Medical Informatics in a Tension Between Black-Box AI and Trust
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For medical informaticians, it became more and more crucial to assess the benefits and disadvantages of AI-based solutions as promising alternatives for many traditional tools. Besides quantitative criteria such as accuracy and processing time, healthcare providers are often interested in qualitative explanations of the solutions. Explainable AI provides methods and tools, which are interpretable enough that it affords different stakeholders a qualitative understanding of its solutions. Its main purpose is to provide insights into the black-box mechanism of machine learning programs. Our goal here is to advance the problem of qualitatively assessing AI from the perspective of medical informaticians by providing insights into the central notions, namely: explainability, interpretability, understanding, trust, and confidence.
The State of Artificial Intelligence in Skin Cancer Publications.
Joly-Chevrier M, Nguyen A, Liang L, Lesko-Krleza M, Lefrancois P J Cutan Med Surg. 2024; 28(2):146-152.
PMID: 38323537 PMC: 11015717. DOI: 10.1177/12034754241229361.
Alahdab F, El Shawi R, Ahmed A, Han Y, Al-Mallah M PLoS One. 2023; 18(11):e0291451.
PMID: 37967112 PMC: 10651041. DOI: 10.1371/journal.pone.0291451.
Liu T, Zheng J, Chen Z, Zhang Z, Li D, Shi L Front Pediatr. 2023; 11:1097950.
PMID: 37082702 PMC: 10110971. DOI: 10.3389/fped.2023.1097950.
Xu Q, Xie W, Liao B, Hu C, Qin L, Yang Z J Healthc Eng. 2023; 2023:9919269.
PMID: 36776958 PMC: 9918364. DOI: 10.1155/2023/9919269.
Erne F, Grover P, Dreischarf M, Reumann M, Saul D, Histing T Diagnostics (Basel). 2022; 12(11).
PMID: 36359520 PMC: 9689840. DOI: 10.3390/diagnostics12112679.