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Deep vector-based convolutional neural network approach for automatic recognition of colonies of induced pluripotent stem cells

机译:基于深度向量的卷积神经网络方法,用于自动识别诱导多能干细胞集落

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摘要

Pluripotent stem cells can potentially be used in clinical applications as a model for studying disease progress. This tracking of disease-causing events in cells requires constant assessment of the quality of stem cells. Existing approaches are inadequate for robust and automated differentiation of stem cell colonies. In this study, we developed a new model of vector–based convolutional neural network (V-CNN) with respect to extracted features of the induced pluripotent stem cell (iPSC) colony for distinguishing colony characteristics. A transfer function from the feature vectors to the virtual image was generated at the front of the CNN in order for classification of feature vectors of healthy and unhealthy colonies. The robustness of the proposed V-CNN model in distinguishing colonies was compared with that of the competitive support vector machine (SVM) classifier based on morphological, textural, and combined features. Additionally, five-fold cross-validation was used to investigate the performance of the V-CNN model. The precision, recall, and F-measure values of the V-CNN model were comparatively higher than those of the SVM classifier, with a range of 87–93%, indicating fewer false positives and false negative rates. Furthermore, for determining the quality of colonies, the V-CNN model showed higher accuracy values based on morphological (95.5%), textural (91.0%), and combined (93.2%) features than those estimated with the SVM classifier (86.7, 83.3, and 83.4%, respectively). Similarly, the accuracy of the feature sets using five-fold cross-validation was above 90% for the V-CNN model, whereas that yielded by the SVM model was in the range of 75–77%. We thus concluded that the proposed V-CNN model outperforms the conventional SVM classifier, which strongly suggests that it as a reliable framework for robust colony classification of iPSCs. It can also serve as a cost-effective quality recognition tool during culture and other experimental procedures.
机译:多能干细胞可潜在地在临床应用中用作研究疾病进展的模型。对细胞中致病事件的这种追踪要求不断评估干细胞的质量。现有方法不足以实现干细胞集落的稳健和自动分化。在这项研究中,我们针对诱导多能干细胞(iPSC)菌落的提取特征,建立了基于向量的卷积神经网络(V-CNN)的新模型,以区分菌落特征。在CNN的前端生成了从特征向量到虚像的传递函数,以便对健康和不健康菌落的特征向量进行分类。将提出的V-CNN模型在区分菌落中的鲁棒性与基于形态,纹理和组合特征的竞争支持向量机(SVM)分类器的鲁棒性进行了比较。另外,使用五重交叉验证来研究V-CNN模型的性能。 V-CNN模型的精度,召回率和F度量值相对高于SVM分类器,范围为87–93%,表明误报率和误报率较低。此外,为了确定菌落的质量,V-CNN模型基于形态特征(95.5%),纹理特征(91.0%)和组合特征(93.2%)的准确性要高于SVM分类器(86.7,83.3) ,和83.4%)。类似地,对于V-CNN模型,使用五重交叉验证的特征集的准确性高于90%,而SVM模型产生的准确性在75-77%的范围内。因此,我们得出的结论是,提出的V-CNN模型优于传统的SVM分类器,这强烈建议将其作为iPSC强大菌落分类的可靠框架。在培养和其他实验过程中,它也可以用作具有成本效益的质量识别工具。

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