Estupiñán-Ramírez Marcos, Tristancho-Ajamil Rita, Company-Sancho María Consuelo, Sánchez-Janáriz Hilda
Servicio de Atención Primaria. Dirección General de Programas Asistenciales. Servicio Canario de la Salud, Las Palmas de Gran Canaria, España.
Servicio de Atención Primaria. Dirección General de Programas Asistenciales. Servicio Canario de la Salud, Las Palmas de Gran Canaria, España.
Gac Sanit. 2019 Jan-Feb;33(1):60-65. doi: 10.1016/j.gaceta.2017.06.003. Epub 2017 Aug 19.
To compare the concordance of complexity weights between Clinical Risk Groups (CRG) and Adjusted Morbidity Groups (AMG). To determine which one is the best predictor of patient admission. To optimise the method used to select the 0.5% of patients of higher complexity that will be included in an intervention protocol.
Cross-sectional analytical study in 18 Canary Island health areas, 385,049 citizens were enrolled, using sociodemographic variables from health cards; diagnoses and use of healthcare resources obtained from primary health care electronic records (PCHR) and the basic minimum set of hospital data; the functional status recorded in the PCHR, and the drugs prescribed through the electronic prescription system. The correlation between stratifiers was estimated from these data. The ability of each stratifier to predict patient admissions was evaluated and prediction optimisation models were constructed.
Concordance between weights complexity stratifiers was strong (rho = 0.735) and the correlation between categories of complexity was moderate (weighted kappa = 0.515). AMG complexity weight predicts better patient admission than CRG (AUC: 0.696 [0.695-0.697] versus 0.692 [0.691-0.693]). Other predictive variables were added to the AMG weight, obtaining the best AUC (0.708 [0.707-0.708]) the model composed by AMG, sex, age, Pfeiffer and Barthel scales, re-admissions and number of prescribed therapeutic groups.
strong concordance was found between stratifiers, and higher predictive capacity for admission from AMG, which can be increased by adding other dimensions.
比较临床风险组(CRG)和调整后发病组(AMG)之间复杂性权重的一致性。确定哪一个是患者入院的最佳预测指标。优化用于选择将纳入干预方案的0.5%复杂性较高患者的方法。
在加那利群岛的18个卫生区域进行横断面分析研究,纳入385,049名公民,使用健康卡中的社会人口学变量;从初级卫生保健电子记录(PCHR)和基本医院数据集中获取的诊断和医疗资源使用情况;PCHR中记录的功能状态,以及通过电子处方系统开具的药物。根据这些数据估计分层变量之间的相关性。评估每个分层变量预测患者入院的能力,并构建预测优化模型。
权重复杂性分层变量之间的一致性很强(rho = 0.735),复杂性类别之间的相关性中等(加权kappa = 0.515)。AMG复杂性权重比CRG能更好地预测患者入院(AUC:0.696 [0.695 - 0.697] 对 0.692 [0.691 - 0.693])。将其他预测变量添加到AMG权重中,由AMG、性别、年龄、 Pfeiffer和Barthel量表、再入院情况以及开具的治疗组数量组成的模型获得了最佳AUC(0.708 [0.707 - 0.708])。
分层变量之间发现了很强的一致性,AMG对入院的预测能力更高,通过添加其他维度可以提高预测能力。