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Motion and noise artifact-resilient atrial fibrillation detection algorithm for a smartphone

机译:适用于智能手机的运动和噪声伪影弹性房颤检测算法

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We have developed a motion and noise artifact (MNA)-resilient atrial fibrillation (AF) detection algorithm for smartphones that eliminates MNAs, and then detects AFs in smartphone camera recordings. MNA-corrupted episodes are observed to have larger values of turning point ratio (TPR), pulse slope, or Kurtosis compared to clean AF and normal sinus rhythm (NSR) episodes. On the other hand, AFs are shown to have larger root mean square of successive RR differences (RMSSD) and Shannon Entropy (ShE) [1]. Our developed AF algorithm is capable of separating MNAs, NSRs, AFs, which enhances the specificity of AF detection. We have recruited 88 subjects having AF at baseline and NSR after electrical cardioversion, and 11 subjects having MNA-corrupted NSRs to evaluate the performance of our AF algorithm. The clinical tests show that the proposed AF algorithm gives higher accuracy, sensitivity and specificity of 0.9667, 0.9765, 0.9714 compared to the previous AF algorithm [1].
机译:我们为智能手机开发了一种运动和噪声伪影(MNA)弹性房颤(AF)检测算法,该算法可消除MNA,然后在智能手机相机记录中检测AF。与干净的AF和正常窦性心律(NSR)发作相比,观察到MNA受损的发作具有更大的转折点比率(TPR),脉搏斜率或峰度值。另一方面,AFs具有较大的连续RR差(RMSSD)和Shannon熵(ShE)的均方根[1]。我们开发的AF算法能够分离MNA,NSR和AF,从而增强了AF检测的特异性。我们招募了88名在电复律后在基线和NSR时出现AF的受试者,以及11名在MNA受损的NSR的受试者中评估了我们AF算法的性能。临床测试表明,与以前的AF算法相比,提出的AF算法具有更高的准确性,灵敏度和特异性,分别为0.9667、0.9765、0.9714 [1]。

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