睡眠中に疾病のリスクを予測する新しいAIモデル (New AI model predicts disease risk while you sleep)

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2026-01-06 アメリカ合衆国・スタンフォード大学

スタンフォード大学の研究チームは、睡眠データを解析するAIモデルを開発し、睡眠障害の診断精度向上に成功した。このAIは脳波などの睡眠計測データを詳細に解析し、従来の人手による分類よりも高精度かつ一貫した判定を可能にする。特に、睡眠段階の分類や異常パターンの検出において優れた性能を示し、医師の診断支援として有効であることが確認された。また、患者ごとの睡眠の特徴をより細かく把握できるため、個別化医療への応用も期待される。本成果は、睡眠医療の効率化と質の向上に貢献し、将来的には在宅モニタリングなどへの展開も見込まれる。

<関連情報>

疾患予測のためのマルチモーダル睡眠基盤モデル A multimodal sleep foundation model for disease prediction

Rahul Thapa,Magnus Ruud Kjaer,Bryan He,Ian Covert,Hyatt Moore IV,Umaer Hanif,Gauri Ganjoo,M. Brandon Westover,Poul Jennum,Andreas Brink-Kjaer,Emmanuel Mignot & James Zou
Nature Medicine  Published:06 January 2026
DOI:https://doi.org/10.1038/s41591-025-04133-4

睡眠中に疾病のリスクを予測する新しいAIモデル (New AI model predicts disease risk while you sleep)

Abstract

Sleep is a fundamental biological process with broad implications for physical and mental health, yet its complex relationship with disease remains poorly understood. Polysomnography (PSG)—the gold standard for sleep analysis—captures rich physiological signals but is underutilized due to challenges in standardization, generalizability and multimodal integration. To address these challenges, we developed SleepFM, a multimodal sleep foundation model trained with a new contrastive learning approach that accommodates multiple PSG configurations. Trained on a curated dataset of over 585,000 hours of PSG recordings from approximately 65,000 participants across several cohorts, SleepFM produces latent sleep representations that capture the physiological and temporal structure of sleep and enable accurate prediction of future disease risk. From one night of sleep, SleepFM accurately predicts 130 conditions with a C-Index of at least 0.75 (Bonferroni-corrected P < 0.01), including all-cause mortality (C-Index, 0.84), dementia (0.85), myocardial infarction (0.81), heart failure (0.80), chronic kidney disease (0.79), stroke (0.78) and atrial fibrillation (0.78). Moreover, the model demonstrates strong transfer learning performance on a dataset from the Sleep Heart Health Study—a dataset that was excluded from pretraining—and performs competitively with specialized sleep-staging models such as U-Sleep and YASA on common sleep analysis tasks, achieving mean F1 scores of 0.70–0.78 for sleep staging and accuracies of 0.69 and 0.87 for classifying sleep apnea severity and presence. This work shows that foundation models can learn the language of sleep from multimodal sleep recordings, enabling scalable, label-efficient analysis and disease prediction.

医療・健康
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