Department of Psychiatry and Psychotherapy, Medical University of Vienna, Vienna, Austria.
Université Libre de Bruxelles and Psy Pluriel Centre Europèen de Psychologie Medicale, Brussels, Belgium.
J Clin Psychiatry. 2017 Feb;78(2):215-222. doi: 10.4088/JCP.15m10381.
Despite a broad arsenal of antidepressants, about a third of patients suffering from major depressive disorder (MDD) do not respond sufficiently to adequate treatment. Using the data pool of the Group for the Study of Resistant Depression and machine learning, we intended to draw new insights featuring 48 clinical, sociodemographic, and psychosocial predictors for treatment outcome.
Patients were enrolled starting from January 2000 and diagnosed according to DSM-IV. Treatment-resistant depression (TRD) was defined by a 17-item Hamilton Depression Rating Scale (HDRS) score ≥ 17 after at least 2 antidepressant trials of adequate dosage and length. Remission was defined by an HDRS score < 8. Stepwise predictor reduction using randomForest was performed to find the optimal number for classification of treatment outcome. After importance values were generated, prediction for remission and resistance was performed in a training sample of 400 patients. For prediction, we used a set of 80 patients not featured in the training sample and computed receiver operating characteristics.
The most useful predictors for treatment outcome were the timespan between first and last depressive episode, age at first antidepressant treatment, response to first antidepressant treatment, severity, suicidality, melancholia, number of lifetime depressive episodes, patients' admittance type, education, occupation, and comorbid diabetes, panic, and thyroid disorder. While single predictors could not reach a prediction accuracy much different from random guessing, by combining all predictors, we could detect resistance with an accuracy of 0.737 and remission with an accuracy of 0.850. Consequently, 65.5% of predictions for TRD and 77.7% for remission can be expected to be accurate.
Using machine learning algorithms, we could demonstrate success rates of 0.737 for predicting TRD and 0.850 for predicting remission, surpassing predictive capabilities of clinicians. Our results strengthen data mining and suggest the benefit of focus on interaction-based statistics. Considering that all predictors can easily be obtained in a clinical setting, we hope that our model can be tested by other research groups.
尽管有广泛的抗抑郁药武器库,但仍有约三分之一的重度抑郁症(MDD)患者对充分治疗反应不足。使用耐药性抑郁症研究组的数据池和机器学习,我们旨在利用 48 个临床、社会人口学和心理社会预测因子来获得新的治疗结果见解。
从 2000 年 1 月开始招募患者,并根据 DSM-IV 进行诊断。通过至少 2 次充分剂量和时长的抗抑郁药试验后,17 项汉密尔顿抑郁量表(HDRS)评分≥17 定义为治疗抵抗性抑郁症(TRD)。缓解定义为 HDRS 评分<8。使用随机森林进行逐步预测因子减少,以找到分类治疗结果的最佳数量。生成重要值后,在 400 名患者的训练样本中进行缓解和耐药预测。对于预测,我们使用了一组未包含在训练样本中的 80 名患者,并计算了接收器工作特征。
治疗结果最有用的预测因子是首次和末次抑郁发作之间的时间间隔、首次抗抑郁治疗时的年龄、首次抗抑郁治疗的反应、严重程度、自杀意念、忧郁、一生中抑郁发作次数、患者入院类型、教育程度、职业以及合并糖尿病、惊恐和甲状腺疾病。虽然单个预测因子的预测准确性与随机猜测相差不大,但通过组合所有预测因子,我们可以以 0.737 的准确性检测到耐药性,以 0.850 的准确性检测到缓解。因此,可以预计 65.5%的 TRD 预测和 77.7%的缓解预测是准确的。
使用机器学习算法,我们可以证明预测 TRD 的成功率为 0.737,预测缓解的成功率为 0.850,超过了临床医生的预测能力。我们的结果支持数据挖掘,并表明关注基于交互的统计数据的益处。考虑到所有预测因子都可以在临床环境中轻松获得,我们希望其他研究小组可以对我们的模型进行测试。