Texas Tech University, Department of Electrical and Computer Engineering, Lubbock, Texas, United States.
Texas Tech University, Department of Chemical Engineering, Lubbock, Texas, United States.
J Biomed Opt. 2022 Jul;27(7). doi: 10.1117/1.JBO.27.7.076003.
Circulating tumor cells (CTCs) are important biomarkers for cancer management. Isolated CTCs from blood are stained to detect and enumerate CTCs. However, the staining process is laborious and moreover makes CTCs unsuitable for drug testing and molecular characterization.
The goal is to develop and test deep learning (DL) approaches to detect unstained breast cancer cells in bright-field microscopy images that contain white blood cells (WBCs).
We tested two convolutional neural network (CNN) approaches. The first approach allows investigation of the prominent features extracted by CNN to discriminate in vitro cancer cells from WBCs. The second approach is based on faster region-based convolutional neural network (Faster R-CNN).
Both approaches detected cancer cells with higher than 95% sensitivity and 99% specificity with the Faster R-CNN being more efficient and suitable for deployment presenting an improvement of 4% in sensitivity. The distinctive feature that CNN uses for discrimination is cell size, however, in the absence of size difference, the CNN was found to be capable of learning other features. The Faster R-CNN was found to be robust with respect to intensity and contrast image transformations.
CNN-based DL approaches could be potentially applied to detect patient-derived CTCs from images of blood samples.
循环肿瘤细胞 (CTC) 是癌症管理的重要生物标志物。从血液中分离 CTC 进行染色以检测和计数 CTC。然而,染色过程繁琐,而且使 CTC 不适合药物测试和分子特征分析。
目的是开发和测试深度学习 (DL) 方法,以检测包含白细胞 (WBC) 的明场显微镜图像中未染色的乳腺癌细胞。
我们测试了两种卷积神经网络 (CNN) 方法。第一种方法允许研究 CNN 提取的突出特征,以区分体外癌细胞与 WBC。第二种方法基于更快的基于区域的卷积神经网络 (Faster R-CNN)。
这两种方法检测癌细胞的灵敏度均高于 95%,特异性均高于 99%,而 Faster R-CNN 更有效,适合部署,灵敏度提高了 4%。CNN 用于区分的特征是细胞大小,但是,在没有大小差异的情况下,发现 CNN 能够学习其他特征。Faster R-CNN 对强度和对比度图像变换具有鲁棒性。
基于 CNN 的 DL 方法可潜在地应用于从血液样本图像中检测患者来源的 CTC。