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An Adaptive Algorithm for Detection of Multiple-Type, Positively Stained Nuclei in IHC images with minimal Prior Information: Application to OLIG2 Staining Gliomas

机译:具有最小现有信息的IHC图像中多型,阳性核核的自适应算法:应用于olig2染色胶质瘤

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We propose a method to detect and segment the oligodendrocytes and gliomas in OLIG2 immunoperoxidase stained tissue sections. Segmentation of cell nuclei is essential for automatic, fast, accurate and consistent analysis of pathology images. In general, glioma cells and oligodendrocytes mostly differ in shape and size within the tissue slide. In OLIG2 stained tissue images, gliomas are represented with irregularly shaped nuclei with varying sizes and brown shades. On the other hand, oligodendrocytes have more regular round nuclei shapes and are smaller in size when compared to glioma cells found in oligodendroglioma, astrocytomas, or oligoastrocytomas. The first task is to detect the OLIG2 positive cell regions within a region of interest image selected from a whole slide. The second task is to segment each cell nucleus and count the number of cell nuclei. However, the cell nuclei belonging to glioma cases have particularly irregular nuclei shapes and form cell clusters by touching or overlapping with each other. In addition to this clustered structure, the shading of the brown stain and the texture of the nuclei differ slightly within a tissue image. The final step of the algorithm is to classify glioma cells versus oligodendrocytes. Our method starts with color segmentation to detect positively stained cells followed by the classification of single individual cells and cell clusters by K-means clustering. Detected cell clusters are segmented with the H-minima based watershed algorithm. The novel aspects of our work are: 1) the detection and segmentation of multiple-type, positively-stained nuclei by incorporating only minimal prior information; and 2) adaptively determining clustering parameters to adjust to the natural variation in staining as well as the underlying cellular structure while accommodating multiple cell types in the image. Performance of the algorithm to detect individual cells is evaluated by sensitivity and precision metrics. Promising segmentation results (91% sensitivity and 86% precision) were achieved for a dataset of fourteen tissue slides with ground truth markings by two pathologists.
机译:我们提出了一种方法来检测和分割olig2免疫氧化酶染色组织切片中的少突胶质细胞和胶质瘤。细胞核的分割对于自动,快速,准确,对病理图像分析至关重要。通常,胶质瘤细胞和少突胶质细胞在组织载玻片内的形状和大小不同。在olig2染色的组织图像中,胶质瘤用不同尺寸和棕色色调的不规则形状的核表示。另一方面,与在oligodendroglioma,星形胶质细胞瘤或寡核苷瘤中发现的胶质瘤细胞相比,oligodendrocytes具有更规则的圆形细胞核形状并且尺寸较小。第一任务是检测从整个载玻片中选择的感兴趣图像区域内的OLIG2正电池区域。第二任务是分段为每个细胞核分段并计算细胞核的数量。然而,属于胶质瘤病例的细胞核具有特别不规则的核形状,并通过彼此接触或重叠形成细胞簇。除了这种聚类结构之外,棕色染色的阴影和核的纹理在组织图像内略微不同。该算法的最终步骤是分类胶质瘤细胞与寡核细胞。我们的方法从彩色分割开始,以通过K-means聚类检测阳性染色的细胞,然后通过k均值聚类分类单个单独细胞和细胞簇。检测到的细胞簇用基于H-MIMIMA的流域算法进行分段。我们工作的新方面是:1)通过仅包含最小的先前信息来检测和分割多种类型的正染子核; 2)自适应地确定聚类参数以调整到染色的自然变化以及底层蜂窝结构,同时容纳图像中的多个小区类型。通过灵敏度和精密度量来评估算法检测单个小区的算法性能。有前途的分割结果(91%的灵敏度和86%的精度)对于由两位病理学家的地面真理标记的14个组织幻灯片的数据集实现了。

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