The Combination of Topological Data Analysis and Mathematical Modeling Improves Sleep Stage Prediction From Consumer-Grade Wearables.

IF 2.9 3区 生物学 Q2 BIOLOGY
Minki P Lee, Dae Wook Kim, Caleb Mayer, Olivia Walch, Daniel B Forger
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引用次数: 0

Abstract

Wearable devices have become commonplace tools for tracking behavioral and physiological parameters in real-world settings. Nonetheless, the practical utility of these data for clinical and research applications, such as sleep analysis, is hindered by their noisy, large-scale, and multidimensional characteristics. Here, we develop a neural network algorithm that predicts sleep stages by tracking topological features (TFs) of wearable data and model-driven clock proxies (CPs) reflecting the circadian propensity for sleep. To evaluate its accuracy, we apply it to motion and heart rate data from the Apple Watch worn by young subjects undergoing polysomnography (PSG) and compare the predicted sleep stages with the corresponding ground truth PSG records. The neural network that includes TFs and CPs along with raw wearable data as inputs shows improved performance in classifying Wake/REM/NREM sleep. For example, it shows significant improvements in identifying REM and NREM sleep (AUROC/AUPRC improvements >13% and REM/NREM accuracy improvement of 12%) compared with the neural network using only raw data inputs. We find that this improvement is mainly attributed to the heart rate TFs. To further validate our algorithm on a different population, we test it on elderly subjects from the Multi-ethnic Study of Atherosclerosis cohort. This confirms that TFs and CPs contribute to the improvements in Wake/REM/NREM classification. We next compare the performance of our algorithm with previous state-of-the-art wearable-based sleep scoring algorithms and find that our algorithm outperforms them within and across different populations. This study demonstrates the benefits of combining topological data analysis and mathematical modeling to extract hidden inputs of neural networks from puzzling wearable data.

拓扑数据分析与数学建模的结合改善了消费级可穿戴设备的睡眠阶段预测。
可穿戴设备已成为现实世界中追踪行为和生理参数的常用工具。然而,这些数据在临床和研究应用(如睡眠分析)中的实际效用却受到其噪声、大规模和多维特性的阻碍。在此,我们开发了一种神经网络算法,通过跟踪可穿戴数据的拓扑特征(TFs)和反映睡眠昼夜倾向的模型驱动时钟代理(CPs)来预测睡眠阶段。为了评估其准确性,我们将其应用于接受多导睡眠图(PSG)检查的年轻受试者佩戴的 Apple Watch 的运动和心率数据,并将预测的睡眠阶段与相应的地面真实 PSG 记录进行比较。包含 TF 和 CP 以及原始可穿戴数据作为输入的神经网络在对清醒/快速动眼期/快速动眼期睡眠进行分类时表现出了更好的性能。例如,与仅使用原始数据输入的神经网络相比,它在识别快速动眼期和非快速动眼期睡眠(AUROC/AUPRC 提高 >13%,快速动眼期/非快速动眼期准确率提高 12%)方面有了显著提高。我们发现,这一改进主要归功于心率 TF。为了在不同人群中进一步验证我们的算法,我们在多种族动脉粥样硬化研究队列中的老年受试者身上进行了测试。这证实了 TFs 和 CPs 有助于改善清醒/快速眼动/快速眼动分类。接下来,我们将我们算法的性能与之前最先进的基于可穿戴设备的睡眠评分算法进行了比较,发现我们的算法在不同人群中的表现都优于这些算法。这项研究证明了将拓扑数据分析与数学建模相结合,从令人费解的可穿戴数据中提取神经网络隐藏输入的好处。
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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来源期刊
CiteScore
6.10
自引率
8.60%
发文量
48
审稿时长
>12 weeks
期刊介绍: Journal of Biological Rhythms is the official journal of the Society for Research on Biological Rhythms and offers peer-reviewed original research in all aspects of biological rhythms, using genetic, biochemical, physiological, behavioral, epidemiological & modeling approaches, as well as clinical trials. Emphasis is on circadian and seasonal rhythms, but timely reviews and research on other periodicities are also considered. The journal is a member of the Committee on Publication Ethics (COPE).
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