Wang Benqiao, Jiang Bohao, Liu Dan, Zhu Ruixia
Department of Neurology, First Hospital of China Medical University, Shenyang, China.
Department of Urology, First Hospital of China Medical University, Shenyang, China.
J Med Internet Res. 2025 May 23;27:e71654. doi: 10.2196/71654.
Hemorrhagic transformation (HT) is commonly detected in acute ischemic stroke (AIS) and often leads to poor outcomes. Currently, there is no ideal tool for early prediction of HT risk. Recently, machine learning has gained traction in stroke management, prompting the exploration of predictive models for HT. However, systematic evidence on these models is lacking.
In this study, we assessed the predictive capability of machine learning models for HT risk in AIS, aiming to inform the development of HT prediction tools.
We conducted a thorough search of medical databases, such as Web of Science, Embase, Cochrane, and PubMed up until March 2025. The risk of bias was determined through the Prediction Model Risk of Bias Assessment Tool (PROBAST). Subgroup analysis was performed based on treatment backgrounds, diagnostic criteria, and types of HT.
A total of 83 eligible articles were included, containing 106 models and 88,197 patients with AIS with 9323 HT cases. There were 104 validation sets with a total c-index of 0.832 (95% CI 0.814-0.849), sensitivity of 0.82 (95% CI 0.79-0.84), and specificity of 0.78 (95% CI 0.74-0.81). Subgroup analysis indicated that the combined model achieved superior prediction accuracy. Moreover, we also analyzed the predictive performance of 6 mature models.
Currently, although several prediction methods for HT have been developed, their predictive values are not satisfactory. Fortunately, our findings suggest that machine learning methods, particularly those combining clinical features and radiomics, hold promise for improving predictive accuracy. Our meta-analysis may provide evidence-based guidance for the subsequent development of more efficient clinical predictive models for HT.
PROSPERO CRD42024498997; https://www.crd.york.ac.uk/PROSPERO/view/CRD42024498997.
出血性转化(HT)在急性缺血性卒中(AIS)中较为常见,且常导致不良预后。目前,尚无用于早期预测HT风险的理想工具。近年来,机器学习在卒中管理中受到关注,促使人们探索HT的预测模型。然而,缺乏关于这些模型的系统证据。
在本研究中,我们评估了机器学习模型对AIS中HT风险的预测能力,旨在为HT预测工具的开发提供参考。
截至2025年3月,我们对Web of Science、Embase、Cochrane和PubMed等医学数据库进行了全面检索。通过预测模型偏倚风险评估工具(PROBAST)确定偏倚风险。基于治疗背景、诊断标准和HT类型进行亚组分析。
共纳入83篇符合条件的文章,包含106个模型和88197例AIS患者,其中9323例发生HT。有104个验证集,总c指数为0.832(95%CI 0.814-0.849),灵敏度为0.82(95%CI 0.79-0.84),特异度为0.78(95%CI 0.74-0.81)。亚组分析表明,联合模型具有更高的预测准确性。此外,我们还分析了6个成熟模型的预测性能。
目前,虽然已经开发了几种HT预测方法,但其预测价值并不令人满意。幸运的是,我们的研究结果表明,机器学习方法,特别是那些结合临床特征和放射组学的方法,有望提高预测准确性。我们的荟萃分析可能为后续开发更有效的HT临床预测模型提供循证指导。
PROSPERO CRD42024498997;https://www.crd.york.ac.uk/PROSPERO/view/CRD4202449899