2,058 results on '"MUKHOPADHYAY, ANIRBAN"'
Search Results
2. GAUDA: Generative Adaptive Uncertainty-guided Diffusion-based Augmentation for Surgical Segmentation
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Frisch, Yannik, Bornberg, Christina, Fuchs, Moritz, and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
Augmentation by generative modelling yields a promising alternative to the accumulation of surgical data, where ethical, organisational and regulatory aspects must be considered. Yet, the joint synthesis of (image, mask) pairs for segmentation, a major application in surgery, is rather unexplored. We propose to learn semantically comprehensive yet compact latent representations of the (image, mask) space, which we jointly model with a Latent Diffusion Model. We show that our approach can effectively synthesise unseen high-quality paired segmentation data of remarkable semantic coherence. Generative augmentation is typically applied pre-training by synthesising a fixed number of additional training samples to improve downstream task models. To enhance this approach, we further propose Generative Adaptive Uncertainty-guided Diffusion-based Augmentation (GAUDA), leveraging the epistemic uncertainty of a Bayesian downstream model for targeted online synthesis. We condition the generative model on classes with high estimated uncertainty during training to produce additional unseen samples for these classes. By adaptively utilising the generative model online, we can minimise the number of additional training samples and centre them around the currently most uncertain parts of the data distribution. GAUDA effectively improves downstream segmentation results over comparable methods by an average absolute IoU of 1.6% on CaDISv2 and 1.5% on CholecSeg8k, two prominent surgical datasets for semantic segmentation.
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- 2025
3. Federated-Continual Dynamic Segmentation of Histopathology guided by Barlow Continuity
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Babendererde, Niklas, Zhu, Haozhe, Fuchs, Moritz, Stieber, Jonathan, and Mukhopadhyay, Anirban
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence - Abstract
Federated- and Continual Learning have been established as approaches to enable privacy-aware learning on continuously changing data, as required for deploying AI systems in histopathology images. However, data shifts can occur in a dynamic world, spatially between institutions and temporally, due to changing data over time. This leads to two issues: Client Drift, where the central model degrades from aggregating data from clients trained on shifted data, and Catastrophic Forgetting, from temporal shifts such as changes in patient populations. Both tend to degrade the model's performance of previously seen data or spatially distributed training. Despite both problems arising from the same underlying problem of data shifts, existing research addresses them only individually. In this work, we introduce a method that can jointly alleviate Client Drift and Catastrophic Forgetting by using our proposed Dynamic Barlow Continuity that evaluates client updates on a public reference dataset and uses this to guide the training process to a spatially and temporally shift-invariant model. We evaluate our approach on the histopathology datasets BCSS and Semicol and prove our method to be highly effective by jointly improving the dice score as much as from 15.8% to 71.6% in Client Drift and from 42.5% to 62.8% in Catastrophic Forgetting. This enables Dynamic Learning by establishing spatio-temporal shift-invariance.
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- 2025
4. MedSegDiffNCA: Diffusion Models With Neural Cellular Automata for Skin Lesion Segmentation
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Mittal, Avni, Kalkhof, John, Mukhopadhyay, Anirban, and Bhavsar, Arnav
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning ,Electrical Engineering and Systems Science - Image and Video Processing - Abstract
Denoising Diffusion Models (DDMs) are widely used for high-quality image generation and medical image segmentation but often rely on Unet-based architectures, leading to high computational overhead, especially with high-resolution images. This work proposes three NCA-based improvements for diffusion-based medical image segmentation. First, Multi-MedSegDiffNCA uses a multilevel NCA framework to refine rough noise estimates generated by lower level NCA models. Second, CBAM-MedSegDiffNCA incorporates channel and spatial attention for improved segmentation. Third, MultiCBAM-MedSegDiffNCA combines these methods with a new RGB channel loss for semantic guidance. Evaluations on Lesion segmentation show that MultiCBAM-MedSegDiffNCA matches Unet-based model performance with dice score of 87.84% while using 60-110 times fewer parameters, offering a more efficient solution for low resource medical settings., Comment: 5 pages, 3 figures
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- 2025
5. Nonlinear dynamics in spin wave active ring oscillator (SWARO) driven near a dipole gap
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Mukhopadhyay, Anirban, Syvorotka, Ihor I., and Prabhakar, Anil
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Physics - Applied Physics - Abstract
We investigate the nonlinear dynamics of spin wave active ring oscillators (SWAROs) injected with GHz drive signal. The injected signal frequency was swept over a 5 MHz wide frequency range across a magnetostatic surface spin wave (MSSW) dipole gap, with the drive power varying from -10 to 10 dBm. We measured the output power spectra from the SWARO at different gains for each drive power and frequency combination. Near the drive frequency, we observe the formation of sidebands, which are the products of the nonlinear scattering processes. Furthermore, at higher drive amplitudes, the spin wave nonlinearity in the ring oscillator is suppressed, and the SWARO spectrum is pulled toward the drive frequency., Comment: 13 pages, 11 figures
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- 2025
6. Regulating radiology AI medical devices that evolve in their lifecycle
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González, Camila, Fuchs, Moritz, Santos, Daniel Pinto dos, Matthies, Philipp, Trenz, Manuel, Grüning, Maximilian, Chaudhari, Akshay, Larson, David B., Othman, Ahmed, Kim, Moon, Nensa, Felix, and Mukhopadhyay, Anirban
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Computer Science - Computers and Society - Abstract
Over time, the distribution of medical image data drifts due to factors such as shifts in patient demographics, acquisition devices, and disease manifestations. While human radiologists can adjust their expertise to accommodate such variations, deep learning models cannot. In fact, such models are highly susceptible to even slight variations in image characteristics. Consequently, manufacturers must conduct regular updates to ensure that they remain safe and effective. Performing such updates in the United States and European Union required, until recently, obtaining re-approval. Given the time and financial burdens associated with these processes, updates were infrequent, and obsolete systems remained in operation for too long. During 2024, several regulatory developments promised to streamline the safe rollout of model updates: The European Artificial Intelligence Act came into effect last August, and the Food and Drug Administration (FDA) issued final marketing submission recommendations for a Predetermined Change Control Plan (PCCP) in December. We provide an overview of these developments and outline the key building blocks necessary for successfully deploying dynamic systems. At the heart of these regulations - and as prerequisites for manufacturers to conduct model updates without re-approval - are clear descriptions of data collection and re-training processes, coupled with robust real-world quality monitoring mechanisms.
