Prediction models for risk of developing type 2 diabetes: systematic literature search and independent external validation study

Objective To identify existing prediction models for the risk of development of type 2 diabetes and to externally validate them in a large independent cohort. Data sources Systematic search of English, German, and Dutch literature in PubMed until February 2011 to identify prediction models for diabetes. Design Performance of the models was assessed in terms of discrimination (C statistic) and calibration (calibration plots and Hosmer-Lemeshow test).The validation study was a prospective cohort study, with a case cohort study in a random subcohort. Setting Models were applied to the Dutch cohort of the European Prospective Investigation into Cancer and Nutrition cohort study (EPIC-NL). Participants 38 379 people aged 20-70 with no diabetes at baseline, 2506 of whom made up the random subcohort. Outcome measure Incident type 2 diabetes. Results The review identified 16 studies containing 25 prediction models. We considered 12 models as basic because they were based on variables that can be assessed non-invasively and 13 models as extended because they additionally included conventional biomarkers such as glucose concentration. During a median follow-up of 10.2 years there were 924 cases in the full EPIC-NL cohort and 79 in the random subcohort. The C statistic for the basic models ranged from 0.74 (95% confidence interval 0.73 to 0.75) to 0.84 (0.82 to 0.85) for risk at 7.5 years. For prediction models including biomarkers the C statistic ranged from 0.81 (0.80 to 0.83) to 0.93 (0.92 to 0.94). Most prediction models overestimated the observed risk of diabetes, particularly at higher observed risks. After adjustment for differences in incidence of diabetes, calibration improved considerably. Conclusions Most basic prediction models can identify people at high risk of developing diabetes in a time frame of five to 10 years. Models including biomarkers classified cases slightly better than basic ones. Most models overestimated the actual risk of diabetes. Existing prediction models therefore perform well to identify those at high risk, but cannot sufficiently quantify actual risk of future diabetes.

[1]  David M Nathan,et al.  10-year follow-up of diabetes incidence and weight loss in the Diabetes Prevention Program Outcomes Study. , 2009, Lancet.

[2]  D. Grobbee,et al.  Cohort profile: the EPIC-NL study. , 2010, International journal of epidemiology.

[3]  A. Evans,et al.  Translating Clinical Research into Clinical Practice: Impact of Using Prediction Rules To Make Decisions , 2006, Annals of Internal Medicine.

[4]  John P A Ioannidis,et al.  Comparisons of established risk prediction models for cardiovascular disease: systematic review , 2012, BMJ : British Medical Journal.

[5]  R Holle,et al.  Prediction models for incident Type 2 diabetes mellitus
in the older population: KORA S4/F4 cohort study , 2010, Diabetic medicine : a journal of the British Diabetic Association.

[6]  S. Haffner,et al.  Identification of Persons at High Risk for Type 2 Diabetes Mellitus: Do We Need the Oral Glucose Tolerance Test? , 2002, Annals of Internal Medicine.

[7]  F. Harrell,et al.  Prognostic/Clinical Prediction Models: Multivariable Prognostic Models: Issues in Developing Models, Evaluating Assumptions and Adequacy, and Measuring and Reducing Errors , 2005 .

[8]  L. Irwig,et al.  Assessing new biomarkers and predictive models for use in clinical practice: a clinician's guide. , 2008, Archives of internal medicine.

[9]  Henry Kahn,et al.  Two Risk-Scoring Systems for Predicting Incident Diabetes Mellitus in U.S. Adults Age 45 to 64 Years , 2009, Annals of Internal Medicine.

[10]  J. Ioannidis,et al.  The PRISMA statement for reporting systematic reviews and meta-analyses of studies that evaluate healthcare interventions: explanation and elaboration , 2009, BMJ : British Medical Journal.

[11]  T. Stijnen,et al.  Review: a gentle introduction to imputation of missing values. , 2006, Journal of clinical epidemiology.

[12]  Aziz Sheikh,et al.  Predicting risk of type 2 diabetes in England and Wales: prospective derivation and validation of QDScore , 2009, BMJ : British Medical Journal.

[13]  Gary S Collins,et al.  Comparing risk prediction models , 2012, BMJ : British Medical Journal.

