Cost-effectiveness of novel diagnostic tools for idiopathic pulmonary fibrosis in the United States.

IF 2.7 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES BMC Health Services Research Pub Date : 2025-03-15 DOI:10.1186/s12913-025-12506-1
Christopher J Cadham, Joshua Reicher, Michael Muelly, David W Hutton
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Abstract

Objectives: Novel non-invasive machine learning algorithms may improve accuracy and reduce the need for biopsy when diagnosing idiopathic pulmonary fibrosis (IPF). We conducted a cost-effectiveness analysis of diagnostic strategies for IPF.

Methods: We developed a decision analytic model to evaluate diagnostic strategies for IPF in the United States. To assess the full spectrum of costs and benefits, we compared four interventions: a machine learning diagnostic algorithm, a genomic classifier, a biopsy-all strategy, and a treat-all strategy. The analysis was conducted from the health sector perspective with a lifetime horizon. The primary outcome measures were costs, Quality-Adjusted Life-Years (QALYs) gained, and Incremental Cost-Effectiveness Ratios (ICERs) based on the average of 10,000 probabilistic runs of the model.

Results: Compared to a biopsy-all strategy the machine learning algorithm and genomic classifer reduced diagnostic-related costs by $14,876 and $3,884, respectively. Use of the machine learning algorithm consistently reduced diagnostic costs. When including downstream treatment costs and benefits of anti-fibrotic treatment, the machine learning algorithm had an ICER of $331,069 per QALY gained compared to the biopsy-all strategy. The genomic classifier had a higher ICER of $390,043 per QALY gained, while the treat-all strategy had the highest ICER of $3,245,403 per QALY gained. Results were sensitive to changes in various input parameters including IPF treatment costs, sensitivity and specificity of novel screening tools, and the rate of additional diagnostics following inconclusive results. High treatment costs were found to drive overall cost regardless of the diagnostic method. As treatment costs lowered, the supplemental diagnostic tools became increasingly cost-effective.

Conclusions: Novel tools for diagnosing IPF reduced diagnostic costs, while overall incremental cost-effectiveness ratios were high due to treatment costs. New IPF diagnosis approaches may become more favourable with lower-cost treatments for IPF.

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美国特发性肺纤维化新型诊断工具的成本效益。
目的:新型无创机器学习算法可提高诊断特发性肺纤维化(IPF)的准确性并减少活组织检查的需要。我们对 IPF 诊断策略进行了成本效益分析:我们开发了一个决策分析模型来评估美国的 IPF 诊断策略。为了全面评估成本和收益,我们比较了四种干预措施:机器学习诊断算法、基因组分类器、活检全策略和治疗全策略。我们从卫生部门的角度进行了终生分析。主要结果指标是成本、获得的质量调整生命年(QALYs)和基于模型 10,000 次概率运行平均值的增量成本效益比(ICERs):与全部活检策略相比,机器学习算法和基因组分类法分别降低了14876美元和3884美元的诊断相关成本。使用机器学习算法可持续降低诊断成本。如果将下游治疗成本和抗纤维化治疗的收益计算在内,机器学习算法与全活检策略相比,每QALY收益的ICER为331,069美元。基因组分类器的ICER更高,为每QALY收益390,043美元,而 "全治疗 "策略的ICER最高,为每QALY收益3245,403美元。研究结果对各种输入参数的变化非常敏感,这些参数包括 IPF 治疗成本、新型筛查工具的灵敏度和特异性,以及不确定结果后的额外诊断率。无论采用哪种诊断方法,高昂的治疗费用都会导致总成本的增加。随着治疗成本的降低,辅助诊断工具的成本效益也越来越高:结论:用于诊断 IPF 的新型工具降低了诊断成本,而总体增量成本效益比却因治疗成本而居高不下。随着 IPF 治疗成本的降低,新的 IPF 诊断方法可能会变得更加有利。
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来源期刊
BMC Health Services Research
BMC Health Services Research 医学-卫生保健
CiteScore
4.40
自引率
7.10%
发文量
1372
审稿时长
6 months
期刊介绍: BMC Health Services Research is an open access, peer-reviewed journal that considers articles on all aspects of health services research, including delivery of care, management of health services, assessment of healthcare needs, measurement of outcomes, allocation of healthcare resources, evaluation of different health markets and health services organizations, international comparative analysis of health systems, health economics and the impact of health policies and regulations.
期刊最新文献
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