Dual Structured Convolutional Neural Network with Feature Augmentation for Quantitative Characterization of Tissue Histology

Mira Valkonen, K. Kartasalo, Kaisa Liimatainen, M. Nykter, Leena Latonen, P. Ruusuvuori
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引用次数: 14

Abstract

We present a dual convolutional neural network (dCNN) architecture for extracting multi-scale features from histological tissue images for the purpose of automated characterization of tissue in digital pathology. The dual structure consists of two identical convolutional neural networks applied to input images with different scales, that are merged together and stacked with two fully connected layers. It has been acknowledged that deep networks can be used to extract higher-order features, and therefore, the network output at final fully connected layer was used as a deep dCNN feature vector. Further, engineered features, shown in previous studies to capture important characteristics of tissue structure and morphology, were integrated to the feature extractor module. The acquired quantitative feature representation can be further utilized to train a discriminative model for classifying tissue types. Machine learning based methods for detection of regions of interest, or tissue type classification will advance the transition to decision support systems and computer aided diagnosis in digital pathology. Here we apply the proposed feature-augmented dCNN method with supervised learning in detecting cancerous tissue from whole slide images. The extracted quantitative representation of tissue histology was used to train a logistic regression model with elastic net regularization. The model was able to accurately discriminate cancerous tissue from normal tissue, resulting in blockwise AUC=0.97, where the total number of analyzed tissue blocks was approximately 8.3 million that constitute the test set of 75 whole slide images.
基于特征增强的双结构卷积神经网络定量表征组织组织学
我们提出了一种双卷积神经网络(dCNN)架构,用于从组织图像中提取多尺度特征,用于数字病理学中组织的自动表征。二元结构由两个相同的卷积神经网络组成,分别用于不同尺度的输入图像,并将其合并在一起,用两个完全连接的层进行堆叠。人们已经认识到深度网络可以用于提取高阶特征,因此,将最终完全连接层的网络输出用作深度dCNN特征向量。此外,在先前的研究中显示的捕获组织结构和形态的重要特征的工程特征被集成到特征提取器模块中。所获得的定量特征表示可以进一步用于训练组织类型分类的判别模型。基于机器学习的检测感兴趣区域或组织类型分类的方法将推进向数字病理学中的决策支持系统和计算机辅助诊断的过渡。在这里,我们将提出的带有监督学习的特征增强dCNN方法应用于从整个幻灯片图像中检测癌组织。将提取的组织组织定量表示用于训练弹性网正则化逻辑回归模型。该模型能够准确地区分癌组织和正常组织,得到块AUC=0.97,其中分析的组织块总数约为830万个,构成了75个完整幻灯片图像的测试集。
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