基于放射组学的无监督机器学习聚类分析,用于识别 EVAR 患者的临床表型。

IF 0.9 4区 医学 Q4 PERIPHERAL VASCULAR DISEASE
Vascular Pub Date : 2025-08-01 Epub Date: 2024-06-17 DOI:10.1177/17085381241262575
Yonggang Wang, Min Zhou, Yong Ding, Xu Li, Tianchen Xie, Zhenyu Zhou, Weiguo Fu, Zhenyu Shi
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引用次数: 0

摘要

目的:本研究采用无监督机器学习(UML)聚类分析,基于放射组学探索腹主动脉瘤(AAA)患者血管内主动脉修补术(EVAR)的临床表型:我们回顾性研究了2010年1月至2020年12月期间接受择期EVAR手术的1785例肾下AAA患者。使用 Pyradiomics 提取放射组学特征。统计分析用于确定与EVAR术后严重不良事件(SAEs)相关的放射组学特征。选定的特征在训练集中用于 UML 聚类分析,在测试集中用于验证。比较不同聚类的基本特征和放射组学特征。采用 Kaplan-Meier 分析法得出无 SAEs 的累积发生率:结果:共有 1180 名患者入组。随访期间,353 名患者发生了与 EVAR 相关的 SAE。总共从每位患者身上提取了 1223 个放射组学特征,其中 23 个放射组学特征最终被保留下来,用于识别不同的临床表型。944 名患者被分配到训练集中。在训练集中发现了三个群组,其中患者的临床特征和形态特征完全相同,但所选的放射组学特征却有很大差异。这一令人鼓舞的表现在测试集中得到了进一步验证。此外,每个群组都与其他群组有很好的区分,Kaplan-Meier 分析表明,在训练集(p = .0216)和测试集(p = .0253)中,不同群组之间的无 SAE 发生率存在显著差异:结论:基于放射组学,UML聚类分析可以识别EVAR患者的临床表型,并得出不同的长期预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised machine learning cluster analysis to identification EVAR patients clinical phenotypes based on radiomics.

ObjectiveThis study used unsupervised machine learning (UML) cluster analysis to explore clinical phenotypes of endovascular aortic repair (EVAR) for abdominal aortic aneurysm (AAA) patients based on radiomics.MethodWe retrospectively reviewed 1785 patients with infra-renal AAA who underwent elective EVAR procedures between January 2010 and December 2020. Pyradiomics was used to extract the radiomics features. Statistical analysis was applied to determine the radiomics features that related to severe adverse events (SAEs) after EVAR. The selected features were used for UML cluster analysis in training set and validation in test set. Comparison of basic characteristics and radiomics features of different clusters. The Kaplan-Meier analysis was conducted to generate the cumulative incidence of freedom from SAEs rate.ResultA total of 1180 patients were enrolled. During the follow-up, 353 patients experienced EVAR-related SAEs. In total, 1223 radiomics features were extracted from each patient, of which 23 radiomics features were finally preserved to identify different clinical phenotypes. 944 patients were allocated to the training set. Three clusters were identified in training set, in which patients had identical clinical characteristics and morphological features, while varied considerably of selected radiomics features. This encouraging performance was further approved in the test set. In addition, each cluster was well differentiated from other clusters and Kaplan-Meier analysis showed significant differences of freedom from SAEs rate between different clusters both in the training (p = .0216) and test sets (p = .0253).ConclusionBased on radiomics, UML cluster analysis can identify clinical phenotypes in EVAR patients with distinct long-term outcomes.

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来源期刊
Vascular
Vascular 医学-外周血管病
CiteScore
2.30
自引率
9.10%
发文量
196
审稿时长
6-12 weeks
期刊介绍: Vascular provides readers with new and unusual up-to-date articles and case reports focusing on vascular and endovascular topics. It is a highly international forum for the discussion and debate of all aspects of this distinct surgical specialty. It also features opinion pieces, literature reviews and controversial issues presented from various points of view.
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