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

Authors

  • Q.A. Quldashev,Qo’ldasheva Yayra Mirzakarimovna Head 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

Keywords:

artificial intelligence, predictive modeling, colon resection, decompensated colostasis, surgical planning, machine learning.

Abstract

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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Published

2026-02-28

How to Cite

Q.A. Quldashev,Qo’ldasheva Yayra Mirzakarimovna. (2026). ARTIFICIAL INTELLIGENCE–BASED PREDICTIVE MODELING FOR SURGICAL PLANNING IN DECOMPENSATED COLOSTASIS. Ethiopian International Multidisciplinary Research Conferences, 2(1), 336–339. Retrieved from https://eijmr.org/conferences/index.php/eimrc/article/view/1992