“…If the factor is known and has been measured, the usual approach is to adjust for its influence in the analysis. For example, studies assessing the influence of coffee consumption on the risk of myocardial infarction should make statistical adjustments for smoking, as smoking is generally associated with drinking larger amounts of coffee, and smoking is a cause of coronary heart disease 21. However, even if adjustments for confounding factors have been made in the analysis, residual confounding remains a potentially serious problem in observational research.…”