Department of Earth and Environmental Sciences, University of Milan Bicocca, Piazza della Scienza, 1, 20126 Milan, Italy.
Department of Statistics, Computer Science, Applications, University of Florence, Viale Morgagni 59, 50134 Florence, Italy.
Toxicol In Vitro. 2017 Dec;45(Pt 3):351-358. doi: 10.1016/j.tiv.2017.04.030. Epub 2017 Apr 28.
The identification of the carcinogenic risk of chemicals is currently mainly based on animal studies. The in vitro Cell Transformation Assays (CTAs) are a promising alternative to be considered in an integrated approach. CTAs measure the induction of foci of transformed cells. CTAs model key stages of the in vivo neoplastic process and are able to detect both genotoxic and some non-genotoxic compounds, being the only in vitro method able to deal with the latter. Despite their favorable features, CTAs can be further improved, especially reducing the possible subjectivity arising from the last phase of the protocol, namely visual scoring of foci using coded morphological features. By taking advantage of digital image analysis, the aim of our work is to translate morphological features into statistical descriptors of foci images, and to use them to mimic the classification performances of the visual scorer to discriminate between transformed and non-transformed foci. Here we present a classifier based on five descriptors trained on a dataset of 1364 foci, obtained with different compounds and concentrations. Our classifier showed accuracy, sensitivity and specificity equal to 0.77 and an area under the curve (AUC) of 0.84. The presented classifier outperforms a previously published model.
目前,化学物质致癌风险的识别主要基于动物研究。体外细胞转化检测(CTA)是一种很有前途的替代方法,可以在综合方法中考虑。CTA 测量转化细胞灶的诱导。CTA 模拟体内肿瘤发生过程的关键阶段,能够检测到遗传毒性和一些非遗传毒性化合物,是唯一能够处理后者的体外方法。尽管 CTA 具有有利的特征,但仍可以进一步改进,特别是减少协议最后阶段可能出现的主观性,即使用编码形态特征对焦点进行视觉评分。我们利用数字图像分析,旨在将形态特征转化为焦点图像的统计描述符,并使用它们来模拟视觉评分器的分类性能,以区分转化和非转化焦点。在这里,我们提出了一种基于五个描述符的分类器,该分类器基于用不同化合物和浓度获得的 1364 个焦点的数据集进行训练。我们的分类器的准确性、灵敏度和特异性均等于 0.77,曲线下面积(AUC)为 0.84。所提出的分类器优于以前发表的模型。