Prediction of depressive symptoms severity based on sleep quality, anxiety, and gray matter volume: a generalizable machine learning approach across three datasets.

IF 9.7 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL EBioMedicine Pub Date : 2024-09-09 DOI:10.1016/j.ebiom.2024.105313
Mahnaz Olfati,Fateme Samea,Shahrooz Faghihroohi,Somayeh Maleki Balajoo,Vincent Küppers,Sarah Genon,Kaustubh Patil,Simon B Eickhoff,Masoud Tahmasian
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Abstract

BACKGROUND Depressive symptoms are rising in the general population, but their associated factors are unclear. Although the link between sleep disturbances and depressive symptoms severity (DSS) is reported, the predictive role of sleep on DSS and the impact of anxiety and the brain on their relationship remained obscure. METHODS Using three population-based datasets (N = 1813), we trained the machine learning models in the primary dataset (N = 1101) to assess the predictive role of sleep quality, anxiety problems, and brain structural (and functional) measurements on DSS, then we tested our models' performance in two independent datasets (N = 378, N = 334) to test the generalizability of our findings. Furthermore, we applied our model to a smaller longitudinal subsample (N = 66). In addition, we performed a mediation analysis to identify the role of anxiety and brain measurements on the sleep quality and DSS association. FINDINGS Sleep quality could predict individual DSS (r = 0.43, R2 = 0.18, rMSE = 2.73), and adding anxiety, contrary to brain measurements, strengthened its prediction performance (r = 0.67, R2 = 0.45, rMSE = 2.25). Importantly, out-of-cohort validations in other cross-sectional datasets and a longitudinal subsample provided robust similar results. Furthermore, anxiety scores, contrary to brain measurements, mediated the association between sleep quality and DSS. INTERPRETATION Poor sleep quality could predict DSS at the individual subject level across three datasets. Anxiety scores not only increased the predictive model's performance but also mediated the link between sleep quality and DSS. FUNDING The study is supported by Helmholtz Imaging Platform grant (NimRLS, ZTI-PF-4-010), the Deutsche Forschungsgemeinschaft (DFG, GE 2835/2-1, GE 2835/4-1), the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation)-Project-ID 431549029-SFB 1451, the programme "Profilbildung 2020" (grant no. PROFILNRW-2020-107-A), an initiative of the Ministry of Culture and Science of the State of Northrhine Westphalia.
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基于睡眠质量、焦虑和灰质体积预测抑郁症状严重程度:一种跨越三个数据集的通用机器学习方法。
背景抑郁症状在普通人群中呈上升趋势,但其相关因素尚不清楚。虽然有报道称睡眠障碍与抑郁症状严重程度(DSS)之间存在联系,但睡眠对 DSS 的预测作用以及焦虑和大脑对两者关系的影响仍然模糊不清。方法通过三个基于人群的数据集(N = 1813),我们在主要数据集(N = 1101)中训练了机器学习模型,以评估睡眠质量、焦虑问题和大脑结构(和功能)测量对抑郁症状的预测作用,然后我们在两个独立的数据集(N = 378、N = 334)中测试了模型的性能,以检验我们的发现是否具有普遍性。此外,我们还将模型应用于一个较小的纵向子样本(N = 66)。此外,我们还进行了中介分析,以确定焦虑和大脑测量对睡眠质量与 DSS 关联的作用。结果睡眠质量可以预测个体 DSS(r = 0.43,R2 = 0.18,rMSE = 2.73),与大脑测量相反,焦虑的加入增强了其预测性能(r = 0.67,R2 = 0.45,rMSE = 2.25)。重要的是,在其他横截面数据集和一个纵向子样本中进行的队列外验证也提供了类似的可靠结果。此外,与脑部测量结果相反,焦虑评分在睡眠质量与DSS之间起着中介作用。焦虑评分不仅能提高预测模型的性能,还能调节睡眠质量与DSS之间的联系。资金来源这项研究得到了亥姆霍兹成像平台基金(NimRLS,ZTI-PF-4-010)、德国研究基金会(DFG,GE 2835/2-1,GE 2835/4-1)、德国研究基金会项目编号 431549029-SFB 1451、北威州文化与科学部倡议的 "Profilbildung 2020 "计划(资助编号 PROFILNRW-2020-107-A)的支持。
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来源期刊
EBioMedicine
EBioMedicine Biochemistry, Genetics and Molecular Biology-General Biochemistry,Genetics and Molecular Biology
CiteScore
17.70
自引率
0.90%
发文量
579
审稿时长
5 weeks
期刊介绍: eBioMedicine is a comprehensive biomedical research journal that covers a wide range of studies that are relevant to human health. Our focus is on original research that explores the fundamental factors influencing human health and disease, including the discovery of new therapeutic targets and treatments, the identification of biomarkers and diagnostic tools, and the investigation and modification of disease pathways and mechanisms. We welcome studies from any biomedical discipline that contribute to our understanding of disease and aim to improve human health.
期刊最新文献
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