Hippisley-Cox Julia, Coupland Carol
Division of Primary Care, University Park, University of Nottingham, Nottingham NG2 7RD, UK
Division of Primary Care, University Park, University of Nottingham, Nottingham NG2 7RD, UK.
BMJ. 2017 Sep 20;358:j4208. doi: 10.1136/bmj.j4208.
To derive and validate a risk prediction equation to estimate the short term risk of death, and to develop a classification method for frailty based on risk of death and risk of unplanned hospital admission. Prospective open cohort study. Routinely collected data from 1436 general practices contributing data to QResearch in England between 2012 and 2016. 1079 practices were used to develop the scores and a separate set of 357 practices to validate the scores. 1.47 million patients aged 65-100 years were in the derivation cohort and 0.50 million patients in the validation cohort. Cox proportional hazards models in the derivation cohort were used to derive separate risk equations in men and women for evaluation of the risk of death at one year. Risk factors considered were age, sex, ethnicity, deprivation, smoking status, alcohol intake, body mass index, medical conditions, specific drugs, social factors, and results of recent investigations. Measures of calibration and discrimination were determined in the validation cohort for men and women separately and for each age and ethnic group. The new mortality equation was used in conjunction with the existing QAdmissions equation (which predicts risk of unplanned hospital admission) to classify patients into frailty groups. The primary outcome was all cause mortality. During follow-up 180 132 deaths were identified in the derivation cohort arising from 4.39 million person years of observation. The final model included terms for age, body mass index, Townsend score, ethnic group, smoking status, alcohol intake, unplanned hospital admissions in the past 12 months, atrial fibrillation, antipsychotics, cancer, asthma or chronic obstructive pulmonary disease, living in a care home, congestive heart failure, corticosteroids, cardiovascular disease, dementia, epilepsy, learning disability, leg ulcer, chronic liver disease or pancreatitis, Parkinson's disease, poor mobility, rheumatoid arthritis, chronic kidney disease, type 1 diabetes, type 2 diabetes, venous thromboembolism, anaemia, abnormal liver function test result, high platelet count, visited doctor in the past year with either appetite loss, unexpected weight loss, or breathlessness. The model had good calibration and high levels of explained variation and discrimination. In women, the equation explained 55.6% of the variation in time to death (R), and had very good discrimination-the D statistic was 2.29, and Harrell's C statistic value was 0.85. The corresponding values for men were 53.1%, 2.18, and 0.84. By combining predicted risks of mortality and unplanned hospital admissions, 2.7% of patients (n=13 665) were classified as severely frail, 9.4% (n=46 770) as moderately frail, 43.1% (n=215 253) as mildly frail, and 44.8% (n=223 790) as fit. We have developed new equations to predict the short term risk of death in men and women aged 65 or more, taking account of demographic, social, and clinical variables. The equations had good performance on a separate validation cohort. The QMortality equations can be used in conjunction with the QAdmissions equations, to classify patients into four frailty groups (known as QFrailty categories) to enable patients to be identified for further assessment or interventions.
推导并验证一个用于估计短期死亡风险的风险预测方程,并基于死亡风险和非计划住院风险开发一种衰弱分类方法。前瞻性开放队列研究。收集了2012年至2016年间向英国QResearch贡献数据的1436家全科诊所的常规数据。1079家诊所用于制定评分,另外357家诊所用于验证评分。推导队列中有147万年龄在65 - 100岁的患者,验证队列中有50万患者。在推导队列中使用Cox比例风险模型分别为男性和女性推导单独的风险方程,以评估一年时的死亡风险。考虑的风险因素包括年龄、性别、种族、贫困程度、吸烟状况、饮酒量、体重指数、医疗状况、特定药物、社会因素以及近期检查结果。在验证队列中分别针对男性和女性以及每个年龄和种族组确定校准和区分度的指标。新的死亡率方程与现有的QAdmissions方程(预测非计划住院风险)结合使用,将患者分类为衰弱组。主要结局是全因死亡率。在随访期间,推导队列中从439万人年的观察中确定了180132例死亡。最终模型包括年龄、体重指数、汤森德评分、种族、吸烟状况、饮酒量、过去12个月内的非计划住院、心房颤动、抗精神病药物、癌症、哮喘或慢性阻塞性肺疾病、住在养老院、充血性心力衰竭、皮质类固醇、心血管疾病、痴呆、癫痫、学习障碍、腿部溃疡、慢性肝病或胰腺炎、帕金森病、行动不便、类风湿性关节炎、慢性肾病、1型糖尿病、2型糖尿病、静脉血栓栓塞、贫血、肝功能检查结果异常、高血小板计数、过去一年因食欲减退、意外体重减轻或呼吸急促看过医生等项。该模型具有良好的校准度、较高的解释变异度和区分度。在女性中,该方程解释了死亡时间变异的55.6%(R),具有非常好的区分度——D统计量为2.29,Harrell's C统计量值为0.85。男性的相应值为53.1%、2.18和0.84。通过结合预测的死亡风险和非计划住院风险,2.7%的患者(n = 13665)被分类为严重衰弱,9.4%(n = 46770)为中度衰弱,43.1%(n = 215253)为轻度衰弱,44.8%(n = 223790)为健康。我们开发了新的方程来预测65岁及以上男性和女性的短期死亡风险,同时考虑了人口统计学、社会和临床变量。这些方程在单独的验证队列中表现良好。QMortality方程可与QAdmissions方程结合使用,将患者分为四个衰弱组(称为Q衰弱类别),以便识别患者进行进一步评估或干预。