| Literature DB >> 27293387 |
Jonathan Woodbridge1, Bobak Mortazavi1, Alex A T Bui2, Majid Sarrafzadeh1.
Abstract
Time series subsequence matching has importance in a variety of areas in healthcare informatics. These include case-based diagnosis and treatment as well as discovery of trends among patients. However, few medical systems employ subsequence matching due to high computational and memory complexities. This manuscript proposes a randomized Monte Carlo sampling method to broaden search criteria with minimal increases in computational and memory complexities over R-NN indexing. Information gain improves while producing result sets that approximate the theoretical result space, query results increase by several orders of magnitude, and recall is improved with no signi cant degradation to precision over R-NN matching.Entities:
Keywords: Biomedical Signal Search; Case-Based Reasoning; Locality Sensitive Hashing; Monte Carlo Sampling; Time-Series Subsequence Matching
Year: 2015 PMID: 27293387 PMCID: PMC4896085 DOI: 10.1016/j.pmcj.2015.09.006
Source DB: PubMed Journal: Pervasive Mob Comput ISSN: 1574-1192 Impact factor: 3.453