Please use this identifier to cite or link to this item: https://doi.org/10.1007/s00204-015-1638-y
Title: High-throughput imaging-based nephrotoxicity prediction for xenobiotics with diverse chemical structures
Authors: Su, R
Xiong, S
Zink, D
Loo, L.-H 
Keywords: cisplatin
DNA A
lithium chloride
RNA
xenobiotic agent
molecular library
mutagenic agent
xenobiotic agent
Article
cell count
cell death
chemical structure
chromatin
controlled study
DNA damage
DNA damage response
gene expression
gene expression profiling
human
human cell
immortalized cell line
in vivo study
kidney tubule cell
machine learning
nephrotoxicity
phenotype
priority journal
RNA sequence
biology
cell culture
chemical structure
chemistry
chromatin assembly and disassembly
cytology
cytoskeleton
drug effects
feasibility study
high throughput screening
kidney proximal tubule
laboratory automation
molecular library
molecular model
osmolarity
preclinical study
transformed cell line
validation study
Automation, Laboratory
Cell Death
Cell Line, Transformed
Cells, Cultured
Chromatin Assembly and Disassembly
Computational Biology
Cytoskeleton
DNA Damage
Drug Evaluation, Preclinical
Feasibility Studies
High-Throughput Screening Assays
Humans
Kidney Tubules, Proximal
Machine Learning
Models, Molecular
Molecular Structure
Mutagens
Osmolar Concentration
Small Molecule Libraries
Xenobiotics
Issue Date: 2016
Publisher: Springer Verlag
Citation: Su, R, Xiong, S, Zink, D, Loo, L.-H (2016). High-throughput imaging-based nephrotoxicity prediction for xenobiotics with diverse chemical structures. Archives of Toxicology 90 (11) : 2793-2808. ScholarBank@NUS Repository. https://doi.org/10.1007/s00204-015-1638-y
Rights: Attribution 4.0 International
Abstract: The kidney is a major target for xenobiotics, which include drugs, industrial chemicals, environmental toxicants and other compounds. Accurate methods for screening large numbers of potentially nephrotoxic xenobiotics with diverse chemical structures are currently not available. Here, we describe an approach for nephrotoxicity prediction that combines high-throughput imaging of cultured human renal proximal tubular cells (PTCs), quantitative phenotypic profiling, and machine learning methods. We automatically quantified 129 image-based phenotypic features, and identified chromatin and cytoskeletal features that can predict the human in vivo PTC toxicity of 44 reference compounds with ~82 % (primary PTCs) or 89 % (immortalized PTCs) test balanced accuracies. Surprisingly, our results also revealed that a DNA damage response is commonly induced by different PTC toxicants that have diverse chemical structures and injury mechanisms. Together, our results show that human nephrotoxicity can be predicted with high efficiency and accuracy by combining cell-based and computational methods that are suitable for automation. © 2015, The Author(s).
Source Title: Archives of Toxicology
URI: https://scholarbank.nus.edu.sg/handle/10635/179284
ISSN: 0340-5761
DOI: 10.1007/s00204-015-1638-y
Rights: Attribution 4.0 International
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