Department of Radiation Oncology, UPMC Hillman Cancer Center and University of Pittsburgh School of Medicine, Pittsburgh, PA.
Department of Radiation Oncology, UPMC Hillman Cancer Center and University of Pittsburgh School of Medicine, Pittsburgh, PA.
Clin Breast Cancer. 2021 Jun;21(3):e271-e278. doi: 10.1016/j.clbc.2020.10.007. Epub 2020 Oct 24.
BACKGROUND: Currently it remains difficult to identify patients most likely to benefit from radiotherapy (RT) for ductal carcinoma-in-situ (DCIS), thus leading to wide variation in practice patterns. The genomic risk assessment tool DCISionRT (PreludeDX) has been validated to prognosticate recurrence risk and predict RT benefit. We aimed to study the cost-effectiveness analysis comparing DCIS treatments based on DCISionRT testing to traditional clinicopathologic risk factors. PATIENTS AND METHODS: A Markov state transition model was constructed to perform a cost-effectiveness analysis comparing breast-conserving surgery with or without RT using DCISionRT testing vs. traditional clinicopathologic risk factors. Clinical parameters were obtained from clinical trial data and cross-validation studies. Cost data were based on 2019 Medicare reimbursement. Incremental cost-effectiveness ratio (ICER) was calculated as incremental cost per quality-adjusted life-year (QALY) gained comparing DCIS treatments using DCISionRT testing to traditional clinicopathologic risk factors and evaluated with a willingness-to-pay threshold of US$100,000 per QALY gained. To account for uncertainty, 1-way and probabilistic sensitivity analyses were performed. RESULTS: Base case analysis showed that DCIS management using DCISionRT testing was a cost-effective strategy, resulting in an ICER of $74,331 per QALY gained compared to clinicopathology-based treatment. Model results were sensitive to a variation of the proportion of genomic-high, low-risk patients receiving RT in DCISionRT testing strategy, and changes in DCISionRT testing cost. CONCLUSION: DCISionRT testing could potentially be a cost-effective strategy compared to traditional decision making for DCIS treatments, optimizing RT benefit based on an accurate recurrence risk assessment.
背景:目前,识别最有可能从放射治疗(RT)中获益的导管原位癌(DCIS)患者仍然具有挑战性,因此导致治疗模式存在广泛差异。基因组风险评估工具 DCISionRT(PreludeDX)已被验证可预测复发风险并预测 RT 获益。我们旨在研究基于 DCISionRT 检测的 DCIS 治疗的成本效益分析,与传统临床病理危险因素进行比较。
患者和方法:构建了马尔可夫状态转移模型,以进行成本效益分析,比较使用 DCISionRT 检测的保乳手术加或不加 RT 与传统临床病理危险因素的治疗效果。临床参数来自临床试验数据和交叉验证研究。成本数据基于 2019 年医疗保险报销。增量成本效益比(ICER)是通过比较使用 DCISionRT 检测的 DCIS 治疗与传统临床病理危险因素的增量成本和每获得一个质量调整生命年(QALY)的增量成本来计算的,增量成本为 10 万美元/QALY。为了考虑不确定性,进行了单因素和概率敏感性分析。
结果:基础案例分析表明,使用 DCISionRT 检测进行 DCIS 管理是一种具有成本效益的策略,与基于临床病理的治疗相比,每获得一个 QALY 的增量成本为 74331 美元。模型结果对 DCISionRT 检测策略中基因组高风险、低风险患者接受 RT 的比例以及 DCISionRT 检测成本的变化敏感。
结论:与传统的 DCIS 治疗决策相比,DCISionRT 检测可能是一种具有成本效益的策略,可以根据准确的复发风险评估优化 RT 获益。
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