I am a "Smart" watch, Smart Enough to Know the Accuracy of My Own Heart Rate Sensor

Ho-Kyeong Ra, Jungmo Ahn, Hee-Jung Yoon, D. Yoon, S. Son, Jeonggil Ko
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引用次数: 24

Abstract

With the wide-distribution of smart wearables, it seems as though ubiquitous healthcare can finally permeate into our everyday lives, opening the possibility to realize clinical-grade applications. However, given that clinical applications require reliable sensing, there is a need to understand how accurate healthcare sensors on wearable devices (e.g., heart rate sensors) are. To answer this question, this work starts with a thorough investigation on the accuracy of widely used wearable devices' heart rate sensors. Specifically, we show that when actively moving, heart rate readings can diverge far from the ground truth, and also show that such inaccuracies cannot be easily correlated, nor predicted, using accelerometer and gyroscope measurements. Rather, we point out that the light intensity readings at the photoplethysmography (PPG) sensor can be an effective indicator of heart rate accuracy. Using a Viterbi algorithm-based Hidden Markov Model, we show that it is possible to design a filter that allows smartwatches to self-classify measurement quality with ~ 98% accuracy. Given that such capabilities allow the smartwatch to internally filter misleading values from being application input, we foresee this as an essential step in catalyzing novel clinical-grade wearable applications.
我是一只“智能”手表,智能到可以知道自己的心率传感器的准确性
随着智能可穿戴设备的广泛普及,似乎无处不在的医疗保健终于可以渗透到我们的日常生活中,为实现临床级应用提供了可能。然而,鉴于临床应用需要可靠的传感,有必要了解可穿戴设备上的医疗保健传感器(例如心率传感器)的准确性。为了回答这个问题,这项工作首先要对广泛使用的可穿戴设备的心率传感器的准确性进行彻底的调查。具体来说,我们表明,当积极运动时,心率读数可能偏离地面事实,并且还表明,使用加速度计和陀螺仪测量,这种不准确性不能容易地关联,也不能预测。相反,我们指出,光容积脉搏波(PPG)传感器的光强度读数可以有效地指示心率准确性。使用基于Viterbi算法的隐马尔可夫模型,我们证明可以设计一个滤波器,使智能手表能够以98%的精度对测量质量进行自分类。鉴于这种功能允许智能手表在内部过滤应用程序输入的误导性值,我们预计这将是催化新型临床级可穿戴应用的重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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