Predictors of High Healthcare Cost Among Patients with Generalized Myasthenia Gravis: A Combined Machine Learning and Regression Approach from a US Payer Perspective

IF 3.1 4区 医学 Q1 ECONOMICS
Maryia Zhdanava, Jacqueline Pesa, Porpong Boonmak, Samuel Schwartzbein, Qian Cai, Dominic Pilon, Zia Choudhry, Marie-Hélène Lafeuille, Patrick Lefebvre, Nizar Souayah
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Abstract

Background

High healthcare costs could arise from unmet needs. This study used random forest (RF) and regression methods to identify predictors of high costs from a US payer perspective in patients newly diagnosed with generalized myasthenia gravis (gMG).

Methods

Adults with gMG (first diagnosis = index) were selected from the IQVIA PharMetrics® Plus database (2017–2021). Predictors of high healthcare costs were measured 12 months pre-index (main cohort) and during both the 12 months pre- and post-index (subgroup). Top 50 predictors of high costs [≥ $9404 (main cohort) and ≥ $9159 (subgroup) per-patient-per-month] were identified with RF models; the magnitude and direction of association were estimated with multivariable modified Poisson regression models.

Results

The main cohort and subgroup included 2739 and 1638 patients, respectively. In RF analysis, the most important predictors of high costs before/on the index date were index MG exacerbation, all-cause inpatient admission, and number of days with corticosteroids. After the index date, these were immunoglobulin and monoclonal antibody use and number of all-cause outpatient visits and MG-related encounters. Adjusting for the top 50 predictors, post-index immunoglobulin use increased the risk of high costs by 261%, monoclonal antibody use by 135%, index MG exacerbation by 78%, and pre-index all-cause inpatient admission by 27% (all p < 0.05).

Conclusions

This analysis links patient characteristics both before the formal MG diagnosis and in the first year to high future healthcare costs. Findings may help inform payers on cost-saving strategies, and providers can potentially shift to targeted treatment approaches to reduce the clinical and economic burden of gMG.

Abstract Image

全身性肌无力患者医疗费用高昂的预测因素:从美国支付方角度看机器学习和回归相结合的方法。
背景:高昂的医疗费用可能源于未满足的需求。本研究采用随机森林(RF)和回归方法,从美国支付方的角度识别新诊断为全身性肌无力(gMG)患者的高成本预测因素:从 IQVIA PharMetrics® Plus 数据库(2017-2021 年)中选取了患有 gMG 的成人(首次诊断 = 指数)。对指数前 12 个月(主队列)以及指数前和指数后 12 个月(子队列)的高医疗费用预测因素进行了测量。利用 RF 模型确定了前 50 个高成本预测因素[每名患者每月费用≥ 9404 美元(主队列)和≥ 9159 美元(分组)];利用多变量修正泊松回归模型估算了相关性的大小和方向:主队列和亚组分别包括 2739 名和 1638 名患者。在 RF 分析中,指数日期前/指数日期时高额费用的最重要预测因素是指数 MG 恶化、全因住院和使用皮质类固醇的天数。而在指数日期之后,这些因素则是免疫球蛋白和单克隆抗体的使用、全因门诊就诊次数以及与 MG 相关的就诊次数。在对前 50 个预测因素进行调整后,指数日期后使用免疫球蛋白会使高费用风险增加 261%,使用单克隆抗体会使高费用风险增加 135%,指数 MG 恶化会使高费用风险增加 78%,指数日期前全因住院会使高费用风险增加 27%(所有 p 均小于 0.05):这项分析将正式确诊 MG 之前和第一年的患者特征与未来高昂的医疗费用联系起来。研究结果可能有助于为支付方提供节约成本策略的信息,医疗服务提供者也有可能转向有针对性的治疗方法,以减轻麦角风病的临床和经济负担。
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来源期刊
Applied Health Economics and Health Policy
Applied Health Economics and Health Policy Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
6.10
自引率
2.80%
发文量
64
期刊介绍: Applied Health Economics and Health Policy provides timely publication of cutting-edge research and expert opinion from this increasingly important field, making it a vital resource for payers, providers and researchers alike. The journal includes high quality economic research and reviews of all aspects of healthcare from various perspectives and countries, designed to communicate the latest applied information in health economics and health policy. While emphasis is placed on information with practical applications, a strong basis of underlying scientific rigor is maintained.
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