| Literature DB >> 25562432 |
G S Collins1, J B Reitsma2, D G Altman1, K G M Moons2.
Abstract
Prediction models are developed to aid health-care providers in estimating the probability or risk that a specific disease or condition is present (diagnostic models) or that a specific event will occur in the future (prognostic models), to inform their decision making. However, the overwhelming evidence shows that the quality of reporting of prediction model studies is poor. Only with full and clear reporting of information on all aspects of a prediction model can risk of bias and potential usefulness of prediction models be adequately assessed. The Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) Initiative developed a set of recommendations for the reporting of studies developing, validating, or updating a prediction model, whether for diagnostic or prognostic purposes. This article describes how the TRIPOD Statement was developed. An extensive list of items based on a review of the literature was created, which was reduced after a Web-based survey and revised during a 3-day meeting in June 2011 with methodologists, health-care professionals, and journal editors. The list was refined during several meetings of the steering group and in e-mail discussions with the wider group of TRIPOD contributors. The resulting TRIPOD Statement is a checklist of 22 items, deemed essential for transparent reporting of a prediction model study. The TRIPOD Statement aims to improve the transparency of the reporting of a prediction model study regardless of the study methods used. The TRIPOD Statement is best used in conjunction with the TRIPOD explanation and elaboration document. To aid the editorial process and readers of prediction model studies, it is recommended that authors include a completed checklist in their submission (also available at www.tripod-statement.org).Entities:
Mesh:
Year: 2015 PMID: 25562432 PMCID: PMC4454817 DOI: 10.1038/bjc.2014.639
Source DB: PubMed Journal: Br J Cancer ISSN: 0007-0920 Impact factor: 7.640
Figure 1Types of prediction model studies covered by the TRIPOD statement. D=development data; V=validation data.
Checklist of items to include when reporting a study developing or validating a multivariable prediction model for diagnosis or prognosisa
| Title | 1 | D;V | Identify the study as developing and/or validating a multivariable prediction model, the target population, and the outcome to be predicted. | |
| Abstract | 2 | D;V | Provide a summary of objectives, study design, setting, participants, sample size, predictors, outcome, statistical analysis, results, and conclusions. | |
| Background and objectives | 3a | D;V | Explain the medical context (including whether diagnostic or prognostic) and rationale for developing or validating the multivariable prediction model, including references to existing models. | |
| 3b | D;V | Specify the objectives, including whether the study describes the development or validation of the model, or both. | ||
| Source of data | 4a | D;V | Describe the study design or source of data (e.g., randomised trial, cohort, or registry data), separately for the development and validation data sets, if applicable. | |
| 4b | D;V | Specify the key study dates, including start of accrual; end of accrual; and, if applicable, end of follow-up. | ||
| Participants | 5a | D;V | Specify key elements of the study setting (e.g., primary care, secondary care, general population) including number and location of centres. | |
| 5b | D;V | Describe eligibility criteria for participants. | ||
| 5c | D;V | Give details of treatments received, if relevant. | ||
| Outcome | 6a | D;V | Clearly define the outcome that is predicted by the prediction model, including how and when assessed. | |
| 6b | D;V | Report any actions to blind assessment of the outcome to be predicted. | ||
| Predictors | 7a | D;V | Clearly define all predictors used in developing the multivariable prediction model, including how and when they were measured. | |
| 7b | D;V | Report any actions to blind assessment of predictors for the outcome and other predictors. | ||
| Sample size | 8 | D;V | Explain how the study size was arrived at. | |
| Missing data | 9 | D;V | Describe how missing data were handled (e.g., complete-case analysis, single imputation, multiple imputation) with details of any imputation method. | |
| Statistical analysis methods | 10a | D | Describe how predictors were handled in the analyses. | |
| 10b | D | Specify type of model, all model-building procedures (including any predictor selection), and method for internal validation. | ||
| 10c | V | For validation, describe how the predictions were calculated. | ||
| 10d | D;V | Specify all measures used to assess model performance and, if relevant, to compare multiple models. | ||
| 10e | V | Describe any model updating (e.g., recalibration) arising from the validation, if done. | ||
| Risk groups | 11 | D;V | Provide details on how risk groups were created, if done. | |
| Development | 12 | V | For validation, identify any differences from the development data in setting, eligibility criteria, outcome, and predictors. | |
| Participants | 13a | D;V | Describe the flow of participants through the study, including the number of participants with and without the outcome and, if applicable, a summary of the follow-up time. A diagram may be helpful. | |
| 13b | D;V | Describe the characteristics of the participants (basic demographics, clinical features, available predictors), including the number of participants with missing data for predictors and outcome. | ||
| 13c | V | For validation, show a comparison with the development data of the distribution of important variables (demographics, predictors, and outcome). | ||
| Model development | 14a | D | Specify the number of participants and outcome events in each analysis. | |
| 14b | D | If done, report the unadjusted association between each candidate predictor and outcome. | ||
| Model specification | 15a | D | Present the full prediction model to allow predictions for individuals (i.e., all regression coefficients, and model intercept or baseline survival at a given time point). | |
| 15b | D | Explain how to use the prediction model. | ||
| Model performance | 16 | D;V | Report performance measures (with CIs) for the prediction model. | |
| Model updating | 17 | V | If done, report the results from any model updating (i.e., model specification, model performance). | |
| Limitations | 18 | D;V | Discuss any limitations of the study (such as nonrepresentative sample, few events per predictor, missing data). | |
| Interpretation | 19a | V | For validation, discuss the results with reference to performance in the development data, and any other validation data. | |
| 19b | D;V | Give an overall interpretation of the results, considering objectives, limitations, results from similar studies, and other relevant evidence. | ||
| Implications | 20 | D;V | Discuss the potential clinical use of the model and implications for future research | |
| Supplementary information | 21 | D;V | Provide information about the availability of supplementary resources, such as study protocol, Web calculator, and data sets. | |
| Funding | 22 | D;V | Give the source of funding and the role of the funders for the present study. | |
Items relevant only to the development of a prediction model are denoted by D, items relating solely to a validation of a prediction model are denoted by V, and items relating to both are denoted D;V. We recommend using the TRIPOD Checklist in conjunction with the TRIPOD explanation and elaboration document.