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Caveats in Using Abnormality/Probability Scores from Artificial Intelligence Algorithms: Neither True Probability nor Level of Trustworthiness
6
Zitationen
2
Autoren
2024
Jahr
Abstract
One significant barrier to the adoption of artificial intelligence (AI) algorithms based on deep learning architectures in clinical practice is the inherent lack of understanding regarding why an AI algorithm produces a particular result, often referred to as its "black box" nature.When an AI algorithm generates outputs without allowing users to interrogate the decision-making process, it becomes challenging for users to adequately accept or
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