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Fast GPU-based segmentation of HE stained Squamous Epithelium from Multi-Gigapixel Tiled Virtual Slides

机译:基于GPU的H&E染色鳞状上皮细胞的快速分割(基于数百万像素平铺的虚拟幻灯片)

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The processing of multi-gigapixel virtual histology slides presents a computationally intensive and time consuming task. Common tiled TIFF slide formats, such as those used by Aperio [1], contain inherent header information that can be used to rapidly locate tissue regions for cervical intraepithelial neoplasia (CIN) diagnosis. Tiles used in these formats are individually compressed subsections of the virtual slide, whose compression ratio varies based on their individual content. This paper discusses a method that exploits this information to rapidly identify regions of interest in an iterative process to locate epithelial tissue. These regions are decompressed using a multi-core CPU, from which a Compute Unified Device Architecture (CUDA) enabled GPU rapidly generates features and Support Vector Machine (SVM) decisions. SVM classifier results are used in a post-processing scheme to remove apparently spurious misclassifications. The mean overall execution time when using a high-end desktop PC, together with a GTX 560 GPU, is roughly 3 seconds per gigapixel, while maintaining the area under an ROC curve above 0.9 when classifying squamous epithelium versus other tissues.
机译:多Gigapixel虚拟组织学幻灯片的处理呈现了计算密集和耗时的任务。常见的瓷砖TIFF幻灯片格式,例如aperio [1]使用的幻灯片幻灯片格式,包含可用于快速定位用于颈椎上皮内瘤瘤(CIN)诊断的组织区域的固有标题信息。在这些格式中使用的瓷砖是虚拟幻灯片的单独压缩小节,其压缩比根据其各个内容而变化。本文讨论了一种利用该信息来快速识别迭代过程中令人迭代过程的区域来定位上皮组织的方法。这些区域使用多核CPU解压缩,从中,计算统一设备架构(CUDA)启用的GPU快速生成特征和支持向量机(SVM)决策。 SVM分类器结果用于后处理方案,以消除显着虚假的错误分类。使用高端台式PC的平均总体执行时间与GTX 560 GPU一起每Gigapixel大约3秒,同时在分类鳞状上皮与其他组织的鳞状上高于0.9的ROC曲线下的区域。

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