Regression analysis is a fundamental statistical technique widely applied in preventive healthcare research to identify risk factors, predict health outcomes, and inform targeted interventions. This in-depth review examines the pivotal role of various regression approaches—linear, logistic, Cox proportional hazards, quantile, linear mixed-effects, multilevel, and Poisson regression—within medical-focused preventive research. The review highlights regression analysis as a powerful tool for analyzing multiple variables simultaneously, quantifying relationships numerically, and minimizing confounding effects to improve the precision of health outcome predictions. It also outlines the advantages of each type of regression and their suitability for different data structures and clinical questions, ranging from simple associations to complex hierarchical and longitudinal analyses. Despite its strengths, regression analysis has limitations, including the need to validate assumptions, issues with multicollinearity and over fitting, challenges with small sample sizes, difficulties in interpreting causality, handling non linear relationships, outliers, missing data, and the complexity of interpreting results. Identifying and managing these challenges is essential for generating valid and actionable findings. In conclusion, the proper use of regression analysis is a critical component of evidence-based preventive strategies, enabling healthcare providers to proactively address health threats and improve both patient and population health outcomes.
Yousif AbdulRaheem (Wed,) studied this question.