Physical Activity Evaluation Using a Voice Recognition App: Development and Validation Study.

Hideyuki Namba
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Abstract

Background: Historically, the evaluation of physical activity has involved a variety of methods such as the use of questionnaires, accelerometers, behavior records, and global positioning systems, each according to the purpose of the evaluation. The use of web-based physical activity evaluation systems has been proposed as an easy method for collecting physical activity data. Voice recognition technology not only eliminates the need for questionnaires during physical activity evaluation but also enables users to record their behavior without physically touching electronic devices. The use of a web-based voice recognition system might be an effective way to record physical activity and behavior.

Objective: The purpose of this study was to develop a physical activity evaluation app to record behavior using voice recognition technology and to examine the app's validity by comparing data obtained using both the app and an accelerometer simultaneously.

Methods: A total of 20 participants (14 men, 6 women; mean age 19.1 years, SD 0.9) wore a 3-axis accelerometer and inputted behavioral data into their smartphones for a period of 7 days. We developed a behavior-recording system with a voice recognition function using a voice recognition application programming interface. The exercise intensity was determined from the text data obtained by the voice recognition program. The measure of intensity was metabolic equivalents (METs).

Results: From the voice input data of the participants, 601 text-converted data could be confirmed, of which 471 (78.4%) could be automatically converted into behavioral words. In the time-matched analysis, the mean daily METs values measured by the app and the accelerometer were 1.64 (SD 0.20) and 1.63 (SD 0.20), respectively, between which there was no significant difference (P=.57). There was a significant correlation between the average METs obtained from the voice recognition app and the accelerometer in the time-matched analysis (r=0.830, P<.001). In the Bland-Altman plot for METs measured by the voice recognition app as compared with METs measured by accelerometer, the mean difference between the two methods was very small (0.02 METs), with 95% limits of agreement from -0.26 to 0.22 METs between the two methods.

Conclusions: The average METs value measured by the voice recognition app was consistent with that measured by the 3-axis accelerometer and, thus, the data gathered by the two measurement methods showed a high correlation. The voice recognition method also demonstrated the ability of the system to measure the physical activity of a large number of people at the same time with less burden on the participants. Although there were still issues regarding the improvement of automatic text data classification technology and user input compliance, this research proposes a new method for evaluating physical activity using voice recognition technology.

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使用语音识别应用程序进行体育活动评估:开发与验证研究
背景:从历史上看,体力活动评估涉及多种方法,如使用调查问卷、加速度计、行为记录和全球定位系统,每种方法都根据评估目的而定。有人提出,使用基于网络的体力活动评估系统是收集体力活动数据的一种简便方法。语音识别技术不仅省去了体力活动评估过程中的问卷调查,还能让用户在不接触电子设备的情况下记录自己的行为。使用网络语音识别系统可能是记录身体活动和行为的有效方法:本研究的目的是开发一款使用语音识别技术记录行为的体力活动评估应用程序,并通过比较同时使用该应用程序和加速度计获得的数据来检验该应用程序的有效性:共有 20 名参与者(14 名男性,6 名女性;平均年龄 19.1 岁,SD 0.9)佩戴了三轴加速度计,并在智能手机上输入了为期 7 天的行为数据。我们利用语音识别应用程序接口开发了一个具有语音识别功能的行为记录系统。运动强度是通过语音识别程序获得的文本数据确定的。运动强度的衡量标准是代谢当量(METs):结果:从参与者的语音输入数据中,可以确认 601 个文本转换数据,其中 471 个(78.4%)可以自动转换为行为词。在时间匹配分析中,应用程序和加速度计测得的平均每日 METs 值分别为 1.64(SD 0.20)和 1.63(SD 0.20),两者之间无显著差异(P=0.57)。在时间匹配分析中,语音识别应用程序和加速度计获得的平均 METs 之间存在明显相关性(r=0.830,PConclusions:语音识别应用程序测得的平均 METs 值与三轴加速度计测得的值一致,因此,两种测量方法收集的数据显示出高度相关性。语音识别方法还证明了该系统能够同时测量大量人员的体力活动,减轻了参与者的负担。虽然在自动文本数据分类技术的改进和用户输入的合规性方面仍存在问题,但本研究提出了一种利用语音识别技术评估体力活动的新方法。
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