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Estimating the value of medical treatments to patients using probabilistic multi criteria decision analysis

机译:使用概率多标准决策分析估计对患者的医疗价值

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Estimating the value of medical treatments to patients is an essential part of healthcare decision making, but is mostly done implicitly and without consulting patients. Multi criteria decision analysis (MCDA) has been proposed for the valuation task, while stated preference studies are increasingly used to measure patient preferences. In this study we propose a methodology for using stated preferences to weigh clinical evidence in an MCDA model that includes uncertainty in both patient preferences and clinical evidence explicitly. A probabilistic MCDA model with an additive value function was developed and illustrated using a case on hypothetical treatments for depression. The patient-weighted values were approximated with Monte Carlo simulations and compared to expert-weighted results. Decision uncertainty was calculated as the probability of rank reversal for the first rank. Furthermore, scenario analyses were done to assess the relative impact of uncertainty in preferences and clinical evidence, and of assuming uniform preference distributions. The patient-weighted values for drug A, drug B, drug C, and placebo were 0.51 (95?% CI: 0.48 to 0.54), 0.51 (95?% CI: 0.48 to 0.54), 0.54 (0.49 to 0.58), and 0.15 (95?% CI: 0.13 to 0.17), respectively. Drug C was the most preferred treatment and the rank reversal probability for first rank was 27?%. This probability decreased to 18?% when uncertainty in performances was not included and increased to 41?% when uncertainty in criterion weights was not included. With uniform preference distributions, the first rank reversal probability increased to 61?%. The expert-weighted values for drug A, drug B, drug C, and placebo were 0.67 (95?% CI: 0.65 to 0.68), 0.57 (95?% CI: 0.56 to 0.59), 0.67 (95?% CI: 0.61 to 0.71), and 0.19 (95?% CI: 0.17 to 0.21). The rank reversal probability for the first rank according to experts was 49?%. Preferences elicited from patients can be used to weigh clinical evidence in a probabilistic MCDA model. The resulting treatment values can be contrasted to results from experts, and the impact of uncertainty can be quantified using rank probabilities. Future research should focus on integrating the model with regulatory decision frameworks and on including other types of uncertainty.
机译:评估医疗对患者的价值是医疗保健决策的重要组成部分,但大多数操作都是隐含的,并且无需咨询患者。已经提出了用于评估任务的多标准决策分析(MCDA),而陈述的偏好研究越来越多地用于衡量患者的偏好。在这项研究中,我们提出了一种使用陈述的偏好权衡MCDA模型中临床证据的方法,该方法包括明确地包括患者偏好和临床证据的不确定性。建立了一个具有附加值函数的概率MCDA模型,并以一个假设的抑郁症治疗案例为例进行了说明。通过蒙特卡洛模拟对患者加权值进行近似,并与专家加权结果进行比较。将决策不确定性计算为第一等级的等级逆转概率。此外,进行了情景分析,以评估偏好和临床证据中不确定性以及假设偏好分布均匀的相对影响。药物A,药物B,药物C和安慰剂的患者加权值分别为0.51(95%CI:0.48至0.54),0.51(95%CI:0.48至0.54),0.54(0.49至0.58)和分别为0.15(95%CI:0.13至0.17)。药物C是最优选的治疗方法,其排名逆转的可能性为27%。当不包括性能不确定性时,该概率降低到18%,而当不包括标准权重不确定性时,该概率增加到41%。有了统一的偏好分布,第一级逆转概率增加到61%。药物A,药物B,药物C和安慰剂的专家加权值分别为0.67(95%CI:0.65至0.68),0.57(95%CI:0.56至0.59),0.67(95%CI:0.61)至0.71)和0.19(95%CI:0.17至0.21)。专家认为,排名第一的排名逆转概率为49%。来自患者的偏好可用于权衡概率MCDA模型中的临床证据。可以将得到的治疗值与专家的结果进行对比,并且可以使用等级概率来量化不确定性的影响。未来的研究应侧重于将模型与监管决策框架整合,并包括其他类型的不确定性。

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