TY - JOUR T1 - Prognostic models for predicting in-hospital paediatric mortality in resource-limited countries: a systematic review JF - BMJ Open JO - BMJ Open DO - 10.1136/bmjopen-2019-035045 VL - 10 IS - 10 SP - e035045 AU - Morris Ogero AU - Rachel Jelagat Sarguta AU - Lucas Malla AU - Jalemba Aluvaala AU - Ambrose Agweyu AU - Mike English AU - Nelson Owuor Onyango AU - Samuel Akech Y1 - 2020/10/01 UR - http://bmjopen.bmj.com/content/10/10/e035045.abstract N2 - Objectives To identify and appraise the methodological rigour of multivariable prognostic models predicting in-hospital paediatric mortality in low-income and middle-income countries (LMICs).Design Systematic review of peer-reviewed journals.Data sources MEDLINE, CINAHL, Google Scholar and Web of Science electronic databases since inception to August 2019.Eligibility criteria We included model development studies predicting in-hospital paediatric mortality in LMIC.Data extraction and synthesis This systematic review followed the Checklist for critical Appraisal and data extraction for systematic Reviews of prediction Modelling Studies framework. The risk of bias assessment was conducted using Prediction model Risk of Bias Assessment Tool (PROBAST). No quantitative summary was conducted due to substantial heterogeneity that was observed after assessing the studies included.Results Our search strategy identified a total of 4054 unique articles. Among these, 3545 articles were excluded after review of titles and abstracts as they covered non-relevant topics. Full texts of 509 articles were screened for eligibility, of which 15 studies reporting 21 models met the eligibility criteria. Based on the PROBAST tool, risk of bias was assessed in four domains; participant, predictors, outcome and analyses. The domain of statistical analyses was the main area of concern where none of the included models was judged to be of low risk of bias.Conclusion This review identified 21 models predicting in-hospital paediatric mortality in LMIC. However, most reports characterising these models are of poor quality when judged against recent reporting standards due to a high risk of bias. Future studies should adhere to standardised methodological criteria and progress from identifying new risk scores to validating or adapting existing scores.PROSPERO registration number CRD42018088599. ER -