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Translating AI to Clinical Practice: Overcoming Data Shift with Explainability.
Choi, Youngwon; Yu, Wenxi; Nagarajan, Mahesh B; Teng, Pangyu; Goldin, Jonathan G; Raman, Steven S; Enzmann, Dieter R; Kim, Grace Hyun J; Brown, Matthew S.
Afiliação
  • Choi Y; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Yu W; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Nagarajan MB; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Teng P; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Goldin JG; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Raman SS; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Enzmann DR; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Kim GHJ; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
  • Brown MS; From the Center for Computer Vision and Imaging Biomarkers, 924 Westwood Blvd, Los Angeles, CA 90024 (Y.C., W.Y., M.B.N., P.T., J.G.G., G.H.J.K., M.S.B.); and Department of Radiology, University of California-Los Angeles, Los Angeles, Calif (Y.C., W.Y., M.B.N., P.T., J.G.G., S.S.R., D.R.E., G.H.J.K.
Radiographics ; 43(5): e220105, 2023 05.
Article em En | MEDLINE | ID: mdl-37104124
ABSTRACT
To translate artificial intelligence (AI) algorithms into clinical practice requires generalizability of models to real-world data. One of the main obstacles to generalizability is data shift, a data distribution mismatch between model training and real environments. Explainable AI techniques offer tools to detect and mitigate the data shift problem and develop reliable AI for clinical practice. Most medical AI is trained with datasets gathered from limited environments, such as restricted disease populations and center-dependent acquisition conditions. The data shift that commonly exists in the limited training set often causes a significant performance decrease in the deployment environment. To develop a medical application, it is important to detect potential data shift and its impact on clinical translation. During AI training stages, from premodel analysis to in-model and post hoc explanations, explainability can play a key role in detecting model susceptibility to data shift, which is otherwise hidden because the test data have the same biased distribution as the training data. Performance-based model assessments cannot effectively distinguish the model overfitting to training data bias without enriched test sets from external environments. In the absence of such external data, explainability techniques can aid in translating AI to clinical practice as a tool to detect and mitigate potential failures due to data shift. ©RSNA, 2023 Quiz questions for this article are available in the supplemental material.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Algoritmos / Inteligência Artificial Limite: Humans Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Algoritmos / Inteligência Artificial Limite: Humans Idioma: En Ano de publicação: 2023 Tipo de documento: Article