TY - JOUR
T1 - Uncertainty Estimation in Medical Image Classification
T2 - Systematic Review
AU - Kurz, Alexander
AU - Hauser, Katja
AU - Mehrtens, Hendrik Alexander
AU - Krieghoff-Henning, Eva
AU - Hekler, Achim
AU - Kather, Jakob Nikolas
AU - Fröhling, Stefan
AU - von Kalle, Christof
AU - Brinker, Titus Josef
N1 - Publisher Copyright:
©Alexander Kurz, Katja Hauser, Hendrik Alexander Mehrtens, Eva Krieghoff-Henning, Achim Hekler, Jakob Nikolas Kather, Stefan Fröhling, Christof von Kalle, Titus Josef Brinker. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 02.08.2022.
PY - 2022/8/1
Y1 - 2022/8/1
N2 - Background: Deep neural networks are showing impressive results in different medical image classification tasks. However, for real-world applications, there is a need to estimate the network's uncertainty together with its prediction. Objective: In this review, we investigate in what form uncertainty estimation has been applied to the task of medical image classification. We also investigate which metrics are used to describe the effectiveness of the applied uncertainty estimation Methods: Google Scholar, PubMed, IEEE Xplore, and ScienceDirect were screened for peer-reviewed studies, published between 2016 and 2021, that deal with uncertainty estimation in medical image classification. The search terms “uncertainty,” “uncertainty estimation,” “network calibration,” and “out-of-distribution detection” were used in combination with the terms “medical images,” “medical image analysis,” and “medical image classification.” Results: A total of 22 papers were chosen for detailed analysis through the systematic review process. This paper provides a table for a systematic comparison of the included works with respect to the applied method for estimating the uncertainty. Conclusions: The applied methods for estimating uncertainties are diverse, but the sampling-based methods Monte-Carlo Dropout and Deep Ensembles are used most frequently. We concluded that future works can investigate the benefits of uncertainty estimation in collaborative settings of artificial intelligence systems and human experts.
AB - Background: Deep neural networks are showing impressive results in different medical image classification tasks. However, for real-world applications, there is a need to estimate the network's uncertainty together with its prediction. Objective: In this review, we investigate in what form uncertainty estimation has been applied to the task of medical image classification. We also investigate which metrics are used to describe the effectiveness of the applied uncertainty estimation Methods: Google Scholar, PubMed, IEEE Xplore, and ScienceDirect were screened for peer-reviewed studies, published between 2016 and 2021, that deal with uncertainty estimation in medical image classification. The search terms “uncertainty,” “uncertainty estimation,” “network calibration,” and “out-of-distribution detection” were used in combination with the terms “medical images,” “medical image analysis,” and “medical image classification.” Results: A total of 22 papers were chosen for detailed analysis through the systematic review process. This paper provides a table for a systematic comparison of the included works with respect to the applied method for estimating the uncertainty. Conclusions: The applied methods for estimating uncertainties are diverse, but the sampling-based methods Monte-Carlo Dropout and Deep Ensembles are used most frequently. We concluded that future works can investigate the benefits of uncertainty estimation in collaborative settings of artificial intelligence systems and human experts.
KW - deep learning
KW - medical image classification
KW - medical imaging
KW - network calibration
KW - out-of-distribution detection
KW - uncertainty estimation
UR - http://www.scopus.com/inward/record.url?scp=85135904116&partnerID=8YFLogxK
U2 - 10.2196/36427
DO - 10.2196/36427
M3 - Review article
AN - SCOPUS:85135904116
SN - 2291-9694
VL - 10
JO - JMIR Medical Informatics
JF - JMIR Medical Informatics
IS - 8
M1 - e36427
ER -