Publications by authors named "Hasan Kassem"

Article Synopsis
  • Medical AI has the potential to enhance healthcare by improving evidence-based practice, personalizing treatment, cutting costs, and enhancing experiences for providers and patients.
  • MedPerf is introduced as an open platform designed for benchmarking medical AI models, enabling federated evaluation across healthcare organizations while maintaining data privacy.
  • The text outlines the challenges in healthcare AI, highlights the design and current status of MedPerf, and calls for collaboration from researchers and organizations to advance the platform.
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The translation of AI-generated brain metastases (BM) segmentation into clinical practice relies heavily on diverse, high-quality annotated medical imaging datasets. The BraTS-METS 2023 challenge has gained momentum for testing and benchmarking algorithms using rigorously annotated internationally compiled real-world datasets. This study presents the results of the segmentation challenge and characterizes the challenging cases that impacted the performance of the winning algorithms.

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Recent advancements in deep learning methods bring computer-assistance a step closer to fulfilling promises of safer surgical procedures. However, the generalizability of such methods is often dependent on training on diverse datasets from multiple medical institutions, which is a restrictive requirement considering the sensitive nature of medical data. Recently proposed collaborative learning methods such as Federated Learning (FL) allow for training on remote datasets without the need to explicitly share data.

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Background: Phase and step annotation in surgical videos is a prerequisite for surgical scene understanding and for downstream tasks like intraoperative feedback or assistance. However, most ontologies are applied on small monocentric datasets and lack external validation. To overcome these limitations an ontology for phases and steps of laparoscopic Roux-en-Y gastric bypass (LRYGB) is proposed and validated on a multicentric dataset in terms of inter- and intra-rater reliability (inter-/intra-RR).

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