Cambridge Centre for Neuropsychiatric Research, Department of Chemical Engineering and Biotechnology, University of Cambridge, Cambridge, UK.
Psyomics Ltd., Cambridge, UK.
J Affect Disord. 2021 Dec 1;295:1122-1130. doi: 10.1016/j.jad.2021.08.088. Epub 2021 Sep 3.
Selective serotonin reuptake inhibitors (SSRIs) are often the first-line treatment option for depressive symptoms, however their efficacy varies across patients. Identifying predictors of response to SSRIs could facilitate personalised treatment of depression and improve treatment outcomes. The aim of this study was to develop a data-driven formulation of demographic, personality, and symptom-level factors associated with subjective response to SSRI treatment.
Participants were recruited online and data were collected retrospectively through an extensive digital mental health questionnaire. Extreme gradient boosting classification with nested cross-validation was used to identify factors distinguishing between individuals with low (n=37) and high (n=111) perceived benefit from SSRI treatment.
The algorithm demonstrated a good predictive performance (test AUC=.88±.07). Positive affectivity was the strongest predictor of response to SSRIs and a major confounder of the remaining associations. After controlling for positive affectivity, as well as current wellbeing, severity of current depressive symptoms, and multicollinearity, only low positive affectivity, chronic pain, sleep problems, and unemployment remained significantly associated with diminished subjective response to SSRIs.
This was an exploratory analysis of data collected at a single time point, for a study which had a different primary aim. Therefore, the results may not reflect causal relationships, and require validation in future prospective studies. Furthermore, the data were self-reported by internet users, which could affect integrity of the dataset and limit generalisability of the results.
Our findings suggest that demographic, personality, and symptom data may offer a potential cost-effective and efficient framework for SSRI treatment outcome prediction.
选择性 5-羟色胺再摄取抑制剂(SSRIs)通常是治疗抑郁症状的首选药物,但它们在患者中的疗效存在差异。识别出对 SSRIs 反应的预测因素可以促进抑郁的个体化治疗,并改善治疗结果。本研究的目的是开发一种数据驱动的方法,将与 SSRI 治疗主观反应相关的人口统计学、人格和症状水平因素结合起来。
参与者通过在线招募,通过广泛的数字心理健康问卷进行回顾性数据收集。使用嵌套交叉验证的极端梯度提升分类来识别区分 SSRI 治疗低(n=37)和高(n=111)感知获益个体的因素。
该算法表现出良好的预测性能(测试 AUC=.88±.07)。积极情感是对 SSRIs 反应的最强预测因素,也是其余关联的主要混杂因素。在控制积极情感、当前幸福感、当前抑郁症状严重程度和多重共线性后,只有低积极情感、慢性疼痛、睡眠问题和失业与对 SSRI 治疗的主观反应降低显著相关。
这是对单次收集的数据进行的探索性分析,该研究的主要目的不同。因此,结果可能不能反映因果关系,需要在未来的前瞻性研究中进行验证。此外,数据是由互联网用户自行报告的,这可能会影响数据集的完整性,并限制结果的普遍性。
我们的研究结果表明,人口统计学、人格和症状数据可能为 SSRI 治疗结果预测提供一种具有成本效益和高效的框架。