and accuracy were more common than other performance metrics. The most significant challenge or limitation encountered in these studies was the small sample size. Conclusion: Recommender systems based on artificial intelligence can help in fields such as prediction, diagnosis, and management of polycystic ovary syndrome. Therefore, since there are no nutritional recommendation systems for these patients in Iran, this study can serve as a starting point for such research. [ABSTRACT FROM AUTHOR]
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- 2024
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6. EXPLORING THE ADOPTION OF ARTIFICIAL INTELLIGENCE IN THE INDIAN HEALTHCARE SYSTEM: THE CASE OF CANCER TREATMENT.
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Chhaperia, Deepshikha and Khanna, Kamini
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ARTIFICIAL intelligence ,CANCER treatment ,COMMUNITY attitudes ,HEART beat ,MEDICAL care - Abstract
On the Indian subcontinent, where a billion hearts beat, cancer casts a long shadow. In this crucible of healthcare innovation, the researchers shift their focus to India, a land as diverse as its challenges. This research delves deep into the potential of artificial intelligence (AI) to transform cancer care within India’s unique ecosystem. Journeying to Kharghar, Maharashtra, a microcosm of the nation’s hopes and realities, the researchers assess the community’s attitude towards embracing AI-driven solutions. But amidst the enthusiasm lies a sobering truth: the specter of high cancer care costs looms large across India’s healthcare landscape. This research serves as a call to action, urging targeted government interventions tailored to the Indian context. Envisioning a future where AI-powered cancer care is democratized, hope replaces despair for millions battling this formidable foe. [ABSTRACT FROM AUTHOR]
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- 2024
7. PrinciResNet Brain Tumor Classification Technique for Multimodal Input-level Fusion Network.
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M., Padma Usha, G., Kannan, S., Sai Akshay, S., Giri, and Huzaifa, Shaik Mohammed
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BRAIN tumors ,TUMOR classification ,FIRE detectors ,PRINCIPAL components analysis ,MAGNETIC resonance imaging ,MENINGIOMA - Abstract
Brain tumors are a leading cause of mortality in India, with over 28,000 cases reported annually, resulting in more than 24,000 deaths per year as per the International Association of Cancer Registries. Early detection, segmentation, and accurate classification are crucial in effective tumor analysis, and various algorithms have been developed to achieve this. This study proposes a new approach for the detection and classification of Meningioma and Sarcoma brain tumors using both single slices of MRI and CT, as well as input-level fused images of MRI & CT. Our approach involves the implementation of the PrinciResNet16 model for classification of brain tumors. This model is based on Principal Component Analysis (PCA) and ResNet techniques. We report that our approach significantly improves the accuracy, sensitivity, and specificity parameters to 99%, 95%, and 95%, respectively, based on a dataset of 600 fused slices and 1000 single slices obtained from reputable sources. Our findings hold promise for better brain tumour detection and therapy, which are a significant cause of mortality globally. [ABSTRACT FROM AUTHOR]
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- 2024
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8. High-Speed Motion Analysis-Based Machine Learning Models for Prediction and Simulation of Flyrock in Surface Mines.
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Mishra, Romil, Mishra, Arvind Kumar, and Choudhary, Bhanwar Singh
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EXPLOSIVES ,MACHINE learning ,PREDICTION models ,MOTION analysis ,SOIL vibration ,CAMCORDERS - Abstract
Blasting is a cost-efficient and effective technique that utilizes explosive chemical energy to generate the necessary pressure for rock fragmentation in surface mines. However, a significant portion of this energy is dissipated in undesirable outcomes such as flyrock, ground vibration, back-break, etc. Among these, flyrock poses the gravest threat to structures, humans, and equipment. Consequently, the precise estimation of flyrock has garnered substantial attention as a prominent research domain. This research introduces an innovative approach for demarcating the hazardous zone for bench blasting through simulation of flyrock trajectories with probable launch conditions. To accomplish this, production blasts at five distinct surface mines in India were monitored using a high-speed video camera and data related to blast design and flyrock launch circumstances including the launch velocity (v
f ) were gathered by conducting motion analysis. The dataset was then used to develop ten Bayesian optimized machine learning regression models for predicting vf . Among all the models, the Extremely Randomized Trees Regression model (ERTR-BO) demonstrated the best predictive accuracy. Moreover, Shapely Additive Explanation (SHAP) analysis of the ERTR-BO model unveiled bulk density as the most influential input feature in predicting vf , followed by other features. To apply the model in a real-world setting, a user interface was developed to aid in flyrock trajectory simulation during bench blast designing. [ABSTRACT FROM AUTHOR]- Published
- 2023
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9. Deep learning model for temperature prediction: A case study in New Delhi.
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Shrivastava, Virendra Kumar, Shrivastava, Aastik, Sharma, Nonita, Mohanty, Sachi Nandan, and Pattanaik, Chinmaya Ranjan
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DEEP learning ,DEW point ,MACHINE learning ,PREDICTION models ,WEATHER - Abstract
This study is based on temperature prediction in the capital of India (New Delhi). We have adopted different ML models such as (MPR and DNN) which are designed and implemented for temperature prediction. The MPR models are varied on the degree of the polynomial, whereas the DNN models differ in the number of input parameters. DNNM‐1 takes date, time, and temperature as input, and DNNM‐2 receives date, time, temperature, pressure, humidity, and dew point as input parameters, whereas DNNM‐3, is a complex model that takes date, time, temperature, pressure, humidity, dew point, and 32 weather conditions as input. To evaluate the accuracy of the predictions, a comparison of the predicted temperature and the actual recorded temperature is done, and the performance and accuracy of the models are examined. The MPR models work well in case of fewer input features, but as the number of input features grows, the DNN model outperforms the MPR models. The DNN model (DNNM‐3) outperformed the other models with better accuracy as compared to past evidence. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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10. AI-Assisted Screening of Oral Potentially Malignant Disorders Using Smartphone-Based Photographic Images.
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Talwar, Vivek, Singh, Pragya, Mukhia, Nirza, Shetty, Anupama, Birur, Praveen, Desai, Karishma M., Sunkavalli, Chinnababu, Varma, Konala S., Sethuraman, Ramanathan, Jawahar, C. V., and Vinod, P. K.
