Circulating Tumor Cells (CTCs) bear great promise as biomarkers in tumor prognosis. However, the process of identification and later enumeration of CTCs require manual labor, which is error-prone and time-consuming. The recent developments in object detection via Deep Learning using Mask-RCNNs and wider availability of pre-trained models have enabled sensitive tasks with limited data of such to be tackled with unprecedented accuracy. In this report, we present a novel 3-stage detection model for automated identification of Circulating Tumor Cells in multi-channel darkfield microscopic images comprised of: RetinaNet based identification of Cytokeratin (CK) stains, Mask-RCNN based cell detection of DAPI cell nuclei and Otsu thresholding to detect CD-45s. The training dataset is composed of 46 high variance data points, with 10 Negative and 36 Positive data points. The test set is composed of 420 negative data points. The final accuracy of the pipeline is 98.81%.
翻译:循环肿瘤细胞(CTCs)作为肿瘤预测的生物标记者,有着巨大的希望。然而,查明和以后查点CTC的过程需要体力劳动,这种劳动容易出错和耗费时间。最近通过深学习利用Mack-RCNNs探测物体的发展,以及经过培训的模型的更广泛提供,使得使用这种数据有限的敏感任务能够以前所未有的准确性得到处理。在本报告中,我们提出了一个新型的三阶段检测模型,用于自动识别多通道黑地微小图象中的环流肿瘤细胞。这些图象包括:基于Retinnet的Cytokeratin(CK)污点识别,基于Mask-RCNN的DAPI细胞细胞探测,以及用于检测CD-45s的Otsu临界点。培训数据集由46个高差异数据点组成,其中10个为负值,36个为正值数据点。测试数据集由420个负值数据点组成。输油管的最终精确度为98.81%。