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- 2024
7. Federated Voxel Scene Graph for Intracranial Hemorrhage
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Sanner, Antoine P., Stieber, Jonathan, Grauhan, Nils F., Kim, Suam, Brockmann, Marc A., Othman, Ahmed E., and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Distributed, Parallel, and Cluster Computing ,Electrical Engineering and Systems Science - Image and Video Processing ,68T07 ,I.2.10 - Abstract
Intracranial Hemorrhage is a potentially lethal condition whose manifestation is vastly diverse and shifts across clinical centers worldwide. Deep-learning-based solutions are starting to model complex relations between brain structures, but still struggle to generalize. While gathering more diverse data is the most natural approach, privacy regulations often limit the sharing of medical data. We propose the first application of Federated Scene Graph Generation. We show that our models can leverage the increased training data diversity. For Scene Graph Generation, they can recall up to 20% more clinically relevant relations across datasets compared to models trained on a single centralized dataset. Learning structured data representation in a federated setting can open the way to the development of new methods that can leverage this finer information to regularize across clients more effectively.
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- 2024
8. NCAdapt: Dynamic adaptation with domain-specific Neural Cellular Automata for continual hippocampus segmentation
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Ranem, Amin, Kalkhof, John, and Mukhopadhyay, Anirban
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Continual learning (CL) in medical imaging presents a unique challenge, requiring models to adapt to new domains while retaining previously acquired knowledge. We introduce NCAdapt, a Neural Cellular Automata (NCA) based method designed to address this challenge. NCAdapt features a domain-specific multi-head structure, integrating adaptable convolutional layers into the NCA backbone for each new domain encountered. After initial training, the NCA backbone is frozen, and only the newly added adaptable convolutional layers, consisting of 384 parameters, are trained along with domain-specific NCA convolutions. We evaluate NCAdapt on hippocampus segmentation tasks, benchmarking its performance against Lifelong nnU-Net and U-Net models with state-of-the-art (SOTA) CL methods. Our lightweight approach achieves SOTA performance, underscoring its effectiveness in addressing CL challenges in medical imaging. Upon acceptance, we will make our code base publicly accessible to support reproducibility and foster further advancements in medical CL.
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- 2024
9. NCA-Morph: Medical Image Registration with Neural Cellular Automata
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Ranem, Amin, Kalkhof, John, and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Medical image registration is a critical process that aligns various patient scans, facilitating tasks like diagnosis, surgical planning, and tracking. Traditional optimization based methods are slow, prompting the use of Deep Learning (DL) techniques, such as VoxelMorph and Transformer-based strategies, for faster results. However, these DL methods often impose significant resource demands. In response to these challenges, we present NCA-Morph, an innovative approach that seamlessly blends DL with a bio-inspired communication and networking approach, enabled by Neural Cellular Automata (NCAs). NCA-Morph not only harnesses the power of DL for efficient image registration but also builds a network of local communications between cells and respective voxels over time, mimicking the interaction observed in living systems. In our extensive experiments, we subject NCA-Morph to evaluations across three distinct 3D registration tasks, encompassing Brain, Prostate and Hippocampus images from both healthy and diseased patients. The results showcase NCA-Morph's ability to achieve state-of-the-art performance. Notably, NCA-Morph distinguishes itself as a lightweight architecture with significantly fewer parameters; 60% and 99.7% less than VoxelMorph and TransMorph. This characteristic positions NCA-Morph as an ideal solution for resource-constrained medical applications, such as primary care settings and operating rooms.
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- 2024
10. OSINT Clinic: Co-designing AI-Augmented Collaborative OSINT Investigations for Vulnerability Assessment
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Mukhopadhyay, Anirban and Luther, Kurt
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Computer Science - Human-Computer Interaction - Abstract
Small businesses need vulnerability assessments to identify and mitigate cyber risks. Cybersecurity clinics provide a solution by offering students hands-on experience while delivering free vulnerability assessments to local organizations. To scale this model, we propose an Open Source Intelligence (OSINT) clinic where students conduct assessments using only publicly available data. We enhance the quality of investigations in the OSINT clinic by addressing the technical and collaborative challenges. Over the duration of the 2023-24 academic year, we conducted a three-phase co-design study with six students. Our study identified key challenges in the OSINT investigations and explored how generative AI could address these performance gaps. We developed design ideas for effective AI integration based on the use of AI probes and collaboration platform features. A pilot with three small businesses highlighted both the practical benefits of AI in streamlining investigations, and limitations, including privacy concerns and difficulty in monitoring progress.
