12 results on '"Hagar Hussein"'
Search Results
2. Data from Interactive Classification of Whole-Slide Imaging Data for Cancer Researchers
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Lee A.D. Cooper, David A. Gutman, Hagar Hussein, Habiba Elfandy, Brian P. Pollack, Matt McCormick, Pooya Mobadersany, Mohamed Amgad, and Sanghoon Lee
- Abstract
Whole-slide histology images contain information that is valuable for clinical and basic science investigations of cancer but extracting quantitative measurements from these images is challenging for researchers who are not image analysis specialists. In this article, we describe HistomicsML2, a software tool for learn-by-example training of machine learning classifiers for histologic patterns in whole-slide images. This tool improves training efficiency and classifier performance by guiding users to the most informative training examples for labeling and can be used to develop classifiers for prospective application or as a rapid annotation tool that is adaptable to different cancer types. HistomicsML2 runs as a containerized server application that provides web-based user interfaces for classifier training, validation, exporting inference results, and collaborative review, and that can be deployed on GPU servers or cloud platforms. We demonstrate the utility of this tool by using it to classify tumor-infiltrating lymphocytes in breast carcinoma and cutaneous melanoma.Significance:An interactive machine learning tool for analyzing digital pathology images enables cancer researchers to apply this tool to measure histologic patterns for clinical and basic science studies.
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- 2023
3. Supplementary Tables from Interactive Classification of Whole-Slide Imaging Data for Cancer Researchers
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Lee A.D. Cooper, David A. Gutman, Hagar Hussein, Habiba Elfandy, Brian P. Pollack, Matt McCormick, Pooya Mobadersany, Mohamed Amgad, and Sanghoon Lee
- Abstract
Supplementary tables.
- Published
- 2023
4. Supplementary Data from Interactive Classification of Whole-Slide Imaging Data for Cancer Researchers
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Lee A.D. Cooper, David A. Gutman, Hagar Hussein, Habiba Elfandy, Brian P. Pollack, Matt McCormick, Pooya Mobadersany, Mohamed Amgad, and Sanghoon Lee
- Abstract
Supplementary figures and table legends.
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- 2023
5. Video 1 from Interactive Classification of Whole-Slide Imaging Data for Cancer Researchers
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Lee A.D. Cooper, David A. Gutman, Hagar Hussein, Habiba Elfandy, Brian P. Pollack, Matt McCormick, Pooya Mobadersany, Mohamed Amgad, and Sanghoon Lee
- Abstract
Software preview video.
- Published
- 2023
6. The effect of wearing face masks on voice and intelligibility of speech during the COVID-19 pandemic
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Aisha Fawzy Abdel-Hady, Hossam Mohamad El Dessouky, Hagar Hussein Saqr, and Heba Mahmoud Farag
- Subjects
Otorhinolaryngology ,Automotive Engineering - Abstract
Background The study aims at evaluating the effect of wearing face masks on voice and intelligibility of speech in Egyptian working individuals during the COVID-19 pandemic to identify if there are any adverse effects of wearing face masks in the working environment. Materials and methods A cross-section analytical study was conducted on 153 participants. Personal data and data about the nature of their workplaces were collected. The evaluation included a subjective assessment of voice and intelligibility of speech using a specifically designed questionnaire addressing self-perception of voice fatigue, speech unintelligibility, received auditory feedback and breathing difficulty, and objective voice assessment by Computerized Speech Lab, while objective speech unintelligibility assessment by the Arabic Speech Intelligibility Test. Results The study revealed poor workplace acoustics and increased their self-perception of voice fatigue, speech unintelligibility, auditory feedback, and breathing difficulty while wearing masks. Medical professionals showed increased self-perception of speech unintelligibility and the received auditory feedback. No significant difference was found in absolute jitter with and without a face mask. Increasing shimmer and mean fundamental frequency and decreasing noise to harmonic ratio and maximum phonation time were found. The study revealed decreased speech intelligibility especially with the N95 mask. Conclusion Wearing face masks negatively affects communication in the workplace, with poor room acoustics. It affects both speech intelligibility and voice subjectively and objectively. It caused increased self-perception of voice fatigue and changes in objective voice parameters.
