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Title: Self-supervised learning for chest x-ray analysis

Speaker: Syed Muhammad Anwar

Abstract:
Chest X-Ray (CXR) is a widely used clinical imaging modality and has a pivotal role in the diagnosis and prognosis of various lung and heart related conditions. Conventional automated clinical diagnostic tool design strategies relying on radiology reads and supervised learning, entail the cumbersome requirement of high quality annotated training data. To address this challenge, self-supervised pre-training has proven to outperform supervised pre-training in numerous downstream vision tasks, representing a significant breakthrough in the field. However, medical imaging pre-training significantly differs from pre-training with natural images (e.g., ImageNet) due to unique attributes of clinical images. In this talk, I will present a self-supervised training paradigm that leverages a student teacher framework for learning diverse concepts and hence effective representation of the CXR data. Hence, expanding beyond merely modeling a single primary label within an image, instead, effectively harnessing the information from all the concepts inherent in the CXR. The pre-trained model is subsequently fine-tuned to address diverse domain-specific tasks. Our proposed paradigm consistently demonstrates robust performance across multiple downstream tasks on multiple datasets, highlighting the success and generalizability of the pre-training strategy. The training strategy has been extended for federated learning (FL), which could alleviate the burden of data sharing and enable patient privacy. I will briefly talk about the privacy landscape of FL and potential data leakage within the FL paradigm.

Speaker Bio:
Dr. Anwar is principal investigator at Children’s National Hospital and associate professor of Radiology and Pediatrics at the George Washington University School of Medicine and Health Sciences. Within the hospital, he is associated with the Sheikh Zayed Institute (SZI) for Pediatric Surgical Innovation doing cutting edge research in surgical planning, treatment and device innovation. Prior to this, Dr. Anwar was associated with the University of Engineering and Technology, Taxila as associate professor (Tenured) in the Department of Software Engineering and was a Fulbright Research Fellow at the Center for Research in Computer Vision (CRCV) at the University of Central Florida. CRCV is one of the top-ranked computer vision centers in the world. Dr. Anwar's research interests include developing computational & engineering solutions for healthcare systems that benefit from computer vision, signal processing and artificial intelligence. He has expertise in a wide range of application areas related to machine learning, image and signal processing, and biomedical engineering.

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Organized by members of the Rubin Lab (http://rubinlab.stanford.edu) and Machine Intelligence in Medicine and Imaging (MI-2) Lab:
Nandita Bhaskhar (https://www.stanford.edu/~nanbhas)
Amara Tariq (  / amara-tariq-475815158  )

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