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DEEP learning ,MOUTH tumors ,MIDDLE-income countries ,POINT-of-care testing ,ARTIFICIAL intelligence ,EARLY detection of cancer ,SMARTPHONES ,PHOTOGRAPHY ,LOW-income countries ,QUALITY of life ,RESEARCH funding ,PRECANCEROUS conditions ,DIGITAL diagnostic imaging - Abstract
Simple Summary: The early detection of oral cancer is essential for improving patient outcomes. A conventional oral examination by specialists is the clinical standard for detecting oral lesions. However, many high-risk individuals in middle- and low-income countries lack access to specialists. Therefore, there is a need to develop an easy-to-use, non-invasive oral screening tool that enhances the existing system for detecting precancerous lesions. This study explores artificial intelligence (AI)-based techniques to identify precancerous lesions using photographic images of oral cavities in the Indian population. The high performance of deep learning models suggests that an AI-based solution can be deployed for community screening programs in low-resource settings after further improvement and validation. The prevalence of oral potentially malignant disorders (OPMDs) and oral cancer is surging in low- and middle-income countries. A lack of resources for population screening in remote locations delays the detection of these lesions in the early stages and contributes to higher mortality and a poor quality of life. Digital imaging and artificial intelligence (AI) are promising tools for cancer screening. This study aimed to evaluate the utility of AI-based techniques for detecting OPMDs in the Indian population using photographic images of oral cavities captured using a smartphone. A dataset comprising 1120 suspicious and 1058 non-suspicious oral cavity photographic images taken by trained front-line healthcare workers (FHWs) was used for evaluating the performance of different deep learning models based on convolution (DenseNets) and Transformer (Swin) architectures. The best-performing model was also tested on an additional independent test set comprising 440 photographic images taken by untrained FHWs (set I). DenseNet201 and Swin Transformer (base) models show high classification performance with an F1-score of 0.84 (CI 0.79–0.89) and 0.83 (CI 0.78–0.88) on the internal test set, respectively. However, the performance of models decreases on test set I, which has considerable variation in the image quality, with the best F1-score of 0.73 (CI 0.67–0.78) obtained using DenseNet201. The proposed AI model has the potential to identify suspicious and non-suspicious oral lesions using photographic images. This simplified image-based AI solution can assist in screening, early detection, and prompt referral for OPMDs. [ABSTRACT FROM AUTHOR]
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- 2023
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11. Accuracy of an artificial intelligence-based mobile application for detecting cataracts: Results from a field study.
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Vasan, Chandrakumar Subbiah, Gupta, Sachin, Shekhar, Madhu, Nagu, Kamatchi, Balakrishnan, Logesh, Ravindran, Ravilla D., Ravilla, Thulasiraj, and Subburaman, Ganesh-Babu Balu
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ARTIFICIAL intelligence ,MOBILE apps ,INTRAOCULAR lenses ,CATARACT ,VISUAL acuity - Abstract
Purpose: To assess the accuracy of e-Paarvai, an artificial intelligence-based smartphone application (app) that detects and grades cataracts using images taken with a smartphone by comparing with slit lamp-based diagnoses by trained ophthalmologists. Methods: In this prospective diagnostic study conducted between January and April 2022 at a large tertiary-care eye hospital in South India, two screeners were trained to use the app. Patients aged >40 years and with a best-corrected visual acuity <20/40 were recruited for the study. The app is intended to determine whether the eye has immature cataract, mature cataract, posterior chamber intra-ocular lens, or no cataract. The diagnosis of the app was compared with that of trained ophthalmologists based on slit-lamp examinations, the gold standard, and a receiver operating characteristic (ROC) curve was estimated. The sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were computed. Results: The two screeners used the app to screen 2,619 eyes of 1,407 patients. In detecting cataracts, the app showed high sensitivity (96%) but low specificity (25%), an overall accuracy of 88%, a PPV of 92.3%, and an NPV of 57.8%. In terms of cataract grading, the accuracy of the app was high in detecting immature cataracts (1,875 eyes, 94.2%), but its accuracy was poor in detecting mature cataracts (73 eyes, 22%), posterior chamber intra-ocular lenses (55 eyes, 29.3%), and clear lenses (2 eyes, 2%). We found that the area under the curve in predicting ophthalmologists' cataract diagnosis could potentially be improved beyond the app's diagnosis based on using images only by incorporating information about patient sex and age (P < 0.0001) and best-corrected visual acuity (P < 0.0001). Conclusions: Although there is room for improvement, e-Paarvai app is a promising approach for diagnosing cataracts in difficult-to-reach populations. Integrating this with existing outreach programs can enhance the case detection rate. [ABSTRACT FROM AUTHOR]
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- 2023
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12. Perceptually Motivated Generative Model for Magnetic Resonance Image Denoising.
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Aetesam, Hazique and Maji, Suman Kumar
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NOISE control ,DEEP learning ,MAGNETIC resonance imaging ,SIGNAL processing ,DIGITAL diagnostic imaging - Abstract
Image denoising is an important preprocessing step in low-level vision problems involving biomedical images. Noise removal techniques can greatly benefit raw corrupted magnetic resonance images (MRI). It has been discovered that the MR data is corrupted by a mixture of Gaussian-impulse noise caused by detector flaws and transmission errors. This paper proposes a deep generative model (GenMRIDenoiser) for dealing with this mixed noise scenario. This work makes four contributions. To begin, Wasserstein generative adversarial network (WGAN) is used in model training to mitigate the problem of vanishing gradient, mode collapse, and convergence issues encountered while training a vanilla GAN. Second, a perceptually motivated loss function is used to guide the training process in order to preserve the low-level details in the form of high-frequency components in the image. Third, batch renormalization is used between the convolutional and activation layers to prevent performance degradation under the assumption of non-independent and identically distributed (non-iid) data. Fourth, global feature attention module (GFAM) is appended at the beginning and end of the parallel ensemble blocks to capture the long-range dependencies that are often lost due to the small receptive field of convolutional filters. The experimental results over synthetic data and MRI stack obtained from real MR scanners indicate the potential utility of the proposed technique across a wide range of degradation scenarios. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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13. Interpretable and Reliable Oral Cancer Classifier with Attention Mechanism and Expert Knowledge Embedding via Attention Map.
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Song, Bofan, Zhang, Chicheng, Sunny, Sumsum, KC, Dharma Raj, Li, Shaobai, Gurushanth, Keerthi, Mendonca, Pramila, Mukhia, Nirza, Patrick, Sanjana, Gurudath, Shubha, Raghavan, Subhashini, Tsusennaro, Imchen, Leivon, Shirley T., Kolur, Trupti, Shetty, Vivek, Bushan, Vidya, Ramesh, Rohan, Pillai, Vijay, Wilder-Smith, Petra, and Suresh, Amritha
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DEEP learning ,MOUTH tumors ,RESEARCH evaluation ,ARTIFICIAL intelligence ,CANCER patients ,INTELLECT ,DESCRIPTIVE statistics ,RESEARCH funding ,COMPUTER-assisted image analysis (Medicine) ,ARTIFICIAL neural networks - Abstract
Simple Summary: Convolutional neural networks (CNNs) have shown promising performance in recognizing oral cancer. However, the lack of interpretability and reliability remain major challenges in the development of trustworthy computer-aided diagnosis systems. To address this issue, we proposed a neural network architecture that integrates visual explanation and attention mechanisms. It improves the recognition performance via the attention mechanism while simultaneously providing interpretability for decision-making. Furthermore, our system incorporates Human-in-the-loop (HITL) deep learning to enhance the reliability and accuracy of the system through the integration of human and machine intelligence. We embedded expert knowledge into the network by manually editing the attention map for the attention mechanism. Convolutional neural networks have demonstrated excellent performance in oral cancer detection and classification. However, the end-to-end learning strategy makes CNNs hard to interpret, and it can be challenging to fully understand the decision-making procedure. Additionally, reliability is also a significant challenge for CNN based approaches. In this study, we proposed a neural network called the attention branch network (ABN), which combines the visual explanation and attention mechanisms to improve the recognition performance and interpret the decision-making simultaneously. We also embedded expert knowledge into the network by having human experts manually edit the attention maps for the attention mechanism. Our experiments have shown that ABN performs better than the original baseline network. By introducing the Squeeze-and-Excitation (SE) blocks to the network, the cross-validation accuracy increased further. Furthermore, we observed that some previously misclassified cases were correctly recognized after updating by manually editing the attention maps. The cross-validation accuracy increased from 0.846 to 0.875 with the ABN (Resnet18 as baseline), 0.877 with SE-ABN, and 0.903 after embedding expert knowledge. The proposed method provides an accurate, interpretable, and reliable oral cancer computer-aided diagnosis system through visual explanation, attention mechanisms, and expert knowledge embedding. [ABSTRACT FROM AUTHOR]
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- 2023
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14. Automatic Diagnostic Tool for Detection of Regional Wall Motion Abnormality from Echocardiogram.
