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Prognostic machine learning models for predicting postoperative complications following general surgery in Bandar Abbas, Iran: a study protocol
5
Zitationen
4
Autoren
2025
Jahr
Abstract
With approval from the Hormozgan University of Medical School Research Ethics Board (IR.HUMS.REC.1404.137), we will carry out a forward-looking analysis of the medical records of patients undergoing general surgery. We will obtain informed consent, and all information will be collected and examined anonymously. The findings of this research will be released in appropriate scientific publications.
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