A grid-based HIV expert system

Objectives.This paper addresses Grid-based integration and access of distributed data from infectious disease patient databases, literature on in-vitro and in-vivo pharmaceutical data, mutation databases, clinical trials, simulations and medical expert knowledge. Methods. Multivariate analyses combi...

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Main Authors: Sloot, Peter M. A., Boukhanovsky, Alexander V., Keulen, Wilco., Tirado-Ramos, Alfredo., Boucher, Charles A. B.
Other Authors: School of Computer Engineering
Format: Article
Language:English
Published: 2013
Online Access:https://hdl.handle.net/10356/84464
http://hdl.handle.net/10220/10149
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-844642020-05-28T07:17:50Z A grid-based HIV expert system Sloot, Peter M. A. Boukhanovsky, Alexander V. Keulen, Wilco. Tirado-Ramos, Alfredo. Boucher, Charles A. B. School of Computer Engineering Objectives.This paper addresses Grid-based integration and access of distributed data from infectious disease patient databases, literature on in-vitro and in-vivo pharmaceutical data, mutation databases, clinical trials, simulations and medical expert knowledge. Methods. Multivariate analyses combined with rule-based fuzzy logic are applied to the integrated data to provide ranking of patient-specific drugs. In addition, cellular automata-based simulations are used to predict the drug behaviour over time. Access to and integration of data is done through existing Internet servers and emerging Grid-based frameworks like Globus. Data presentation is done by standalone PC based software, Web-access and PDA roaming WAP access. The experiments were carried out on the DAS2, a Dutch Grid testbed. Results. The output of the problem-solving environment (PSE) consists of a prediction of the drug sensitivity of the virus, generated by comparing the viral genotype to a relational database which contains a large number of phenotype-genotype pairs.Conclusions. Artificial Intelligence and Grid technology are effectively used to abstract knowledge from the data and provide the physicians with adaptive interactive advice on treatment applied to drug resistant HIV. An important aspect of our research is to use a variety of statistical and numerical methods to identify relationships between HIV genetic sequences and antiviral resistance to investigate consistency of results. 2013-06-11T02:19:13Z 2019-12-06T15:45:39Z 2013-06-11T02:19:13Z 2019-12-06T15:45:39Z 2005 2005 Journal Article Sloot, P. M. A., Boukhanovsky, A. V., Keulen, W., Tirado-Ramos, A., & Boucher, C.A. (2005). A Grid-Based HIV Expert System. Journal of Clinical Monitoring and Computing, 19(4-5), 263-278. https://hdl.handle.net/10356/84464 http://hdl.handle.net/10220/10149 10.1007/s10877-005-0673-2 en Journal of clinical monitoring and computing © 2005 Springer.
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
description Objectives.This paper addresses Grid-based integration and access of distributed data from infectious disease patient databases, literature on in-vitro and in-vivo pharmaceutical data, mutation databases, clinical trials, simulations and medical expert knowledge. Methods. Multivariate analyses combined with rule-based fuzzy logic are applied to the integrated data to provide ranking of patient-specific drugs. In addition, cellular automata-based simulations are used to predict the drug behaviour over time. Access to and integration of data is done through existing Internet servers and emerging Grid-based frameworks like Globus. Data presentation is done by standalone PC based software, Web-access and PDA roaming WAP access. The experiments were carried out on the DAS2, a Dutch Grid testbed. Results. The output of the problem-solving environment (PSE) consists of a prediction of the drug sensitivity of the virus, generated by comparing the viral genotype to a relational database which contains a large number of phenotype-genotype pairs.Conclusions. Artificial Intelligence and Grid technology are effectively used to abstract knowledge from the data and provide the physicians with adaptive interactive advice on treatment applied to drug resistant HIV. An important aspect of our research is to use a variety of statistical and numerical methods to identify relationships between HIV genetic sequences and antiviral resistance to investigate consistency of results.
author2 School of Computer Engineering
author_facet School of Computer Engineering
Sloot, Peter M. A.
Boukhanovsky, Alexander V.
Keulen, Wilco.
Tirado-Ramos, Alfredo.
Boucher, Charles A. B.
format Article
author Sloot, Peter M. A.
Boukhanovsky, Alexander V.
Keulen, Wilco.
Tirado-Ramos, Alfredo.
Boucher, Charles A. B.
spellingShingle Sloot, Peter M. A.
Boukhanovsky, Alexander V.
Keulen, Wilco.
Tirado-Ramos, Alfredo.
Boucher, Charles A. B.
A grid-based HIV expert system
author_sort Sloot, Peter M. A.
title A grid-based HIV expert system
title_short A grid-based HIV expert system
title_full A grid-based HIV expert system
title_fullStr A grid-based HIV expert system
title_full_unstemmed A grid-based HIV expert system
title_sort grid-based hiv expert system
publishDate 2013
url https://hdl.handle.net/10356/84464
http://hdl.handle.net/10220/10149
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