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- 2023
7. Interactive Classification of Whole-Slide Imaging Data for Cancer Researchers
- Author
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Brian Pollack, Pooya Mobadersany, Hagar Hussein, Matt McCormick, Mohamed Amgad, David A. Gutman, Sanghoon Lee, Habiba Elfandy, and Lee Cooper
- Subjects
0301 basic medicine ,Cancer Research ,Biomedical Research ,Skin Neoplasms ,Computer science ,education ,Datasets as Topic ,Inference ,Breast Neoplasms ,Cloud computing ,Medical Oncology ,Machine learning ,computer.software_genre ,Sensitivity and Specificity ,Imaging data ,Article ,Machine Learning ,03 medical and health sciences ,Annotation ,Lymphocytes, Tumor-Infiltrating ,0302 clinical medicine ,Predictive Value of Tests ,Neoplasms ,Server ,Image Interpretation, Computer-Assisted ,Image Processing, Computer-Assisted ,Humans ,Melanoma ,business.industry ,Application server ,Reproducibility of Results ,Prognosis ,ComputingMethodologies_PATTERNRECOGNITION ,030104 developmental biology ,Oncology ,030220 oncology & carcinogenesis ,Female ,Artificial intelligence ,User interface ,business ,Classifier (UML) ,computer ,Algorithms ,Software - Abstract
Whole-slide histology images contain information that is valuable for clinical and basic science investigations of cancer but extracting quantitative measurements from these images is challenging for researchers who are not image analysis specialists. In this article, we describe HistomicsML2, a software tool for learn-by-example training of machine learning classifiers for histologic patterns in whole-slide images. This tool improves training efficiency and classifier performance by guiding users to the most informative training examples for labeling and can be used to develop classifiers for prospective application or as a rapid annotation tool that is adaptable to different cancer types. HistomicsML2 runs as a containerized server application that provides web-based user interfaces for classifier training, validation, exporting inference results, and collaborative review, and that can be deployed on GPU servers or cloud platforms. We demonstrate the utility of this tool by using it to classify tumor-infiltrating lymphocytes in breast carcinoma and cutaneous melanoma. Significance: An interactive machine learning tool for analyzing digital pathology images enables cancer researchers to apply this tool to measure histologic patterns for clinical and basic science studies.
- Published
- 2021
8. Artificial Intelligence in Kidney Transplantation: A Scoping Review
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Asma, Alamgir, Hagar, Hussein, Yasmin, Abdelaal, Alaa, Abd-Alrazaq, and Mowafa, Househ
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Technology ,Artificial Intelligence ,Humans ,Kidney Failure, Chronic ,Kidney Transplantation ,Data Management - Abstract
Artificial Intelligence (AI) technologies are increasingly being used to enhance kidney transplant outcomes. In this review, we explore the use of AI in kidney transplantation (KT) in the existing literature. Four databases were searched to identify a total of 33 eligible studies. AI technologies were used to help in diagnostic, predictive and medication management purposes for kidney transplant patients. AI is an emerging tool in KT, however, there is a research gap exploring the limitations associated with implementing AI technologies in the field. Research is also needed to recognize clinical educational needs and other barriers to promote adoption and standardization of care for KT patients amongst clinicians.
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- 2022
9. Artificial Intelligence in Kidney Transplantation: A Scoping Review
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Asma Alamgir, Hagar Hussein, Yasmin Abdelaal, Alaa Abd-Alrazaq, and Mowafa Househ
- Abstract
Artificial Intelligence (AI) technologies are increasingly being used to enhance kidney transplant outcomes. In this review, we explore the use of AI in kidney transplantation (KT) in the existing literature. Four databases were searched to identify a total of 33 eligible studies. AI technologies were used to help in diagnostic, predictive and medication management purposes for kidney transplant patients. AI is an emerging tool in KT, however, there is a research gap exploring the limitations associated with implementing AI technologies in the field. Research is also needed to recognize clinical educational needs and other barriers to promote adoption and standardization of care for KT patients amongst clinicians.
