Abstract

BackgroundThe clinical decision support system can effectively break the limitations of doctors’ knowledge and reduce the possibility of misdiagnosis to enhance health care. The traditional genetic data storage and analysis methods based on stand-alone environment are hard to meet the computational requirements with the rapid genetic data growth for the limited scalability.MethodsIn this paper, we propose a distributed gene clinical decision support system, which is named GCDSS. And a prototype is implemented based on cloud computing technology. At the same time, we present CloudBWA which is a novel distributed read mapping algorithm leveraging batch processing strategy to map reads on Apache Spark.ResultsExperiments show that the distributed gene clinical decision support system GCDSS and the distributed read mapping algorithm CloudBWA have outstanding performance and excellent scalability. Compared with state-of-the-art distributed algorithms, CloudBWA achieves up to 2.63 times speedup over SparkBWA. Compared with stand-alone algorithms, CloudBWA with 16 cores achieves up to 11.59 times speedup over BWA-MEM with 1 core.ConclusionsGCDSS is a distributed gene clinical decision support system based on cloud computing techniques. In particular, we incorporated a distributed genetic data analysis pipeline framework in the proposed GCDSS system. To boost the data processing of GCDSS, we propose CloudBWA, which is a novel distributed read mapping algorithm to leverage batch processing technique in mapping stage using Apache Spark platform.

Highlights

  • The clinical decision support system can effectively break the limitations of doctors’ knowledge and reduce the possibility of misdiagnosis to enhance health care

  • In order to solve the problems mentioned above, we propose GCDSS, a distributed gene clinical decision support system based on cloud computing technology

  • Distributed read mapping algorithm In order to solve the scalability problems of the conventional read mapping algorithms, in this paper we propose a distributed read mapping algorithm CloudBWA, which is based on cloud computing techniques

Read more

Summary

Introduction

The clinical decision support system can effectively break the limitations of doctors’ knowledge and reduce the possibility of misdiagnosis to enhance health care. Clinical decision support system (CDSS) provides clinicians, staff, patients, and other individuals with knowledge and person-specific information to enhance health and health care [1]. CDSS can effectively break the limitations of doctors’ knowledge and reduce the possibility of misdiagnosis to guarantee the quality of medical care with a lower medical expenses. Faster genetic data storage and analysis technologies are urgently needed. The current best practice genomic variant calling pipeline [4] is that use the Burrows-Wheeler Alignment tool (BWA) [5] to map genetic sequencing data to a reference and use the Genome Analysis Toolkit (GATK) [6] to produce

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call