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Histopathological Image Analysis on Mouse Testes for Automated Staging of Mouse Seminiferous Tubule

机译:小鼠睾丸自动分期的小鼠睾丸的组织病理学图像分析

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Whole slide image (WSI) of mouse testicular cross-section contains hundreds of seminiferous tubules. Meanwhile, each seminiferous tubule also contains different types of germ cells among different histological regions. These factors make it a challenge to segment distinct germ cells and regions on mouse testicular cross-section. Automated segmentation of different germ cells and regions is the first step to develop a computerized spermatogenesis staging system. In this paper, a set of 28 H&E stained WSIs of mouse testicular cross-section and 209 Stage Ⅵ-Ⅷ tubules images were studied to develop an automated multi-task segmentation model. A deep residual network (ResNet) is first presented for seminiferous tubule segmentation from mouse testicular cross-section. According to the types and distribution of germ cells in the tubules, we then present the other deep ResNet for multi-cell (spermatid, spermatocyte, and spermatogonia) segmentation and a fully convolutional network (FCN) for multi-region (elongated spermatid, round spermatid, and spermatogonial & spermatocyte regions) segmentation. To our knowledge, this is the first time to develop a computerized model for analyzing histopathological image of mouse testis. Three segmentation models presented in this paper show good segmentation performance and obtain the pixel accuracy of 94.40%, 91.26%, 93.47% for three segmentation tasks, respectively, which lays a solid foundation for the establishment of mouse spermatogenesis staging system.
机译:小鼠睾丸横截面的整个幻灯片图像(WSI)包含数百个曲细精管。同时,每个生精小管在不同的组织学区域中也包含不同类型的生殖细胞。这些因素使在小鼠睾丸横断面上分割不同的生殖细胞和区域成为一项挑战。自动分割不同的生殖细胞和区域是开发计算机精子发生分期系统的第一步。本文研究了一组28个H&E染色的小鼠睾丸横截面WSI和209个Ⅵ-Ⅷ期肾小管图像,以建立自动化的多任务分割模型。首先从小鼠睾丸横断面开始进行深度残留网络(ResNet)进行曲细精管分割。根据肾小管中生殖细胞的类型和分布,然后我们提出另一种用于多细胞(精子细胞,精子细胞和精子细胞)分割的深层ResNet和用于多区域(细长的精子细胞,圆形)的完全卷积网络(FCN)精子,精原细胞和精细胞区域)细分。据我们所知,这是首次开发出用于分析小鼠睾丸组织病理学图像的计算机化模型。本文提出的三种分割模型表现出良好的分割性能,分别完成三个分割任务的像素精度分别为94.40%,91.26%,93.47%,为建立小鼠生精分期系统奠定了坚实的基础。

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