Bayraktar Esref Alperen, Cortese Jonathan, Jabal Mohamed Sobhi, Ghozy Sherief, Orscelik Atakan, Bilgin Cem, Kadirvel Ramanathan, Brinjikji Waleed, Kallmes David F
Department of Radiology, Mayo Clinic, Rochester, Minnesota, USA
Department of Radiology, Mayo Clinic, Rochester, Minnesota, USA.
J Neurointerv Surg. 2025 Jan 26. doi: 10.1136/jnis-2024-022147.
As the use of flow diverters has expanded in recent years, predicting successful outcomes has become more challenging for certain aneurysms.
To provide neurointerventionalists with an understanding of the available machine learning algorithms for predicting the success of flow diverters in occluding aneurysms.
This study followed Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines, and the four major medical databases (PubMed, Embase, Scopus, Web of Science) were screened. The study included original research articles that evaluated the predictive abilities of various machine learning algorithms for determining the success of flow diverters in achieving aneurysm occlusion.
Five studies out of 217 were included based on our criteria. The included studies used various variables (patient demographics, aneurysm and parent artery characteristics, flow diverter and hemodynamic-related features, and angiographic parametric imaging) to predict flow diverter treatment outcomes. The machine learning algorithms used, along with their respective accuracy rates, were as follows: logistic regression (61% and 85%), support vector machine (88%), Gaussian support vector machine (90%), linear support vector machine (85%), decision tree (80%), random forest (87%), k-nearest neighbors (83% and 85%), XGBoost (87%), CatBoost (86%), deep neural networks (77.9%), and recurrent neural networks (74%).Two studies trained the machine learning models with both all features and the most significant features. Both studies observed that the accuracy of machine learning models decreased by removing the insignificant features.
The current literature indicates that machine learning algorithms can be trained to predict the success of flow diverters with an accuracy of up to 90%.
近年来,随着血流导向装置的应用不断扩大,对于某些动脉瘤而言,预测成功的治疗结果变得更具挑战性。
让神经介入医生了解可用于预测血流导向装置封堵动脉瘤成功率的机器学习算法。
本研究遵循系统评价与荟萃分析的首选报告项目(PRISMA)指南,对四个主要医学数据库(PubMed、Embase、Scopus、Web of Science)进行筛选。该研究纳入了评估各种机器学习算法预测血流导向装置实现动脉瘤封堵成功率的原始研究文章。
根据我们的标准,从217项研究中纳入了5项研究。纳入的研究使用了各种变量(患者人口统计学、动脉瘤和供血动脉特征、血流导向装置和血流动力学相关特征以及血管造影参数成像)来预测血流导向装置的治疗结果。所使用的机器学习算法及其各自的准确率如下:逻辑回归(61%和85%)、支持向量机(88%)、高斯支持向量机(90%)、线性支持向量机(85%)、决策树(80%)、随机森林(87%)、k近邻(83%和85%)、XGBoost(87%)、CatBoost(86%)、深度神经网络(77.9%)和循环神经网络(74%)。两项研究使用所有特征和最显著特征训练机器学习模型。两项研究均观察到,去除不显著特征后,机器学习模型的准确率下降。
当前文献表明,可以训练机器学习算法来预测血流导向装置的成功率,准确率高达90%。