PALM: Patient-centered treatment ranking via large-scale multivariate network meta-analysis

Rui Duan, Jiayi Tong, Lifeng Lin, Lisa Levine, Mary Sammel, Joel Stoddard, Tianjing Li, Christopher H Schmid, Haitao Chu, Yong Chen
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Abstract

The growing number of available treatment options has led to urgent needs for reliable answers when choosing the best course of treatment for a patient. As it is often infeasible to compare a large number of treatments in a single randomized controlled trial, multivariate network meta-analyses (NMAs) are used to synthesize evidence from trials of a subset of the treatments, where both efficacy and safety related outcomes are considered simultaneously. However, these large-scale multiple-outcome NMAs have created challenges to existing methods due to the increasing complexity of the unknown correlations between outcomes and treatment comparisons. In this paper, we proposed a new framework for PAtient-centered treatment ranking via Large-scale Multivariate network meta-analysis, termed as PALM, which includes a parsimonious modeling approach, a fast algorithm for parameter estimation and inference, a novel visualization tool for presenting multivariate outcomes, termed as the origami plot, as well as personalized treatment ranking procedures taking into account the individual’s considerations on multiple outcomes. In application to an NMA that compares 14 treatment options for labor induction, we provided a comprehensive illustration of the proposed framework and demonstrated its computational efficiency and practicality, and we obtained new insights and evidence to support patient-centered clinical decision making.
PALM:通过大规模多变量网络meta分析进行以患者为中心的治疗排序
在为患者选择最佳治疗方案时,越来越多的可用治疗方案导致迫切需要可靠的答案。由于在一项随机对照试验中比较大量的治疗方法通常是不可行的,因此使用多元网络荟萃分析(NMAs)来综合来自一部分治疗方法的试验的证据,其中同时考虑了疗效和安全性相关结果。然而,由于结果和治疗比较之间的未知相关性日益复杂,这些大规模的多结果nma给现有方法带来了挑战。在本文中,我们提出了一个新的框架,通过大规模多元网络荟萃分析,以患者为中心的治疗排序,称为PALM,其中包括一个简洁的建模方法,一个快速的算法参数估计和推理,一个新的可视化工具,用于呈现多变量结果,称为折纸图,以及个性化的治疗排序程序考虑到个人对多个结果的考虑。在NMA的应用中,我们比较了14种引产治疗方案,我们提供了所提出框架的综合说明,并证明了其计算效率和实用性,我们获得了新的见解和证据,以支持以患者为中心的临床决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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