Practical Statistical Considerations for the Clinical Validation of AI/ML-enabled Medical Diagnostic Devices

03/02/2023
by   Feiming Chen, et al.
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Artificial Intelligence (AI) and Machine-Learning (ML) models have been increasingly used in medical products, such as medical device software. General considerations on the statistical aspects for the evaluation of AI/ML-enabled medical diagnostic devices are discussed in this paper. We also provide relevant academic references and note good practices in addressing various statistical challenges in the clinical validation of AI/ML-enabled medical devices in the context of their intended use.

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