Healthcare Big Data Analytics Platform with Hadoop/MapReduce Framework - Softcover

Chrimes, Dillon

 
9783330335110: Healthcare Big Data Analytics Platform with Hadoop/MapReduce Framework

Synopsis

Big data analytics (BDA) is important to reduce healthcare costs. However, in many hospital systems, new technologies that influence patient data require extensive technical and rigorous usability testing before implementation into production. Therefore, to implement, an existing High Performance Computing (HPC) Linux node clusters were utilized externally, and simulation of patient data benchmarked and cross-referenced with current metadata profiles in operational hospital systems at the Vancouver Island Health Authority (VIHA), Victoria, Canada. Over the tested platform, the data were generated, indexed and stored over a Hadoop Distributed File System (HDFS) to noSQL database (HBase) that represented three billion patient records. Hadoop/MapReduce framework formed the BDA platform with HBase (NoSQL database) using hospital-specific metadata and file ingestion. Queries showed high performance with a variety of Apache tools in Hadoop’s ecosystem. BDA platform of HBase distributed by Hadoop successfully under high performance at large volumes and the entire data archive. Importance on representation of health informatics using technologies for big data in healthcare is discussed.

"synopsis" may belong to another edition of this title.

About the Author

I am a health information technologist and platform specialist in healthcare. My current research is big data technologies and middleware application at Vancouver Island Health Authority, Canada. Five university degrees, collaboration at University of Victoria, professorship at University of Tokyo and PhD from Swedish University of Agric Sciences.

"About this title" may belong to another edition of this title.