Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches

Research output: Contribution to journalJournal articleResearchpeer-review

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Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches. / Nzabonimpa, Grace Shema; Rasmussen, Henrik Berg; Brunak, Søren; Taboureau, Olivier; INDICES Consortium.

In: Drug Metabolism and Personalized Therapy, Vol. 31, No. 2, 06.2016, p. 97-106.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Nzabonimpa, GS, Rasmussen, HB, Brunak, S, Taboureau, O & INDICES Consortium 2016, 'Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches', Drug Metabolism and Personalized Therapy, vol. 31, no. 2, pp. 97-106. https://doi.org/10.1515/dmpt-2015-0034

APA

Nzabonimpa, G. S., Rasmussen, H. B., Brunak, S., Taboureau, O., & INDICES Consortium (2016). Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches. Drug Metabolism and Personalized Therapy, 31(2), 97-106. https://doi.org/10.1515/dmpt-2015-0034

Vancouver

Nzabonimpa GS, Rasmussen HB, Brunak S, Taboureau O, INDICES Consortium. Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches. Drug Metabolism and Personalized Therapy. 2016 Jun;31(2):97-106. https://doi.org/10.1515/dmpt-2015-0034

Author

Nzabonimpa, Grace Shema ; Rasmussen, Henrik Berg ; Brunak, Søren ; Taboureau, Olivier ; INDICES Consortium. / Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches. In: Drug Metabolism and Personalized Therapy. 2016 ; Vol. 31, No. 2. pp. 97-106.

Bibtex

@article{4fc80fa5e4b14a358784ecd54f3ba268,
title = "Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches",
abstract = "Genetic variations in drug-metabolizing enzymes have been reported to influence pharmacokinetics, drug dosage, and other aspects that affect therapeutic outcomes. Most particularly, non-synonymous single-nucleotide polymorphisms (nsSNPs) resulting in amino acid changes disrupt potential functional sites responsible for protein activity, structure, or stability, which can account for individual susceptibility to disease and drug response. Investigating the impact of nsSNPs at a protein's structural level is a key step in understanding the relationship between genetic variants and the resulting phenotypic changes. For this purpose, in silico structure-based approaches have proven their relevance in providing an atomic-level description of the underlying mechanisms. The present review focuses on nsSNPs in human carboxylesterase 1 (hCES1), an enzyme involved in drug metabolism. We highlight how prioritization of functional nsSNPs through computational prediction techniques in combination with structure-based approaches, namely molecular docking and molecular dynamics simulations, is a powerful tool in providing insight into the underlying molecular mechanisms of nsSNPs phenotypic effects at microscopic level. Examples of in silico studies of carboxylesterases (CESs) are discussed, ranging from exploring the effect of mutations on enzyme activity to predicting the metabolism of new hCES1 substrates as well as to guiding rational design of CES-selective inhibitors.",
keywords = "Journal Article",
author = "Nzabonimpa, {Grace Shema} and Rasmussen, {Henrik Berg} and S{\o}ren Brunak and Olivier Taboureau and {INDICES Consortium}",
year = "2016",
month = jun,
doi = "10.1515/dmpt-2015-0034",
language = "English",
volume = "31",
pages = "97--106",
journal = "Drug Metabolism and Drug Interactions",
issn = "2363-8907",
publisher = "De Gruyter",
number = "2",

}

RIS

TY - JOUR

T1 - Investigating the impact of missense mutations in hCES1 by in silico structure-based approaches

AU - Nzabonimpa, Grace Shema

AU - Rasmussen, Henrik Berg

AU - Brunak, Søren

AU - Taboureau, Olivier

AU - INDICES Consortium

PY - 2016/6

Y1 - 2016/6

N2 - Genetic variations in drug-metabolizing enzymes have been reported to influence pharmacokinetics, drug dosage, and other aspects that affect therapeutic outcomes. Most particularly, non-synonymous single-nucleotide polymorphisms (nsSNPs) resulting in amino acid changes disrupt potential functional sites responsible for protein activity, structure, or stability, which can account for individual susceptibility to disease and drug response. Investigating the impact of nsSNPs at a protein's structural level is a key step in understanding the relationship between genetic variants and the resulting phenotypic changes. For this purpose, in silico structure-based approaches have proven their relevance in providing an atomic-level description of the underlying mechanisms. The present review focuses on nsSNPs in human carboxylesterase 1 (hCES1), an enzyme involved in drug metabolism. We highlight how prioritization of functional nsSNPs through computational prediction techniques in combination with structure-based approaches, namely molecular docking and molecular dynamics simulations, is a powerful tool in providing insight into the underlying molecular mechanisms of nsSNPs phenotypic effects at microscopic level. Examples of in silico studies of carboxylesterases (CESs) are discussed, ranging from exploring the effect of mutations on enzyme activity to predicting the metabolism of new hCES1 substrates as well as to guiding rational design of CES-selective inhibitors.

AB - Genetic variations in drug-metabolizing enzymes have been reported to influence pharmacokinetics, drug dosage, and other aspects that affect therapeutic outcomes. Most particularly, non-synonymous single-nucleotide polymorphisms (nsSNPs) resulting in amino acid changes disrupt potential functional sites responsible for protein activity, structure, or stability, which can account for individual susceptibility to disease and drug response. Investigating the impact of nsSNPs at a protein's structural level is a key step in understanding the relationship between genetic variants and the resulting phenotypic changes. For this purpose, in silico structure-based approaches have proven their relevance in providing an atomic-level description of the underlying mechanisms. The present review focuses on nsSNPs in human carboxylesterase 1 (hCES1), an enzyme involved in drug metabolism. We highlight how prioritization of functional nsSNPs through computational prediction techniques in combination with structure-based approaches, namely molecular docking and molecular dynamics simulations, is a powerful tool in providing insight into the underlying molecular mechanisms of nsSNPs phenotypic effects at microscopic level. Examples of in silico studies of carboxylesterases (CESs) are discussed, ranging from exploring the effect of mutations on enzyme activity to predicting the metabolism of new hCES1 substrates as well as to guiding rational design of CES-selective inhibitors.

KW - Journal Article

U2 - 10.1515/dmpt-2015-0034

DO - 10.1515/dmpt-2015-0034

M3 - Journal article

C2 - 26900165

VL - 31

SP - 97

EP - 106

JO - Drug Metabolism and Drug Interactions

JF - Drug Metabolism and Drug Interactions

SN - 2363-8907

IS - 2

ER -

ID: 177048780