Literature DB >> 30043852

Strategic procedure in three stages for the selection of variables to obtain balanced results in public health research.

Manuel Lozano1, Lara Manyes1, Juanjo Peiró2, Adina Iftimi2,3, José María Ramada4,5.   

Abstract

Multidisciplinary research in public health is approached using methods from many scientific disciplines. One of the main characteristics of this type of research is dealing with large data sets. Classic statistical variable selection methods, known as "screen and clean", and used in a single-step, select the variables with greater explanatory weight in the model. These methods, commonly used in public health research, may induce masking and multicollinearity, excluding relevant variables for the experts in each discipline and skewing the result. Some specific techniques are used to solve this problem, such as penalized regressions and Bayesian statistics, they offer more balanced results among subsets of variables, but with less restrictive selection thresholds. Using a combination of classical methods, a three-step procedure is proposed in this manuscript, capturing the relevant variables of each scientific discipline, minimizing the selection of variables in each of them and obtaining a balanced distribution that explains most of the variability. This procedure was applied on a dataset from a public health research. Comparing the results with the single-step methods, the proposed method shows a greater reduction in the number of variables, as well as a balanced distribution among the scientific disciplines associated with the response variable. We propose an innovative procedure for variable selection and apply it to our dataset. Furthermore, we compare the new method with the classic single-step procedures.

Mesh:

Year:  2018        PMID: 30043852     DOI: 10.1590/0102-311X00174017

Source DB:  PubMed          Journal:  Cad Saude Publica        ISSN: 0102-311X            Impact factor:   1.632


  2 in total

1.  Risk factors associated with readmissions of patients with severe mental disorders under treatment with antipsychotics.

Authors:  Ronaldo Portela; Milton Leonard Wainberg; Saulo Castel; Helian Nunes de Oliveira; Cristina Mariano Ruas
Journal:  BMC Psychiatry       Date:  2022-03-17       Impact factor: 3.630

2.  Spatial learning and long-term memory impairments in RasGrf1 KO, Pttg1 KO, and double KO mice.

Authors:  Lara Manyes; Sarah Holst; Manuel Lozano; Eugenio Santos; Alberto Fernandez-Medarde
Journal:  Brain Behav       Date:  2018-09-26       Impact factor: 2.708

  2 in total

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