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- 2024
11. Statistics of Moduli Spaces of vector bundles over hyperelliptic curves
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Dey, Arijit, Dey, Sampa, and Mukhopadhyay, Anirban
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Mathematics - Algebraic Geometry ,Mathematics - Number Theory ,Primary 14D20, Secondary 14G17, 60F05 - Abstract
We give an asymptotic formula for the number of $\mathbb{F}_{q}$-rational points over a fixed determinant moduli space of stable vector bundles of rank $r$ and degree $d$ over a smooth, projective curve $X$ of genus $g \geq 2$ defined over $\mathbb{F}_{q}.$ Further, we study the distribution of the error term when $X$ varies over a family of hyperelliptic curves. We then extend the results to the Seshadri desingularisation of the moduli space of semi-stable vector bundles of rank $2$ with trivial determinant, and also to the moduli space of rank $2$ stable Higgs bundles., Comment: This is a corrected and vastly extended version of our previous submission "Statistics of Moduli Spaces of vector bundles II". In particular, the results on the Higgs bundles are new additions. arXiv admin note: substantial text overlap with arXiv:2309.15085
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- 2024
12. Detection of Intracranial Hemorrhage for Trauma Patients
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Sanner, Antoine P., Grauhan, Nils F., Brockmann, Marc A., Othman, Ahmed E., and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition ,68T07 ,I.2.10 - Abstract
Whole-body CT is used for multi-trauma patients in the search of any and all injuries. Since an initial assessment needs to be rapid and the search for lesions is done for the whole body, very little time can be allocated for the inspection of a specific anatomy. In particular, intracranial hemorrhages are still missed, especially by clinical students. In this work, we present a Deep Learning approach for highlighting such lesions to improve the diagnostic accuracy. While most works on intracranial hemorrhages perform segmentation, detection only requires bounding boxes for the localization of the bleeding. In this paper, we propose a novel Voxel-Complete IoU (VC-IoU) loss that encourages the network to learn the 3D aspect ratios of bounding boxes and leads to more precise detections. We extensively experiment on brain bleeding detection using a publicly available dataset, and validate it on a private cohort, where we achieve 0.877 AR30, 0.728 AP30, and 0.653 AR30, 0.514 AP30 respectively. These results constitute a relative +5% improvement in Average Recall for both datasets compared to other loss functions. Finally, as there is little data currently publicly available for 3D object detection and as annotation resources are limited in the clinical setting, we evaluate the cost of different annotation methods, as well as the impact of imprecise bounding boxes in the training data on the detection performance.
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- 2024
13. Voxel Scene Graph for Intracranial Hemorrhage
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Sanner, Antoine P., Grauhan, Nils F., Brockmann, Marc A., Othman, Ahmed E., and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Artificial Intelligence ,68T07 ,I.2.10 - Abstract
Patients with Intracranial Hemorrhage (ICH) face a potentially life-threatening condition, and patient-centered individualized treatment remains challenging due to possible clinical complications. Deep-Learning-based methods can efficiently analyze the routinely acquired head CTs to support the clinical decision-making. The majority of early work focuses on the detection and segmentation of ICH, but do not model the complex relations between ICH and adjacent brain structures. In this work, we design a tailored object detection method for ICH, which we unite with segmentation-grounded Scene Graph Generation (SGG) methods to learn a holistic representation of the clinical cerebral scene. To the best of our knowledge, this is the first application of SGG for 3D voxel images. We evaluate our method on two head-CT datasets and demonstrate that our model can recall up to 74% of clinically relevant relations. This work lays the foundation towards SGG for 3D voxel data. The generated Scene Graphs can already provide insights for the clinician, but are also valuable for all downstream tasks as a compact and interpretable representation.
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- 2024
14. Distribution-Aware Replay for Continual MRI Segmentation
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Lemke, Nick, González, Camila, Mukhopadhyay, Anirban, and Mundt, Martin
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Medical image distributions shift constantly due to changes in patient population and discrepancies in image acquisition. These distribution changes result in performance deterioration; deterioration that continual learning aims to alleviate. However, only adaptation with data rehearsal strategies yields practically desirable performance for medical image segmentation. Such rehearsal violates patient privacy and, as most continual learning approaches, overlooks unexpected changes from out-of-distribution instances. To transcend both of these challenges, we introduce a distribution-aware replay strategy that mitigates forgetting through auto-encoding of features, while simultaneously leveraging the learned distribution of features to detect model failure. We provide empirical corroboration on hippocampus and prostate MRI segmentation.