[14]  Simon J. Griffin,et al.  Risk Assessment Tools for Identifying Individuals at Risk of Developing Type 2 Diabetes , 2011, Epidemiologic reviews.

[15]  D. van der A,et al.  Ascertainment and verification of diabetes in the EPIC-NL study. , 2010, The Netherlands journal of medicine.

[16]  S. Pocock,et al.  The Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) statement: guidelines for reporting observational studies. , 2007, Preventive medicine.

[17]  M. Carnethon,et al.  Comparative validity of 3 diabetes mellitus risk prediction scoring models in a multiethnic US cohort: the Multi-Ethnic Study of Atherosclerosis. , 2010, American journal of epidemiology.

[18]  H C van Houwelingen,et al.  Validation, calibration, revision and combination of prognostic survival models. , 2000, Statistics in medicine.

[19]  I. Njølstad,et al.  Incidence of and risk factors for type-2 diabetes in a general population: The Tromsø Study , 2010, Scandinavian journal of public health.

[20]  S. Wild,et al.  Global prevalence of diabetes: estimates for the year 2000 and projections for 2030. , 2004, Diabetes care.

[21]  L. Chuang,et al.  Cross-Sectional Validation of Diabetes Risk Scores for Predicting Diabetes, Metabolic Syndrome, and Chronic Kidney Disease in Taiwanese , 2009, Diabetes Care.

[22]  Yvonne Vergouwe,et al.  Prognosis and prognostic research: validating a prognostic model , 2009, BMJ : British Medical Journal.

[23]  P. Whincup,et al.  The potential for a two‐stage diabetes risk algorithm combining non‐laboratory‐based scores with subsequent routine non‐fasting blood tests: results from prospective studies in older men and women , 2011, Diabetic medicine : a journal of the British Diabetic Association.

[24]  M. Kenward,et al.  Multiple imputation for missing data in epidemiological and clinical research: potential and pitfalls , 2009, BMJ : British Medical Journal.

[25]  N Slimani,et al.  Design and cohort description of the InterAct Project: an examination of the interaction of genetic and lifestyle factors on the incidence of type 2 diabetes in the EPIC Study , 2011, Diabetologia.

[26]  A. von Eckardstein,et al.  Risk for diabetes mellitus in middle-aged Caucasian male participants of the PROCAM study: implications for the definition of impaired fasting glucose by the American Diabetes Association. Prospective Cardiovascular Münster. , 2000, The Journal of clinical endocrinology and metabolism.

[27]  C. D. A. Stehouwer,et al.  The Evaluation of Screening and Early Detection Strategies for Type 2 Diabetes and Impaired Glucose Tolerance (DETECT-2) update of the Finnish diabetes risk score for prediction of incident type 2 diabetes , 2010, Diabetologia.

[28]  J. Min,et al.  Prediction of coronary heart disease by erectile dysfunction in men referred for nuclear stress testing. , 2006, Archives of internal medicine.

[29]  F. Liddell,et al.  Simple exact analysis of the standardised mortality ratio. , 1984, Journal of epidemiology and community health.

[30]  F. Harrell,et al.  Regression modelling strategies for improved prognostic prediction. , 1984, Statistics in medicine.

[31]  D Kromhout,et al.  The Dutch EPIC food frequency questionnaire. I. Description of the questionnaire, and relative validity and reproducibility for food groups. , 1997, International journal of epidemiology.

[32]  Ralph B D'Agostino,et al.  Prediction of incident diabetes mellitus in middle-aged adults: the Framingham Offspring Study. , 2007, Archives of internal medicine.

[33]  A. Stadlmayr,et al.  A European Evidence-Based Guideline for the Prevention of Type 2 Diabetes , 2010, Hormone and metabolic research = Hormon- und Stoffwechselforschung = Hormones et metabolisme.

[34]  Douglas G Altman,et al.  Comparison of techniques for handling missing covariate data within prognostic modelling studies: a simulation study , 2010, BMC medical research methodology.

[35]  N J Wareham,et al.  Do simple questions about diet and physical activity help to identify those at risk of Type 2 diabetes? , 2007, Diabetic medicine : a journal of the British Diabetic Association.

[36]  D. van der A,et al.  Non-fasting lipids and risk of cardiovascular disease in patients with diabetes mellitus , 2010, Diabetologia.

