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Prediction of drug-induced nephrotoxicity and injury mechanisms with human induced pluripotent stem cell-derived cells and machine learning methods

机译:用人诱导的人诱导多能干细胞衍生细胞和机器学习方法预测药物诱导的肾毒性和损伤机制

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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.
机译:肾近端小管是药物诱导毒性的主要靶标。药物开发期间对近端管状毒性的预测仍然困难。目前尚未开发基于诱导多能干细胞源性肾细胞的任何体外方法。这里,我们开发了一种快速的1步方案,用于将人诱导的多能干细胞(HIPSC)分化为近端管状细胞。在分化8天后,这些近端管状细胞的纯度> 90%,并且可以直接施加化合物筛选。通过评估其对30种化合物的反应来确定细胞的肾毒性预测性能。使用称为随机林的机器学习算法自动确定结果。以这种方式,可以预测人类的近端管状毒性,可以预测99.8%的训练精度和87.0%的测试精度。此外,我们研究了这些HIPSC衍生的肾细胞中的损伤和药物诱导的细胞途径的潜在机制,结果与人和动物数据一致。我们的方法将使种子化或疾病特异性HIPSC的肾脏体外模型进行复合筛选和肾毒性预测。

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