Jefferson School of Population Health, 901 Walnut St, 10th Fl, Philadelphia, PA 19107, USA.
Am J Manag Care. 2013 May 1;19(5):e166-74.
To identify Medicaid patients, based on 1 year of administrative data, who were at high risk of admission to a hospital in the next year, and who were most likely to benefit from outreach and targeted interventions.
Observational cohort study for predictive modeling.
Claims, enrollment, and eligibility data for 2007 from a state Medicaid program were used to provide the independent variables for a logistic regression model to predict inpatient stays in 2008 for fully covered, continuously enrolled, disabled members. The model was developed using a 50% random sample from the state and was validated against the other 50%. Further validation was carried out by applying the parameters from the model to data from a second state's disabled Medicaid population.
The strongest predictors in the model developed from the first 50% sample were over age 65 years, inpatient stay(s) in 2007, and higher Charlson Comorbidity Index scores. The areas under the receiver operating characteristic curve for the model based on the 50% state sample and its application to the 2 other samples ranged from 0.79 to 0.81. Models developed independently for all 3 samples were as high as 0.86. The results show a consistent trend of more accurate prediction of hospitalization with increasing risk score.
This is a fairly robust method for targeting Medicaid members with a high probability of future avoidable hospitalizations for possible case management or other interventions. Comparison with a second state's Medicaid program provides additional evidence for the usefulness of the model.
根据 1 年的管理数据,确定医疗补助计划(Medicaid)患者中在次年有住院高风险的人群,并确定最有可能从外展和有针对性的干预中受益的人群。
预测模型的观察性队列研究。
使用来自一个州医疗补助计划的 2007 年的索赔、登记和资格数据,为逻辑回归模型提供自变量,以预测 2008 年完全覆盖、持续登记、残疾成员的住院情况。该模型是使用该州的 50%随机样本开发的,并针对另一半样本进行了验证。进一步的验证是通过将模型的参数应用于第二个州的残疾医疗补助人群的数据来进行的。
该模型从前 50%的样本中开发的最强预测因素是年龄超过 65 岁、2007 年的住院治疗和更高的 Charlson 合并症指数评分。基于 50%州样本的模型和其在其他 2 个样本中的应用的接收者操作特征曲线下面积从 0.79 到 0.81 不等。为所有 3 个样本独立开发的模型高达 0.86。结果表明,随着风险评分的增加,预测住院的准确性呈一致的上升趋势。
这是一种针对医疗补助计划成员进行高概率未来可避免住院的相当稳健的方法,以便进行可能的病例管理或其他干预。与第二个州的医疗补助计划进行比较提供了该模型有用性的额外证据。