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Robust and Efficient Medical Imaging with Self-Supervision

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Academic paper
0

Academic Paper attributes

arXiv ID
2205.097230
arXiv Classification
Computer science
Computer science
0
Publication URL
arxiv.org/pdf/2205.0...23.pdf0
Publisher
ArXiv
ArXiv
0
DOI
doi.org/10.48550/ar...05.097230
Paid/Free
Free0
Academic Discipline
Computer science
Computer science
0
Artificial Intelligence (AI)
Artificial Intelligence (AI)
0
Computer Vision
Computer Vision
0
Machine learning
Machine learning
0
Submission Date
May 19, 2022
0
July 3, 2022
0
Author Names
Sebastien Baur0
Simon Kornblith0
Ting Chen0
Umesh Telang0
Vivek Natarajan0
Yuan Liu0
Yun Liu0
Zach Beaver0
...
Paper abstract

Recent progress in Medical Artificial Intelligence (AI) has delivered systems that can reach clinical expert level performance. However, such systems tend to demonstrate sub-optimal "out-of-distribution" performance when evaluated in clinical settings different from the training environment. A common mitigation strategy is to develop separate systems for each clinical setting using site-specific data [1]. However, this quickly becomes impractical as medical data is time-consuming to acquire and expensive to annotate [2]. Thus, the problem of "data-efficient generalization" presents an ongoing difficulty for Medical AI development. Although progress in representation learning shows promise, their benefits have not been rigorously studied, specifically for out-of-distribution settings. To meet these challenges, we present REMEDIS, a unified representation learning strategy to improve robustness and data-efficiency of medical imaging AI. REMEDIS uses a generic combination of large-scale supervised transfer learning with self-supervised learning and requires little task-specific customization. We study a diverse range of medical imaging tasks and simulate three realistic application scenarios using retrospective data. REMEDIS exhibits significantly improved in-distribution performance with up to 11.5% relative improvement in diagnostic accuracy over a strong supervised baseline. More importantly, our strategy leads to strong data-efficient generalization of medical imaging AI, matching strong supervised baselines using between 1% to 33% of retraining data across tasks. These results suggest that REMEDIS can significantly accelerate the life-cycle of medical imaging AI development thereby presenting an important step forward for medical imaging AI to deliver broad impact.

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