| Literature DB >> 27655959 |
Wendy R Miller1, Doyle Groves2, Amelia Knopf2, Julie L Otte2, Ross D Silverman2.
Abstract
There is a need to develop methods to analyze Big Data to inform patient-centered interventions for better health outcomes. The purpose of this study was to develop and test a method to explore Big Data to describe salient health concerns of people with epilepsy. Specifically, we used Word Adjacency Graph modeling to explore a data set containing 1.9 billion anonymous text queries submitted to the ChaCha question and answer service to (a) detect clusters of epilepsy-related topics, and (b) visualize the range of epilepsy-related topics and their mutual proximity to uncover the breadth and depth of particular topics and groups of users. Applied to a large, complex data set, this method successfully identified clusters of epilepsy-related topics while allowing for separation of potentially non-relevant topics. The method can be used to identify patient-driven research questions from large social media data sets and results can inform the development of patient-centered interventions.Entities:
Keywords: Big Data; epilepsy; informatics; machine learning; methods
Year: 2016 PMID: 27655959 DOI: 10.1177/0193945916670363
Source DB: PubMed Journal: West J Nurs Res ISSN: 0193-9459 Impact factor: 1.967