Mohammad Amin Habibi, Farhang Rashidi, Ehsan Mehrtabar, Mohammad Reza Arshadi, Mohammad Sadegh Fallahi, Nikan Amirkhani, Bardia Hajikarimloo, Milad Shafizadeh, Shahram Majidi, Adam A Dmytriw
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引用次数: 0
摘要
背景:中风是全球死亡和残疾的主要原因。大约三分之一的中风患者会经历第二次中风。本研究探讨了机器学习(ML)算法对复发性中风的预测价值:本研究根据《系统综述和元分析首选报告项目》(Preferred Reporting Items for Systematic Reviews and Meta-Analyses,PRISMA)指南编写。检索了 PubMed、Scopus、Embase 和 Web of Science (WOS),检索期至 2024 年 1 月 1 日。研究质量评估采用 QUADAS-2 工具进行。使用 STATA V.17 中的 MIDAS 软件包进行诊断荟萃分析,计算汇总的敏感性、特异性、诊断准确性、阳性和阴性诊断似然比 (DLR)、诊断准确性、诊断几率比 (DOR) 和曲线下面积 (AUC):结果:共纳入了 12 项研究,涉及 24,350 人。荟萃分析显示灵敏度为 71%(95% 置信区间为 0.64-0.78),特异度为 88%(95% 置信区间为 0.76-0.95)。阳性和阴性DLR分别为5.93(95% CI 3.05-11.55)和0.33(95% CI 0.28-0.39)。诊断准确率和DOR分别为2.89(95% CI 2.32-3.46)和18.04(95% CI 10.21-31.87)。ROC曲线的AUC为0.82(95% CI 0.78-0.85):结论:ML 在预测复发性脑卒中方面具有良好的前景,其灵敏度和特异性均处于中等水平到较高水平。然而,所观察到的高度异质性强调了标准化方法和进一步研究的必要性,以提高这些模型的可靠性和普遍性。基于 ML 的复发性脑卒中预测可通过识别高危患者来增强临床决策并改善患者预后。
The performance of machine learning for predicting the recurrent stroke: a systematic review and meta-analysis on 24,350 patients.
Background: Stroke is a leading cause of death and disability worldwide. Approximately one-third of patients with stroke experienced a second stroke. This study investigates the predictive value of machine learning (ML) algorithms for recurrent stroke.
Method: This study was prepared according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guideline. PubMed, Scopus, Embase, and Web of Science (WOS) were searched until January 1, 2024. The quality assessment of studies was conducted using the QUADAS-2 tool. The diagnostic meta-analysis was conducted to calculate the pooled sensitivity, specificity, diagnostic accuracy, positive and negative diagnostic likelihood ratio (DLR), diagnostic accuracy, diagnostic odds ratio (DOR), and area under of the curve (AUC) by the MIDAS package in STATA V.17.
Results: Twelve studies, comprising 24,350 individuals, were included. The meta-analysis revealed a sensitivity of 71% (95% CI 0.64-0.78) and a specificity of 88% (95% confidence interval (CI) 0.76-0.95). Positive and negative DLR were 5.93 (95% CI 3.05-11.55) and 0.33 (95% CI 0.28-0.39), respectively. The diagnostic accuracy and DOR was 2.89 (95% CI 2.32-3.46) and 18.04 (95% CI 10.21-31.87), respectively. The summary ROC curve indicated an AUC of 0.82 (95% CI 0.78-0.85).
Conclusion: ML demonstrates promise in predicting recurrent strokes, with moderate to high sensitivity and specificity. However, the high heterogeneity observed underscores the need for standardized approaches and further research to enhance the reliability and generalizability of these models. ML-based recurrent stroke prediction can potentially augment clinical decision-making and improve patient outcomes by identifying high-risk patients.
期刊介绍:
Peer-reviewed and published quarterly, Acta Neurologica Belgicapresents original articles in the clinical and basic neurosciences, and also reports the proceedings and the abstracts of the scientific meetings of the different partner societies. The contents include commentaries, editorials, review articles, case reports, neuro-images of interest, book reviews and letters to the editor.
Acta Neurologica Belgica is the official journal of the following national societies:
Belgian Neurological Society
Belgian Society for Neuroscience
Belgian Society of Clinical Neurophysiology
Belgian Pediatric Neurology Society
Belgian Study Group of Multiple Sclerosis
Belgian Stroke Council
Belgian Headache Society
Belgian Study Group of Neuropathology