Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs

<p>Abstract</p> <p>Background</p> <p>Detailed and systematic understanding of the biological effects of millions of available compounds on living cells is a significant challenge. As most compounds impact multiple targets and pathways, traditional methods for analyzing...

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Main Authors: Khan Suleiman A, Faisal Ali, Mpindi John, Parkkinen Juuso A, Kalliokoski Tuomo, Poso Antti, Kallioniemi Olli P, Wennerberg Krister, Kaski Samuel
Format: Article
Language:English
Published: BMC 2012-05-01
Series:BMC Bioinformatics
Online Access:http://www.biomedcentral.com/1471-2105/13/112
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author Khan Suleiman A
Faisal Ali
Mpindi John
Parkkinen Juuso A
Kalliokoski Tuomo
Poso Antti
Kallioniemi Olli P
Wennerberg Krister
Kaski Samuel
author_facet Khan Suleiman A
Faisal Ali
Mpindi John
Parkkinen Juuso A
Kalliokoski Tuomo
Poso Antti
Kallioniemi Olli P
Wennerberg Krister
Kaski Samuel
author_sort Khan Suleiman A
collection DOAJ
description <p>Abstract</p> <p>Background</p> <p>Detailed and systematic understanding of the biological effects of millions of available compounds on living cells is a significant challenge. As most compounds impact multiple targets and pathways, traditional methods for analyzing structure-function relationships are not comprehensive enough. Therefore more advanced integrative models are needed for predicting biological effects elicited by specific chemical features. As a step towards creating such computational links we developed a data-driven chemical systems biology approach to comprehensively study the relationship of 76 structural 3D-descriptors (VolSurf, chemical space) of 1159 drugs with the microarray gene expression responses (biological space) they elicited in three cancer cell lines. The analysis covering 11350 genes was based on data from the Connectivity Map. We decomposed the biological response profiles into components, each linked to a characteristic chemical descriptor profile.</p> <p>Results</p> <p>Integrated analysis of both the chemical and biological space was more informative than either dataset alone in predicting drug similarity as measured by shared protein targets. We identified ten major components that link distinct VolSurf chemical features across multiple compounds to specific cellular responses. For example, component 2 (hydrophobic properties) strongly linked to DNA damage response, while component 3 (hydrogen bonding) was associated with metabolic stress. Individual structural and biological features were often linked to one cell line only, such as leukemia cells (HL-60) specifically responding to cardiac glycosides.</p> <p>Conclusions</p> <p>In summary, our approach identified several novel links between specific chemical structure properties and distinct biological responses in cells incubated with these drugs. Importantly, the analysis focused on chemical-biological properties that emerge across multiple drugs. The decoding of such systematic relationships is necessary to build better models of drug effects, including unanticipated types of molecular properties having strong biological effects.</p>
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spelling doaj.art-d81f8d059528452f9250afdee83c732d2022-12-22T01:07:26ZengBMCBMC Bioinformatics1471-21052012-05-0113111210.1186/1471-2105-13-112Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugsKhan Suleiman AFaisal AliMpindi JohnParkkinen Juuso AKalliokoski TuomoPoso AnttiKallioniemi Olli PWennerberg KristerKaski Samuel<p>Abstract</p> <p>Background</p> <p>Detailed and systematic understanding of the biological effects of millions of available compounds on living cells is a significant challenge. As most compounds impact multiple targets and pathways, traditional methods for analyzing structure-function relationships are not comprehensive enough. Therefore more advanced integrative models are needed for predicting biological effects elicited by specific chemical features. As a step towards creating such computational links we developed a data-driven chemical systems biology approach to comprehensively study the relationship of 76 structural 3D-descriptors (VolSurf, chemical space) of 1159 drugs with the microarray gene expression responses (biological space) they elicited in three cancer cell lines. The analysis covering 11350 genes was based on data from the Connectivity Map. We decomposed the biological response profiles into components, each linked to a characteristic chemical descriptor profile.</p> <p>Results</p> <p>Integrated analysis of both the chemical and biological space was more informative than either dataset alone in predicting drug similarity as measured by shared protein targets. We identified ten major components that link distinct VolSurf chemical features across multiple compounds to specific cellular responses. For example, component 2 (hydrophobic properties) strongly linked to DNA damage response, while component 3 (hydrogen bonding) was associated with metabolic stress. Individual structural and biological features were often linked to one cell line only, such as leukemia cells (HL-60) specifically responding to cardiac glycosides.</p> <p>Conclusions</p> <p>In summary, our approach identified several novel links between specific chemical structure properties and distinct biological responses in cells incubated with these drugs. Importantly, the analysis focused on chemical-biological properties that emerge across multiple drugs. The decoding of such systematic relationships is necessary to build better models of drug effects, including unanticipated types of molecular properties having strong biological effects.</p>http://www.biomedcentral.com/1471-2105/13/112
spellingShingle Khan Suleiman A
Faisal Ali
Mpindi John
Parkkinen Juuso A
Kalliokoski Tuomo
Poso Antti
Kallioniemi Olli P
Wennerberg Krister
Kaski Samuel
Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs
BMC Bioinformatics
title Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs
title_full Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs
title_fullStr Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs
title_full_unstemmed Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs
title_short Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs
title_sort comprehensive data driven analysis of the impact of chemoinformatic structure on the genome wide biological response profiles of cancer cells to 1159 drugs
url http://www.biomedcentral.com/1471-2105/13/112
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