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2B‐Alert App: A mobile application for real‐time individualized prediction of alertness

机译:2B-Alert App:用于实时个性化警报预测的移动应用程序

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摘要

Knowing how an individual responds to sleep deprivation is a requirement for developing personalized fatigue management strategies. Here we describe and validate the App, the first mobile application that progressively learns an individual’s trait‐like response to sleep deprivation in real time, to generate increasingly more accurate individualized predictions of alertness. We incorporated a Bayesian learning algorithm within the validated Unified Model of Performance to automatically and gradually adapt the model parameters to an individual after each psychomotor vigilance test. We implemented the resulting model and the psychomotor vigilance test as a smartphone application ( App), and prospectively validated its performance in a 62‐hr total sleep deprivation study in which 21 participants used the app to perform psychomotor vigilance tests every 3 hr and obtain real‐time individualized predictions after each test. The temporal profiles of reaction times on the app‐conducted psychomotor vigilance tests were well correlated with and as sensitive as those obtained with a previously characterized psychomotor vigilance test device. The app progressively learned each individual’s trait‐like response to sleep deprivation throughout the study, yielding increasingly more accurate predictions of alertness for the last 24 hr of total sleep deprivation as the number of psychomotor vigilance tests increased. After only 12 psychomotor vigilance tests, the accuracy of the model predictions was comparable to the peak accuracy obtained using all psychomotor vigilance tests. With the ability to make real‐time individualized predictions of the effects of sleep deprivation on future alertness, the App can be used to tailor personalized fatigue management strategies, facilitating self‐management of alertness and safety in operational and non‐operational settings.
机译:了解个人如何应对睡眠不足是开发个性化疲劳管理策略的要求。在这里,我们描述并验证了该应用程序,这是第一个移动应用程序,它可以逐步了解实时的个体对睡眠剥夺的特质反应,以生成越来越准确的个性化警报预测。我们在经过验证的性能统一模型中纳入了贝叶斯学习算法,可以在每次进行心理运动警惕性测试后自动将模型参数逐步适应个体。我们将生成的模型和心理运动警惕性测试作为智能手机应用程序(App)进行了实施,并在62小时的睡眠剥夺研究中前瞻性地验证了其性能,该研究每21小时就有21名参与者使用该应用程序进行心理运动警惕性测试,并获得真实的每次测试后进行时间个性化的预测。应用程序进行的心理运动警觉性测试中反应时间的时间曲线与以前表征的心理运动警觉性测试设备获得的相关性和敏感性一样高。该应用程序在整个研究过程中逐渐了解每个人对睡眠剥夺的特质样反应,随着心理运动警惕性测试次数的增加,对总睡眠剥夺的最后24小时内的警觉性的预测越来越准确。仅进行了12次心理运动警惕性测试后,模型预测的准确性与使用所有心理运动警惕性测试获得的峰值准确性相当。该应用程序能够对睡眠不足对未来的警觉性进行实时的个性化预测,可用于定制个性化的疲劳管理策略,从而促进在操作和非操作环境中对警觉性和安全性进行自我管理。

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