| Literature DB >> 20336179 |
Hua Fang1, Kimberly Andrews Espy, Maria L Rizzo, Christian Stopp, Sandra A Wiebe, Walter W Stroup.
Abstract
Methods for identifying meaningful growth patterns of longitudinal trial data with both nonignorable intermittent and drop-out missingness are rare. In this study, a combined approach with statistical and data mining techniques is utilized to address the nonignorable missing data issue in growth pattern recognition. First, a parallel mixture model is proposed to model the nonignorable missing information from a real-world patient-oriented study and concurrently to estimate the growth trajectories of participants. Then, based on individual growth parameter estimates and their auxiliary feature attributes, a fuzzy clustering method is incorporated to identify the growth patterns. This case study demonstrates that the combined multi-step approach can achieve both statistical gener ality and computational efficiency for growth pattern recognition in longitudinal studies with nonignorable missing data.Entities:
Year: 2009 PMID: 20336179 PMCID: PMC2844665 DOI: 10.1142/S0219622009003508
Source DB: PubMed Journal: Int J Inf Technol Decis Mak