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Scale Embedding Shared Neural Networks for Multiscale Histological Analysis of Prostate Cancer

机译:缩小嵌入共享神经网络,用于多尺度组织学分析前列腺癌

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In digital pathology, deep learning approaches have been increasingly applied and shown to be effective in analyzingdigitized tissue specimen images. Such approaches have, in general, chosen an arbitrary scale or resolution at which theimages are analyzed for several reasons, including computational cost and complexity. However, the tissuecharacteristics, indicative of cancer, tend to present at differing scales. Herein, we propose a framework that enablesdeep convolutional neural networks to perform multiscale histological analysis of tissue specimen images in an efficientand effective manner. A deep residual neural network is shared across multiple scales, extracting high-level features. Thehigh-level features from multiple scales are aggregated and transformed in a way that the scale information is embeddedin the network. The transformed features are utilized to classify tissue images into cancer and benign. The proposedmethod is compared to other methodologies to combine the feature from different scales. These competing methodscombine the multi-scale features via 1) concatenation 2) addition and 3) convolution. Tissue microarrays (TMAs) wereemployed to evaluate the proposed method and the other competing methods. Three TMAs, including 225 benign and377 cancer tissue samples, were used as training dataset. Two TMAs with 151 benign and 252 cancer tissue samples wasutilized as testing dataset. The proposed method obtained an accuracy of 0.953 and the area under the receiver operatingcharacteristics curve (AUC) of 0.971 (95% CI: 0.955-0.987), outperforming other competing methods. This suggests thatthe proposed multiscale approaches via a shared neural network and scale embedding scheme, could aid in improvingdigital pathology analysis and cancer pathology.
机译:在数字病理学中,深入学习方法越来越多地应用并显示在分析方面是有效的数字化组织样本图像。这些方法总之,选择了任意规模或分辨率由于几种原因分析了图像,包括计算成本和复杂性。但是,组织指示癌症的特征,往往存在于不同的尺度上。在此,我们提出了一种实现的框架深度卷积神经网络在高效中对组织标本图像进行多尺度组织学分析有效的方式。深度剩余神经网络在多个尺度上共享,提取高级功能。这来自多个尺度的高级功能被聚合并以嵌入比例信息的方式进行转换在网络中。转换的特征用于将组织图像分类为癌症和良性。提议将方法与其他方法进行比较,以将特征与不同尺度相结合。这些竞争方法通过1)连接2)加入和3)卷积,组合多尺度特征。组织微阵列(TMA)是用于评估所提出的方法和其他竞争方法。三个TMA,包括225个良性和377癌组织样品用作训练数据集。两个TMA有151个良性和252个癌症组织样本用作测试数据集。所提出的方法获得了0.953的精度和接收器下的区域0.971的特征曲线(AUC)(95%CI:0.955-0.987),优于其他竞争方法。这表明了通过共同的神经网络和规模嵌入方案,所提出的多尺度方法可以帮助改进数字病理学分析与癌症病理学。

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