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Sanjeevi, G, Gopalakrishnan, Uma, Pathinarupothi, Rahul Krishnan, and Madathil, Thushara
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ECHOCARDIOGRAPHY ,DEEP learning ,CARDIOMYOPATHIES ,CARDIAC contraction ,AUTOMATION ,RESEARCH funding ,PREDICTION models ,ARTIFICIAL neural networks ,VIDEO recording - Abstract
The echocardiogram is an ultrasound imaging modality, employed to assess cardiac abnormalities. The Regional Wall Motion Abnormality (RWMA) is the occurrence of abnormal or absent contractility of a region of the heart muscle. Conventional assessment of RWMA is based on visual interpretation of endocardial excursion and myocardial thickening from the echocardiogram videos. Wall motion assessment accuracy depends on the experience of the sonographer. Current automated methods highly depend on the preprocessing steps such as segmentation of ventricle part or manually finding systole and diastole frames from an echocardiogram. Additionally, state-of-the-art methods majorly make use of images rather than videos, which specifically lack the usage of temporal information associated with an echocardiogram. The deep learning models used, employ highly complex networks with billions of trainable parameters. Further, the existing models used on video data add to the computational intensity because of the high frame rates of echocardiogram videos. We developed a novel deep learning architecture EC3D-Net (Echo-Cardio 3D Net), which captures the temporal information for identifying regional wall motion abnormality from echocardiogram. We demonstrate that EC3D-Net can extract temporal information from even raw echocardiogram videos, at low frame rates, employing minimal training parameter-based deep architecture. EC3D-Net achieves both an overall F1-Score and an Area Under Curve (AUC) score of 0.82. Further, we were able to reduce time for training and trainable parameters by 50% through minimizing frames per second. We also show the EC3D-Net is an interpretable model, thereby helping physicians understand our model prediction. RWMA detection from echocardiogram videos is a challenging process and our results demonstrate that we could achieve the state-of-the-art results even while using minimal parameters and time by our EC3D-Net. The proposed network outperforms both complex deep networks as well as fusion methods generally used in video classification [ABSTRACT FROM AUTHOR]
- Published
- 2023
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15. Performance Analysis of Classification and Detection of Brain Tumor MRI Images Using Resnet50 Deep Residual U-Net.
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Gajula, Srinivasaro and Rajesh, V.
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BRAIN tumor diagnosis ,DIGITAL image processing ,DEEP learning ,MAGNETIC resonance imaging ,MACHINE learning ,GLIOMAS ,DESCRIPTIVE statistics ,ARTIFICIAL neural networks ,LOGISTIC regression analysis - Abstract
Background: This research adds to the growing body of work demonstrating the vital role of image categorization in the medical sector. The efficiency of illness diagnosis is being greatly enhanced using image classification. A brain tumor is a collection of abnormal cells in the brain. Diagnostic precision is required when looking for a tumor in the brain because even the smallest error in human judgement can have disastrous results. To get around this problem, the medical community has implemented an automated brain tumor segmentation system. A variety of methods are employed to segment a brain tumor, but the results are inconsistent. To improve the quality of MRI images, we present our findings in this paper. Deep learning methods for image segmentation and classification are discussed in this paper. Methods: In this paper we a very robust deep learning method for image segmentation and classification. For image classification, we are employing the enhanced faster R-CNN method. The ResNet50 model is used to differentiate between tumor and non-tumor images. The next step in this framework is to use Deep Residual UNET for segmentation. RESUNET is an FCNN that maximizes efficiency. The proposed method works well in terms of its ability to find and classify things accurately. Results: The accuracy rate for identifying tumours in MRI scans using the proposed technique is 94.23%. Using transfer learning with Resnet50 as the base model and the use of discriminative learning rates, our model achieved superior results than other recent models. Conclusion: Within the scope of this study, we have integrated the residual networks with the U-Net to make the network stronger. This strategy improves the efficiency of classification and segmentation tools. To achieve a higher level of accuracy, the model may be trained further, or additional data may be applied in the training process. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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16. Computer-Aided Diagnosis Using Hybrid Technique for Fastened and Accurate Analysis of Tuberculosis Detection with Adaboost and Learning Vector Quantization.
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Paul, Emil M. and Perumal, B.
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COMPUTER-aided diagnosis ,VECTOR quantization ,TUBERCULOSIS ,CONVOLUTIONAL neural networks ,X-ray imaging - Abstract
Background: The concept of tuberculosis diagnosis plays a significant role in the current world since, in accordance with the Global Tuberculosis (TB) Report in 2019, more than one million cases are reported per year in India. Various tests are available even then the chest X-ray is the most significant one, devoid of which the diagnosis will be incomplete. By the usage of computationally designed algorithms, various clinical, as well as diagnostic functions, were built in ancient poster anterior chest radiographs. The Digital image (X-ray) may be an essential medium for examining and annotating patient's demographics coverage in the screening of TB via chest radiography. Results: Even though several medicines are available to cure TB, diagnosis with accuracy is a major challenge. So, we have introduced a fastened technique with the merged combination of Adaptive Boosting (AdaBoost) and learning vector quantization (LVQ) for determining TB in an easier way with the input chest X-ray image of a person with the aid of computer-aided diagnosis with greatest accuracy, precision, recall and F1 values. This finest technique got an accuracy of 94.73% when compared to the prior conventional methods used such as SVM and Convolutional Neural Network. Conclusions: Tuberculosis detection can be done in a meaningful way with the aid of MATLAB simulation using Computer Aided Diagnosis. The algorithms Adaboost and LVQ works best with the datasets for around 400 chest X-ray images for detecting the normal and abnormal images conditions for the detection of the disease for a patient suspected to have TB, in a fraction of seconds. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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17. A Review on Detection of Pneumonia in Chest X-ray Images Using Neural Networks.
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Alapat, Daniel Joseph, Menon, Malavika Venu, and Ashok, Sharmila
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X-ray imaging ,X-rays ,PNEUMONIA ,CONVOLUTIONAL neural networks ,PHYSICIANS - Abstract
The health organisation has suffered from the lack of diagnosis support systems and physicians in India. Further, the physicians are struggling to treat many patients, and the hospitals also have the lack of a radiologist especially in rural areas; thus, almost all cases are handled by a single physician, leading to many misdiagnoses. Computer aided diagnostic systems are being developed to address this problem. The current study aimed to review the different methods to detect pneumonia using neural networks and compare their approach and results. For the best comparisons, only papers with the same data set ChestXray14 are studied. [ABSTRACT FROM AUTHOR]
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- 2022
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18. Detection and Classification of Tomato Crop Disease Using Convolutional Neural Network.