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- 2024
15. Unsupervised Training of Neural Cellular Automata on Edge Devices
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Kalkhof, John, Ranem, Amin, and Mukhopadhyay, Anirban
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Computer Science - Machine Learning - Abstract
The disparity in access to machine learning tools for medical imaging across different regions significantly limits the potential for universal healthcare innovation, particularly in remote areas. Our research addresses this issue by implementing Neural Cellular Automata (NCA) training directly on smartphones for accessible X-ray lung segmentation. We confirm the practicality and feasibility of deploying and training these advanced models on five Android devices, improving medical diagnostics accessibility and bridging the tech divide to extend machine learning benefits in medical imaging to low- and middle-income countries (LMICs). We further enhance this approach with an unsupervised adaptation method using the novel Variance-Weighted Segmentation Loss (VWSL), which efficiently learns from unlabeled data by minimizing the variance from multiple NCA predictions. This strategy notably improves model adaptability and performance across diverse medical imaging contexts without the need for extensive computational resources or labeled datasets, effectively lowering the participation threshold. Our methodology, tested on three multisite X-ray datasets -- Padchest, ChestX-ray8, and MIMIC-III -- demonstrates improvements in segmentation Dice accuracy by 0.7 to 2.8%, compared to the classic Med-NCA. Additionally, in extreme cases where no digital copy is available and images must be captured by a phone from an X-ray lightbox or monitor, VWSL enhances Dice accuracy by 5-20%, demonstrating the method's robustness even with suboptimal image sources.
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- 2024
16. Using Artificial Intelligence and Deep Learning Algorithms to Extract Land Features from High-Resolution Pléiades Data
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Mukhopadhyay, Anirban, Pal, Indrajit, Pramanick, Niloy, Acharyya, Rituparna, Hati, Jyoti Prakash, Mukherjee, Sudipta, Bharadwaz, Ganni S. V. S. Aditya, and Mitra, Debasish
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- 2025
- Full Text
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17. High-resolution Pléiades data: an in-depth analysis of applications and future prospects
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Mukhopadhyay, Anirban, Pal, Indrajit, Hati, Jyoti Prakash, Pramanick, Niloy, Acharyya, Rituparna, Kumar, Anil, Jana, Sujoy Kumar, and Mitra, Debasish
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- 2024
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18. Detection of Intracranial Hemorrhage for Trauma Patients
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Sanner, Antoine P., Grauhan, Nils F., Meyer, Merle, Leukert, Laura, Brockmann, Marc A., Othman, Ahmed E., Mukhopadhyay, Anirban, Goos, Gerhard, Series Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Antonacopoulos, Apostolos, editor, Chaudhuri, Subhasis, editor, Chellappa, Rama, editor, Liu, Cheng-Lin, editor, Bhattacharya, Saumik, editor, and Pal, Umapada, editor
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- 2025
- Full Text
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19. Localized Data Representation with NCA-Based Autoencoders
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Ihm, Niklas, Kalkhof, John, Mukhopadhyay, Anirban, Goos, Gerhard, Series Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Antonacopoulos, Apostolos, editor, Chaudhuri, Subhasis, editor, Chellappa, Rama, editor, Liu, Cheng-Lin, editor, Bhattacharya, Saumik, editor, and Pal, Umapada, editor
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- 2025
- Full Text
- View/download PDF
20. Distribution-Aware Replay for Continual MRI Segmentation
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Lemke, Nick, González, Camila, Mukhopadhyay, Anirban, Mundt, Martin, Goos, Gerhard, Series Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Proietto Salanitri, Federica, editor, Viriri, Serestina, editor, Bağcı, Ulaş, editor, Tiwari, Pallavi, editor, Gong, Boqing, editor, Spampinato, Concetto, editor, Palazzo, Simone, editor, Bellitto, Giovanni, editor, Zlatintsi, Nancy, editor, Filntisis, Panagiotis, editor, Lee, Cecilia S., editor, and Lee, Aaron Y., editor
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- 2025
- Full Text
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21. Mainstreaming Nature-Based Solutions for Climate Adaptation in Southeast Asia: A Systematic Review
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Tun, Kyaw Zabu, Pramanik, Malay, Chakrabortty, Rabin, Chowdhury, Koushik, Halder, Bijay, Pande, Chaitanya Baliram, Mukhopadhyay, Anirban, and Zhran, Mohamed
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- 2024
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22. Frequency-Time Diffusion with Neural Cellular Automata
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Kalkhof, John, Kühn, Arlene, Frisch, Yannik, and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Despite considerable success, large Denoising Diffusion Models (DDMs) with UNet backbone pose practical challenges, particularly on limited hardware and in processing gigapixel images. To address these limitations, we introduce two Neural Cellular Automata (NCA)-based DDMs: Diff-NCA and FourierDiff-NCA. Capitalizing on the local communication capabilities of NCA, Diff-NCA significantly reduces the parameter counts of NCA-based DDMs. Integrating Fourier-based diffusion enables global communication early in the diffusion process. This feature is particularly valuable in synthesizing complex images with important global features, such as the CelebA dataset. We demonstrate that even a 331k parameter Diff-NCA can generate 512x512 pathology slices, while FourierDiff-NCA (1.1m parameters) reaches a three times lower FID score of 43.86, compared to the four times bigger UNet (3.94m parameters) with a score of 128.2. Additionally, FourierDiff-NCA can perform diverse tasks such as super-resolution, out-of-distribution image synthesis, and inpainting without explicit training.
