基于机器学习的决策树分析预测血管内主动脉修复后动脉瘤囊收缩。

IF 1.8 3区 医学 Q2 SURGERY
Toshiya Nishibe, Tsuyoshi Iwasa, Seiji Matsuda, Masaki Kano, Shinobu Akiyama, Shoji Fukuda, Jun Koizumi, Masayasu Nishibe, Alan Dardik
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引用次数: 0

摘要

摘要:利用基于机器学习的决策树分析,建立了预测腹主动脉瘤(AAA)行血管内主动脉修复(EVAR)患者动脉瘤囊收缩的简单风险分层模型。方法:2013年11月至2019年7月在东京医科大学医院接受选择性EVAR的119例AAA患者纳入研究。单变量分析发现动脉瘤囊萎缩的预测因素(P)结果:单变量分析显示,动脉瘤囊萎缩患者与非动脉瘤囊萎缩患者在年龄变量上存在显著差异(结论:我们建立了一个包含3个变量(术前PWV、术中II型内漏和当前吸烟)的决策树模型来预测AAA级EVAR患者动脉瘤囊收缩的可能性,该分类模型有助于识别动脉瘤囊收缩可能性高或低的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Aneurysm Sac Shrinkage After Endovascular Aortic Repair Using Machine Learning-Based Decision Tree Analysis.

Introduction: A simple risk stratification model to predict aneurysm sac shrinkagein patients undergoing endovascular aortic repair (EVAR) for abdominal aortic aneurysms (AAA) was developed using machine learning-based decision tree analysis.

Methods: One hundred nineteen patients with AAA who underwent elective EVAR at Tokyo Medical University Hospital between November 2013 and July 2019 were included in the study. Predictors of aneurysm sac shrinkage identified in univariable analysis (P < 0.05) were entered into the decision tree analysis.

Results: Univariable analysis revealed significant differences between patients with and without aneurysm sac shrinkage in the variables of age (<75 y or ≥75 y), current smoking, operative type II endoleak, and preoperative pulse wave velocity (PWV) (<1800 cm/s or ≥1800 cm/s). The decision tree showed that preoperative PWV was the most relevant predictor, followed by operative type II endoleak and current smoking, and identified 6 terminal nodes with likelihoods of aneurysm sac shrinkage ranging from 5.6% to 63.6%.

Conclusions: We established a decision tree model with 3 variables (preoperative PWV, operative type II endoleak, and current smoking) to predict aneurysm sac shrinkage in patients undergoing EVAR for AAA. This classification model may help identify patients with a high or low likelihood of aneurysm sac shrinkage.

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来源期刊
CiteScore
3.90
自引率
4.50%
发文量
627
审稿时长
138 days
期刊介绍: The Journal of Surgical Research: Clinical and Laboratory Investigation publishes original articles concerned with clinical and laboratory investigations relevant to surgical practice and teaching. The journal emphasizes reports of clinical investigations or fundamental research bearing directly on surgical management that will be of general interest to a broad range of surgeons and surgical researchers. The articles presented need not have been the products of surgeons or of surgical laboratories. The Journal of Surgical Research also features review articles and special articles relating to educational, research, or social issues of interest to the academic surgical community.
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