10-3bHave you provided an explanation to users about the inference results of the AI model?
• The use of AI for the purpose of assisting in diagnosis can expedite and improve diagnostic accuracy. However, suggesting only the model’s inference results can lead to diagnostic errors when unexpected problems occur such as human factors including noisy input data, new input of observed values, and automated bias from medical staff [52,54].
• As a solution, you may consider digitizing the probability rate of the AI model’s inference results and explaining how certain the inference results are by quantifying the uncertainty. The following table is an example of explanations about the uncertainty and probability of inference results.
• The explanation of “unable to decide” without outputting inference results can allow medical staff to make unreserved clinical decisions when factors such as new input of observed values are uncertain or the inference rate of the AI model is lower than the threshold [54].