Confidence in the treatment decision for an individual patient: strategies for sequential assessment.

Pub Date : 2023-01-01 Epub Date: 2023-04-14 DOI:10.4310/22-sii737
Nina Orwitz, Thaddeus Tarpey, Eva Petkova
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Abstract

Evolving medical technologies have motivated the development of treatment decision rules (TDRs) that incorporate complex, costly data (e.g., imaging). In clinical practice, we aim for TDRs to be valuable by reducing unnecessary testing while still identifying the best possible treatment for a patient. Regardless of how well any TDR performs in the target population, there is an associated degree of uncertainty about its optimality for a specific patient. In this paper, we aim to quantify, via a confidence measure, the uncertainty in a TDR as patient data from sequential procedures accumulate in real-time. We first propose estimating confidence using the distance of a patient's vector of covariates to a treatment decision boundary, with further distances corresponding to higher certainty. We further propose measuring confidence through the conditional probabilities of ultimately (with all possible information available) being assigned a particular treatment, given that the same treatment is assigned with the patient's currently available data or given the treatment recommendation made using only the currently available patient data. As patient data accumulate, the treatment decision is updated and confidence reassessed until a sufficiently high confidence level is achieved. We present results from simulation studies and illustrate the methods using a motivating example from a depression clinical trial. Recommendations for practical use of the measures are proposed.

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对个体患者治疗决定的信心:顺序评估策略。
不断发展的医疗技术推动了治疗决策规则(TDR)的发展,这些规则结合了复杂、昂贵的数据(如成像)。在临床实践中,我们希望 TDR 能够减少不必要的检查,同时为患者确定最佳治疗方案,从而发挥其价值。无论任何 TDR 在目标人群中的表现如何,其对特定患者的最佳治疗效果都存在一定程度的不确定性。在本文中,我们旨在通过置信度来量化 TDR 的不确定性,因为来自连续手术的患者数据是实时积累的。我们首先建议使用患者协变量向量与治疗决策边界的距离来估计置信度,距离越远,置信度越高。我们还建议,在使用患者当前可用数据或仅使用患者当前可用数据提出治疗建议的情况下,通过最终(在所有可能信息都可用的情况下)被分配到特定治疗的条件概率来衡量可信度。随着患者数据的积累,治疗决策会不断更新并重新评估置信度,直到达到足够高的置信度为止。我们介绍了模拟研究的结果,并以抑郁症临床试验为例说明了这些方法。我们还提出了实际使用这些方法的建议。
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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