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Sakkarvarthi, Gnanavel, Sathianesan, Godfrey Winster, Murugan, Vetri Selvan, Reddy, Avulapalli Jayaram, Jayagopal, Prabhu, and Elsisi, Mahmoud
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CONVOLUTIONAL neural networks ,PLANT diseases ,DEEP learning ,TOMATO growers ,IMAGE processing ,TOMATOES ,SWEET potatoes - Abstract
Deep learning is a cutting-edge image processing method that is still relatively new but produces reliable results. Leaf disease detection and categorization employ a variety of deep learning approaches. Tomatoes are one of the most popular vegetables and can be found in every kitchen in various forms, no matter the cuisine. After potato and sweet potato, it is the third most widely produced crop. The second-largest tomato grower in the world is India. However, many diseases affect the quality and quantity of tomato crops. This article discusses a deep-learning-based strategy for crop disease detection. A Convolutional-Neural-Network-based technique is used for disease detection and classification. Inside the model, two convolutional and two pooling layers are used. The results of the experiments show that the proposed model outperformed pre-trained InceptionV3, ResNet 152, and VGG19. The CNN model achieved 98% training accuracy and 88.17% testing accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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19. Context based NLP framework of textual tagging for low resource language.
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Mishra, Atul, Shaikh, Soharab Hossain, and Sanyal, Ratna
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DEEP learning ,PARTS of speech ,MACHINE learning ,HINDI language ,LANGUAGE & languages ,SOFTWARE frameworks - Abstract
Understanding the context of any phrase or extracting relationships requires part of speech tagging (POS). This article proposes an RNN-based POS tagger and compares its performance with some of the existing POS tagging methods. We present novel LSTM-based RNN architecture for POS tagging. The study attempts to determine the usefulness of machine learning and deep learning techniques for tagging part-of-speech of words for the low-resource Hindi language, which is an Indo-Aryan language spoken mostly in India. During the experiments, different deep learning architecture (ANN and RNN) and machine learning methods (HMM, SVM, DT) have been used. A multi-representational treebank and an open-source dataset have been used for the performance analysis of the proposed framework. The experimental results in terms of macro-measured variables have shown better results compared to some state-of-the-art methods. [ABSTRACT FROM AUTHOR]
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- 2022
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20. Effect of Covid-19 and Role of AI Approaches in the Context of India.
- Author
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Kushwaha, Sunita, Thakur, Varsha, and Tamrkar, Latika
- Subjects
ARTIFICIAL intelligence ,DEEP learning ,MACHINE learning ,COMPUTER vision ,COVID-19 - Abstract
From few decades AI almost uses in everywhere to make a decision, in problem solving concept etc. As AI stand for Artificial Intelligence a human generated intelligence of machine which is used to solve many problems either by self learning or by human interaction. AI uses to solve complex problem using intelligences by Reasoning learning, and self-correction. Machine learning and deep learning are component of AI, ML is a algorithmic approach while Deep learning use multi layer neural networks for data analysis. Deep learning is a subset of machine learning in which huge amount of data are used to learn from multilayered neural network. Machine learning is an algorithmic approach where the performance of algorithm is increased as the amount of data increased. Machine learning belongs to the artificial intelligence as a subset. Artificial intelligence is a set of command that designed to sense, act and adapt by self learning. It is learns like a human, as human learn from their experiences, in artificial intelligence machine or algorithm learn by the earlier database. As like the human learn more as he/she became more experience similarly in this area machine and algorithm become more accurate and useful as the amount of data increases. Nowadays, deep learning used as a tool in various study areas such as speech theory, computer vision, NLP, health sector and many more [1][2]. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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- View/download PDF
21. Earth Mover's Distance-Based Tool for Rapid Screening of Cervical Cancer Using Cervigrams.
- Author
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Shrivastav, Kumar Dron, Arambam, Priyadarshini, Batra, Shelly, Bhatia, Vandana, Singh, Harpreet, Jaggi, Vinita Kumar, Ranjan, Priya, Abed, Eyad H., and Janardhanan, Rajiv
- Subjects
CERVICAL cancer ,EARLY detection of cancer ,MEDICAL research ,MEDICAL triage ,IMAGE analysis - Abstract
Cervical cancer is a major public health challenge that can be cured with early diagnosis and timely treatment. This challenge formed the rationale behind our design and development of an intelligent and robust image analysis and diagnostic tool/scale, namely "OM—The OncoMeter", for which we used R (version-3.6.3) and Linux (Ubuntu-20.04) to tag and triage patients in order of their disease severity. The socio-demographic profiles and cervigrams of 398 patients evaluated at OPDs of Batra Hospital & Medical Research Centre, New Delhi, India, and Delhi State Cancer Institute (East), New Delhi, India, were acquired during the course of this study. Tested on 398 India-specific women's cervigrams, the scale yielded significant achievements, with 80.15% accuracy, a sensitivity of 84.79%, and a specificity of 66.66%. The statistical analysis of sociodemographic profiles showed significant associations of age, education, annual income, occupation, and menstrual health with the health of the cervix, where a p-value less than (<) 0.05 was considered statistically significant. The deployment of cervical cancer screening tools such as "OM—The OncoMeter" in live clinical settings of resource-limited healthcare infrastructure will facilitate early diagnosis in a non-invasive manner, leading to a timely clinical intervention for infected patients upon detection even during primary healthcare (PHC). [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
22. OMRON Healthcare India Partners with AliveCor India to Introduce AI-Based Handheld ECG Technology.
- Subjects
HOSPITAL mergers ,ARTIFICIAL intelligence ,POCKET computers ,ELECTROCARDIOGRAPHY - Abstract
The article focuses on the partnership between OMRON Healthcare India and AliveCor India to integrate Artificial Intelligence (AI)-based handheld Electrocardiogram (ECG) technology into OMRON's product offerings. Topics include the alignment with OMRON's vision for improving cardiovascular health and the combined functionality of blood pressure and ECG monitoring for early detection of cardiovascular diseases.
- Published
- 2024
23. Epidemiological Mucormycosis treatment and diagnosis challenges using the adaptive properties of computer vision techniques based approach: a review.
- Author
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Nira and Kumar, Harekrishna
- Subjects
MUCORMYCOSIS ,COMPUTER vision ,ARTIFICIAL intelligence ,DEEP learning ,IMAGE processing ,MACHINE learning - Abstract
As everyone knows that in today's time Artificial Intelligence, Machine Learning and Deep Learning are being used extensively and generally researchers are thinking of using them everywhere. At the same time, we are also seeing that the second wave of corona has wreaked havoc in India. More than 4 lakh cases are coming in 24 h. In the meantime, news came that a new deadly fungus has come, which doctors have named Mucormycosis (Black fungus). This fungus also spread rapidly in many states, due to which states have declared this disease as an epidemic. It has become very important to find a cure for this life-threatening fungus by taking the help of our today's devices and technology such as artificial intelligence, data learning. It was found that the CT-Scan has much more adequate information and delivers greater evaluation validity than the chest X-Ray. After that the steps of Image processing such as pre-processing, segmentation, all these were surveyed in which it was found that accuracy score for the deep features retrieved from the ResNet50 model and SVM classifier using the Linear kernel function was 94.7%, which was the highest of all the findings. Also studied about Deep Belief Network (DBN) that how easy it can be to diagnose a life-threatening infection like fungus. Then a survey explained how computer vision helped in the corona era, in the same way it would help in epidemics like Mucormycosis. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
24. AI-driven quantification of ground glass opacities in lungs of COVID-19 patients using 3D computed tomography imaging.
