Development and validation of QMortality risk prediction algorithm to estimate short term risk of death and assess frailty: cohort study

被引:65
作者
Hippisley-Cox, Julia [1 ]
Coupland, Carol [1 ]
机构
[1] Univ Nottingham, Div Primary Care, Univ Pk, Nottingham NG2 7RD, England
来源
BMJ-BRITISH MEDICAL JOURNAL | 2017年 / 358卷
关键词
CARDIOVASCULAR RISK; MISSING DATA; IMPUTATION; DERIVATION; MODELS; PERFORMANCE; CURVE; QRISK; SCORE;
D O I
10.1136/bmj.j4208
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
OBJECTIVES 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. DESIGN Prospective open cohort study. PARTICIPANTS 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. METHODS 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. MAIN OUTCOME MEASURE The primary outcome was all cause mortality. RESULTS 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-2), 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. CONCLUSIONS 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.
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页数:16
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共 54 条
  • [41] Safari S, 2016, EMERGENCY, V4, P111
  • [42] Missing data: Our view of the state of the art
    Schafer, JL
    Graham, JW
    [J]. PSYCHOLOGICAL METHODS, 2002, 7 (02) : 147 - 177
  • [43] Multiple imputation: a primer
    Schafer, JL
    [J]. STATISTICAL METHODS IN MEDICAL RESEARCH, 1999, 8 (01) : 3 - 15
  • [44] A standard procedure for creating a frailty index
    Searle S.D.
    Mitnitski A.
    Gahbauer E.A.
    Gill T.M.
    Rockwood K.
    [J]. BMC Geriatrics, 8 (1)
  • [45] Preventing hospital readmissions: the importance of considering 'impactibility,' not just predicted risk
    Steventon, Adam
    Billings, John
    [J]. BMJ QUALITY & SAFETY, 2017, 26 (10) : 782 - 785
  • [46] Imputation is beneficial for handling missing data in predictive models
    Steyerberg, Ewout W.
    van Veen, Mirjam
    [J]. JOURNAL OF CLINICAL EPIDEMIOLOGY, 2007, 60 (09) : 979 - 979
  • [47] Assessing the Performance of Prediction Models A Framework for Traditional and Novel Measures
    Steyerberg, Ewout W.
    Vickers, Andrew J.
    Cook, Nancy R.
    Gerds, Thomas
    Gonen, Mithat
    Obuchowski, Nancy
    Pencina, Michael J.
    Kattan, Michael W.
    [J]. EPIDEMIOLOGY, 2010, 21 (01) : 128 - 138
  • [48] Townsend P, 1982, The Black Report
  • [49] The Hospital-patient One-year Mortality Risk score accurately predicted long-term death risk in hospitalized patients
    van Walraven, Carl
    [J]. JOURNAL OF CLINICAL EPIDEMIOLOGY, 2014, 67 (09) : 1025 - 1034
  • [50] Decision curve analysis: A novel method for evaluating prediction models
    Vickers, Andrew J.
    Elkin, Elena B.
    [J]. MEDICAL DECISION MAKING, 2006, 26 (06) : 565 - 574