TY - JOUR T1 - Variable selection strategies and its importance in clinical prediction modelling JF - Family Medicine and Community Health JO - Fam Med Com Health DO - 10.1136/fmch-2019-000262 VL - 8 IS - 1 SP - e000262 AU - Mohammad Ziaul Islam Chowdhury AU - Tanvir C Turin Y1 - 2020/02/01 UR - http://fmch.bmj.com/content/8/1/e000262.abstract N2 - Clinical prediction models are used frequently in clinical practice to identify patients who are at risk of developing an adverse outcome so that preventive measures can be initiated. A prediction model can be developed in a number of ways; however, an appropriate variable selection strategy needs to be followed in all cases. Our purpose is to introduce readers to the concept of variable selection in prediction modelling, including the importance of variable selection and variable reduction strategies. We will discuss the various variable selection techniques that can be applied during prediction model building (backward elimination, forward selection, stepwise selection and all possible subset selection), and the stopping rule/selection criteria in variable selection (p values, Akaike information criterion, Bayesian information criterion and Mallows’ Cp statistic). This paper focuses on the importance of including appropriate variables, following the proper steps, and adopting the proper methods when selecting variables for prediction models. ER -