- Author
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Saha, Monjoy, Amin, Sagar B., Sharma, Ashish, Kumar, T. K. Satish, and Kalia, Rajiv K.
- Subjects
COVID-19 ,COMPUTED tomography ,LUNGS ,LUNG diseases ,MEDICAL personnel ,SARS-CoV-2 - Abstract
Objectives: Ground-glass opacity (GGO)—a hazy, gray appearing density on computed tomography (CT) of lungs—is one of the hallmark features of SARS-CoV-2 in COVID-19 patients. This AI-driven study is focused on segmentation, morphology, and distribution patterns of GGOs. Method: We use an AI-driven unsupervised machine learning approach called PointNet++ to detect and quantify GGOs in CT scans of COVID-19 patients and to assess the severity of the disease. We have conducted our study on the "MosMedData", which contains CT lung scans of 1110 patients with or without COVID-19 infections. We quantify the morphologies of GGOs using Minkowski tensors and compute the abnormality score of individual regions of segmented lung and GGOs. Results: PointNet++ detects GGOs with the highest evaluation accuracy (98%), average class accuracy (95%), and intersection over union (92%) using only a fraction of 3D data. On average, the shapes of GGOs in the COVID-19 datasets deviate from sphericity by 15% and anisotropies in GGOs are dominated by dipole and hexapole components. These anisotropies may help to quantitatively delineate GGOs of COVID-19 from other lung diseases. Conclusion: The PointNet++ and the Minkowski tensor based morphological approach together with abnormality analysis will provide radiologists and clinicians with a valuable set of tools when interpreting CT lung scans of COVID-19 patients. Implementation would be particularly useful in countries severely devastated by COVID-19 such as India, where the number of cases has outstripped available resources creating delays or even breakdowns in patient care. This AI-driven approach synthesizes both the unique GGO distribution pattern and severity of the disease to allow for more efficient diagnosis, triaging and conservation of limited resources. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
25. Machine Learning Techniques for Human Age and Gender Identification Based on Teeth X-Ray Images.
- Author
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Santosh, K. C., Pradeep, Nijalingappa, Goel, Vikas, Ranjan, Raju, Pandey, Ekta, Shukla, Piyush Kumar, and Nuagah, Stephen Jeswinde
- Subjects
X-ray imaging ,MACHINE learning ,DIGITAL images ,TEETH - Abstract
The use of digital medical images is increasing with advanced computational power that has immensely contributed to developing more sophisticated machine learning techniques. Determination of age and gender of individuals was manually performed by forensic experts by their professional skills, which may take a few days to generate results. A fully automated system was developed that identifies the gender of humans and age based on digital images of teeth. Since teeth are a strong and unique part of the human body that exhibits least subject to risk in natural structure and remains unchanged for a longer duration, the process of identification of gender- and age-related information from human beings is systematically carried out by analyzing OPG (orthopantomogram) images. A total of 1142 digital X-ray images of teeth were obtained from dental colleges from the population of the middle-east part of Karnataka state in India. 80% of the digital images were considered for training purposes, and the remaining 20% of teeth images were for the testing cases. The proposed gender and age determination system finds its application widely in the forensic field to predict results quickly and accurately. The prediction system was carried out using Multiclass SVM (MSVM) classifier algorithm for age estimation and LIBSVM classifier for gender prediction, and 96% of accuracy was achieved from the system. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
26. Breast Cancer Detection from Histopathological Images using Deep Learning Algorithms.
- Author
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R Sivakumar, O. V. P., Reddy, Kurapati Kavya, and Ashwinic, Ponaganti
- Subjects
MACHINE learning ,DEEP learning ,EARLY detection of cancer ,COMPUTER vision ,IMAGE recognition (Computer vision) ,BREAST cancer - Abstract
In India and over the world, Cancer has become a deadly disease that is adversely affecting women from different age groups. According to a survey, one in every 30 women suffers from this deadly disease in their lifetime. This project was first thought of because of the increase in cases of breast cancer and if we can detect it at an early stage then there is an increased chance of it getting cured. This paper lays a foundation in making the detection of cancer automated from histopathological images using deep learning algorithms so that more and more people can get it diagnosed at an early stage and subsequently get cured. To enhance the capability of histopathology image classification, a powerful deep learning algorithm and a sizable, varied dataset are required. In this paper, we have proposed an automatic and precise histopathological image analytical method, to detect breast cancer at an early stage. Deep learning techniques have recently made significant strides and produced outstanding results in the fields of computer vision and image processing, which has encouraged many researchers to use this method for the categorization of histopathology images. [ABSTRACT FROM AUTHOR]
- Published
- 2022
27. COVID_SCREENET: COVID-19 Screening in Chest Radiography Images Using Deep Transfer Stacking.
- Author
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Elakkiya, R., Vijayakumar, Pandi, and Karuppiah, Marimuthu
- Subjects
COVID-19 ,RADIOGRAPHY ,ARTIFICIAL intelligence ,CONVOLUTIONAL neural networks ,COMMUNICABLE diseases - Abstract
Infectious diseases are highly contagious due to rapid transmission and very challenging to diagnose in the early stage. Artificial Intelligence and Machine Learning now become a strategic weapon in assisting infectious disease prevention, rapid-response in diagnosis, surveillance, and management. In this paper, a bifold COVID_SCREENET architecture is introduced for providing COVID-19 screening solutions using Chest Radiography (CR) images. Transfer learning using nine pre-trained ImageNet models to extract the features of Normal, Pneumonia, and COVID-19 images is adapted in the first fold and classified using baseline Convolutional Neural Network (CNN). A Modified Stacked Ensemble Learning (MSEL) is proposed in the second fold by stacking the top five pre-trained models, and then the predictions resulted. Experimentation is carried out in two folds: In first fold, open-source samples are considered and in second fold 2216 real-time samples collected from Tamilnadu Government Hospitals, India, and the screening results for COVID data is 100% accurate in both the cases. The proposed approach is also validated and blind reviewed with the help of two radiologists at Thanjavur Medical College & Hospitals by collecting 2216 chest X-ray images between the month of April and May. Based on the reports, the measures are calculated for COVID_SCREENET and it showed 100% accuracy in performing multi-class classification. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
