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HIGH THROUGHPUT METHOD FOR ACCURATE PREDICTION OF COMPOUND-INDUCED LIVER INJURY

机译:用于精确预测复合肝损伤的高通量法

摘要

A method and system for predicting liver injury in vivo due to hepatocyte damage by a test compound are provided. The method includes acquiring images of fluorescently stained cells obtained from a cell culture in which the cells have been treated with a dose-range of at least the test compound and its vehicle. The cells may be hepatic cells including primary or immortalized hepatocytes, hepatoma cells or induced pluripotent stem cell-derived hepatocyte-like cells. The acquired images are segmented. The method further includes extracting and analyzing one or more phenotypic features from the segmented images, wherein the one or more phenotypic features are selected from the group of intensity, textural, morphological, or ratiometric features consisting of (a) features of DNA, (b) features of RELA (NF-KB p65), and (c) features of actin filaments at different subcellular regions and d) features of cellular organelles and their substructures in the segmented images. Finally, the method includes normalizing results from the treated samples to vehicle controls and predicting the probability of liver injury by the test compound based on test compound-induced normalized changes of the extracted and selected phenotypic features using machine learning methods.
机译:提供了一种用于预测由于肝细胞损伤的体内肝损伤的方法和系统。该方法包括获取从细胞培养物获得的荧光染色细胞的图像,其中已经用至少测试化合物及其载体的剂量范围处理细胞的细胞培养物。细胞可以是肝细胞,包括初级或永生化的肝细胞,肝癌细胞或诱导多能干细胞衍生的肝细胞样细胞。获取的图像被分段。该方法还包括从分段图像中提取和分析一种或多种表型特征,其中所述一种或多种表型特征选自由DNA(A)特征的强度,纹理,形态学或比例特征,(B )Rela(NF-KB P65)的特征,(C)在不同亚细胞区域的肌动蛋白细丝的特征和D)细胞细胞器的特征及其在分段图像中的子结构。最后,该方法包括从处理过的样品对载体对照的结果的标准化结果,并根据使用机器学习方法的测试化合物诱导的试验化合物诱导的试验化合物的肝损伤的概率。

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