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Automatic detection of malignant prostatic gland units in cross-sectional microscopic images

机译:在横截面显微图像中自动检测恶性前列腺单位

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Prostate cancer is the second most frequent cause of cancer deaths among men in the US. In the most reliable screening method, histological images from a biopsy are examined under a microscope by pathologists. In an early stage of prostate cancer, only relatively few gland units in a large region become malignant. Discovering such sparse malignant gland units using a microscope is a labor-intensive and error-prone task for pathologists. In this paper, we develop effective image segmentation and classification methods for automatic detection of malignant gland units in microscopic images. Both segmentation and classification methods are based on carefully designed feature descriptors, including color histograms and texton co-occurrence tables.
机译:在美国男性中,前列腺癌是第二大最常见的癌症死亡原因。在最可靠的筛查方法中,病理学家会在显微镜下检查活检的组织学图像。在前列腺癌的早期阶段,大区域中只有相对较少的腺体成为恶性肿瘤。使用显微镜发现这种稀疏的恶性腺单位是病理学家的劳动密集型且容易出错的任务。在本文中,我们开发了有效的图像分割和分类方法,用于自动检测显微图像中的恶性腺单位。分割和分类方法均基于精心设计的特征描述符,包括颜色直方图和texton共现表。

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