Home > Research > Publications & Outputs > Action following the discovery of a global asso...
View graph of relations

Action following the discovery of a global association between the whole genome and adverse event risk in a clinical drug-development programme.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

Action following the discovery of a global association between the whole genome and adverse event risk in a clinical drug-development programme. / Whitehead, John; Kelly, Patrick; Zhou, Yinghui et al.
In: Pharmaceutical Statistics, Vol. 8, No. 4, 10.2009, p. 287-300.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

APA

Vancouver

Whitehead J, Kelly P, Zhou Y, Stallard N, Thygesen H, Bowman C. Action following the discovery of a global association between the whole genome and adverse event risk in a clinical drug-development programme. Pharmaceutical Statistics. 2009 Oct;8(4):287-300. doi: 10.1002/pst.357

Author

Whitehead, John ; Kelly, Patrick ; Zhou, Yinghui et al. / Action following the discovery of a global association between the whole genome and adverse event risk in a clinical drug-development programme. In: Pharmaceutical Statistics. 2009 ; Vol. 8, No. 4. pp. 287-300.

Bibtex

@article{6d9739ff497c4253b34ed920453e41a3,
title = "Action following the discovery of a global association between the whole genome and adverse event risk in a clinical drug-development programme.",
abstract = "Observation of adverse drug reactions during drug development can cause closure of the whole programme. However, if association between the genotype and the risk of an adverse event is discovered, then it might suffice to exclude patients of certain genotypes from future recruitment. Various sequential and non-sequential procedures are available to identify an association between the whole genome, or at least a portion of it, and the incidence of adverse events. In this paper we start with a suspected association between the genotype and the risk of an adverse event and suppose that the genetic subgroups with elevated risk can be identified. Our focus is determination of whether the patients identified as being at risk should be excluded from further studies of the drug. We propose using a utility function to determine the appropriate action, taking into account the relative costs of suffering an adverse reaction and of failing to alleviate the patient's disease. Two illustrative examples are presented, one comparing patients who suffer from an adverse event with contemporary patients who do not, and the other making use of a reference control group. We also illustrate two classification methods, LASSO and CART, for identifying patients at risk, but we stress that any appropriate classification method could be used in conjunction with the proposed utility function. Our emphasis is on determining the action to take rather than on providing definitive evidence of an association.",
keywords = "decision procedure • pharmacogenetics • pharmacovigilance • safety monitoring • utility",
author = "John Whitehead and Patrick Kelly and Yinghui Zhou and Nigel Stallard and Helene Thygesen and Clive Bowman",
year = "2009",
month = oct,
doi = "10.1002/pst.357",
language = "English",
volume = "8",
pages = "287--300",
journal = "Pharmaceutical Statistics",
issn = "1539-1604",
publisher = "John Wiley and Sons Ltd",
number = "4",

}

RIS

TY - JOUR

T1 - Action following the discovery of a global association between the whole genome and adverse event risk in a clinical drug-development programme.

AU - Whitehead, John

AU - Kelly, Patrick

AU - Zhou, Yinghui

AU - Stallard, Nigel

AU - Thygesen, Helene

AU - Bowman, Clive

PY - 2009/10

Y1 - 2009/10

N2 - Observation of adverse drug reactions during drug development can cause closure of the whole programme. However, if association between the genotype and the risk of an adverse event is discovered, then it might suffice to exclude patients of certain genotypes from future recruitment. Various sequential and non-sequential procedures are available to identify an association between the whole genome, or at least a portion of it, and the incidence of adverse events. In this paper we start with a suspected association between the genotype and the risk of an adverse event and suppose that the genetic subgroups with elevated risk can be identified. Our focus is determination of whether the patients identified as being at risk should be excluded from further studies of the drug. We propose using a utility function to determine the appropriate action, taking into account the relative costs of suffering an adverse reaction and of failing to alleviate the patient's disease. Two illustrative examples are presented, one comparing patients who suffer from an adverse event with contemporary patients who do not, and the other making use of a reference control group. We also illustrate two classification methods, LASSO and CART, for identifying patients at risk, but we stress that any appropriate classification method could be used in conjunction with the proposed utility function. Our emphasis is on determining the action to take rather than on providing definitive evidence of an association.

AB - Observation of adverse drug reactions during drug development can cause closure of the whole programme. However, if association between the genotype and the risk of an adverse event is discovered, then it might suffice to exclude patients of certain genotypes from future recruitment. Various sequential and non-sequential procedures are available to identify an association between the whole genome, or at least a portion of it, and the incidence of adverse events. In this paper we start with a suspected association between the genotype and the risk of an adverse event and suppose that the genetic subgroups with elevated risk can be identified. Our focus is determination of whether the patients identified as being at risk should be excluded from further studies of the drug. We propose using a utility function to determine the appropriate action, taking into account the relative costs of suffering an adverse reaction and of failing to alleviate the patient's disease. Two illustrative examples are presented, one comparing patients who suffer from an adverse event with contemporary patients who do not, and the other making use of a reference control group. We also illustrate two classification methods, LASSO and CART, for identifying patients at risk, but we stress that any appropriate classification method could be used in conjunction with the proposed utility function. Our emphasis is on determining the action to take rather than on providing definitive evidence of an association.

KW - decision procedure • pharmacogenetics • pharmacovigilance • safety monitoring • utility

U2 - 10.1002/pst.357

DO - 10.1002/pst.357

M3 - Journal article

VL - 8

SP - 287

EP - 300

JO - Pharmaceutical Statistics

JF - Pharmaceutical Statistics

SN - 1539-1604

IS - 4

ER -