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Estimating diagnostic uncertainty in artificial intelligence assisted pathology using conformal prediction

Authors :
Olsson, Henrik
Kartasalo, Kimmo
Mulliqi, Nita
Capuccini, Marco
Ruusuvuori, Pekka
Samaratunga, Hemamali
Delahunt, Brett
Lindskog, Cecilia
Janssen, Emiel A. M.
Blilie, Anders
Egevad, Lars
Spjuth, Ola
Eklund, Martin
Olsson, Henrik
Kartasalo, Kimmo
Mulliqi, Nita
Capuccini, Marco
Ruusuvuori, Pekka
Samaratunga, Hemamali
Delahunt, Brett
Lindskog, Cecilia
Janssen, Emiel A. M.
Blilie, Anders
Egevad, Lars
Spjuth, Ola
Eklund, Martin
Publication Year :
2022

Abstract

Unreliable predictions can occur when an artificial intelligence (AI) system is presented with data it has not been exposed to during training. We demonstrate the use of conformal prediction to detect unreliable predictions, using histopathological diagnosis and grading of prostate biopsies as example. We digitized 7788 prostate biopsies from 1192 men in the STHLM3 diagnostic study, used for training, and 3059 biopsies from 676 men used for testing. With conformal prediction, 1 in 794 (0.1%) predictions is incorrect for cancer diagnosis (compared to 14 errors [2%] without conformal prediction) while 175 (22%) of the predictions are flagged as unreliable when the AI-system is presented with new data from the same lab and scanner that it was trained on. Conformal prediction could with small samples (N = 49 for external scanner, N = 10 for external lab and scanner, and N = 12 for external lab, scanner and pathology assessment) detect systematic differences in external data leading to worse predictive performance. The AI-system with conformal prediction commits 3 (2%) errors for cancer detection in cases of atypical prostate tissue compared to 44 (25%) without conformal prediction, while the system flags 143 (80%) unreliable predictions. We conclude that conformal prediction can increase patient safety of AI-systems.

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1400057657
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1038.s41467-022-34945-8