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- 2022
10. NuCLS: A scalable crowdsourcing approach and dataset for nucleus classification and segmentation in breast cancer
- Author
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Mohamed Amgad, Lamees A Atteya, Hagar Hussein, Kareem Hosny Mohammed, Ehab Hafiz, Maha A T Elsebaie, Ahmed M Alhusseiny, Mohamed Atef AlMoslemany, Abdelmagid M Elmatboly, Philip A Pappalardo, Rokia Adel Sakr, Pooya Mobadersany, Ahmad Rachid, Anas M Saad, Ahmad M Alkashash, Inas A Ruhban, Anas Alrefai, Nada M Elgazar, Ali Abdulkarim, Abo-Alela Farag, Amira Etman, Ahmed G Elsaeed, Yahya Alagha, Yomna A Amer, Ahmed M Raslan, Menatalla K Nadim, Mai A T Elsebaie, Ahmed Ayad, Liza E Hanna, Ahmed Gadallah, Mohamed Elkady, Bradley Drumheller, David Jaye, David Manthey, David A Gutman, Habiba Elfandy, and Lee A D Cooper
- Subjects
Cell Nucleus ,Machine Learning ,Crowdsourcing ,Humans ,Breast Neoplasms ,Female ,Health Informatics ,Computer Science Applications - Abstract
Background Deep learning enables accurate high-resolution mapping of cells and tissue structures that can serve as the foundation of interpretable machine-learning models for computational pathology. However, generating adequate labels for these structures is a critical barrier, given the time and effort required from pathologists. Results This article describes a novel collaborative framework for engaging crowds of medical students and pathologists to produce quality labels for cell nuclei. We used this approach to produce the NuCLS dataset, containing >220,000 annotations of cell nuclei in breast cancers. This builds on prior work labeling tissue regions to produce an integrated tissue region- and cell-level annotation dataset for training that is the largest such resource for multi-scale analysis of breast cancer histology. This article presents data and analysis results for single and multi-rater annotations from both non-experts and pathologists. We present a novel workflow that uses algorithmic suggestions to collect accurate segmentation data without the need for laborious manual tracing of nuclei. Our results indicate that even noisy algorithmic suggestions do not adversely affect pathologist accuracy and can help non-experts improve annotation quality. We also present a new approach for inferring truth from multiple raters and show that non-experts can produce accurate annotations for visually distinctive classes. Conclusions This study is the most extensive systematic exploration of the large-scale use of wisdom-of-the-crowd approaches to generate data for computational pathology applications.
