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Differential Biases and Variabilities of Deep Learning-Based Artificial Intelligence and Human Experts in Clinical Diagnosis: Retrospective Cohort and Survey Study.

Dongchul ChaChongwon PaeSe A LeeGina NaYoung Kyun HurHo Young LeeA Ra ChoYoung Joon ChoSang Gil HanSung Huhn KimJae Young ChoiHae-Jeong Park
Published in: JMIR medical informatics (2021)
Even though ML models deliver excellent performance in classifying ear disease, physicians and ML models have their own strengths. ML models have consistent and high accuracy while considering only the given image and show bias toward prevalence, whereas human physicians have varying performance but do not show bias toward prevalence and may also consider extra information that is not images. To deliver the best patient care in the shortage of otolaryngologists, our ML model can serve a cooperative role for clinicians with diverse expertise, as long as it is kept in mind that models consider only images and could be biased toward prevalent diseases even after data augmentation.
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