医学
颈椎前路椎间盘切除融合术
笼子
脊柱融合术
脊髓病
椎间盘切除术
外科
椎间盘切除术
关节融合术
颈椎
脊髓
腰椎
颈椎
腰椎
替代医学
病理
精神科
组合数学
数学
作者
Micheal Raad,Amy L. Xu,Carlos Ortiz-Babilonia,Majd Marrache,Wesley M. Durand,Marc Greenberg,Amit Jain
出处
期刊:Spine
[Ovid Technologies (Wolters Kluwer)]
日期:2022-11-01
卷期号:48 (5): 330-334
被引量:1
标识
DOI:10.1097/brs.0000000000004526
摘要
Retrospective cost-utility analysis.To conduct a cost-analysis comparing synthetic cage (SC) versus allograft (Allo) over a five-year time horizon.SC and Allo are two commonly used interbody choices for anterior cervical discectomy and fusion (ACDF) surgery. Previous analyses comparative analyses have reached mixed conclusions regarding their cost-effectiveness, yet recent estimates provide high-quality evidence.A decision-analysis model comparing the use of Allo versus SC was developed for a hypothetical 60-year-old patient with cervical spondylotic myelopathy undergoing single-level ACDF surgery. A comprehensive literature review was performed to estimate probabilities, costs (2020 USD) and quality-adjusted life years (QALYs) gained over a five-year period. A probabilistic sensitivity analysis using a Monte Carlo simulation of 1000 patients was carried out to calculate incremental cost-effectiveness ratio and net monetary benefits. One-way deterministic sensitivity analysis was performed to estimate the contribution of individual parameters to uncertainty in the model.The use of Allo was favored in 81.6% of the iterations at a societal willing-to-pay threshold of 50,000 USD/QALY. Allo dominated (higher net QALYs and lower net costs) in 67.8% of the iterations. The incremental net monetary benefits in the Allo group was 2650 USD at a willing-to-pay threshold of 50,000 USD/QALY. One-way deterministic sensitivity analysis revealed that the cost of the index surgery was the only factor which significantly contributed to uncertainty.Cost-utility analysis suggests that Allo maybe a more cost-effective option compared with SCs in adult patients undergoing ACDF for cervical spondylotic myelopathy.
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