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Transforming early pharmaceutical assessment of genotoxicity: applying statistical learning to a high throughput, multi end point in vitro micronucleus assay
by
Grabowski, Piotr
, Ling, Stephanie
, Wilson, Amy
, Doherty, Ann
, Elloway, Joanne
, Stott, Jonathan
in
631/154/570
/ 631/80/103
/ 631/80/641
/ 639/705/1042
/ 692/53/2423
/ Bayesian analysis
/ Computer applications
/ Correlation coefficient
/ Cytotoxicity
/ DNA damage
/ Drug development
/ Genotoxicity
/ High-throughput screening
/ Humanities and Social Sciences
/ Image processing
/ Labeling
/ Learning algorithms
/ Machine learning
/ Mathematical models
/ Micronuclei
/ Mode of action
/ multidisciplinary
/ Phenotypes
/ Science
/ Science (multidisciplinary)
/ Toxicology
2021
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Transforming early pharmaceutical assessment of genotoxicity: applying statistical learning to a high throughput, multi end point in vitro micronucleus assay
by
Grabowski, Piotr
, Ling, Stephanie
, Wilson, Amy
, Doherty, Ann
, Elloway, Joanne
, Stott, Jonathan
in
631/154/570
/ 631/80/103
/ 631/80/641
/ 639/705/1042
/ 692/53/2423
/ Bayesian analysis
/ Computer applications
/ Correlation coefficient
/ Cytotoxicity
/ DNA damage
/ Drug development
/ Genotoxicity
/ High-throughput screening
/ Humanities and Social Sciences
/ Image processing
/ Labeling
/ Learning algorithms
/ Machine learning
/ Mathematical models
/ Micronuclei
/ Mode of action
/ multidisciplinary
/ Phenotypes
/ Science
/ Science (multidisciplinary)
/ Toxicology
2021
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Transforming early pharmaceutical assessment of genotoxicity: applying statistical learning to a high throughput, multi end point in vitro micronucleus assay
by
Grabowski, Piotr
, Ling, Stephanie
, Wilson, Amy
, Doherty, Ann
, Elloway, Joanne
, Stott, Jonathan
in
631/154/570
/ 631/80/103
/ 631/80/641
/ 639/705/1042
/ 692/53/2423
/ Bayesian analysis
/ Computer applications
/ Correlation coefficient
/ Cytotoxicity
/ DNA damage
/ Drug development
/ Genotoxicity
/ High-throughput screening
/ Humanities and Social Sciences
/ Image processing
/ Labeling
/ Learning algorithms
/ Machine learning
/ Mathematical models
/ Micronuclei
/ Mode of action
/ multidisciplinary
/ Phenotypes
/ Science
/ Science (multidisciplinary)
/ Toxicology
2021
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Transforming early pharmaceutical assessment of genotoxicity: applying statistical learning to a high throughput, multi end point in vitro micronucleus assay
Journal Article
Transforming early pharmaceutical assessment of genotoxicity: applying statistical learning to a high throughput, multi end point in vitro micronucleus assay
2021
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Overview
To provide a comprehensive analysis of small molecule genotoxic potential we have developed and validated an automated, high-content, high throughput, image-based in vitro Micronucleus (IVM) assay. This assay simultaneously assesses micronuclei and multiple additional cellular markers associated with genotoxicity. Acoustic dosing (≤ 2 mg) of compound is followed by a 24-h treatment and a 24-h recovery period. Confocal images are captured [Cell Voyager CV7000 (Yokogawa, Japan)] and analysed using Columbus software (PerkinElmer). As standard the assay detects micronuclei (MN), cytotoxicity and cell-cycle profiles from Hoechst phenotypes. Mode of action information is primarily determined by kinetochore labelling in MN (aneugencity) and γH2AX foci analysis (a marker of DNA damage). Applying computational approaches and implementing machine learning models alongside Bayesian classifiers allows the identification of, with 95% accuracy, the aneugenic, clastogenic and negative compounds within the data set (Matthews correlation coefficient: 0.9), reducing analysis time by 80% whilst concurrently minimising human bias. Combining high throughput screening, multiparametric image analysis and machine learning approaches has provided the opportunity to revolutionise early Genetic Toxicology assessment within AstraZeneca. By multiplexing assay endpoints and minimising data generation and analysis time this assay enables complex genotoxicity safety assessments to be made sooner aiding the development of safer drug candidates.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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