2021
DOI: 10.1007/s10654-021-00798-6
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Strength in causality: discerning causal mechanisms in the sufficient cause model

Abstract: The assessment of causality is fundamental to epidemiology and biomedical sciences. One well-known approach to distinguishing causal from noncausal explanations is the nine Bradford Hill viewpoints. A recent article in this journal revisited the viewpoints to incorporate developments in causal thinking, suggesting that the sufficient cause model is useful in elucidating the theoretical underpinning of the first of the nine viewpoints-strength of association. In this article, we discuss how to discern the causa… Show more

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“…Actually, robust statistical methods can contribute objectively to readily quantify associations between observed variables and quantities derived from these measures. [ 19 20 ] Much of the published COVID-19 observational research has been fuelled by genuine scientific curiosity, and we should take into account the fact that outcomes of observational studies are only hypothesis forming, offering closer examination of the situation analyzed to identify whether a true causation can be established between the variables.…”
mentioning
confidence: 99%
“…Actually, robust statistical methods can contribute objectively to readily quantify associations between observed variables and quantities derived from these measures. [ 19 20 ] Much of the published COVID-19 observational research has been fuelled by genuine scientific curiosity, and we should take into account the fact that outcomes of observational studies are only hypothesis forming, offering closer examination of the situation analyzed to identify whether a true causation can be established between the variables.…”
mentioning
confidence: 99%