Alhakeem Ayat, Chaurasia Bipin, Khan Muhammad Mohsin
Weiss Memorial Hospital, Chicago, USA.
Department of Neurosurgery, College of Medical Sciences, Bharatpur, 44200, Nepal.
Neurosurg Rev. 2025 May 29;48(1):458. doi: 10.1007/s10143-025-03629-4.
Wearable technology, combined with artificial intelligence (AI) and machine learning (ML) algorithms, opens up new frontiers for continuously monitoring physiological or behavioural data, allowing the identification of stroke risk factors at an earlier stage. A systematic search was performed in PubMed, IEEE Xplore, Scopus, Google Scholar, Cochrane Library, and Web of Science, following the PRISMA guidelines. The search aimed to include studies using wearable devices incorporating AI/ML models for real-time stroke prediction. The reviewed studies were characterized according to methodology, population characteristics, device specifications, specific AI/ML models employed, outcome measures such as predictive accuracy, sensitivity, and specificity, and their main findings. In our review, we identified 5 studies that met our inclusion criteria.The review also finds that AI-enhanced wearables may offer the accurate prediction of stroke events, with most studies reporting high predictive performance. Sensor-equipped wearable devices to measure vital parameters, such as blood pressure and heart rate variability, when combined with AI models, can provide greater sensitivity and very good specificity in identifying early signs of diseases. However, differences in the accuracy of devices and a lack of transparency in AI algorithms imply some practical challenges. These findings highlight the potential of wearable technologies driven by AI-ML for non-invasive, real-time stroke monitoring and risk assessment, although further research will be required to optimize model reliability and device usability. This review consolidates current evidence supporting the clinical application of wearable AI/ML technology and advocates for its advancement in stroke prevention and patient care.
可穿戴技术与人工智能(AI)和机器学习(ML)算法相结合,为持续监测生理或行为数据开辟了新的领域,有助于在更早阶段识别中风风险因素。按照PRISMA指南,我们在PubMed、IEEE Xplore、Scopus、谷歌学术、考克兰图书馆和科学网进行了系统检索。检索旨在纳入使用结合了AI/ML模型的可穿戴设备进行实时中风预测的研究。根据方法、人群特征、设备规格、所采用的特定AI/ML模型、诸如预测准确性、敏感性和特异性等结果指标及其主要发现,对纳入综述的研究进行了特征描述。在我们的综述中,我们确定了5项符合纳入标准的研究。该综述还发现,人工智能增强的可穿戴设备可能能够准确预测中风事件,大多数研究报告了较高的预测性能。配备传感器的可穿戴设备用于测量重要参数,如血压和心率变异性,当与人工智能模型结合时,在识别疾病早期迹象方面可以提供更高的敏感性和非常好的特异性。然而,设备准确性的差异以及人工智能算法缺乏透明度意味着一些实际挑战。这些发现凸显了由AI-ML驱动的可穿戴技术在非侵入性实时中风监测和风险评估方面的潜力,尽管还需要进一步研究来优化模型可靠性和设备可用性。本综述汇总了支持可穿戴AI/ML技术临床应用的现有证据,并倡导其在中风预防和患者护理方面取得进展。