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. 2017 Sep 27;97(3 Suppl):9–19. doi: 10.4269/ajtmh.15-0363

Table 3.

Bradford Hill causality criteria, as applied to plausibility assessment

Criterion Description Assumptions
Strength of association Strong associations are more likely to have causal components than weaker associations. Associations can be measured
Consistency Observing similar evaluation results across evaluation methods, over time, and across countries from meta-analyses increases the likelihood of causal relationships. Results have been measure consistently over time and space
Specificity Observing an association specific to outcomes of interest among specific groups increases the argument for causal effect. Malaria interventions are highly likely to reduce all-cause under-five mortality, particularly among vulnerable groups
Temporality Changes in program must precede changes in disease or coverage outcomes. Scale-up of interventions has been measured
Gradient Changes in disease or coverage outcomes increase the same amount for increases to program exposure or intensity. Coverage has been measured in different geographic areas
Plausibility Biological plausibility links exposure to intervention with health outcome. Malaria contributes to all-cause child mortality
Coherence Causal inference is possible only if the literature or substantive knowledge supports this conclusion There are documented studies showing that malaria interventions affect mortality
Experiment Causation is a valid conclusion if researchers have seen observed associations in prior experimental studies. There are documented studies showing that malaria interventions affect mortality
Analogy For similar programs operating, similar results can be expected to bolster the causal inference concluded. Program context has been similar in the past