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首页> 外文期刊>Heart rhythm: the official journal of the Heart Rhythm Society >Predicting vasovagal syncope from heart rate and blood pressure: A prospective study in 140 subjects
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Predicting vasovagal syncope from heart rate and blood pressure: A prospective study in 140 subjects

机译:从心率和血压预测血管瘤晕厥:140个科目的前瞻性研究

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BackgroundWe developed a vasovagal syncope (VVS) prediction algorithm for use during head-up tilt with simultaneous analysis of heart rate (HR) and systolic blood pressure (SBP). We previously tested this algorithm retrospectively in 1155 subjects, showing sensitivity 95%, specificity 93%, and median prediction time 59 seconds. ObjectiveThe purpose of this prospective, single-center study of 140 subjects was to evaluate this VVS prediction algorithm and to assess whether retrospective results were reproduced and clinically relevant. The primary endpoint was VVS prediction: sensitivity and specificity >80%. MethodsIn subjects referred for 60° head-up tilt (Italian protocol), noninvasive HR and SBP were supplied to the VVS prediction algorithm: simultaneous analysis of RR intervals, SBP trends, and their variability represented by low-frequency power-generated cumulative risk, which was compared with a predetermined VVS risk threshold. When cumulative risk exceeded threshold, an alert was generated. Prediction time was duration between first alert and syncope. ResultsOf the 140 subjects enrolled, data were usable for 134. Of 83 tilt-positive subjects (61.9%), 81 VVS events were correctly predicted by the algorithm, and of 51 tilt-negative subjects (38.1%), 45 were correctly identified as negative by the algorithm. Resulting algorithm performance was sensitivity 97.6% and specificity 88.2%, meeting the primary endpoint. Mean VVS prediction time was 2 minutes 26 seconds ± 3 minutes 16 seconds (median 1 minute 25 seconds). Using only HR and HR variability (without SBP), mean prediction time reduced to 1 minute 34 seconds ± 1 minute 45 seconds (median 1 minute 13 seconds). ConclusionThe VVS prediction algorithm is a clinically relevant tool and could offer applications, including providing a patient alarm, shortening tilt-test time, and triggering pacing intervention in implantable devices.
机译:BackgroundWeware开发了一种仿血管晕厥(VVS)预测算法,用于在抬头倾斜期间使用,同时分析心率(HR)和收缩压(SBP)。我们以前在1155个受试者中回顾性地测试了该算法,显示了灵敏度95%,特异性93%和中值预测时间59秒。客观的目的是,对140个受试者的单中心研究是评估该VVS预测算法,并评估回顾性结果是否复制和临床相关。主要终点是VVS预测:敏感性和特异性> 80%。方法对60°抬头倾斜(意大利协议)的主题,非侵入性HR和SBP被提供给VVS预测算法:同时分析RR间隔,SBP趋势及其低频率发电累积风险所代表的可变性,将其与预定的VVS风险阈值进行比较。当累积风险超过阈值时,生成警报。预测时间是第一个警报和晕厥之间的持续时间。注册的140个受试者,数据可用于134. 83个倾斜阳性受试者(61.9%),通过算法正确预测81个VVS事件,并且51个倾斜阴性受试者(38.1%),45个被正确识别为算法负数。结果算法性能灵敏度为97.6%和特异性88.2%,符合主要终点。平均VVS预测时间为2分26秒±3分16秒(中位1分25秒)。仅使用HR和HR变异性(没有SBP),平均预测时间减少到1分34秒±1分45秒(中位1分17秒)。结论VVS预测算法是临床相关工具,可以提供应用,包括提供患者报警,缩短倾斜测试时间,并在可植入设备中触发起搏干预。

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