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Title: | Prediction of drug-induced nephrotoxicity and injury mechanisms with human induced pluripotent stem cell-derived cells and machine learning methods | Authors: | Kandasamy, K Chuah, J.K.C Su, R Huang, P Eng, K.G Xiong, S Li, Y Chia, C.S Loo, L.-H Zink, D |
Keywords: | acute kidney failure automated pattern recognition bioassay cell culture cell differentiation cell survival drug effects human induced pluripotent stem cell kidney proximal tubule machine learning pathology preclinical study procedures reproducibility sensitivity and specificity toxicity testing Acute Kidney Injury Biological Assay Cell Differentiation Cell Survival Cells, Cultured Drug Evaluation, Preclinical Humans Induced Pluripotent Stem Cells Kidney Tubules, Proximal Machine Learning Pattern Recognition, Automated Reproducibility of Results Sensitivity and Specificity Toxicity Tests |
Issue Date: | 2015 | Citation: | Kandasamy, K, Chuah, J.K.C, Su, R, Huang, P, Eng, K.G, Xiong, S, Li, Y, Chia, C.S, Loo, L.-H, Zink, D (2015). Prediction of drug-induced nephrotoxicity and injury mechanisms with human induced pluripotent stem cell-derived cells and machine learning methods. Scientific Reports 5 : 12337. ScholarBank@NUS Repository. | Rights: | Attribution 4.0 International | Abstract: | The renal proximal tubule is a main target for drug-induced toxicity. The prediction of proximal tubular toxicity during drug development remains difficult. Any in vitro methods based on induced pluripotent stem cell-derived renal cells had not been developed, so far. Here, we developed a rapid 1-step protocol for the differentiation of human induced pluripotent stem cells (hiPSC) into proximal tubular-like cells. These proximal tubular-like cells had a purity of >90% after 8 days of differentiation and could be directly applied for compound screening. The nephrotoxicity prediction performance of the cells was determined by evaluating their responses to 30 compounds. The results were automatically determined using a machine learning algorithm called random forest. In this way, proximal tubular toxicity in humans could be predicted with 99.8% training accuracy and 87.0% test accuracy. Further, we studied the underlying mechanisms of injury and drug-induced cellular pathways in these hiPSC-derived renal cells, and the results were in agreement with human and animal data. Our methods will enable the development of personalized or disease-specific hiPSC-based renal in vitro models for compound screening and nephrotoxicity prediction. © 2015, Macmillan Publishers Limited. All rights reserved. | Source Title: | Scientific Reports | URI: | https://scholarbank.nus.edu.sg/handle/10635/180325 | ISSN: | 20452322 | Rights: | Attribution 4.0 International |
Appears in Collections: | Elements Staff Publications |
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