Large Language Models Versus Anesthesiologists for ASA Physical Status Classification
Conditions : Anesthesia; Preoperative Risk Prediction; Preoperative Risk Assessment Sponsors : Marmara University Pendik Training and Research Hospital Not yet recruiting
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