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- 2022
11. Explainable nucleus classification using Decision Tree Approximation of Learned Embeddings
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Pooya Mobadersany, Ehab O A Hafiz, Maha A. T. Elsebaie, Lamees A. Atteya, David E. Manthey, Hagar Hussein, David A. Gutman, Mohamed Amgad, Lee Cooper, Kareem Hosny Mohammed, and Habiba Elfandy
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Statistics and Probability ,Original Paper ,Pixel ,Computer science ,business.industry ,Deep learning ,Decision tree ,Machine learning ,computer.software_genre ,Biochemistry ,Computer Science Applications ,Computational Mathematics ,Annotation ,Computational Theory and Mathematics ,Bounding overwatch ,Scalability ,Code (cryptography) ,Segmentation ,Artificial intelligence ,business ,Molecular Biology ,computer - Abstract
Motivation Nucleus detection, segmentation and classification are fundamental to high-resolution mapping of the tumor microenvironment using whole-slide histopathology images. The growing interest in leveraging the power of deep learning to achieve state-of-the-art performance often comes at the cost of explainability, yet there is general consensus that explainability is critical for trustworthiness and widespread clinical adoption. Unfortunately, current explainability paradigms that rely on pixel saliency heatmaps or superpixel importance scores are not well-suited for nucleus classification. Techniques like Grad-CAM or LIME provide explanations that are indirect, qualitative and/or nonintuitive to pathologists. Results In this article, we present techniques to enable scalable nuclear detection, segmentation and explainable classification. First, we show how modifications to the widely used Mask R-CNN architecture, including decoupling the detection and classification tasks, improves accuracy and enables learning from hybrid annotation datasets like NuCLS, which contain mixtures of bounding boxes and segmentation boundaries. Second, we introduce an explainability method called Decision Tree Approximation of Learned Embeddings (DTALE), which provides explanations for classification model behavior globally, as well as for individual nuclear predictions. DTALE explanations are simple, quantitative, and can flexibly use any measurable morphological features that make sense to practicing pathologists, without sacrificing model accuracy. Together, these techniques present a step toward realizing the promise of computational pathology in computer-aided diagnosis and discovery of morphologic biomarkers. Availability and implementation Relevant code can be found at github.com/CancerDataScience/NuCLS Supplementary information Supplementary data are available at Bioinformatics online.
- Published
- 2021
12. Structured crowdsourcing enables convolutional segmentation of histology images
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Mustafijur Rahman, Hazem S. E. Salem, Nada M. Elgazar, Anas M. Saad, Rokia Adel Sakr, Abo-Alela F. Younes, Mohamed Amgad, Mariam M. Khalaf, Inas A. Ruhban, Ahmad M. Elkashash, Ali Abdulkarim, Habiba Elfandy, Yahya Alagha, David E. Manthey, Ahmed F. Ismail, Mohamed Hosny Osman, David A. Gutman, Hagar Hussein, Duaa M. Younes, Ahmed M. Alhusseiny, Ahmed Gadallah, Lamees A. Atteya, Mai A. T. Elsebaie, Joumana Ahmed, Jonathan D. Beezley, Deepak Roy Chittajallu, Basma M. Zaki, Lee Cooper, Lamia S. Abo Elnasr, Maha A. T. Elsebaie, and Salma Y. Fala
- Subjects
Statistics and Probability ,Computer science ,Breast Neoplasms ,Crowdsourcing ,computer.software_genre ,Biochemistry ,03 medical and health sciences ,Annotation ,0302 clinical medicine ,Breast cancer ,medicine ,Humans ,Segmentation ,Molecular Biology ,030304 developmental biology ,0303 health sciences ,Contextual image classification ,business.industry ,Histological Techniques ,medicine.disease ,Original Papers ,Computer Science Applications ,Computational Mathematics ,ComputingMethodologies_PATTERNRECOGNITION ,Computational Theory and Mathematics ,Annotated Tissue ,030220 oncology & carcinogenesis ,Artificial intelligence ,business ,Bioimage Informatics ,computer ,Natural language processing ,Algorithms - Abstract
Motivation While deep-learning algorithms have demonstrated outstanding performance in semantic image segmentation tasks, large annotation datasets are needed to create accurate models. Annotation of histology images is challenging due to the effort and experience required to carefully delineate tissue structures, and difficulties related to sharing and markup of whole-slide images. Results We recruited 25 participants, ranging in experience from senior pathologists to medical students, to delineate tissue regions in 151 breast cancer slides using the Digital Slide Archive. Inter-participant discordance was systematically evaluated, revealing low discordance for tumor and stroma, and higher discordance for more subjectively defined or rare tissue classes. Feedback provided by senior participants enabled the generation and curation of 20 000+ annotated tissue regions. Fully convolutional networks trained using these annotations were highly accurate (mean AUC=0.945), and the scale of annotation data provided notable improvements in image classification accuracy. Availability and Implementation Dataset is freely available at: https://goo.gl/cNM4EL. Supplementary information Supplementary data are available at Bioinformatics online.
- Published
- 2019
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