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后循环破裂和未破裂颅内动脉瘤复发及破裂风险的预测:基于机器学习的分析

Prediction of Recurrence and Rupture Risk of Ruptured and Unruptured Intracranial Aneurysms of the Posterior Circulation: A Machine Learning-Based Analysis.

作者信息

Növer Martin, Styczen Hanna, Jabbarli Ramazan, Dammann Philipp, Köhrmann Martin, Hagenacker Tim, Moenninghoff Christoph, Forsting Michael, Li Yan, Wanke Isabel, Demircioğlu Aydin, Deuschl Cornelius

机构信息

Department of Anaesthesiology and Intensive Care Medicine, University Hospital Essen, Hufelandstrasse 55, 45147 Essen, Germany.

Institute of Diagnostic and Interventional Radiology and Neuroradiology, University Hospital Essen, Hufelandstrasse 55, 45147 Essen, Germany.

出版信息

Diagnostics (Basel). 2025 Sep 17;15(18):2365. doi: 10.3390/diagnostics15182365.

DOI:10.3390/diagnostics15182365
PMID:41008736
Abstract

: Intracranial aneurysms of the posterior circulation are of particular clinical significance due to their higher risk of rupture-associated morbidity and mortality compared to anterior circulation aneurysms. Moreover, they exhibit an increased tendency for recurrence, posing challenges for long-term management. The purpose of this study is to identify key risk factors and define criteria for the early detection of high-risk aneurysms with a machine learning-based analysis. : This study employs machine learning (ML), which, unlike traditional statistical methods, can detect complex, previously unrecognized patterns without predefined hypotheses to predict recurrence and rupture in patients with intracranial aneurysms of the posterior circulation. A total of 229 patients were retrospectively screened (2008-2020), and the data set was analyzed using ML algorithms. To avoid bias, a 10-fold cross-validation was employed, and the model performing best in terms of the Area Under the Curve (AUC) was selected. In addition, the sensitivity, specificity, and accuracy of the model were computed as secondary metrics. : A total of 229 patients were included, with over 70% being female, older than 50 years, and diagnosed with arterial hypertension. The most significant predictors of aneurysm recurrence identified by the ML model (AUC of 0.74 with a sensitivity of 0.76, a specificity of 0.70, and an accuracy of 0.76) were age, aneurysm size, arterial hypertension, and a history of nicotine consumption. The DeLong test confirmed that the ML model performed significantly better than random classification with an AUC of 0.5 ( < 0.001). Further analysis revealed that the presence of multiple aneurysms and localization at the basilar artery were independent risk factors for early recurrence within six months. For aneurysm rupture, key predictive features included advanced age, basilar artery localization, atherosclerosis, irregular aneurysm morphology, and familial predisposition. : ML algorithms identified several risk factors for recurrence and rupture of intracranial aneurysms of the posterior circulation, aligning with previously established risk factors. These findings are intended to serve as a basis for further research in clinical use and prospective studies.

摘要

后循环颅内动脉瘤具有特殊的临床意义,因为与前循环动脉瘤相比,它们破裂相关的发病率和死亡率更高。此外,它们的复发倾向增加,给长期管理带来挑战。本研究的目的是通过基于机器学习的分析确定关键风险因素,并定义高危动脉瘤早期检测的标准。

本研究采用机器学习(ML),与传统统计方法不同,它可以在没有预定义假设的情况下检测复杂的、以前未被识别的模式,以预测后循环颅内动脉瘤患者的复发和破裂。回顾性筛选了2008年至2020年期间的229例患者,并使用ML算法分析数据集。为避免偏差,采用了10倍交叉验证,并选择了曲线下面积(AUC)表现最佳的模型。此外,计算模型的敏感性、特异性和准确性作为次要指标。

共纳入229例患者,其中70%以上为女性,年龄超过50岁,且诊断为动脉高血压。ML模型确定的动脉瘤复发的最显著预测因素(AUC为0.74,敏感性为0.76,特异性为0.70,准确性为0.76)是年龄、动脉瘤大小、动脉高血压和吸烟史。DeLong检验证实,ML模型的表现明显优于AUC为0.5的随机分类(<0.001)。进一步分析显示,多发动脉瘤的存在和基底动脉处的定位是6个月内早期复发的独立危险因素。对于动脉瘤破裂,关键预测特征包括高龄、基底动脉定位、动脉粥样硬化、不规则动脉瘤形态和家族易感性。

ML算法确定了后循环颅内动脉瘤复发和破裂的几个风险因素,与先前确定的风险因素一致。这些发现旨在为临床应用的进一步研究和前瞻性研究提供基础。

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