通过机器学习解构抑郁症:POKAL-PSY 研究。

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Julia Eder, Lisa Pfeiffer, Sven P Wichert, Benjamin Keeser, Maria S Simon, David Popovic, Catherine Glocker, Andre R Brunoni, Antonius Schneider, Jochen Gensichen, Andrea Schmitt, Richard Musil, Peter Falkai
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引用次数: 0

摘要

单相抑郁症是一种常见的致残性疾病,常常得不到治疗。在门诊环境中,约有 50%的抑郁症病例未能被全科医生识别,这主要是由于躯体并发症所致。鉴于抑郁症对经济、社会和人际关系的重大影响以及其发病率的不断上升,有必要改进门诊护理中对抑郁症的诊断和治疗。为了简化诊断和治疗方法,人们一直在努力分离出抑郁症的个体生物标志物。然而,神经炎症、代谢异常和抑郁症的相关神经生物学相关因素之间错综复杂的动态相互作用尚未完全明了。为了解决这个问题,我们提出了一项自然前瞻性研究,研究对象包括单相抑郁症门诊患者、无抑郁症或合并症患者以及健康对照组。除临床评估外,还将收集心血管参数、代谢因素和炎症参数。在分析中,我们将使用传统统计方法和机器学习算法。我们的目标是通过数据驱动的聚类算法检测相关的参与者亚群及其对受试者长期预后的影响。POKAL-PSY 研究是研究网络 POKAL(抑郁障碍的预测因素和临床结果;GRK 2621)的一个子项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deconstructing depression by machine learning: the POKAL-PSY study.

Unipolar depression is a prevalent and disabling condition, often left untreated. In the outpatient setting, general practitioners fail to recognize depression in about 50% of cases mainly due to somatic comorbidities. Given the significant economic, social, and interpersonal impact of depression and its increasing prevalence, there is a need to improve its diagnosis and treatment in outpatient care. Various efforts have been made to isolate individual biological markers for depression to streamline diagnostic and therapeutic approaches. However, the intricate and dynamic interplay between neuroinflammation, metabolic abnormalities, and relevant neurobiological correlates of depression is not yet fully understood. To address this issue, we propose a naturalistic prospective study involving outpatients with unipolar depression, individuals without depression or comorbidities, and healthy controls. In addition to clinical assessments, cardiovascular parameters, metabolic factors, and inflammatory parameters are collected. For analysis we will use conventional statistics as well as machine learning algorithms. We aim to detect relevant participant subgroups by data-driven cluster algorithms and their impact on the subjects' long-term prognosis. The POKAL-PSY study is a subproject of the research network POKAL (Predictors and Clinical Outcomes in Depressive Disorders; GRK 2621).

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来源期刊
CiteScore
8.80
自引率
4.30%
发文量
154
审稿时长
6-12 weeks
期刊介绍: The original papers published in the European Archives of Psychiatry and Clinical Neuroscience deal with all aspects of psychiatry and related clinical neuroscience. Clinical psychiatry, psychopathology, epidemiology as well as brain imaging, neuropathological, neurophysiological, neurochemical and moleculargenetic studies of psychiatric disorders are among the topics covered. Thus both the clinician and the neuroscientist are provided with a handy source of information on important scientific developments.
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