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ARTIFICIAL INTELLIGENCE–BASED PREDICTIVE MODELING FOR SURGICAL PLANNING IN DECOMPENSATED COLOSTASIS

Q.A. QuldashevHead of the Department of Pediatric Traumatology, Orthopedics and Neurosurgery Andijan State Medical Institute (ASMI) Doctor of Medical Sciences (DSc), Associate Professor, Andijan State Medical InstituteQo'ldasheva Yayra MirzakarimovnaHead of the Department of Pediatric Traumatology, Orthopedics and Neurosurgery Andijan State Medical Institute (ASMI) Doctor of Medical Sciences (DSc), Associate Professor, Andijan State Medical Institute
Open MINDrepository2026
ABI

Аннотация

Decompensated colostasis is a life-threatening condition characterized by severe intestinal obstruction, ischemic changes, and risk of perforation. Determining the appropriate extent of colon resection remains a major surgical challenge. Artificial intelligence (AI) has emerged as a powerful tool for improving preoperative planning through predictive modeling and large-scale clinical data analysis. This study explores the application of AI-based systems in predicting tissue viability, defining resection margins, and estimating postoperative complication risks in patients with decompensated colostasis. The integration of AI into surgical decision-making may enhance operative precision, reduce unnecessary resections, and improve patient outcomes.

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