| Literature DB >> 26958161 |
Ashis Gopal Banerjee1, Mridul Khan2, John Higgins3, Annarita Giani1, Amar K Das3.
Abstract
A major challenge in advancing scientific discoveries using data-driven clinical research is the fragmentation of relevant data among multiple information systems. This fragmentation requires significant data-engineering work before correlations can be found among data attributes in multiple systems. In this paper, we focus on integrating information on breast cancer care, and present a novel computational approach to identify correlations between administered drugs captured in an electronic medical records and biological factors obtained from a tumor registry through rapid data aggregation and analysis. We use an associative memory (AM) model to encode all existing associations among the data attributes from both systems in a high-dimensional vector space. The AM model stores highly associated data items in neighboring memory locations to enable efficient querying operations. The results of applying AM to a set of integrated data on tumor markers and drug administrations discovered anomalies between clinical recommendations and derived associations.Entities:
Keywords: Associative memory; breast cancer treatment; correlation; data integration; electronic medical record; tumor registry
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Year: 2015 PMID: 26958161 PMCID: PMC4765707
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076