| Literature DB >> 27482473 |
Zhaoyang Zhang1, Hua Fang1, Honggang Wang2.
Abstract
Web-delivered clinical trials generate big complex data. To help untangle the heterogeneity of treatment effects, unsupervised learning methods have been widely applied. However, identifying valid patterns is a priority but challenging issue for these methods. This paper, built upon our previous research on multiple imputation (MI)-based fuzzy clustering and validation, proposes a new MI-based Visualization-aided validation index (MIVOOS) to determine the optimal number of clusters for big incomplete longitudinal Web-trial data with inflated zeros. Different from a recently developed fuzzy clustering validation index, MIVOOS uses a more suitable overlap and separation measures for Web-trial data but does not depend on the choice of fuzzifiers as the widely used Xie and Beni (XB) index. Through optimizing the view angles of 3-D projections using Sammon mapping, the optimal 2-D projection-guided MIVOOS is obtained to better visualize and verify the patterns in conjunction with trajectory patterns. Compared with XB and VOS, our newly proposed MIVOOS shows its robustness in validating big Web-trial data under different missing data mechanisms using real and simulated Web-trial data.Entities:
Keywords: Multiple imputation; clustering validation; longitudinal web trial data; pattern recognition; visualization
Year: 2016 PMID: 27482473 PMCID: PMC4963037 DOI: 10.1109/ACCESS.2016.2569074
Source DB: PubMed Journal: IEEE Access ISSN: 2169-3536 Impact factor: 3.367