Orueta Juan F, García-Alvarez Arturo, Aurrekoetxea Juan J, García-Goñi Manuel
Centro de Salud de Astrabudua (Primary Health Care Center of Astrabudua), OSI Uribe, Osakidetza (Basque Health Service), Erandio, Spain.
Primary Care Research Unit-Bizkaia, Osakidetza, Bilbao, Spain.
BMJ Open. 2018 May 31;8(5):e019830. doi: 10.1136/bmjopen-2017-019830.
Predictive statistical models used in population stratification programmes are complex and usually difficult to interpret for primary care professionals. We designed FINGER (Forming and Identifying New Groups of Expected Risks), a new model based on clinical criteria, easy to understand and implement by physicians. Our aim was to assess the ability of FINGER to predict costs and correctly identify patients with high resource use in the following year.
Cross-sectional study with a 2-year follow-up.
The Basque National Health System.
All the residents in the Basque Country (Spain) ≥14 years of age covered by the public healthcare service (n=1 946 884).
We developed an algorithm classifying diagnoses of long-term health problems into 27 chronic disease groups. The database was randomly divided into two data sets. With the calibration sample, we calculated a score for each chronic disease group and other variables (age, sex, inpatient admissions, emergency department visits and chronic dialysis). Each individual obtained a FINGER score for the year by summing their characteristics' scores. With the validation sample, we constructed regression models with the FINGER score for the first 12 months as the only explanatory variable.
The annual FINGER scores obtained by patients ranged from 0 to 57 points, with a mean of 2.06. The coefficient of determination for healthcare costs was 0.188 and the area under the receiver operating characteristic curve was 0.838 for identifying patients with high costs (>95th percentile); 0.875 for extremely high costs (>99th percentile); 0.802 for unscheduled admissions; 0.861 for prolonged hospitalisation (>15 days); and 0.896 for death.
FINGER presents a predictive power for high risks fairly close to other classification systems. Its simple and transparent architecture allows for immediate calculation by clinicians. Being easy to interpret, it might be considered for implementation in regions involved in population stratification programmes.
用于人群分层计划的预测统计模型很复杂,对于基层医疗专业人员来说通常难以理解。我们设计了FINGER(形成和识别新的预期风险组),这是一种基于临床标准的新模型,医生易于理解和实施。我们的目的是评估FINGER预测成本以及正确识别下一年资源使用量大的患者的能力。
一项为期2年随访的横断面研究。
巴斯克国家卫生系统。
西班牙巴斯克地区所有年龄≥14岁且由公共医疗服务覆盖的居民(n = 1946884)。
我们开发了一种算法,将长期健康问题的诊断分类为27个慢性病组。数据库被随机分为两个数据集。在校准样本中,我们计算了每个慢性病组以及其他变量(年龄、性别、住院次数、急诊科就诊次数和慢性透析)的得分。每个人通过将其各项特征得分相加获得该年度的FINGER得分。在验证样本中,我们构建了以第一个12个月的FINGER得分为唯一解释变量的回归模型。
患者获得的年度FINGER得分范围为0至57分,平均分为2.06。医疗成本的决定系数为0.188,在识别高成本患者(成本>第95百分位数)时,受试者工作特征曲线下面积为0.838;在识别极高成本患者(成本>第99百分位数)时为0.875;在识别非计划住院时为0.802;在识别延长住院时间(>15天)时为0.861;在识别死亡时为0.896。
FINGER对高风险的预测能力与其他分类系统相当接近。其简单透明的架构使临床医生能够立即进行计算。由于易于解释,它可能会被考虑在参与人群分层计划的地区实施。