28. A bibliometric of publication trends in medical image segmentation: Quantitative and qualitative analysis.
- Author
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Zhang, Bin, Rahmatullah, Bahbibi, Wang, Shir Li, Zhang, Guangnan, Wang, Huan, and Ebrahim, Nader Ale
- Subjects
IMAGE segmentation ,COMPUTER-assisted image analysis (Medicine) ,DEEP learning ,DIAGNOSTIC imaging ,QUANTITATIVE research ,BIBLIOMETRICS - Abstract
Purpose: Medical images are important in diagnosing disease and treatment planning. Computer algorithms that describe anatomical structures that highlight regions of interest and remove unnecessary information are collectively known as medical image segmentation algorithms. The quality of these algorithms will directly affect the performance of the following processing steps. There are many studies about the algorithms of medical image segmentation and their applications, but none involved a bibliometric of medical image segmentation. Methods: This bibliometric work investigated the academic publication trends in medical image segmentation technology. These data were collected from the Web of Science (WoS) Core Collection and the Scopus. In the quantitative analysis stage, important visual maps were produced to show publication trends from five different perspectives including annual publications, countries, top authors, publication sources, and keywords. In the qualitative analysis stage, the frequently used methods and research trends in the medical image segmentation field were analyzed from 49 publications with the top annual citation rates. Results: The analysis results showed that the number of publications had increased rapidly by year. The top related countries include the Chinese mainland, the United States, and India. Most of these publications were conference papers, besides there are also some top journals. The research hotspot in this field was deep learning‐based medical image segmentation algorithms based on keyword analysis. These publications were divided into three categories: reviews, segmentation algorithm publications, and other relevant publications. Among these three categories, segmentation algorithm publications occupied the vast majority, and deep learning neural network‐based algorithm was the research hotspots and frontiers. Conclusions: Through this bibliometric research work, the research hotspot in the medical image segmentation field is uncovered and can point to future research in the field. It can be expected that more researchers will focus their work on deep learning neural network‐based medical image segmentation. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
29. Quantum algorithm for quicker clinical prognostic analysis: an application and experimental study using CT scan images of COVID-19 patients.
- Author
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Sengupta, Kinshuk and Srivastava, Praveen Ranjan
- Subjects
COVID-19 ,COMPUTED tomography ,DEEP learning ,MEDICAL protocols ,DIAGNOSIS ,IMAGE segmentation ,QUANTUM networks (Optics) - Abstract
Background: In medical diagnosis and clinical practice, diagnosing a disease early is crucial for accurate treatment, lessening the stress on the healthcare system. In medical imaging research, image processing techniques tend to be vital in analyzing and resolving diseases with a high degree of accuracy. This paper establishes a new image classification and segmentation method through simulation techniques, conducted over images of COVID-19 patients in India, introducing the use of Quantum Machine Learning (QML) in medical practice.Methods: This study establishes a prototype model for classifying COVID-19, comparing it with non-COVID pneumonia signals in Computed tomography (CT) images. The simulation work evaluates the usage of quantum machine learning algorithms, while assessing the efficacy for deep learning models for image classification problems, and thereby establishes performance quality that is required for improved prediction rate when dealing with complex clinical image data exhibiting high biases.Results: The study considers a novel algorithmic implementation leveraging quantum neural network (QNN). The proposed model outperformed the conventional deep learning models for specific classification task. The performance was evident because of the efficiency of quantum simulation and faster convergence property solving for an optimization problem for network training particularly for large-scale biased image classification task. The model run-time observed on quantum optimized hardware was 52 min, while on K80 GPU hardware it was 1 h 30 min for similar sample size. The simulation shows that QNN outperforms DNN, CNN, 2D CNN by more than 2.92% in gain in accuracy measure with an average recall of around 97.7%.Conclusion: The results suggest that quantum neural networks outperform in COVID-19 traits' classification task, comparing to deep learning w.r.t model efficacy and training time. However, a further study needs to be conducted to evaluate implementation scenarios by integrating the model within medical devices. [ABSTRACT FROM AUTHOR]- Published
- 2021
- Full Text
- View/download PDF
30. A deep learning model for mass screening of COVID‐19.
- Author
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Dhaka, Vijaypal Singh, Rani, Geeta, Oza, Meet Ganpatlal, Sharma, Tarushi, and Misra, Ankit
- Subjects
COVID-19 ,DEEP learning ,ARTIFICIAL neural networks ,CONVOLUTIONAL neural networks ,INTELLECTUAL property ,SIGNAL convolution - Abstract
The objective of this research is to develop a convolutional neural network model 'COVID‐Screen‐Net' for multi‐class classification of chest X‐ray images into three classes viz. COVID‐19, bacterial pneumonia, and normal. The model performs the automatic feature extraction from X‐ray images and accurately identifies the features responsible for distinguishing the X‐ray images of different classes. It plots these features on the GradCam. The authors optimized the number of convolution and activation layers according to the size of the dataset. They also fine‐tuned the hyperparameters to minimize the computation time and to enhance the efficiency of the model. The performance of the model has been evaluated on the anonymous chest X‐ray images collected from hospitals and the dataset available on the web. The model attains an average accuracy of 97.71% and a maximum recall of 100%. The comparative analysis shows that the 'COVID‐Screen‐Net' outperforms the existing systems for screening of COVID‐19. The effectiveness of the model is validated by the radiology experts on the real‐time dataset. Therefore, it may prove a useful tool for quick and low‐cost mass screening of patients of COVID‐19. This tool may reduce the burden on health experts in the present situation of the Global Pandemic. The copyright of this tool is registered in the names of authors under the laws of Intellectual Property Rights in India with the registration number 'SW‐13625/2020'. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
31. Critical success factors for next generation technical education institutions.
- Author
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Kashiramka, Smita, Sagar, Mahim, Dubey, Amlendu Kumar, Mehndiratta, Amit, and Sushil
- Subjects
CRITICAL success factor ,TECHNICAL education ,UNIVERSITIES & colleges ,ACCREDITATION ,STRUCTURAL models ,ABILITY grouping (Education) - Abstract
Purpose: The purpose of this paper is to create a hierarchy of critical success factors affecting the higher technical education institutions, taking a case study of India. Using total interpretive structural modeling (TISM), the paper attempts to establish the inter-linkages among ten critical success factors for enhancing the performance of these institutions. Design/methodology/approach: The paper employs Total Interpretive Structural Modeling (TISM) to understand the hierarchy of the factors and their interplay using response from 18 experts in the domain. Findings: The findings reveal that autonomy and accountability coupled with availability of sustainable funds are the driving factors for the success of the institutions. Infrastructural facilities and establishment of centers of excellence act as amplification factors. Introduction of new programs and their accreditation, improvement in faculty quality, research output and improvement in performance of academically weak students emerge as process factors that drive the output factors, namely, academic performance and student placement. Research limitations/implications: The major limitation of this study is the scope that was limited to 191 institutions, as mandated in the project. Practical implications: This study has important implications for the institutions as well as the policy makers to channelize their focus and efforts on driving and amplification factors that would ultimately lead to enhanced performance of the next generation higher technical education institutions. Originality/value: This paper is a part of pan India project carried out to assess the performance of higher technical education institutions in India. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
32. Flood susceptibility mapping and assessment using a novel deep learning model combining multilayer perceptron and autoencoder neural networks.