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- 2024
23. OSINT Research Studios: A Flexible Crowdsourcing Framework to Scale Up Open Source Intelligence Investigations
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Mukhopadhyay, Anirban, Venkatagiri, Sukrit, and Luther, Kurt
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Computer Science - Human-Computer Interaction - Abstract
Open Source Intelligence (OSINT) investigations, which rely entirely on publicly available data such as social media, play an increasingly important role in solving crimes and holding governments accountable. The growing volume of data and complex nature of tasks, however, means there is a pressing need to scale and speed up OSINT investigations. Expert-led crowdsourcing approaches show promise but tend to either focus on narrow tasks or domains or require resource-intense, long-term relationships between expert investigators and crowds. We address this gap by providing a flexible framework that enables investigators across domains to enlist crowdsourced support for the discovery and verification of OSINT. We use a design-based research (DBR) approach to develop OSINT Research Studios (ORS), a sociotechnical system in which novice crowds are trained to support professional investigators with complex OSINT investigations. Through our qualitative evaluation, we found that ORS facilitates ethical and effective OSINT investigations across multiple domains. We also discuss broader implications of expert-crowd collaboration and opportunities for future work., Comment: To be published in CSCW 2024
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- 2024
24. Granular Box Regression Using Simulated Annealing and Genetic Algorithm: A Comparative Study
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Chakraborty, Mrittika, Maulik, Ujjwal, and Mukhopadhyay, Anirban
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- 2024
- Full Text
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25. Deciphering the landscape of lncRNA-driven ceRNA network in schizophrenia etiology
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Mukhopadhyay, Anirban, Singh, Prithvi, Dohare, Ravins, and Thelma, B. K.
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- 2024
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26. Continual atlas-based segmentation of prostate MRI
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Ranem, Amin, González, Camila, Santos, Daniel Pinto dos, Bucher, Andreas M., Othman, Ahmed E., and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Continual learning (CL) methods designed for natural image classification often fail to reach basic quality standards for medical image segmentation. Atlas-based segmentation, a well-established approach in medical imaging, incorporates domain knowledge on the region of interest, leading to semantically coherent predictions. This is especially promising for CL, as it allows us to leverage structural information and strike an optimal balance between model rigidity and plasticity over time. When combined with privacy-preserving prototypes, this process offers the advantages of rehearsal-based CL without compromising patient privacy. We propose Atlas Replay, an atlas-based segmentation approach that uses prototypes to generate high-quality segmentation masks through image registration that maintain consistency even as the training distribution changes. We explore how our proposed method performs compared to state-of-the-art CL methods in terms of knowledge transferability across seven publicly available prostate segmentation datasets. Prostate segmentation plays a vital role in diagnosing prostate cancer, however, it poses challenges due to substantial anatomical variations, benign structural differences in older age groups, and fluctuating acquisition parameters. Our results show that Atlas Replay is both robust and generalizes well to yet-unseen domains while being able to maintain knowledge, unlike end-to-end segmentation methods. Our code base is available under https://github.com/MECLabTUDA/Atlas-Replay.
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- 2023
27. From Pointwise to Powerhouse: Initialising Neural Networks with Generative Models
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Harder, Christian, Fuchs, Moritz, Tolkach, Yuri, and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning ,J.3 ,I.5.1 ,I.5.4 - Abstract
Traditional initialisation methods, e.g. He and Xavier, have been effective in avoiding the problem of vanishing or exploding gradients in neural networks. However, they only use simple pointwise distributions, which model one-dimensional variables. Moreover, they ignore most information about the architecture and disregard past training experiences. These limitations can be overcome by employing generative models for initialisation. In this paper, we introduce two groups of new initialisation methods. First, we locally initialise weight groups by employing variational autoencoders. Secondly, we globally initialise full weight sets by employing graph hypernetworks. We thoroughly evaluate the impact of the employed generative models on state-of-the-art neural networks in terms of accuracy, convergence speed and ensembling. Our results show that global initialisations result in higher accuracy and faster initial convergence speed. However, the implementation through graph hypernetworks leads to diminished ensemble performance on out of distribution data. To counteract, we propose a modification called noise graph hypernetwork, which encourages diversity in the produced ensemble members. Furthermore, our approach might be able to transfer learned knowledge to different image distributions. Our work provides insights into the potential, the trade-offs and possible modifications of these new initialisation methods.
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- 2023
28. Poissonian pair correlation for higher dimensional real sequences
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Bera, Tanmoy, Das, Mithun Kumar, and Mukhopadhyay, Anirban
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Mathematics - Number Theory ,11K06, 11J83, 11M06, 11J25, 11J71, 42B05, 11L07 - Abstract
In this article, we examine the Poissonian pair correlation (PPC) statistic for higher-dimensional real sequences. Specifically, we demonstrate that for $d\geq 3$, almost all $(\alpha_1,\ldots,\alpha_d) \in \mathbb{R}^d$, the sequence $\big(\{x_n\alpha_1\},\dots,\{x_n\alpha_d\}\big)$ in $[0,1)^d$ has PPC conditionally on the additive energy bound of $(x_n).$ This bound is more relaxed compared to the additive energy bound for one dimension as discussed in [1]. More generally, we derive the PPC for $\big(\{x_n^{(1)}\alpha_1\},\dots,\{x_n^{(d)}\alpha_d\}\big) \in [0,1)^d$ for almost all $(\alpha_1,\ldots,\alpha_d) \in \mathbb{R}^d.$ As a consequence we establish the metric PPC for $(n^{\theta_1},\ldots,n^{\theta_d})$ provided that all of the $\theta_i$'s are greater than two.
