Lees Ty, Shad-Kaneez Fatima, Simpson Ann M, Nassif Najah T, Lin Yiguang, Lal Sara
Neuroscience Research Unit, School of Life Sciences, University of Technology Sydney, Broadway, NSW, Australia.
School of Life Sciences, University of Technology Sydney, Broadway, NSW, Australia.
Biomark Insights. 2018 Jul 18;13:1177271918786931. doi: 10.1177/1177271918786931. eCollection 2018.
Heart rate variability (HRV) is a non-invasive measure of the function of the autonomic nervous system, and its dynamic nature may provide a means through which stroke and its associated complications may be predicted, monitored, and managed.
The objective of this review is to identify and provide a critique on the most recent uses of HRV in stroke diagnosis/management and highlight areas that warrant further research.
The MEDLINE, CINAHL, and OVID MEDLINE databases were canvassed using a systematic search strategy, for articles investigating the use of HRV in stroke diagnosis and management. Initial paper selections were based on title alone, and final paper inclusion was informed by a full-text critical appraisal.
The systematic search returned 98 records, of which 51 were unique. Following screening, 22 records were included in the final systematic review. The included papers provided some information regarding predicting incident stroke, which largely seems to be best predicted by time- and frequency-domain HRV parameters. Furthermore, post-stroke complications and functionality are similarly predicted by time- and frequency-domain parameters, as well as non-linear parameters in some instances.
Current research provides good evidence that HRV parameters may have utility as a biomarker for stroke and for post-stroke complications and/or functionality. Future research would benefit from the integration of non-linear, and novel parameters, the hybridisation of HRV parameters, and the expansion of the utilisation of predictive regression and hazard modelling.
心率变异性(HRV)是自主神经系统功能的一种非侵入性测量方法,其动态特性可能提供一种预测、监测和管理中风及其相关并发症的手段。
本综述的目的是识别并评论HRV在中风诊断/管理中的最新应用,并突出值得进一步研究的领域。
使用系统搜索策略在MEDLINE、CINAHL和OVID MEDLINE数据库中检索有关研究HRV在中风诊断和管理中应用的文章。最初的论文选择仅基于标题,最终纳入的论文则通过全文批判性评估确定。
系统搜索返回98条记录,其中51条是唯一的。经过筛选,22条记录被纳入最终的系统综述。纳入的论文提供了一些关于预测中风事件的信息,这在很大程度上似乎最好由时域和频域HRV参数预测。此外,中风后并发症和功能同样可由时域和频域参数以及某些情况下的非线性参数预测。
当前研究提供了充分的证据表明HRV参数可能作为中风、中风后并发症和/或功能的生物标志物具有实用价值。未来的研究将受益于非线性和新参数的整合、HRV参数的混合以及预测回归和风险建模应用的扩展。