使用基于机器学习的决策树分析预测血管内动脉瘤修复后的长期生存。

Toshiya Nishibe, Tsuyoshi Iwasa, Masaki Kano, Shinobu Akiyama, Shoji Fukuda, Jun Koizumi, Masayasu Nishibe
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引用次数: 0

摘要

目的血管内动脉瘤修复术(EVAR)因其微创性已成为治疗腹主动脉瘤(AAA)的首选方法。然而,确定影响患者长期预后的因素对于改善预后至关重要。本研究探讨了基于机器学习(ML)的决策树分析(DTA)是否可以通过揭示患者数据中的复杂模式来预测长期生存(术后5年以上)。方法回顾性分析2013年10月至2018年7月在东京医科大学医院接受AAA选择性EVAR治疗的142例患者的数据。数据集包括24个变量,包括年龄、性别、营养状况、合并症和手术细节。决策树分类器是使用Python 3.7和scikit-learn工具包开发和验证的。结果dta发现营养状况不良是最重要的预测因素,其次是免疫力低下、活动性癌症、老年、慢性肾脏疾病和慢性阻塞性肺疾病。决策树确定了9个具有长期生存概率的终端节点。其中4个终末淋巴结代表长期生存率高的患者组:100%、84%、77%和60%,而其他5个终末淋巴结代表长期生存率低的患者组:17%、25%、30%、45%和47%。该模型的准确度为76.1%,特异度为72.4%,灵敏度为81.8%,精密度为65.2%,受试者工作特征曲线下面积为0.84。结论基于ml的DTA可有效预测EVAR后的长期生存,强调了术前全面评估和个性化管理策略对改善患者预后的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Long-Term Survival after Endovascular Aneurysm Repair Using Machine Learning-Based Decision Tree Analysis.

ObjectiveEndovascular aneurysm repair (EVAR) has become a preferred method for treating abdominal aortic aneurysms (AAA) due to its minimally invasive approach. However, identifying factors that influence long-term patient outcomes is crucial for improving prognosis. This study investigates whether machine learning (ML)-based decision tree analysis (DTA) can predict long-term survival (over 5 years postoperatively) by uncovering complex patterns in patient data.MethodsWe retrospectively analyzed data from 142 patients who underwent elective EVAR for AAA at Tokyo Medical University Hospital between October 2013 and July 2018. The dataset comprised 24 variables, including age, gender, nutritional status, comorbidities, and surgical details. The decision tree classifier was developed and validated using Python 3.7 and the scikit-learn toolkit.ResultsDTA identified poor nutritional status as the most significant predictor, followed by compromised immunity, active cancer, octogenarians, chronic kidney disease, and chronic obstructive pulmonary disease. The decision tree identified 9 terminal nodes with probabilities of long-term survival. Four of these terminal nodes represented groups of patients with a high probability of long-term survival: 100%, 84%, 77%, and 60%, whereas the other 5 terminal nodes represented groups of patients with a low probability of long-term survival: 17%, 25%, 30%, 45%, and 47%. The model achieved a moderately high accuracy of 76.1%, specificity of 72.4%, sensitivity of 81.8%, precision of 65.2%, and area under the receiver operating characteristic curve of 0.84.ConclusionML-based DTA effectively predicts long-term survival after EVAR, highlighting the importance of comprehensive preoperative assessments and personalized management strategies to improve patient outcomes.

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