PRIMCAT-CRC:数据驱动的全疾病模拟模型,用于预测澳大利亚按分期和治疗路线划分的结直肠癌患者人数。

IF 4.9 2区 医学 Q1 ECONOMICS
Koen Degeling, Yat Hang To, Karen Trapani, Sophy Athan, Peter Gibbs, Maarten J IJzerman, Fanny Franchini
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引用次数: 0

摘要

目标:有效的医疗保健规划、资源分配和预算编制需要对特定癌症阶段和治疗方案中需要治疗的患者人数进行准确预测。为了满足这一要求,我们开发了 "当前和新癌症治疗方法对人群健康经济的影响 "结直肠癌(PRIMCAT-CRC)模拟模型,该模型适用于澳大利亚的所有结直肠癌分期和相关分子特征:方法:使用真实世界的数据估算治疗利用率和事件发生时间分布。方法:利用真实世界的数据估算治疗利用率和事件发生时间分布,从而进行离散事件模拟,预测在所有疾病分期和治疗方案中接受治疗的 CRC 患者人数,并预测可能利用未来治疗的患者人数。我们进行了说明性分析,估算了 5 年内(2022-2026 年)各疾病分期和治疗项目的治疗情况。我们通过一个案例研究证明了该模型的适用性,该案例研究将 Pembrolizumab 作为错配修复缺陷 IV 期的一线治疗方法:来自 7,163 名患者的临床登记数据为模型提供了依据。该模型预测,2022 年需要治疗的发病病例和流行病例分别为 15738 例和 2821 例,到 2026 年将分别增至 15921 例和 2871 例。预测显示,在 2022-2026 年期间,将有 116,752 例患者开始接受治疗,其中 43% 用于 IV 期疾病。预计每年将有706名患者开始使用pembrolizumab,在预测期内共有3530人开始使用pembrolizumab进行治疗,但不会显著改变后续治疗的下游使用情况:PRIMCAT-CRC是一种多功能工具,可用于估算符合新型癌症疗法治疗条件的患者人群,从而减少政策制定者在决定对新疗法进行公共报销时的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the Population Health Economic Impact of Current and New Cancer Treatments for Colorectal Cancer: A Data-Driven Whole Disease Simulation Model for Predicting the Number of Patients with Colorectal Cancer by Stage and Treatment Line in Australia.

Objectives: Effective healthcare planning, resource allocation, and budgeting require accurate predictions of the number of patients needing treatment at specific cancer stages and treatment lines. The Predicting the Population Health Economic Impact of Current and New Cancer Treatments (PRIMCAT) for Colorectal Cancer (CRC) simulation model (PRIMCAT-CRC) was developed to meet this requirement for all CRC stages and relevant molecular profiles in Australia.

Methods: Real-world data were used to estimate treatment utilization and time-to-event distributions. This populated a discrete-event simulation, projecting the number of patients receiving treatment across all disease stages and treatment lines for CRC and forecasting the number of patients likely to utilize future treatments. Illustrative analyses were undertaken, estimating treatments across disease stages and treatment lines over a 5-year period (2022-2026). We demonstrated the model's applicability through a case study introducing pembrolizumab as a first-line treatment for mismatch-repair-deficient stage IV.

Results: Clinical registry data from 7163 patients informed the model. The model forecasts 15 738 incident and 2821 prevalent cases requiring treatment in 2022, rising to 15 921 and 2871, respectively, by 2026. Projections show that over 2022 to 2026, there will be a total of 116 752 treatments initiated, with 43% intended for stage IV disease. The introduction of pembrolizumab is projected for 706 patients annually, totaling 3530 individuals starting treatment with pembrolizumab over the forecasted period, without significantly altering downstream utilization of subsequent treatments.

Conclusions: PRIMCAT-CRC is a versatile tool that can be used to estimate the eligible patient populations for novel cancer therapies, thereby reducing uncertainty for policymakers in decisions to publicly reimburse new treatments.

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来源期刊
Value in Health
Value in Health 医学-卫生保健
CiteScore
6.90
自引率
6.70%
发文量
3064
审稿时长
3-8 weeks
期刊介绍: Value in Health contains original research articles for pharmacoeconomics, health economics, and outcomes research (clinical, economic, and patient-reported outcomes/preference-based research), as well as conceptual and health policy articles that provide valuable information for health care decision-makers as well as the research community. As the official journal of ISPOR, Value in Health provides a forum for researchers, as well as health care decision-makers to translate outcomes research into health care decisions.
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