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Predicting the naturalistic course of depression from a wide range of clinical, psychological, and biological data: a machine learning approach

机译:从广泛的临床,心理和生物学数据预测抑郁症的自然过程:一种机器学习方法

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Many variables have been linked to different course trajectories of depression. These findings, however, are based on group comparisons with unknown translational value. This study evaluated the prognostic value of a wide range of clinical, psychological, and biological characteristics for predicting the course of depression and aimed to identify the best set of predictors. Eight hundred four unipolar depressed patients (major depressive disorder or dysthymia) patients were assessed on a set involving 81 demographic, clinical, psychological, and biological measures and were clinically followed-up for 2 years. Subjects were grouped according to (i) the presence of a depression diagnosis at 2-year follow-up (yes n?=?397, no n?=?407), and (ii) three disease course trajectory groups (rapid remission, n?=?356, gradual improvement n?=?273, and chronic n?=?175) identified by a latent class growth analysis. A penalized logistic regression, followed by tight control over type I error, was used to predict depression course and to evaluate the prognostic value of individual variables. Based on the inventory of depressive symptomatology (IDS), we could predict a rapid remission course of depression with an AUROC of 0.69 and 62% accuracy, and the presence of an MDD diagnosis at follow-up with an AUROC of 0.66 and 66% accuracy. Other clinical, psychological, or biological variables did not significantly improve the prediction. Among the large set of variables considered, only the IDS provided predictive value for course prediction on an individual level, although this analysis represents only one possible methodological approach. However, accuracy of course prediction was moderate at best and further improvement is required for these findings to be clinically useful.
机译:许多变量与抑郁症的不同病程轨迹有关。但是,这些发现是基于具有未知翻译价值的组比较。这项研究评估了广泛的临床,心理和生物学特征对预测抑郁症的预后价值,旨在确定最佳的预测因子。对一组84位单极抑郁症患者(重度抑郁症或心律失常)进行了评估,涉及81种人口统计学,临床,心理和生物学指标,并进行了2年的临床随访。根据(i)在2年的随访中是否存在抑郁症诊断对受试者进行分组(是n == 397,否n == 407),以及(ii)三个病程轨迹组(快速缓解,通过潜伏类生长分析确定n≥356,逐步改善≥273,慢性≥175。惩罚逻辑回归,然后严格控制I型错误,可用来预测抑郁症的病程并评估各个变量的预后价值。根据抑郁症状(IDS)清单,我们可以预测抑郁的快速缓解过程,AUROC为0.69,准确度为62%,并且在随访中存在MDD诊断,AUROC为0.66,准确度为66% 。其他临床,心理或生物学变量并未明显改善预测。在考虑的大量变量中,只有IDS为个体水平的课程预测提供了预测价值,尽管这种分析仅代表一种可能的方法论方法。然而,对病程预测的准确性充其量是中等的,需要进一步改善这些发现才能在临床上有用。

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