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Data quality assessment and anomaly detection via map/reduce and linked data: A case study in the medical domain

Publication ,  Conference
Bonner, S; McGough, AS; Kureshi, I; Brennan, J; Theodoropoulos, G; Moss, L; Corsar, D; Antoniou, G
Published in: Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015
December 22, 2015

Recent technological advances in modern healthcare have lead to the ability to collect a vast wealth of patient monitoring data. This data can be utilised for patient diagnosis but it also holds the potential for use within medical research. However, these datasets often contain errors which limit their value to medical research, with one study finding error rates ranging from 2.3%-26.9% in a selection of medical databases. Previous methods for automatically assessing data quality normally rely on threshold rules, which are often unable to correctly identify errors, as further complex domain knowledge is required. To combat this, a semantic web based framework has previously been developed to assess the quality of medical data. However, early work, based solely on traditional semantic web technologies, revealed they are either unable or inefficient at scaling to the vast volumes of medical data. In this paper we present a new method for storing and querying medical RDF datasets using Hadoop Map / Reduce. This approach exploits the inherent parallelism found within RDF datasets and queries, allowing us to scale with both dataset and system size. Unlike previous solutions, this framework uses highly optimised (SPARQL) joining strategies, intelligent data caching and the use of a super-query to enable the completion of eight distinct SPARQL lookups, comprising over eighty distinct joins, in only two Map / Reduce iterations. Results are presented comparing both the Jena and a previous Hadoop implementation demonstrating the superior performance of the new methodology. The new method is shown to be five times faster than Jena and twice as fast as the previous approach.

Duke Scholars

Published In

Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015

DOI

ISBN

9781479999255

Publication Date

December 22, 2015

Start / End Page

737 / 746
 

Citation

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Bonner, S., McGough, A. S., Kureshi, I., Brennan, J., Theodoropoulos, G., Moss, L., … Antoniou, G. (2015). Data quality assessment and anomaly detection via map/reduce and linked data: A case study in the medical domain. In Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015 (pp. 737–746). https://doi.org/10.1109/BigData.2015.7363818
Bonner, S., A. S. McGough, I. Kureshi, J. Brennan, G. Theodoropoulos, L. Moss, D. Corsar, and G. Antoniou. “Data quality assessment and anomaly detection via map/reduce and linked data: A case study in the medical domain.” In Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015, 737–46, 2015. https://doi.org/10.1109/BigData.2015.7363818.
Bonner S, McGough AS, Kureshi I, Brennan J, Theodoropoulos G, Moss L, et al. Data quality assessment and anomaly detection via map/reduce and linked data: A case study in the medical domain. In: Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015. 2015. p. 737–46.
Bonner, S., et al. “Data quality assessment and anomaly detection via map/reduce and linked data: A case study in the medical domain.” Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015, 2015, pp. 737–46. Scopus, doi:10.1109/BigData.2015.7363818.
Bonner S, McGough AS, Kureshi I, Brennan J, Theodoropoulos G, Moss L, Corsar D, Antoniou G. Data quality assessment and anomaly detection via map/reduce and linked data: A case study in the medical domain. Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015. 2015. p. 737–746.

Published In

Proceedings - 2015 IEEE International Conference on Big Data, IEEE Big Data 2015

DOI

ISBN

9781479999255

Publication Date

December 22, 2015

Start / End Page

737 / 746