Hu Liangyuan, Li Lihua, Ji Jiayi, Sanderson Mark
Department of Population Health Science and Policy, Icahn School of Medicine at Mount Sinai, 1425 Madison Avenue, One Gustave L. Levy Place, Box 1077, New York, NY, 10029, USA.
Department of Health System Design and Global Health, Icahn School of Medicine at Mount Sinai, New York, NY, 10029, USA.
BMC Health Serv Res. 2020 Nov 23;20(1):1066. doi: 10.1186/s12913-020-05936-6.
To identify and rank the importance of key determinants of high medical expenses among breast cancer patients and to understand the underlying effects of these determinants.
The Oncology Care Model (OCM) developed by the Center for Medicare & Medicaid Innovation were used. The OCM data provided to Mount Sinai on 2938 breast-cancer episodes included both baseline periods and three performance periods between Jan 1, 2012 and Jan 1, 2018. We included 11 variables representing information on treatment, demography and socio-economics status, in addition to episode expenditures. OCM data were collected from participating practices and payers. We applied a principled variable selection algorithm using a flexible tree-based machine learning technique, Quantile Regression Forests.
We found that the use of chemotherapy drugs (versus hormonal therapy) and interval of days without chemotherapy predominantly affected medical expenses among high-cost breast cancer patients. The second-tier major determinants were comorbidities and age. Receipt of surgery or radiation, geographically adjusted relative cost and insurance type were also identified as important high-cost drivers. These factors had disproportionally larger effects upon the high-cost patients.
Data-driven machine learning methods provide insights into the underlying web of factors driving up the costs for breast cancer care management. Results from our study may help inform population health management initiatives and allow policymakers to develop tailored interventions to meet the needs of those high-cost patients and to avoid waste of scarce resource.
确定并排序乳腺癌患者高额医疗费用的关键决定因素的重要性,并了解这些决定因素的潜在影响。
使用医疗保险和医疗补助创新中心开发的肿瘤护理模型(OCM)。提供给西奈山医疗中心的关于2938例乳腺癌病例的OCM数据包括基线期以及2012年1月1日至2018年1月1日之间的三个绩效期。除了病例支出外,我们纳入了11个代表治疗、人口统计学和社会经济状况信息的变量。OCM数据是从参与的医疗机构和支付方收集的。我们使用一种基于灵活树的机器学习技术——分位数回归森林,应用了一种有原则的变量选择算法。
我们发现,使用化疗药物(与激素治疗相比)以及无化疗天数的间隔对高成本乳腺癌患者的医疗费用影响最大。第二层主要决定因素是合并症和年龄。接受手术或放疗、地理调整后的相对成本和保险类型也被确定为重要的高成本驱动因素。这些因素对高成本患者的影响尤其大。
数据驱动的机器学习方法为推动乳腺癌护理管理成本上升的潜在因素网络提供了见解。我们的研究结果可能有助于为人群健康管理举措提供信息,并使政策制定者能够制定量身定制的干预措施,以满足那些高成本患者的需求,并避免稀缺资源的浪费。