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基于机器学习的血流导向装置治疗颅内动脉瘤完全闭塞的预测评分。

Predictive score for complete occlusion of intracranial aneurysms treated by flow-diverter stents using machine learning.

机构信息

Biosurgical Research Lab (Carpentier Foundation), European Georges-Pompidou Hospital, INSERM UMR_S 1140, University of Paris, Paris, France.

Department of Anatomy, University of Paris, Paris, France.

出版信息

J Neurointerv Surg. 2021 Apr;13(4):341-346. doi: 10.1136/neurintsurg-2020-016748. Epub 2020 Nov 20.

Abstract

BACKGROUND

Complete occlusion of an intracranial aneurysm (IA) after the deployment of a flow-diverter stent is currently unpredictable. The aim of this study was to develop a predictive occlusion score based on pretreatment clinical and angiographic criteria.

METHODS

Consecutive patients with ≥6 months follow-up were included from 2008 to 2019 and retrospectively analyzed. Each IA was evaluated using the Raymond-Roy occlusion classification (RROC) and dichotomized as occluded (A) or residual (B/C); 80% of patients were randomly assigned to the training sample. Feature selection and binary outcome prediction relied on logistic regression and threshold maximizing class separation selected by a CART tree algorithm. The feature selection was addressed by a genetic algorithm selected from the 30 pretreatment available variables.

RESULTS

The study included 146 patients with 154 IAs. Feature selection yielded a combination of six variables with a good cross-validated accuracy on the test sample, a combination we labeled DIANES score (IA diameter, indication, parent artery diameter ratio, neck ratio, side-branch artery, and sex). A score of more than -6 maximized the ability to predict RROC=A with sensitivity of 87% (95% CI 79% to 95%) and specificity of 82% (95% CI 64% to 96%) in the training sample. Accuracy was 86% (95% CI 79% to 94%). In the test sample, sensitivity and specificity were 89% (95% CI 77% to 98%) and 60% (95% CI 33% to 86%), respectively. Accuracy was 81% (95% CI 69% to 91%).

CONCLUSION

A score was developed as a grading scale for prediction of the final occlusion status of IAs treated with a flow-diverter stent.

摘要

背景

目前无法预测颅内动脉瘤(IA)在放置血流导向支架后的完全闭塞情况。本研究旨在根据治疗前的临床和血管造影标准开发一种预测性闭塞评分。

方法

回顾性分析 2008 年至 2019 年期间随访时间≥6 个月的连续患者。使用 Raymond-Roy 闭塞分类(RROC)评估每个 IA,并将其分为闭塞(A)或残留(B/C);80%的患者被随机分配到训练样本中。特征选择和二分类结果预测依赖于逻辑回归和通过 CART 树算法选择的最大阈值分类分离。特征选择通过从 30 个预处理可用变量中选择的遗传算法来实现。

结果

该研究纳入了 146 例患者的 154 个 IA。特征选择产生了一组 6 个变量,在测试样本中具有良好的交叉验证准确性,我们将其标记为 DIANES 评分(IA 直径、适应证、母动脉直径比、颈部比、侧支动脉和性别)。评分大于-6 可最大程度地提高在训练样本中预测 RROC=A 的能力,其敏感性为 87%(95%可信区间 79%至 95%),特异性为 82%(95%可信区间 64%至 96%)。在测试样本中,敏感性和特异性分别为 89%(95%可信区间 77%至 98%)和 60%(95%可信区间 33%至 86%),准确性为 81%(95%可信区间 69%至 91%)。

结论

开发了一种评分系统,作为预测血流导向支架治疗的 IA 最终闭塞状态的分级标准。

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