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利用 iPSC 来源的人神经元进行高通量药物诱导的周围神经病筛查。

Utilization of iPSC-derived human neurons for high-throughput drug-induced peripheral neuropathy screening.

机构信息

Drug Safety Research and Development, Pfizer, Eastern Point Road, Groton, CT, United States.

Axiogenesis AG, Cologne, Germany.

出版信息

Toxicol In Vitro. 2017 Dec;45(Pt 1):111-118. doi: 10.1016/j.tiv.2017.08.014. Epub 2017 Aug 24.

Abstract

As the number of cancer survivors continues to grow, awareness of long-term toxicities and impact on quality of life after chemotherapy treatment in cancer survivors has intensified. Chemotherapy-induced peripheral neuropathy (CIPN) is one of the most common side effects of modern chemotherapy. Animal models are used to study peripheral neuropathy and predict human risk; however, such models are labor-intensive and limited translatability between species has become a major challenge. Moreover, the mechanisms underlying CIPN have not been precisely determined and few human neuronal models to study CIPN exist. Here, we have developed a high-throughput drug-induced neurotoxicity screening model using human iPSC-derived peripheral-like neurons to study the effect of chemotherapy agents on neuronal health and morphology using high content imaging measurements (neurite length and neuronal cell viability). We utilized this model to test various classes of chemotherapeutic agents with known clinical liability to cause peripheral neuropathy such as platinum agents, taxanes, vinca alkaloids, proteasome inhibitors, and anti-angiogenic compounds. The model was sensitive to compounds that cause interference in microtubule dynamics, especially the taxane, epothilone, and vinca alkaloids. Conversely, the model was not sensitive to platinum and anti-angiogenic chemotherapeutics; compounds that are not reported to act directly on neuronal processes. In summary, we believe this model has utility for high-throughput screening and prediction of human risk for CIPN for novel chemotherapeutics.

摘要

随着癌症幸存者人数的不断增加,人们越来越关注癌症幸存者在化疗治疗后长期毒性和生活质量的影响。化疗引起的周围神经病变(CIPN)是现代化疗最常见的副作用之一。动物模型用于研究周围神经病变并预测人类风险;然而,此类模型劳动强度大,物种间的可转化性有限已成为一个主要挑战。此外,CIPN 的机制尚未精确确定,用于研究 CIPN 的人类神经元模型很少。在这里,我们使用人诱导多能干细胞(iPSC)衍生的周围神经元开发了一种高通量药物诱导神经毒性筛选模型,使用高内涵成像测量(神经突长度和神经元细胞活力)研究化疗药物对神经元健康和形态的影响。我们利用该模型测试了各种具有已知引起周围神经病变临床风险的化疗药物类别,如铂类药物、紫杉烷类、长春花生物碱、蛋白酶体抑制剂和抗血管生成化合物。该模型对干扰微管动力学的化合物敏感,特别是紫杉烷类、埃坡霉素类和长春花生物碱。相反,该模型对铂类和抗血管生成化疗药物不敏感;这些化合物据报道不会直接作用于神经元过程。总之,我们相信该模型对于新型化疗药物的 CIPN 人类风险的高通量筛选和预测具有实用价值。

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