Explainable AI Models on Radiographic Images Integrated with Clinical Measurements: Prediction for Unstable Hips in Infants
Hirokazu Shimizu,
Ken Enda,
Hidenori Koyano
et al.
Abstract:Considering explainability is crucial in medical artificial intelligence, technologies to quantify Grad-CAM heatmaps and perform automatic integration based on domain knowledge remain lacking. Hence, we created an end-to-end model that produced CAM scores on regions of interest (CSoR), a measure of relative CAM activity, and feature importance scores by automatic algorithms for clinical measurement (aaCM) followed by LightGBM. In this multicenter research project, the diagnostic performance of the model was in… Show more
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