Sleep Stage Estimation by Introduction of Sleep Domain Knowledge to AI: Towards Personalized Sleep Counseling System with GenAI

Iko Nakari, K. Takadama
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Abstract

As a first step towards realizing an AI sleep counselor capable of generating personalized advice, this paper proposes a method for monitoring daily sleep conditions with a mattress sensor. To improve the accuracy of sleep stage estimation and to get accurate sleep structure, this paper introduced sleep domain knowledge to machine learning for improving the accuracy of sleep stage estimation. Concretely, the proposed method estimates ultradian rhythm based on the body movement density, updates prediction probabilities of each sleep stage by ML model and applies WAKE/NR3 detection based on the large/small body movement. Through the human subject experiment, the following implications have been revealed: (1) the proposed method improved the percentage of Accuracy by 65.0% from 61.5% and the QWK score by 0.196 from 0.297 by the conventional machine learning method; (2) the proposed method prevents over-NR12 estimating and is useful for understanding sleep structure by estimating REM sleep and NR3 sleep correctly. (3) the correct estimation of ultradian rhythms significantly improved the sleep stage estimation, with an Accuracy of 77.6% and a QWK score of 0.52 when all subjects' ultradian rhythms were estimated correctly.
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通过将睡眠领域知识引入人工智能来估计睡眠阶段:利用 GenAI 开发个性化睡眠咨询系统
作为实现能够生成个性化建议的人工智能睡眠顾问的第一步,本文提出了一种利用床垫传感器监测日常睡眠状况的方法。为了提高睡眠阶段估计的准确性,获得准确的睡眠结构,本文将睡眠领域知识引入机器学习,以提高睡眠阶段估计的准确性。具体来说,本文提出的方法基于身体运动密度估算超昼夜节律,通过 ML 模型更新各睡眠阶段的预测概率,并基于大/小身体运动进行 WAKE/NR3 检测。通过人体实验,揭示了以下意义:(1)拟议方法的准确率从传统机器学习方法的 61.5%提高了 65.0%,QWK 分数从 0.297 提高了 0.196;(2)拟议方法通过正确估计 REM 睡眠和 NR3 睡眠,防止了过度 NR12 估计,有助于了解睡眠结构。(3)对超昼夜节律的正确估计显著改善了睡眠阶段的估计,当所有受试者的超昼夜节律都被正确估计时,准确率为 77.6%,QWK 得分为 0.52。
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