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- 2023
29. Exploring SAM Ablations for Enhancing Medical Segmentation in Radiology and Pathology
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Ranem, Amin, Babendererde, Niklas, Fuchs, Moritz, and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
Medical imaging plays a critical role in the diagnosis and treatment planning of various medical conditions, with radiology and pathology heavily reliant on precise image segmentation. The Segment Anything Model (SAM) has emerged as a promising framework for addressing segmentation challenges across different domains. In this white paper, we delve into SAM, breaking down its fundamental components and uncovering the intricate interactions between them. We also explore the fine-tuning of SAM and assess its profound impact on the accuracy and reliability of segmentation results, focusing on applications in radiology (specifically, brain tumor segmentation) and pathology (specifically, breast cancer segmentation). Through a series of carefully designed experiments, we analyze SAM's potential application in the field of medical imaging. We aim to bridge the gap between advanced segmentation techniques and the demanding requirements of healthcare, shedding light on SAM's transformative capabilities.
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- 2023
30. Statistics of Moduli Space of vector bundles II
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Dey, Arijit, Dey, Sampa, and Mukhopadhyay, Anirban
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Mathematics - Algebraic Geometry ,Mathematics - Number Theory ,14D20, 11M38 - Abstract
Let $X$ be a smooth irreducible projective curve of genus $g \geq 2$ over a finite field $\F_{q}$ of characteristic $p$ with $q$ elements such that the function field $\F_{q}(X)$ is a geometric Galois extension of the rational function field of degree $N.$ Consider $gcd(n,d)=1$, let $M_{L}(n,d)$ be the moduli space of rank $n$ stable vector bundles over $X$ with fixed determinant isomorphic to a $\mathbb F_q$-rational line bundle $L$. Suppose $N_q (M_L(n,d))$ denotes the cardinality of the set of $\F_{q}$-rational points of $M_{L}(n,d)$. We give an asymptotic bound of $\log(N_{q}(M_{L}(n,d)) - (n^2-1)(g-1)\log{q})$ for large genus $g,$ depending on $N$. Further, considering this logarithmic difference as a random variable, we prove a central limit theorem over a large family of hyperelliptic curves with uniform probability measure. Further, over the same family of hyperelliptic curves, we study the distribution of $\F_{q}$-rational points over the moduli space of rank $2$ stable vector bundles with trivial determinant $M^{s}_{\mathcal{O}_{H}}(2,0)$ and it's Seshadri desingularisation ${\widetilde{N}}$ by choosing an appropriate random variable in each case. We also see that the corresponding random variables having standard Gaussian distribution as $g$ and $q$ tends to infinity., Comment: 28 pages
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- 2023
31. M3D-NCA: Robust 3D Segmentation with Built-in Quality Control
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Kalkhof, John and Mukhopadhyay, Anirban
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
Medical image segmentation relies heavily on large-scale deep learning models, such as UNet-based architectures. However, the real-world utility of such models is limited by their high computational requirements, which makes them impractical for resource-constrained environments such as primary care facilities and conflict zones. Furthermore, shifts in the imaging domain can render these models ineffective and even compromise patient safety if such errors go undetected. To address these challenges, we propose M3D-NCA, a novel methodology that leverages Neural Cellular Automata (NCA) segmentation for 3D medical images using n-level patchification. Moreover, we exploit the variance in M3D-NCA to develop a novel quality metric which can automatically detect errors in the segmentation process of NCAs. M3D-NCA outperforms the two magnitudes larger UNet models in hippocampus and prostate segmentation by 2% Dice and can be run on a Raspberry Pi 4 Model B (2GB RAM). This highlights the potential of M3D-NCA as an effective and efficient alternative for medical image segmentation in resource-constrained environments.
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- 2023
32. Jointly Exploring Client Drift and Catastrophic Forgetting in Dynamic Learning
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Babendererde, Niklas, Fuchs, Moritz, Gonzalez, Camila, Tolkach, Yuri, and Mukhopadhyay, Anirban
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence - Abstract
Federated and Continual Learning have emerged as potential paradigms for the robust and privacy-aware use of Deep Learning in dynamic environments. However, Client Drift and Catastrophic Forgetting are fundamental obstacles to guaranteeing consistent performance. Existing work only addresses these problems separately, which neglects the fact that the root cause behind both forms of performance deterioration is connected. We propose a unified analysis framework for building a controlled test environment for Client Drift -- by perturbing a defined ratio of clients -- and Catastrophic Forgetting -- by shifting all clients with a particular strength. Our framework further leverages this new combined analysis by generating a 3D landscape of the combined performance impact from both. We demonstrate that the performance drop through Client Drift, caused by a certain share of shifted clients, is correlated to the drop from Catastrophic Forgetting resulting from a corresponding shift strength. Correlation tests between both problems for Computer Vision (CelebA) and Medical Imaging (PESO) support this new perspective, with an average Pearson rank correlation coefficient of over 0.94. Our framework's novel ability of combined spatio-temporal shift analysis allows us to investigate how both forms of distribution shift behave in mixed scenarios, opening a new pathway for better generalization. We show that a combination of moderate Client Drift and Catastrophic Forgetting can even improve the performance of the resulting model (causing a "Generalization Bump") compared to when only one of the shifts occurs individually. We apply a simple and commonly used method from Continual Learning in the federated setting and observe this phenomenon to be reoccurring, leveraging the ability of our framework to analyze existing and novel methods for Federated and Continual Learning.
