Managing clustered data using hierarchical linear modeling.

Russell T Warne, Yan Li, E Lisako J McKyer, Rachel Condie, Cassandra S Diep, Peter S Murano
Author Information
  1. Russell T Warne: Department of Behavioral Science, Utah Valley University, Orem, UT 84058, USA. rwarne@uvu.edu

Abstract

Researchers in nutrition research often use cluster or multistage sampling to gather participants for their studies. These sampling methods often produce violations of the assumption of data independence that most traditional statistics share. Hierarchical linear modeling is a statistical method that can overcome violations of the independence assumption and lead to correct analysis of data, yet it is rarely used in nutrition research. The purpose of this viewpoint is to illustrate the benefits of hierarchical linear modeling within a nutrition research context.

Grants

  1. P30 CA022453/NCI NIH HHS

MeSH Term

Biomedical Research
Cluster Analysis
Diet
Feeding Behavior
Female
Humans
Infant
Linear Models
Male
Nutritional Sciences

Word Cloud

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