急性抑郁症患者接受睡眠剥夺治疗的瞬间抑郁严重程度预测:基于语音的机器学习方法。

IF 4.8 2区 医学 Q1 PSYCHIATRY Jmir Mental Health Pub Date : 2024-12-23 DOI:10.2196/64578
Lisa-Marie Hartnagel, Daniel Emden, Jerome C Foo, Fabian Streit, Stephanie H Witt, Josef Frank, Matthias F Limberger, Sara E Schmitz, Maria Gilles, Marcella Rietschel, Tim Hahn, Ulrich W Ebner-Priemer, Lea Sirignano
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引用次数: 0

摘要

背景:用于远程监测的移动设备是支持治疗和患者护理的不可避免的工具,特别是在复发性疾病,如重度抑郁症中。本研究的目的是了解基于纵向语音数据的机器学习(ML)模型是否有助于预测瞬时抑郁严重程度。数据分析基于一个数据集,其中包括30名急性抑郁发作的住院患者,他们在固定护理中接受睡眠剥夺治疗,这是一种在相对较短的时间内诱导抑郁症状快速变化的干预措施。采用动态评估方法,我们收集了语音样本,并在治疗前、治疗中和治疗后的3周内通过自我报告问卷评估了伴随抑郁的严重程度。我们使用来自开源大空间提取(audEERING)语音和音乐解释工具包的扩展日内瓦极简声学参数集和额外的语音率参数从语音样本中提取了89个语音特征。目的:我们旨在了解与之前的统计分析相比,多参数ML方法是否能显著提高预测,以及哪种分离训练数据和测试数据的机制最成功,特别是关注个性化预测的思想。方法:为此,我们训练和评估了一组bbb500ml的管道,包括随机森林、线性回归、支持向量回归和极端梯度增强回归模型,并在5种不同的训练-测试分割场景下对它们进行了测试:在受试者水平上的组5倍嵌套交叉验证、留一个受试者出来的方法、时间分割、奇偶分割和随机分割。结果:在五重交叉验证、留一被试和时间分割方法中,模型与随机机会均无统计学差异。另外两种方法对至少一个被测试的模型产生了显著的结果,具有相似的性能。总的来说,在奇偶分裂方法中,最优模型是一个极端梯度增强模型(R²=0.339,平均绝对误差=0.38;结论:总的来说,我们的分析强调ML无法预测未见患者的抑郁评分,但与我们之前的多水平模型分析相比,预测性能显著提高。我们的结论是,未来的个性化ML模型可能会进一步提高预测性能,从而带来更好的患者管理和护理。
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Momentary Depression Severity Prediction in Patients With Acute Depression Who Undergo Sleep Deprivation Therapy: Speech-Based Machine Learning Approach.

Background: Mobile devices for remote monitoring are inevitable tools to support treatment and patient care, especially in recurrent diseases such as major depressive disorder. The aim of this study was to learn if machine learning (ML) models based on longitudinal speech data are helpful in predicting momentary depression severity. Data analyses were based on a dataset including 30 inpatients during an acute depressive episode receiving sleep deprivation therapy in stationary care, an intervention inducing a rapid change in depressive symptoms in a relatively short period of time. Using an ambulatory assessment approach, we captured speech samples and assessed concomitant depression severity via self-report questionnaire over the course of 3 weeks (before, during, and after therapy). We extracted 89 speech features from the speech samples using the Extended Geneva Minimalistic Acoustic Parameter Set from the Open-Source Speech and Music Interpretation by Large-Space Extraction (audEERING) toolkit and the additional parameter speech rate.

Objective: We aimed to understand if a multiparameter ML approach would significantly improve the prediction compared to previous statistical analyses, and, in addition, which mechanism for splitting training and test data was most successful, especially focusing on the idea of personalized prediction.

Methods: To do so, we trained and evaluated a set of >500 ML pipelines including random forest, linear regression, support vector regression, and Extreme Gradient Boosting regression models and tested them on 5 different train-test split scenarios: a group 5-fold nested cross-validation at the subject level, a leave-one-subject-out approach, a chronological split, an odd-even split, and a random split.

Results: In the 5-fold cross-validation, the leave-one-subject-out, and the chronological split approaches, none of the models were statistically different from random chance. The other two approaches produced significant results for at least one of the models tested, with similar performance. In total, the superior model was an Extreme Gradient Boosting in the odd-even split approach (R²=0.339, mean absolute error=0.38; both P<.001), indicating that 33.9% of the variance in depression severity could be predicted by the speech features.

Conclusions: Overall, our analyses highlight that ML fails to predict depression scores of unseen patients, but prediction performance increased strongly compared to our previous analyses with multilevel models. We conclude that future personalized ML models might improve prediction performance even more, leading to better patient management and care.

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来源期刊
Jmir Mental Health
Jmir Mental Health Medicine-Psychiatry and Mental Health
CiteScore
10.80
自引率
3.80%
发文量
104
审稿时长
16 weeks
期刊介绍: JMIR Mental Health (JMH, ISSN 2368-7959) is a PubMed-indexed, peer-reviewed sister journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR Mental Health focusses on digital health and Internet interventions, technologies and electronic innovations (software and hardware) for mental health, addictions, online counselling and behaviour change. This includes formative evaluation and system descriptions, theoretical papers, review papers, viewpoint/vision papers, and rigorous evaluations.
期刊最新文献
Patterns of Skills Review in Smartphone Cognitive Behavioral Therapy for Depression: Observational Study of Intervention Content Use. Exploring the Ethical Challenges of Conversational AI in Mental Health Care: Scoping Review. Multimodal Digital Phenotyping Study in Patients With Major Depressive Episodes and Healthy Controls (Mobile Monitoring of Mood): Observational Longitudinal Study. Toward a New Conceptual Framework for Digital Mental Health Technologies: Scoping Review. Digital Migration of the Loewenstein Acevedo Scales for Semantic Interference and Learning (LASSI-L): Development and Validation Study in Older Participants.
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