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A lymphocyte spatial distribution graph based method for automated classification of recurrence risk on lung cancer images

机译:基于淋巴细胞空间分布图,用于肺癌图像自动分类的自动分类

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Tumor-infiltrating lymphocytes occurs when various classes of white blood cells migrate from the blood stream towards the tumor, infiltrating it. The presence of TIL is predictive of the response of the patient to therapy. In this paper, we show how the automatic detection of lymphocytes in digital H&E histopathological images and the quantitative evaluation of the global lymphocyte configuration, evaluated through global features extracted from non-parametric graphs, constructed from the lymphocytes' detected positions, can be correlated to the patient's outcome in early-stage non-small cell lung cancer (NSCLC). The method was assessed on a tissue microarray cohort composed of 63 NSCLC cases. From the evaluated graphs, minimum spanning trees and K-nn showed the highest predictive ability, yielding F1 Scores of 0.75 and 0.72 and accuracies of 0.67 and 0.69, respectively. The predictive power of the proposed methodology indicates that graphs may be used to develop objective measures of the infiltration grade of tumors, which can, in turn, be used by pathologists to improve the decision making and treatment planning processes.
机译:当各类白细胞迁移到肿瘤的血液流中时,会发生肿瘤浸润的淋巴细胞,渗透它。 TIL的存在是预测患者对治疗的反应。在本文中,我们展示了通过从淋巴细胞检测到的位置构成的非参数图中提取的全局特征来自动检测数字H&E组织病理学图像和全局淋巴细胞构型的定量评价的定量检测。患者在早期非小细胞肺癌(NSCLC)的结果。该方法在组织微阵列队列中评估了由63个NSCLC病例组成的组织微阵列队列。从评估的图表中,最小跨越树和K-Nn显示出最高的预测能力,产生0.75和0.72的F1分别,分别为0.67和0.69的精度。所提出的方法的预测力表明,图形可用于制定肿瘤浸润等级的客观措施,该肿瘤又可以通过病理学家来改善决策和治疗计划过程。

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