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Network prediction of surgical complication clusters: a prospective multicenter cohort study.

Authors :
Yu, Xiaochu
Wu, Peng
Wang, Zixing
Han, Wei
Huang, Yuguang
Xin, Shijie
Zhang, Qiang
Zhao, Shengxiu
Sun, Hong
Lei, Guanghua
Zhang, Taiping
Zhang, Luwen
Shen, Yubing
Gu, Wentao
Li, Hongwei
Jiang, Jingmei
Source :
SCIENCE CHINA Life Sciences; Jul2023, Vol. 66 Issue 7, p1636-1646, 11p
Publication Year :
2023

Abstract

Complicated relationships exist in both occurrence and progression of surgical complications, which are difficult to account for using a separate quantitative method such as prediction or grading. Data of 51,030 surgical inpatients were collected from four academic/teaching hospitals in a prospective cohort study in China. The relationship between preoperative factors, 22 common complications, and death was analyzed. With input from 54 senior clinicians and following a Bayesian network approach, a complication grading, cluster-visualization, and prediction (GCP) system was designed to model pathways between grades of complication and preoperative risk factor clusters. In the GCP system, there were 11 nodes representing six grades of complication and five preoperative risk factor clusters, and 32 arcs representing a direct association. Several critical targets were pinpointed on the pathway. Malnourished status was a fundamental cause widely associated (7/32 arcs) with other risk factor clusters and complications. American Society of Anesthesiologists (ASA) score ⩾3 was directly dependent on all other risk factor clusters and influenced all severe complications. Grade III complications (mainly pneumonia) were directly dependent on 4/5 risk factor clusters and affected all other grades of complication. Irrespective of grade, complication occurrence was more likely to increase the risk of other grades of complication than risk factor clusters. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
16747305
Volume :
66
Issue :
7
Database :
Complementary Index
Journal :
SCIENCE CHINA Life Sciences
Publication Type :
Academic Journal
Accession number :
164720569
Full Text :
https://doi.org/10.1007/s11427-022-2200-1