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Automatic Infectious Disease Classification Analysis with Concept Discovery

Authors :
Sizikova, Elena
Vendrow, Joshua
Cao, Xu
Grotheer, Rachel
Haddock, Jamie
Kassab, Lara
Kryshchenko, Alona
Merkh, Thomas
Madushani, R. W. M. A.
Moise, Kenny
Ulichney, Annie
Vo, Huy V.
Wang, Chuntian
Coffee, Megan
Leonard, Kathryn
Needell, Deanna
Publication Year :
2022

Abstract

Automatic infectious disease classification from images can facilitate needed medical diagnoses. Such an approach can identify diseases, like tuberculosis, which remain under-diagnosed due to resource constraints and also novel and emerging diseases, like monkeypox, which clinicians have little experience or acumen in diagnosing. Avoiding missed or delayed diagnoses would prevent further transmission and improve clinical outcomes. In order to understand and trust neural network predictions, analysis of learned representations is necessary. In this work, we argue that automatic discovery of concepts, i.e., human interpretable attributes, allows for a deep understanding of learned information in medical image analysis tasks, generalizing beyond the training labels or protocols. We provide an overview of existing concept discovery approaches in medical image and computer vision communities, and evaluate representative methods on tuberculosis (TB) prediction and monkeypox prediction tasks. Finally, we propose NMFx, a general NMF formulation of interpretability by concept discovery that works in a unified way in unsupervised, weakly supervised, and supervised scenarios.<br />Comment: Extended Abstract presented at Machine Learning for Health (ML4H) symposium 2022, November 28th, 2022, New Orleans, United States & Virtual, http://www.ml4h.cc, 13 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2209.02415
Document Type :
Working Paper