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Equivalence model: A new graphical model for causal inference / 한국역학회지
Epidemiology and Health ; : e2020024-2020.
Article in English | WPRIM | ID: wpr-898285
ABSTRACT
Although several causal models relevant to epidemiology have been proposed, a key question that has remained unanswered is why some people at high-risk for a particular disease do not develop the disease while some people at low-risk do develop it. The equivalence model, proposed herein, addresses this dilemma. The equivalence model provides a graphical description of the overall effect of risk and protective factors at the individual level. Risk factors facilitate the occurrence of the outcome (the development of disease), whereas protective factors inhibit that occurrence. The equivalence model explains how the overall effect relates to the occurrence of the outcome. When a balance exists between risk and protective factors, neither can overcome the other; therefore, the outcome will not occur. Similarly, the outcome will not occur when the units of the risk factor(s) are less than or equal to the units of the protective factor(s). In contrast, the outcome will occur when the units of the risk factor(s) are greater than the units of the protective factor(s). This model can be used to describe, in simple terms, causal inferences in complex situations with multiple known and unknown risk and protective factors. It can also justify how people with a low level of exposure to one or more risk factor(s) may be affected by a certain disease while others with a higher level of exposure to the same risk factor(s) may remain unaffected.
Full text: Available Index: WPRIM (Western Pacific) Type of study: Risk factors Language: English Journal: Epidemiology and Health Year: 2020 Type: Article

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Full text: Available Index: WPRIM (Western Pacific) Type of study: Risk factors Language: English Journal: Epidemiology and Health Year: 2020 Type: Article