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- 2023
33. Synthesising Rare Cataract Surgery Samples with Guided Diffusion Models
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Frisch, Yannik, Fuchs, Moritz, Sanner, Antoine, Ucar, Felix Anton, Frenzel, Marius, Wasielica-Poslednik, Joana, Gericke, Adrian, Wagner, Felix Mathias, Dratsch, Thomas, and Mukhopadhyay, Anirban
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
Cataract surgery is a frequently performed procedure that demands automation and advanced assistance systems. However, gathering and annotating data for training such systems is resource intensive. The publicly available data also comprises severe imbalances inherent to the surgical process. Motivated by this, we analyse cataract surgery video data for the worst-performing phases of a pre-trained downstream tool classifier. The analysis demonstrates that imbalances deteriorate the classifier's performance on underrepresented cases. To address this challenge, we utilise a conditional generative model based on Denoising Diffusion Implicit Models (DDIM) and Classifier-Free Guidance (CFG). Our model can synthesise diverse, high-quality examples based on complex multi-class multi-label conditions, such as surgical phases and combinations of surgical tools. We affirm that the synthesised samples display tools that the classifier recognises. These samples are hard to differentiate from real images, even for clinical experts with more than five years of experience. Further, our synthetically extended data can improve the data sparsity problem for the downstream task of tool classification. The evaluations demonstrate that the model can generate valuable unseen examples, allowing the tool classifier to improve by up to 10% for rare cases. Overall, our approach can facilitate the development of automated assistance systems for cataract surgery by providing a reliable source of realistic synthetic data, which we make available for everyone.
- Published
- 2023
34. CoSINT: Designing a Collaborative Capture the Flag Competition to Investigate Misinformation
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Venkatagiri, Sukrit, Mukhopadhyay, Anirban, Hicks, David, Brantly, Aaron, and Luther, Kurt
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Computer Science - Human-Computer Interaction ,Computer Science - Computers and Society - Abstract
Crowdsourced investigations shore up democratic institutions by debunking misinformation and uncovering human rights abuses. However, current crowdsourcing approaches rely on simplistic collaborative or competitive models and lack technological support, limiting their collective impact. Prior research has shown that blending elements of competition and collaboration can lead to greater performance and creativity, but crowdsourced investigations pose unique analytical and ethical challenges. In this paper, we employed a four-month-long Research through Design process to design and evaluate a novel interaction style called collaborative capture the flag competitions (CoCTFs). We instantiated this interaction style through CoSINT, a platform that enables a trained crowd to work with professional investigators to identify and investigate social media misinformation. Our mixed-methods evaluation showed that CoSINT leverages the complementary strengths of competition and collaboration, allowing a crowd to quickly identify and debunk misinformation. We also highlight tensions between competition versus collaboration and discuss implications for the design of crowdsourced investigations., Comment: To appear in ACM Designing Interactive Systems 2023 (DIS 2023). To cite this paper please use the official citation available here: https://doi.org/10.1145/3563657.3595997
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- 2023
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35. Multiobjective Approach to Gene Ontology-Based Protein-Protein Interaction Prediction
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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36. Multiobjective Approach to Cancer-Associated MicroRNA Module Detection
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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37. Multiobjective Approach to Detection of Differentially Coexpressed Modules
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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38. Multiobjective Approach to Prediction of Protein Subcellular Locations
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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39. Multiobjective Interactive Fuzzy Clustering for Gene Expression Data
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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40. Multiobjective Rank Aggregation for Gene Prioritization
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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41. Multiobjective Approach to Protein Complex Detection
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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42. Multiobjective Simultaneous Gene Ranking and Clustering
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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43. Multiobjective Biclustering for Analyzing HIV-1-Human Protein-Protein Interaction Network
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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44. Multiobjective Feature Selection for Identifying MicroRNA Markers
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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45. Introduction
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Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, Bandyopadhyay, Sanghamitra, Mukhopadhyay, Anirban, Ray, Sumanta, Maulik, Ujjwal, and Bandyopadhyay, Sanghamitra
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- 2024
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46. Med-NCA: Robust and Lightweight Segmentation with Neural Cellular Automata
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Kalkhof, John, González, Camila, and Mukhopadhyay, Anirban
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
Access to the proper infrastructure is critical when performing medical image segmentation with Deep Learning. This requirement makes it difficult to run state-of-the-art segmentation models in resource-constrained scenarios like primary care facilities in rural areas and during crises. The recently emerging field of Neural Cellular Automata (NCA) has shown that locally interacting one-cell models can achieve competitive results in tasks such as image generation or segmentations in low-resolution inputs. However, they are constrained by high VRAM requirements and the difficulty of reaching convergence for high-resolution images. To counteract these limitations we propose Med-NCA, an end-to-end NCA training pipeline for high-resolution image segmentation. Our method follows a two-step process. Global knowledge is first communicated between cells across the downscaled image. Following that, patch-based segmentation is performed. Our proposed Med-NCA outperforms the classic UNet by 2% and 3% Dice for hippocampus and prostate segmentation, respectively, while also being 500 times smaller. We also show that Med-NCA is by design invariant with respect to image scale, shape and translation, experiencing only slight performance degradation even with strong shifts; and is robust against MRI acquisition artefacts. Med-NCA enables high-resolution medical image segmentation even on a Raspberry Pi B+, arguably the smallest device able to run PyTorch and that can be powered by a standard power bank.
