Literature DB >> 29575170

Random-effects meta-analysis of the clinical utility of tests and prediction models.

L Wynants1, R D Riley2, D Timmerman1,3, B Van Calster1.   

Abstract

The use of data from multiple studies or centers for the validation of a clinical test or a multivariable prediction model allows researchers to investigate the test's/model's performance in multiple settings and populations. Recently, meta-analytic techniques have been proposed to summarize discrimination and calibration across study populations. Here, we rather consider performance in terms of net benefit, which is a measure of clinical utility that weighs the benefits of true positive classifications against the harms of false positives. We posit that it is important to examine clinical utility across multiple settings of interest. This requires a suitable meta-analysis method, and we propose a Bayesian trivariate random-effects meta-analysis of sensitivity, specificity, and prevalence. Across a range of chosen harm-to-benefit ratios, this provides a summary measure of net benefit, a prediction interval, and an estimate of the probability that the test/model is clinically useful in a new setting. In addition, the prediction interval and probability of usefulness can be calculated conditional on the known prevalence in a new setting. The proposed methods are illustrated by 2 case studies: one on the meta-analysis of published studies on ear thermometry to diagnose fever in children and one on the validation of a multivariable clinical risk prediction model for the diagnosis of ovarian cancer in a multicenter dataset. Crucially, in both case studies the clinical utility of the test/model was heterogeneous across settings, limiting its usefulness in practice. This emphasizes that heterogeneity in clinical utility should be assessed before a test/model is routinely implemented.
Copyright © 2018 John Wiley & Sons, Ltd.

Entities:  

Keywords:  decision curves; diagnostic; meta-analysis; net benefit; test accuracy

Mesh:

Year:  2018        PMID: 29575170     DOI: 10.1002/sim.7653

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  7 in total

Review 1.  Untapped potential of multicenter studies: a review of cardiovascular risk prediction models revealed inappropriate analyses and wide variation in reporting.

Authors:  L Wynants; D M Kent; D Timmerman; C M Lundquist; B Van Calster
Journal:  Diagn Progn Res       Date:  2019-02-22

Review 2.  The current status of risk-stratified breast screening.

Authors:  Ash Kieran Clift; David Dodwell; Simon Lord; Stavros Petrou; Sir Michael Brady; Gary S Collins; Julia Hippisley-Cox
Journal:  Br J Cancer       Date:  2021-10-26       Impact factor: 9.075

3.  Predicting Real-world Hypoglycemia Risk in American Adults With Type 1 or 2 Diabetes Mellitus Prescribed Insulin and/or Secretagogues: Protocol for a Prospective, 12-Wave Internet-Based Panel Survey With Email Support (the iNPHORM [Investigating Novel Predictions of Hypoglycemia Occurrence Using Real-world Models] Study).

Authors:  Alexandria Ratzki-Leewing; Bridget L Ryan; Guangyong Zou; Susan Webster-Bogaert; Jason E Black; Kathryn Stirling; Kristina Timcevska; Nadia Khan; John D Buchenberger; Stewart B Harris
Journal:  JMIR Res Protoc       Date:  2022-02-11

4.  Validation of models to diagnose ovarian cancer in patients managed surgically or conservatively: multicentre cohort study.

Authors:  Ben Van Calster; Lil Valentin; Wouter Froyman; Chiara Landolfo; Jolien Ceusters; Antonia C Testa; Laure Wynants; Povilas Sladkevicius; Caroline Van Holsbeke; Ekaterini Domali; Robert Fruscio; Elisabeth Epstein; Dorella Franchi; Marek J Kudla; Valentina Chiappa; Juan L Alcazar; Francesco P G Leone; Francesca Buonomo; Maria Elisabetta Coccia; Stefano Guerriero; Nandita Deo; Ligita Jokubkiene; Luca Savelli; Daniela Fischerová; Artur Czekierdowski; Jeroen Kaijser; An Coosemans; Giovanni Scambia; Ignace Vergote; Tom Bourne; Dirk Timmerman
Journal:  BMJ       Date:  2020-07-30

5.  Tailored meta-analysis: an investigation of the correlation between the test positive rate and prevalence.

Authors:  Brian H Willis; Dyuti Coomar; Mohammed Baragilly
Journal:  J Clin Epidemiol       Date:  2018-09-29       Impact factor: 6.437

6.  Do population-level risk prediction models that use routinely collected health data reliably predict individual risks?

Authors:  Yan Li; Matthew Sperrin; Miguel Belmonte; Alexander Pate; Darren M Ashcroft; Tjeerd Pieter van Staa
Journal:  Sci Rep       Date:  2019-08-02       Impact factor: 4.379

7.  Prediction models for diagnosis and prognosis of covid-19: systematic review and critical appraisal

Authors:  Laure Wynants; Ben Van Calster; Gary S Collins; Richard D Riley; Georg Heinze; Ewoud Schuit; Marc M J Bonten; Darren L Dahly; Johanna A A Damen; Thomas P A Debray; Valentijn M T de Jong; Maarten De Vos; Paul Dhiman; Maria C Haller; Michael O Harhay; Liesbet Henckaerts; Pauline Heus; Michael Kammer; Nina Kreuzberger; Anna Lohmann; Kim Luijken; Jie Ma; Glen P Martin; David J McLernon; Constanza L Andaur Navarro; Johannes B Reitsma; Jamie C Sergeant; Chunhu Shi; Nicole Skoetz; Luc J M Smits; Kym I E Snell; Matthew Sperrin; René Spijker; Ewout W Steyerberg; Toshihiko Takada; Ioanna Tzoulaki; Sander M J van Kuijk; Bas van Bussel; Iwan C C van der Horst; Florien S van Royen; Jan Y Verbakel; Christine Wallisch; Jack Wilkinson; Robert Wolff; Lotty Hooft; Karel G M Moons; Maarten van Smeden
Journal:  BMJ       Date:  2020-04-07
  7 in total

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