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      DermX: An end-to-end framework for explainable automated dermatological diagnosis.

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          Abstract

          Dermatological diagnosis automation is essential in addressing the high prevalence of skin diseases and critical shortage of dermatologists. Despite approaching expert-level diagnosis performance, convolutional neural network (ConvNet) adoption in clinical practice is impeded by their limited explainability, and by subjective, expensive explainability validations. We introduce DermX, an end-to-end framework for explainable automated dermatological diagnosis. DermX is a clinically-inspired explainable dermatological diagnosis ConvNet, trained using DermXDB, a 554 image dataset annotated by eight dermatologists with diagnoses, supporting explanations, and explanation attention maps. DermX+ extends DermX with guided attention training for explanation attention maps. Both methods achieve near-expert diagnosis performance, with DermX, DermX+, and dermatologist F1 scores of 0.79, 0.79, and 0.87, respectively. We assess the explanation performance in terms of identification and localization by comparing model-selected with dermatologist-selected explanations, and gradient-weighted class-activation maps with dermatologist explanation maps, respectively. DermX obtained an identification F1 score of 0.77, while DermX+ obtained 0.79. The localization F1 score is 0.39 for DermX and 0.35 for DermX+. These results show that explainability does not necessarily come at the expense of predictive power, as our high-performance models provide expert-inspired explanations for their diagnoses without lowering their diagnosis performance.

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          Author and article information

          Journal
          Med Image Anal
          Medical image analysis
          Elsevier BV
          1361-8423
          1361-8415
          Jan 2023
          : 83
          Affiliations
          [1 ] Department of Applied Mathematics and Computer Science at the Technical University of Denmark, Richard Petersens Plads, Building 324, DK-2800 Kongens Lyngby, Denmark; Omhu A/S, Silkegade 8 st, DK-1113 Copenhagen C, Denmark. Electronic address: rjal@dtu.dk.
          [2 ] Omhu A/S, Silkegade 8 st, DK-1113 Copenhagen C, Denmark.
          [3 ] Department of Applied Mathematics and Computer Science at the Technical University of Denmark, Richard Petersens Plads, Building 324, DK-2800 Kongens Lyngby, Denmark; Bioinformatics Centre, Department of Biology, University of Copenhagen, Copenhagen, Denmark; Center for Genomic Medicine, Rigshospitalet, Copenhagen University Hospital, Copenhagen, Denmark.
          Article
          S1361-8415(22)00275-4
          10.1016/j.media.2022.102647
          36272237
          552d3a2d-5641-4bcd-bc15-cf93d006f0f7
          History

          Dermatology,Dataset,Convolutional neural networks,Explainability

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