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Prostate Gland Segmentation in Histology Images via Residual and Multi-resolution U-NET

机译:通过残差和多分辨率U-Net的组织学图像中的前列腺细分

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Prostate cancer is one of the most prevalent cancers worldwide. One of the key factors in reducing its mortality is based on early detection. The computer-aided diagnosis systems for this task are based on the glandular structural analysis in histology images. Hence, accurate gland detection and segmentation is crucial for a successful prediction. The methodological basis of this work is a prostate gland segmentation based on U-Net convolutional neural network architectures modified with residual and multi-resolution blocks, trained using data augmentation techniques. The residual configuration outperforms in the test subset the previous state-of-the-art approaches in an image-level comparison, reaching an average Dice Index of 0.77.
机译:前列腺癌是全球最普遍的癌症之一。降低其死亡率的关键因素之一是基于早期检测。该任务的计算机辅助诊断系统基于组织学图像中的腺结构分析。因此,准确的腺体检测和分割对于成功预测至关重要。这项工作的方法论是基于用残差和多分辨率块修改的U-Net卷积神经网络架构的前列腺分段,使用数据增强技术训练。在测试子集中的残余配置优越,在图像级比较中先前的最先进方法,达到0.77的平均骰子指数。

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