Pharmacometrica, La Fouillade, France.
Pharmacometrica, La Fouillade, France.
Psychiatry Res. 2023 Sep;327:115367. doi: 10.1016/j.psychres.2023.115367. Epub 2023 Aug 2.
One of the major reasons for trial failures in major depressive disorders (MDD) is the presence of unpredictable levels of placebo response as the individual baseline propensity to respond to placebo is not adequately controlled by the current randomization and statistical methodologies. The individual propensity to respond to any treatment or intervention assessed at baseline was considered as a major non-specific prognostic and confounding effect. The objective of this paper was to apply the propensity score methodology to control for potential imbalance at baseline in the propensity to respond to placebo in clinical trials in MDD. Individual propensity was estimated using artificial intelligence (AI) applied to observations collected in two pre-randomization occasions. Cases study are presented using data from two randomized, placebo-controlled trials to evaluate the efficacy of paroxetine in MDD. AI models were used to estimate the individual propensity probability to show a treatment non-specific placebo effect. The inverse of the estimated probability was used as weight in the mixed-effects analysis to assess treatment effect. The comparison of the results obtained with and without propensity weight indicated that the weighted analysis provided an estimate of treatment effect and effect size significantly larger than the conventional analysis.
导致重度抑郁症(MDD)临床试验失败的一个主要原因是安慰剂反应不可预测,因为目前的随机化和统计方法学无法充分控制个体对安慰剂的基础反应倾向。在基线评估时对任何治疗或干预的个体反应倾向被认为是一个主要的非特异性预后和混杂效应。本文的目的是应用倾向评分方法来控制 MDD 临床试验中安慰剂反应的潜在基线不平衡。个体倾向使用人工智能(AI)应用于两次随机化前观察中收集的数据进行估计。使用来自两项随机、安慰剂对照试验的数据进行案例研究,以评估帕罗西汀在 MDD 中的疗效。AI 模型用于估计个体出现治疗非特异性安慰剂效应的倾向概率。估计概率的倒数被用作混合效应分析中的权重,以评估治疗效果。有和没有倾向权重的结果比较表明,加权分析提供的治疗效果和效果大小的估计明显大于传统分析。