- Author
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Ahmadlou, Mohammad, Al‐Fugara, A'kif, Al‐Shabeeb, Abdel Rahman, Arora, Aman, Al‐Adamat, Rida, Pham, Quoc Bao, Al‐Ansari, Nadhir, Linh, Nguyen Thi Thuy, and Sajedi, Hedieh
- Subjects
DEEP learning ,GEOGRAPHIC information systems ,RECEIVER operating characteristic curves ,FLOODS ,REMOTE sensing - Abstract
Floods are one of the most destructive natural disasters causing financial damages and casualties every year worldwide. Recently, the combination of data‐driven techniques with remote sensing (RS) and geographical information systems (GIS) has been widely used by researchers for flood susceptibility mapping. This study presents a novel hybrid model combining the multilayer perceptron (MLP) and autoencoder models to produce the susceptibility maps for two study areas located in Iran and India. For two cases, nine, and twelve factors were considered as the predictor variables for flood susceptibility mapping, respectively. The prediction capability of the proposed hybrid model was compared with that of the traditional MLP model through the area under the receiver operating characteristic (AUROC) criterion. The AUROC curve for the MLP and autoencoder‐MLP models were, respectively, 75 and 90, 74 and 93% in the training phase and 60 and 91, 81 and 97% in the testing phase, for Iran and India cases, respectively. The results suggested that the hybrid autoencoder‐MLP model outperformed the MLP model and, therefore, can be used as a powerful model in other studies for flood susceptibility mapping. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
33. Image-based features for speech signal classification.
- Author
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Mukherjee, Himadri, Dhar, Ankita, Obaidullah, Sk Md, Phadikar, Santanu, and Roy, Kaushik
- Subjects
SIGNAL classification ,CONVOLUTIONAL neural networks ,SPEECH ,ACQUISITION of data ,DEAF children - Abstract
Like other applications, under the purview of pattern classification, analyzing speech signals is crucial. People often mix different languages while talking which makes this task complicated. This happens mostly in India, since different languages are used from one state to another. Among many, Southern part of India suffers a lot from this situation, where distinguishing their languages is important. In this paper, we propose image-based features for speech signal classification because it is possible to identify different patterns by visualizing their speech patterns. Modified Mel frequency cepstral coefficient (MFCC) features namely MFCC- Statistics Grade (MFCC-SG) were extracted which were visualized by plotting techniques and thereafter fed to a convolutional neural network. In this study, we used the top 4 languages namely Telugu, Tamil, Malayalam, and Kannada. Experiments were performed on more than 900 hours of data collected from YouTube leading to over 150000 images and the highest accuracy of 94.51% was obtained. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
34. Modeling and Analysis of Indian Carnatic Music Using Category Theory.
- Author
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Padi, Sarala, Breiner, Spencer, Subrahmanian, Eswaran, and Sriram, Ram D.
- Subjects
CARNATIC music ,CATEGORIES (Mathematics) ,ONTOLOGIES (Information retrieval) - Abstract
This paper presents a category theoretic ontology of Carnatic music. Our goals here are twofold. First, we will demonstrate the power and flexibility of conceptual modeling techniques based on a branch of mathematics called category theory (CT), using the structure of Carnatic music as an example. Second, we describe a platform for collaboration and research sharing in this area. The construction of this platform uses formal methods of CT (colimits) to merge our Carnatic ontology with a generic model of music information retrieval tasks. The latter model allows us to integrate multiple analytical methods, such as hidden Markov models, machine learning algorithms, and other data mining techniques like clustering, bagging, etc., in the analysis of a variety of different musical features. Furthermore, the framework facilitates the storage of musical performances based on the proposed ontology, making them available for additional analysis and integration. The proposed framework is extensible, allowing future work in the area of rāga recognition to build on our results, thereby facilitating collaborative research. Generally speaking, the methods presented here are intended as an exemplar for designing collaborative frameworks supporting reproducibility of computational analysis and simulation. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
35. Exploring uncertainty measures in convolutional neural network for semantic segmentation of oral cancer images.
- Author
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Song, Bofan, Li, Shaobai, Sunny, Sumsum, Gurushanth, Keerthi, Mendonca, Pramila, Mukhia, Nirza, Patrick, Sanjana, Peterson, Tyler, Gurudath, Shubha, Raghavan, Subhashini, Tsusennaro, Imchen, Leivon, Shirley T., Kolur, Trupti, Shetty, Vivek, Bushan, Vidya, Ramesh, Rohan, Pillai, Vijay, Wilder-Smith, Petra, Suresh, Amritha, and Kuriakose, Moni Abraham
- Subjects
CONVOLUTIONAL neural networks ,ORAL cancer ,MOUTH ,LOW-income countries ,IMAGE analysis - Abstract
Oral cancer is one of the most prevalent cancers, especially in middle- and low-income countries such as India. Automatic segmentation of oral cancer images can improve the diagnostic workflow, which is a significant task in oral cancer image analysis. Despite the remarkable success of deep-learning networks in medical segmentation, they rarely provide uncertainty quantification for their output. We aim to estimate uncertainty in a deep-learning approach to semantic segmentation of oral cancer images and to improve the accuracy and reliability of predictions. This work introduced a UNet-based Bayesian deep-learning (BDL) model to segment potentially malignant and malignant lesion areas in the oral cavity. The model can quantify uncertainty in predictions. We also developed an efficient model that increased the inference speed, which is almost six times smaller and two times faster (inference speed) than the original UNet. The dataset in this study was collected using our customized screening platform and was annotated by oral oncology specialists. The proposed approach achieved good segmentation performance as well as good uncertainty estimation performance. In the experiments, we observed an improvement in pixel accuracy and mean intersection over union by removing uncertain pixels. This result reflects that the model provided less accurate predictions in uncertain areas that may need more attention and further inspection. The experiments also showed that with some performance compromises, the efficient model reduced computation time and model size, which expands the potential for implementation on portable devices used in resource-limited settings. Our study demonstrates the UNet-based BDL model not only can perform potentially malignant and malignant oral lesion segmentation, but also can provide informative pixel-level uncertainty estimation. With this extra uncertainty information, the accuracy and reliability of the model's prediction can be improved. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
36. Evaluating a Deep Learning Diabetic Retinopathy Grading System Developed on Mydriatic Retinal Images When Applied to Non-Mydriatic Community Screening.
- Author
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Nunez do Rio, Joan M., Nderitu, Paul, Bergeles, Christos, Sivaprasad, Sobha, Tan, Gavin S. W., and Raman, Rajiv
- Subjects
RETINAL imaging ,DIABETIC retinopathy ,MEDICAL screening ,DEEP learning ,MACHINE learning ,PICTURE archiving & communication systems ,SIGNAL convolution - Abstract
Artificial Intelligence has showcased clear capabilities to automatically grade diabetic retinopathy (DR) on mydriatic retinal images captured by clinical experts on fixed table-top retinal cameras within hospital settings. However, in many low- and middle-income countries, screening for DR revolves around minimally trained field workers using handheld non-mydriatic cameras in community settings. This prospective study evaluated the diagnostic accuracy of a deep learning algorithm developed using mydriatic retinal images by the Singapore Eye Research Institute, commercially available as Zeiss VISUHEALTH-AI DR, on images captured by field workers on a Zeiss Visuscout
® 100 non-mydriatic handheld camera from people with diabetes in a house-to-house cross-sectional study across 20 regions in India. A total of 20,489 patient eyes from 11,199 patients were used to evaluate algorithm performance in identifying referable DR, non-referable DR, and gradability. For each category, the algorithm achieved precision values of 29.60 (95% CI 27.40, 31.88), 92.56 (92.13, 92.97), and 58.58 (56.97, 60.19), recall values of 62.69 (59.17, 66.12), 85.65 (85.11, 86.18), and 65.06 (63.40, 66.69), and F-score values of 40.22 (38.25, 42.21), 88.97 (88.62, 89.31), and 61.65 (60.50, 62.80), respectively. Model performance reached 91.22 (90.79, 91.64) sensitivity and 65.06 (63.40, 66.69) specificity at detecting gradability and 72.08 (70.68, 73.46) sensitivity and 85.65 (85.11, 86.18) specificity for the detection of all referable eyes. Algorithm accuracy is dependent on the quality of acquired retinal images, and this is a major limiting step for its global implementation in community non-mydriatic DR screening using handheld cameras. This study highlights the need to develop and train deep learning-based screening tools in such conditions before implementation. [ABSTRACT FROM AUTHOR]- Published
- 2022
- Full Text
- View/download PDF
37. Recognition of Leaf Disease Using Hybrid Convolutional Neural Network by Applying Feature Reduction.
- Author
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Kaur, Prabhjot, Harnal, Shilpi, Tiwari, Rajeev, Upadhyay, Shuchi, Bhatia, Surbhi, Mashat, Arwa, and Alabdali, Aliaa M.
