Does infant birthweight percentile identify mothers at risk of severe morbidity? A Canadian population-based cohort study
Ray JG, Berger H, Aoyama K, Cook JL, Aflaki K, Park AL. Matern Health Neonatol Perinatol. 2025; 11(1):19.
Background — The widespread use of risk algorithms in clinical medicine is testimony to how they have helped transform clinical decision-making. Risk algorithms have a similar but underdeveloped potential to support decision-making for population health.
Objective — To describe the role of predictive risk algorithms in a population setting.
Methods — First, predictive risk algorithms and how clinicians use them are described. Second, the population uses of risk algorithms are described, highlighting the strengths of risk algorithms for health planning. Lastly, the way in which predictive risk algorithms are developed is discussed briefly and a guide for algorithm assessment in population health presented.
Conclusion — For the past 20 years, absolute and baseline risk has been a cornerstone of population health planning. The most accurate and discriminating method to generate such estimates is the use of multivariable risk algorithms. Routinely collected data can be used to develop algorithms with characteristics that are well suited to health planning and such data are increasingly available. The widespread use of risk algorithms in clinical medicine is testimony to how they have helped transform clinical decision-making. Risk algorithms have a similar but underdeveloped potential to support decision-making for population health.
Manuel DG, Rosella LC, Hennessy D, Sanmartin C, Wilson K. J Epidemiol Community Health. 2012; 66(10):859-65. Epub 2012 Aug 2.
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