The process of approving and assessing new drugs is often quite complicated, mainly due to the fact that multiple criteria need to be considered. A standard way to proceed is with benefit risk analysis, often under the Bayesian paradigm to account for uncertainty and combine data with expert judgement, which is operationalised via multi-criteria decision analysis (MCDA) scores. The procedure is based on a suitable model to accommodate key features of the data, which are typically of mixed type and potentially depended, with factor models providing a standard choice. The contribution of this paper is threefold: first, we extend the family of existing structured factor models. Second, we provide a framework for choosing between them, which combines fit and out-of-sample predictive performance. Third, we present a sequential estimation framework that can offer multiple benefits: (i) it allows us to efficiently re-estimate MCDA scores of different drugs each time new data become available, thus getting an idea on potential fluctuations in differences between them, (ii) it can provide information on potential early stopping in cases of evident conclusions, thus reducing unnecessary further exposure to undesirable treatments; (iii) it can potentially allow to assign treatment groups dynamically based on research objectives. A drawback of sequential estimation is the increased computational time, but this can be mitigated by efficient sequential Monte Carlo schemes which we tailor in this paper to the context of Bayesian benefit risk analysis. The developed methodology is illustrated on real data on Type II diabetes patients who were administered Metformin (MET), Rosiglitazone (RSG) and a combination of the two (AVM).
翻译:批准和评估新药物的过程往往相当复杂,主要是因为需要考虑多种标准。一个标准的方法是进行效益风险分析,通常在巴伊西亚模式下进行效益风险分析,以说明不确定性,并将数据与专家判断相结合,通过多标准决定分析(MCDA)分数进行操作。该程序基于一个适合的模式,以适应数据的主要特点,这些数据通常具有混合类型,并可能依赖各种因素模型,提供标准选择。本文的贡献有三重:第一,我们扩大现有结构要素模型的组合。第二,我们提供一个框架,在二者之间选择效益风险分析,这种框架将适合和超出全面预测性业绩。第三,我们提出一个顺序估算框架,通过多标准决定分析(MCDA)分数,通过每次获得新的数据,我们都能有效地重新估计不同药物的MCDA分数,从而了解它们之间差异的潜在波动。 (二)它可以提供在明显结论的情况下早期停止潜在风险的信息,从而减少对不良治疗病人的不必要接触;第二,我们提供一个框架,可以将适合和超出全面预测性预测性业绩。第三,我们提出的顺序估算框架框架框架可以根据研究目标,对不断进行定期分析。