Department of Laboratory Medicine, Command Hospital Chandimandir, Chandimandir, India.
Department of Cytology and Gynecologic Pathology, Post Graduate Institute of Medical Education and Research, Chandigarh, India.
Cytopathology. 2023 Sep;34(5):466-471. doi: 10.1111/cyt.13260. Epub 2023 Jun 23.
To evaluate the application of an artificial neural network in the detection of malignant cells in effusion samples.
In this retrospective study, we selected 90 cases of effusion cytology samples over 2 years. There were 52 cases of metastatic adenocarcinoma and 38 benign effusion samples. In each case, an average of five microphotographs from the representative areas were taken at 40× magnification from Papanicolaou-stained samples. A total of 492 images were obtained from these 90 cases. We applied a deep convolutional neural network (DCNN) model to identify malignant cells in the cytology images of effusion cytology smears. The training was performed for 15 epochs. The model consisted of 783 layers with 188 convolution-max pool layers in between.
In the test set, the DCNN model correctly identified 54 of 56 images of benign samples and 49 out of 56 images of malignant samples. It showed 88% sensitivity, 96% specificity and 96% positive predictive value in the screening of malignant cases in effusion. The area under the receiver operating curve was 0.92.
DCNN is a unique technology that can detect malignant cells from cytological images. The model works rapidly and there is no bias in cell selection or feature extraction. The present DCNN model is promising and can have a significant impact on the diagnosis of malignancy in cytology.
评估人工神经网络在渗出液样本中恶性细胞检测中的应用。
本回顾性研究选取了 2 年内的 90 例渗出液细胞学样本。其中转移性腺癌 52 例,良性渗出液 38 例。在每例中,从巴氏染色样本的代表性区域平均拍摄 5 张 40×放大倍数的显微照片。共从这 90 例获得 492 张图像。我们应用深度卷积神经网络(DCNN)模型识别渗出液细胞学涂片细胞学图像中的恶性细胞。训练进行了 15 个周期。该模型由 783 层组成,中间有 188 个卷积-最大池化层。
在测试集中,DCNN 模型正确识别了 56 张良性样本图像中的 54 张和 56 张恶性样本图像中的 49 张。在渗出液恶性病例的筛查中,它显示出 88%的敏感性、96%的特异性和 96%的阳性预测值。受试者工作特征曲线下面积为 0.92。
DCNN 是一种独特的技术,可以从细胞学图像中检测恶性细胞。该模型工作迅速,不存在细胞选择或特征提取的偏差。目前的 DCNN 模型很有前途,可以对细胞学恶性肿瘤的诊断产生重大影响。