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首页> 外文期刊>BMC Bioinformatics >Automated image analysis system for studying cardiotoxicity in human pluripotent stem cell-Derived cardiomyocytes
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Automated image analysis system for studying cardiotoxicity in human pluripotent stem cell-Derived cardiomyocytes

机译:用于研究人类多能干细胞衍生心肌细胞心脏毒性的自动图像分析系统

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Cardiotoxicity, characterized by severe cardiac dysfunction, is a major problem in patients treated with different classes of anticancer drugs. Development of predictable human-based models and assays for drug screening are crucial for preventing potential drug-induced adverse effects. Current animal in vivo models and cell lines are not always adequate to represent human biology. Alternatively, human induced pluripotent stem cell-derived cardiomyocytes (hiPSC-CMs) show great potential for disease modelling and drug-induced toxicity screenings. Fully automated high-throughput screening of drug toxicity on hiPSC-CMs by fluorescence image analysis is, however, very challenging, due to clustered cell growth patterns and strong intracellular and intercellular variation in the expression of fluorescent markers. In this paper, we report on the development of a fully automated image analysis system for quantification of cardiotoxic phenotypes from hiPSC-CMs that are treated with various concentrations of anticancer drugs doxorubicin or crizotinib. This high-throughput system relies on single-cell segmentation by nuclear signal extraction, fuzzy C-mean clustering of cardiac α-actinin signal, and finally nuclear signal propagation. When compared to manual segmentation, it generates precision and recall scores of 0.81 and 0.93, respectively. Our results show that our fully automated image analysis system can reliably segment cardiomyocytes even with heterogeneous α-actinin signals.
机译:心脏毒性,其特征在于严重的心脏功能障碍,是用不同类别的抗癌药物治疗的患者的主要问题。可预测人的基于人的模型和药物筛选的测定对于预防潜在的药物诱导的不良反应至关重要。目前的体内模型和细胞系的动物并不总是足以代表人类生物学。或者,人诱导的多能干细胞衍生的心肌细胞(HIPSC-CMS)显示出疾病建模和药物诱导的毒性筛查的巨大潜力。然而,由于聚集细胞生长模式和荧光标记表达的表达,通过荧光图像分析全自动地自动化高通量筛选HIPSC-CM对HIPSC-CMS的药物毒性非常具有挑战性。在本文中,我们报告了通过各种浓度的抗癌药物的HIPSC-CMS定量患者毒毒性表型的全自动图像分析系统的开发报告了各种抗癌药物的抗癌药物或克里齐替尼治疗。这种高通量系统依赖于核信号提取的单细胞分段,心脏α-肌肽信号的模糊C均匀聚类,最后核信号传播。与手动分段相比,它会分别产生精度并召回0.81和0.93的分数。我们的研究结果表明,我们的全自动图像分析系统即使具有异质α-肌动蛋白信号,也可以可靠地分段心肌细胞。

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