- Subjects
CONVOLUTIONAL neural networks ,SUSTAINABLE agriculture ,FARM produce ,AGRICULTURAL productivity ,MACHINE learning ,PLANT diseases - Abstract
Agriculture is crucial to the economic prosperity and development of India. Plant diseases can have a devastating influence towards food safety and a considerable loss in the production of agricultural products. Disease identification on the plant is essential for long-term agriculture sustainability. Manually monitoring plant diseases is difficult due to time limitations and the diversity of diseases. In the realm of agricultural inputs, automatic characterization of plant diseases is widely required. Based on performance out of all image-processing methods, is better suited for solving this task. This work investigates plant diseases in grapevines. Leaf blight, Black rot, stable, and Black measles are the four types of diseases found in grape plants. Several earlier research proposals using machine learning algorithms were created to detect one or two diseases in grape plant leaves; no one offers a complete detection of all four diseases. The photos are taken from the plant village dataset in order to use transfer learning to retrain the EfficientNet B7 deep architecture. Following the transfer learning, the collected features are down-sampled using a Logistic Regression technique. Finally, the most discriminant traits are identified with the highest constant accuracy of 98.7% using state-of-the-art classifiers after 92 epochs. Based on the simulation findings, an appropriate classifier for this application is also suggested. The proposed technique's effectiveness is confirmed by a fair comparison to existing procedures. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
38. Brain Tumor Detection and Segmentation by Intensity Adjustment.
- Author
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Rajan, P. G. and Sundar, C.
- Subjects
BRAIN tumor diagnosis ,ALGORITHMS ,BRAIN tumors ,CLUSTER analysis (Statistics) ,COMPUTED tomography ,COMPUTER simulation ,DIAGNOSTIC imaging ,DIGITAL image processing ,MAGNETIC resonance imaging ,COMPUTERS in medicine ,QUALITY assurance ,X-rays - Abstract
In recent years, Brain tumor detection and segmentation has created an interest on research areas. The process of identifying and segmenting brain tumor is a very tedious and time consuming task, since human physique has anatomical structure naturally. Magnetic Resonance Image (MRI) scan analysis is a powerful tool that makes effective detection of the abnormal tissues from the brain. Among different techniques, Magnetic Resonance Image (MRI) is a liable one which contains several modalities in scanning the images captured from interior structure of human brain. A novel hybrid energy-efficient method is proposed for automatic tumor detection and segmentation. The proposed system follows K-means clustering, integrated with Fuzzy C-Means (KMFCM) and active contour by level set for tumor segmentation. An effective segmentation, edge detection and intensity enhancement can detect brain tumor easily. For that, active contour with level set method has been utilized. The performance of the proposed approach has been evaluated in terms of white pixels, black pixels, tumor detected area, and the processing time. This technique can deal with a higher number of segmentation problem and minimum execution time by ensuring segmentation quality. Additionally, tumor area length in vertical and horizontal positions is determined to measure sensitivity, specificity, accuracy, and similarity index values. Further, tumor volume is computed. Knowledge of the information of tumor is helpful for the physicians for effective diagnosing in tumor for treatments. The entire experimentation was implemented in MATLAB environment and simulation results were compared with existing approaches. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
39. Genomic Profiling Of Triple Negative Breast Cancer: Novel Targets For Personalized Treatment?
- Author
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Patil, Shekar
- Subjects
TRIPLE-negative breast cancer ,PROGESTERONE receptors ,MTOR inhibitors - Abstract
Basis of the Study: Triple Negative Breast Cancer (TNBC) defined by the lack of expression of estrogen, progesterone receptors (ER, PgR) and HER2 represent heterogeneous subtype tumors with different molecular and clinical-pathological features, with more prevalence among younger age woman showing worse. It has been reported that prevalence of TNBC in India is considerably higher compared to western populations. Conventional chemotherapy is currently the only treatment option, thus there is a critical need to find new and effective targeted therapies in this disease. The current study aim to identify the frequency of somatic and germline mutations (GRm) in TNBC. Methods: Out of 100 TNBC cases, 50 patients aged 24- 76 years (Median Age: 44) were consented to be profiled by Next Generation Sequencing (NGS) using 48 gene TruSeq Amplicon cancer panel from Illumina on MiSeq platform in an IRB approved study. All the cases had pathology review for histological type and grade. Average coverage across 212 amplicons were greater than 1000X. The FASTQ files generated by MiSeq Reporter (v2.6) of Illumina were further analyzed for variant calling and annotation using Strand NGS. Mutations identified in the tumor were assessed for actionability, response to therapy and impact on prognosis. Results: Somatic variants were detected in 66 % of cases with direct impact on therapy or prognosis. Among these, disruptive and non-disruptive mutations in TP53 were observed in 29 cases (58%) raising the possibility of targeting the mutant p53 as a new approach of treatment of TNBC. A follow up of few cases showed shorter PFS and poor outcome in resected TNBC treated with NACT indicating its robust prognostic value in NACT setting. Genetic aberrations was found in PI3K/AKT/ mTOR signaling pathway in substantial fraction out of which 12% had PIK3CA activating mutations, 4%, had PTEN deletions indicating a good response to mTOR inhibitors. It is interesting to note that aberration in this pathway was more prevalent in this TNBC subtype (61%) than in HR+/HER2+ve tumors (10.6%) of IDC histology. However, no correlation was found with stage and Ki67 index of the tumor. The other genes like AKT, KRAS, APC, EGFR, VHL and RB1 were also found to be mutated in 2% of cases. Majority of the variants identified indicated resistance to conventional therapy and suggested sensitivity to alternative targeted therapy, either approved or in clinical trials. Based on this study eligible patients have been enrolled in clinical trials and receiving mutation specific targeted therapy to monitor the response and outcome. GRm were detected in 24 cases (60%). Among all mutations detected, BRCA1/2 mutations were found in 52% (36% in BRCA1, 16 % in BRCA2) of cases. Out of 13 deleterious mutations in BRCA1/2 genes (9 in BRCA1 and 4 in BRCA2) only 9 were reported to be pathogenic (7 in BRCA1 and 2 in BRCA2) and rest were VUS. Functional assays are warranted to classify these variants and their role in cancer. The mutation frequency was found to be higher among high grade IDC is this subtype (53%, p. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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