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BigQ: a NoSQL based framework to handle genomic variants in i2b2.

Gabetta M, Limongelli I, Rizzo E, Riva A, Segagni D, Bellazzi R - BMC Bioinformatics (2015)

Bottom Line: A visual programming i2b2 plugin allows retrieving variants belonging to the patients in a cohort by applying filters on genomic variant annotations.In this paper we describe a new i2b2 web service composed of an efficient and scalable document-based database that manages annotations of genomic variants and of a visual programming plug-in designed to dynamically perform queries on clinical and genetic data.The system therefore allows managing the fast growing volume of genomic variants and can be used to integrate heterogeneous genomic annotations.

View Article: PubMed Central - PubMed

Affiliation: Dipartimento di Ingegneria Industriale e dell'Informazione and Center for Health Technologies, Università di Pavia, Pavia, Italy. matteo.gabetta@unipv.it.

ABSTRACT

Background: Precision medicine requires the tight integration of clinical and molecular data. To this end, it is mandatory to define proper technological solutions able to manage the overwhelming amount of high throughput genomic data needed to test associations between genomic signatures and human phenotypes. The i2b2 Center (Informatics for Integrating Biology and the Bedside) has developed a widely internationally adopted framework to use existing clinical data for discovery research that can help the definition of precision medicine interventions when coupled with genetic data. i2b2 can be significantly advanced by designing efficient management solutions of Next Generation Sequencing data.

Results: We developed BigQ, an extension of the i2b2 framework, which integrates patient clinical phenotypes with genomic variant profiles generated by Next Generation Sequencing. A visual programming i2b2 plugin allows retrieving variants belonging to the patients in a cohort by applying filters on genomic variant annotations. We report an evaluation of the query performance of our system on more than 11 million variants, showing that the implemented solution scales linearly in terms of query time and disk space with the number of variants.

Conclusions: In this paper we describe a new i2b2 web service composed of an efficient and scalable document-based database that manages annotations of genomic variants and of a visual programming plug-in designed to dynamically perform queries on clinical and genetic data. The system therefore allows managing the fast growing volume of genomic variants and can be used to integrate heterogeneous genomic annotations.

Show MeSH
Importing time performances on a distributed environment. Time performance for annotation, JSON conversion and importing of genomic variants belonging to 10,20,50,100, 200, 500 whole-exome samples into CouchDB, installed on a distributed environment consisting of six Amazon AWS machines (c3.2xlarge)
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Fig8: Importing time performances on a distributed environment. Time performance for annotation, JSON conversion and importing of genomic variants belonging to 10,20,50,100, 200, 500 whole-exome samples into CouchDB, installed on a distributed environment consisting of six Amazon AWS machines (c3.2xlarge)

Mentions: We therefore performed the same operations described above, from data import to the query test. We found out that the computational time during import phase is reduced thanks to horizontal scaling: the view creation phase for the 500 exomes decreased from 9 h and 50 min (using a single node) to 1 h and 22 min (see Fig. 8).Fig. 8


BigQ: a NoSQL based framework to handle genomic variants in i2b2.

Gabetta M, Limongelli I, Rizzo E, Riva A, Segagni D, Bellazzi R - BMC Bioinformatics (2015)

Importing time performances on a distributed environment. Time performance for annotation, JSON conversion and importing of genomic variants belonging to 10,20,50,100, 200, 500 whole-exome samples into CouchDB, installed on a distributed environment consisting of six Amazon AWS machines (c3.2xlarge)
© Copyright Policy - OpenAccess
Related In: Results  -  Collection

License 1 - License 2
Show All Figures
getmorefigures.php?uid=PMC4696314&req=5

Fig8: Importing time performances on a distributed environment. Time performance for annotation, JSON conversion and importing of genomic variants belonging to 10,20,50,100, 200, 500 whole-exome samples into CouchDB, installed on a distributed environment consisting of six Amazon AWS machines (c3.2xlarge)
Mentions: We therefore performed the same operations described above, from data import to the query test. We found out that the computational time during import phase is reduced thanks to horizontal scaling: the view creation phase for the 500 exomes decreased from 9 h and 50 min (using a single node) to 1 h and 22 min (see Fig. 8).Fig. 8

Bottom Line: A visual programming i2b2 plugin allows retrieving variants belonging to the patients in a cohort by applying filters on genomic variant annotations.In this paper we describe a new i2b2 web service composed of an efficient and scalable document-based database that manages annotations of genomic variants and of a visual programming plug-in designed to dynamically perform queries on clinical and genetic data.The system therefore allows managing the fast growing volume of genomic variants and can be used to integrate heterogeneous genomic annotations.

View Article: PubMed Central - PubMed

Affiliation: Dipartimento di Ingegneria Industriale e dell'Informazione and Center for Health Technologies, Università di Pavia, Pavia, Italy. matteo.gabetta@unipv.it.

ABSTRACT

Background: Precision medicine requires the tight integration of clinical and molecular data. To this end, it is mandatory to define proper technological solutions able to manage the overwhelming amount of high throughput genomic data needed to test associations between genomic signatures and human phenotypes. The i2b2 Center (Informatics for Integrating Biology and the Bedside) has developed a widely internationally adopted framework to use existing clinical data for discovery research that can help the definition of precision medicine interventions when coupled with genetic data. i2b2 can be significantly advanced by designing efficient management solutions of Next Generation Sequencing data.

Results: We developed BigQ, an extension of the i2b2 framework, which integrates patient clinical phenotypes with genomic variant profiles generated by Next Generation Sequencing. A visual programming i2b2 plugin allows retrieving variants belonging to the patients in a cohort by applying filters on genomic variant annotations. We report an evaluation of the query performance of our system on more than 11 million variants, showing that the implemented solution scales linearly in terms of query time and disk space with the number of variants.

Conclusions: In this paper we describe a new i2b2 web service composed of an efficient and scalable document-based database that manages annotations of genomic variants and of a visual programming plug-in designed to dynamically perform queries on clinical and genetic data. The system therefore allows managing the fast growing volume of genomic variants and can be used to integrate heterogeneous genomic annotations.

Show MeSH