Department of Obstetrics and Gynecology, The University of Texas Medical Branch at Galveston, Galveston.
Center for Interdisciplinary Research in Women's Health, The University of Texas Medical Branch at Galveston, Galveston.
JAMA Netw Open. 2024 Feb 5;7(2):e2356078. doi: 10.1001/jamanetworkopen.2023.56078.
The current method of BRCA testing for breast and ovarian cancer prevention, which is based on family history, often fails to identify many carriers of pathogenic variants. Population-based genetic testing offers a transformative approach in cancer prevention by allowing for proactive identification of any high-risk individuals and enabling early interventions.
To assess the lifetime incremental effectiveness, costs, and cost-effectiveness of population-based multigene testing vs family history-based testing.
DESIGN, SETTING, AND PARTICIPANTS: This economic evaluation used a microsimulation model to assess the cost-effectiveness of multigene testing (BRCA1, BRCA2, and PALB2) for all women aged 30 to 35 years compared with the current standard of care that is family history based. Carriers of pathogenic variants were offered interventions, such as magnetic resonance imaging with or without mammography, chemoprevention, or risk-reducing mastectomy and salpingo-oophorectomy, to reduce cancer risk. A total of 2000 simulations were run on 1 000 000 women, using a lifetime time horizon and payer perspective, and costs were adjusted to 2022 US dollars. This study was conducted from September 1, 2020, to December 15, 2023.
The main outcome measure was the incremental cost-effectiveness ratio (ICER), quantified as cost per quality-adjusted life-year (QALY) gained. Secondary outcomes included incremental cost, additional breast and ovarian cancer cases prevented, and excess deaths due to coronary heart disease (CHD).
The study assessed 1 000 000 simulated women aged 30 to 35 years in the US. In the base case, population-based multigene testing was more cost-effective compared with family history-based testing, with an ICER of $55 548 per QALY (95% CI, $47 288-$65 850 per QALY). Population-based multigene testing would be able to prevent an additional 1338 cases of breast cancer and 663 cases of ovarian cancer, but it would also result in 69 cases of excess CHD and 10 excess CHD deaths per million women. The probabilistic sensitivity analyses show that the probability that population-based multigene testing is cost-effective was 100%. When the cost of the multigene test exceeded $825, population-based testing was no longer cost-effective (ICER, $100 005 per QALY; 95% CI, $87 601-$11 6323).
In this economic analysis of population-based multigene testing, population-based testing was a more cost-effective strategy for the prevention of breast cancer and ovarian cancer when compared with the current family history-based testing strategy at the $100 000 per QALY willingness-to-pay threshold. These findings support the need for more comprehensive genetic testing strategies to identify pathogenic variant carriers and enable informed decision-making for personalized risk management.
目前基于家族史的 BRCA 检测方法用于预防乳腺癌和卵巢癌,常常无法识别许多致病性变异携带者。基于人群的基因检测提供了一种变革性的方法,通过主动识别任何高危个体并实现早期干预,从而实现癌症预防。
评估基于人群的多基因检测(BRCA1、BRCA2 和 PALB2)与基于家族史的检测相比,在预防所有 30 至 35 岁女性癌症方面的终生增量有效性、成本和成本效益。
设计、设置和参与者:本经济评估使用微观模拟模型来评估多基因检测(BRCA1、BRCA2 和 PALB2)与当前基于家族史的护理标准相比,在预防所有 30 至 35 岁女性癌症方面的成本效益。为携带致病性变异的个体提供干预措施,例如磁共振成像(MRI)加或不加乳房 X 线摄影、化学预防、或降低风险的乳房切除术和输卵管卵巢切除术,以降低癌症风险。总共对 100 万名女性进行了 2000 次模拟,使用终生时间框架和支付者视角,成本调整为 2022 年美元。本研究于 2020 年 9 月 1 日至 2023 年 12 月 15 日进行。
主要结局指标是增量成本效益比(ICER),以每获得一个质量调整生命年(QALY)的增量成本表示。次要结局包括增量成本、预防的额外乳腺癌和卵巢癌病例以及因冠心病(CHD)导致的超额死亡。
该研究评估了美国 100 万名 30 至 35 岁的模拟女性。在基础情况下,与基于家族史的检测相比,基于人群的多基因检测更具成本效益,ICER 为每 QALY 55548 美元(95%CI,每 QALY 47288-65850 美元)。基于人群的多基因检测将能够预防 1338 例额外的乳腺癌和 663 例卵巢癌,但也会导致每百万女性 69 例冠心病和 10 例冠心病死亡。概率敏感性分析表明,基于人群的多基因检测具有成本效益的概率为 100%。当多基因检测的成本超过 825 美元时,基于人群的检测不再具有成本效益(ICER,每 QALY 100005 美元;95%CI,87601-116323 美元)。
在基于人群的多基因检测的这项经济分析中,与当前基于家族史的检测策略相比,基于人群的检测在预防乳腺癌和卵巢癌方面是一种更具成本效益的策略,在 100000 美元/QALY 的支付意愿阈值下。这些发现支持需要更全面的基因检测策略来识别致病性变异携带者,并为个性化风险管理提供知情决策。