Does Your Dermatology Classifier Know What It Doesn't Know? Detecting
the Long-Tail of Unseen Conditions
- URL: http://arxiv.org/abs/2104.03829v1
- Date: Thu, 8 Apr 2021 15:15:22 GMT
- Title: Does Your Dermatology Classifier Know What It Doesn't Know? Detecting
the Long-Tail of Unseen Conditions
- Authors: Abhijit Guha Roy, Jie Ren, Shekoofeh Azizi, Aaron Loh, Vivek
Natarajan, Basil Mustafa, Nick Pawlowski, Jan Freyberg, Yuan Liu, Zach
Beaver, Nam Vo, Peggy Bui, Samantha Winter, Patricia MacWilliams, Greg S.
Corrado, Umesh Telang, Yun Liu, Taylan Cemgil, Alan Karthikesalingam, Balaji
Lakshminarayanan, Jim Winkens
- Abstract summary: We develop and rigorously evaluate a deep learning based system that can accurately classify skin conditions.
We frame this task as an out-of-distribution (OOD) detection problem.
Our novel approach, hierarchical outlier detection (HOD) assigns multiple abstention classes for each training class and jointly performs a coarse classification of inliers vs. outliers.
- Score: 18.351120611713586
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We develop and rigorously evaluate a deep learning based system that can
accurately classify skin conditions while detecting rare conditions for which
there is not enough data available for training a confident classifier. We
frame this task as an out-of-distribution (OOD) detection problem. Our novel
approach, hierarchical outlier detection (HOD) assigns multiple abstention
classes for each training outlier class and jointly performs a coarse
classification of inliers vs. outliers, along with fine-grained classification
of the individual classes. We demonstrate the effectiveness of the HOD loss in
conjunction with modern representation learning approaches (BiT, SimCLR, MICLe)
and explore different ensembling strategies for further improving the results.
We perform an extensive subgroup analysis over conditions of varying risk
levels and different skin types to investigate how the OOD detection
performance changes over each subgroup and demonstrate the gains of our
framework in comparison to baselines. Finally, we introduce a cost metric to
approximate downstream clinical impact. We use this cost metric to compare the
proposed method against a baseline system, thereby making a stronger case for
the overall system effectiveness in a real-world deployment scenario.
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