[37]  Yvonne Vergouwe,et al.  Prognosis and prognostic research: what, why, and how? , 2009, BMJ : British Medical Journal.

[38]  Beverley Balkau,et al.  AUSDRISK: an Australian Type 2 Diabetes Risk Assessment Tool based on demographic, lifestyle and simple anthropometric measures , 2010, The Medical journal of Australia.

[39]  V. Basevi Standards of Medical Care in Diabetes—2011 , 2011, Diabetes Care.

[40]  M. S. Kirkman,et al.  Comment on: American Diabetes Association. Standards of Medical Care in Diabetes—2011. Diabetes Care 2011;34(Suppl. 1):S11–S61 , 2011 .

[41]  P. Marques‐Vidal,et al.  Validation of 7 type 2 diabetes mellitus risk scores in a population-based cohort: CoLaus study. , 2012, Archives of internal medicine.

[42]  S. Fowler,et al.  Reduction in the incidence of type 2 diabetes with lifestyle intervention or metformin. , 2002 .

[43]  Trisha Greenhalgh,et al.  Risk models and scores for type 2 diabetes: systematic review , 2011, BMJ : British Medical Journal.

[44]  P Zimmet,et al.  International Diabetes Federation: a consensus on Type 2 diabetes prevention , 2007, Diabetic medicine : a journal of the British Diabetic Association.

[45]  J. Ormel,et al.  Survey non-response in the Netherlands: effects on prevalence estimates and associations. , 2003, Annals of epidemiology.

[46]  Yvonne Vergouwe,et al.  External validity of risk models: Use of benchmark values to disentangle a case-mix effect from incorrect coefficients. , 2010, American journal of epidemiology.

[47]  K. Chien An Accurate Risk Score Based on Anthropometric, Dietary, and Lifestyle Factors to Predict the Development of Type 2 Diabetes , 2007, Diabetes Care.

[48]  N. Obuchowski,et al.  Assessing the Performance of Prediction Models: A Framework for Traditional and Novel Measures , 2010, Epidemiology.

[49]  A. Volovics,et al.  Methods for the Analyses of Case‐Cohort Studies , 1997 .

[50]  Jaakko Tuomilehto,et al.  The diabetes risk score: a practical tool to predict type 2 diabetes risk. , 2003, Diabetes care.

[51]  Nicholas J Wareham,et al.  A simple risk score identifies individuals at high risk of developing Type 2 diabetes: a prospective cohort study. , 2008, Family practice.

[52]  Y Vergouwe,et al.  Updating methods improved the performance of a clinical prediction model in new patients. , 2008, Journal of clinical epidemiology.

[53]  R. Holle,et al.  Performance of screening questionnaires and risk scores for undiagnosed diabetes: the KORA Survey 2000. , 2005, Archives of internal medicine.

[54]  G. Collins,et al.  Developing risk prediction models for type 2 diabetes: a systematic review of methodology and reporting , 2011, BMC medicine.

[55]  S. Haffner,et al.  Predicting Diabetes: Moving Beyond Impaired Glucose Tolerance , 1993, Diabetes.

[56]  R. D'Agostino,et al.  Validation of the Framingham coronary heart disease prediction scores: results of a multiple ethnic groups investigation. , 2001, JAMA.

[57]  W. Rathmann,et al.  Immunological and Cardiometabolic Risk Factors in the Prediction of Type 2 Diabetes and Coronary Events: MONICA/KORA Augsburg Case-Cohort Study , 2011, PloS one.

[58]  N. Wareham,et al.  Diabetes risk score: towards earlier detection of Type 2 diabetes in general practice , 2000, Diabetes/metabolism research and reviews.

[59]  Heejung Bang,et al.  Identifying individuals at high risk for diabetes: The Atherosclerosis Risk in Communities study. , 2005, Diabetes care.

[60]  Laura C Rosella,et al.  A population-based risk algorithm for the development of diabetes: development and validation of the Diabetes Population Risk Tool (DPoRT) , 2010, Journal of Epidemiology & Community Health.

[61]  Jean Tichet,et al.  Predicting Diabetes: Clinical, Biological, and Genetic Approaches , 2008, Diabetes Care.