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- 2023
47. The state-of-the-art 3D anisotropic intracranial hemorrhage segmentation on non-contrast head CT: The INSTANCE challenge
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Li, Xiangyu, Luo, Gongning, Wang, Kuanquan, Wang, Hongyu, Liu, Jun, Liang, Xinjie, Jiang, Jie, Song, Zhenghao, Zheng, Chunyue, Chi, Haokai, Xu, Mingwang, He, Yingte, Ma, Xinghua, Guo, Jingwen, Liu, Yifan, Li, Chuanpu, Chen, Zeli, Siddiquee, Md Mahfuzur Rahman, Myronenko, Andriy, Sanner, Antoine P., Mukhopadhyay, Anirban, Othman, Ahmed E., Zhao, Xingyu, Liu, Weiping, Zhang, Jinhuang, Ma, Xiangyuan, Liu, Qinghui, MacIntosh, Bradley J., Liang, Wei, Mazher, Moona, Qayyum, Abdul, Abramova, Valeriia, Lladó, Xavier, and Li, Shuo
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Automatic intracranial hemorrhage segmentation in 3D non-contrast head CT (NCCT) scans is significant in clinical practice. Existing hemorrhage segmentation methods usually ignores the anisotropic nature of the NCCT, and are evaluated on different in-house datasets with distinct metrics, making it highly challenging to improve segmentation performance and perform objective comparisons among different methods. The INSTANCE 2022 was a grand challenge held in conjunction with the 2022 International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI). It is intended to resolve the above-mentioned problems and promote the development of both intracranial hemorrhage segmentation and anisotropic data processing. The INSTANCE released a training set of 100 cases with ground-truth and a validation set with 30 cases without ground-truth labels that were available to the participants. A held-out testing set with 70 cases is utilized for the final evaluation and ranking. The methods from different participants are ranked based on four metrics, including Dice Similarity Coefficient (DSC), Hausdorff Distance (HD), Relative Volume Difference (RVD) and Normalized Surface Dice (NSD). A total of 13 teams submitted distinct solutions to resolve the challenges, making several baseline models, pre-processing strategies and anisotropic data processing techniques available to future researchers. The winner method achieved an average DSC of 0.6925, demonstrating a significant growth over our proposed baseline method. To the best of our knowledge, the proposed INSTANCE challenge releases the first intracranial hemorrhage segmentation benchmark, and is also the first challenge that intended to resolve the anisotropic problem in 3D medical image segmentation, which provides new alternatives in these research fields., Comment: Summarized paper for the MICCAI INSTANCE 2022 Challenge
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- 2023
48. An Aversion to Intervention: How the Protestant Work Ethic Influences Preferences for Natural Healthcare.
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Cheng, Yimin and Mukhopadhyay, Anirban
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CONSUMER preferences ,PROTESTANT work ethic ,HEALTH care industry ,NATURAL childbirth ,CESAREAN section - Abstract
The term "natural" is ubiquitous in advertising and branding, but limited research has investigated how consumers respond and relate to naturalness. Some researchers have documented preferences for natural products, specifically food, but there has been scant investigation of the psychological antecedents of such preferences, especially in the critical, multi-trillion-dollar domain of healthcare. Using publicly available country-level data from 41 countries and individual-level experimental and survey data from the lab and online panels, we find converging evidence that consumers do indeed differ in their preferences for relatively natural versus artificial healthcare options. These differences are influenced by the extent to which they subscribe to the Protestant Work Ethic (PWE)—a belief system that influences judgments and behaviors across diverse domains—such that people who subscribe strongly (vs. weakly) to the PWE are more likely to prefer natural healthcare options because they are more averse to external intervention in general. Further, belief in the PWE makes consumers more sensitive to the intrusiveness of an intervention than to its extent. Theoretical and substantive implications are discussed. [ABSTRACT FROM AUTHOR]
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- 2024
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49. Estimation of Above Ground Biomass with Synthetic Aperture Radar (SAR) Data in Lothian Island, Sundarbans, India
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Hati, Jyoti Prakash, Mukhopadhyay, Anirban, Chaube, Nilima Rani, Hazra, Sugata, Pramanick, Niloy, Gupta, Kaushik, Bharadwaz, Ganni S. V. S. A., and Mitra, Debashis
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- 2024
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50. Federated Stain Normalization for Computational Pathology
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Wagner, Nicolas, Fuchs, Moritz, Tolkach, Yuri, and Mukhopadhyay, Anirban
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Although deep federated learning has received much attention in recent years, progress has been made mainly in the context of natural images and barely for computational pathology. However, deep federated learning is an opportunity to create datasets that reflect the data diversity of many laboratories. Further, the effort of dataset construction can be divided among many. Unfortunately, existing algorithms cannot be easily applied to computational pathology since previous work presupposes that data distributions of laboratories must be similar. This is an unlikely assumption, mainly since different laboratories have different staining styles. As a solution, we propose BottleGAN, a generative model that can computationally align the staining styles of many laboratories and can be trained in a privacy-preserving manner to foster federated learning in computational pathology. We construct a heterogenic multi-institutional dataset based on the PESO segmentation dataset and improve the IOU by 42\% compared to existing federated learning algorithms. An implementation of BottleGAN is available at https://github.com/MECLabTUDA/BottleGAN, Comment: Accepted for Poster at MICCAI2022
- Published
- 2022
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