Clear cell renal cell carcinoma (ccRCC) is one of the most common forms of intratumoral heterogeneity in the study of renal cancer. ccRCC originates from the epithelial lining of proximal convoluted renal tubules. These cells undergo abnormal mutations in the presence of Ki67 protein and create a lump-like structure through cell proliferation. Manual counting of tumor cells in the tissue-affected sections is one of the strongest prognostic markers for renal cancer. However, this procedure is time-consuming and also prone to subjectivity. These assessments are based on the physical cell appearance and suffer wide intra-observer variations. Therefore, better cell nucleus detection and counting techniques can be an important biomarker for the assessment of tumor cell proliferation in routine pathological investigations. In this paper, we introduce a deep learning-based detection model for cell classification on IHC stained histology images. These images are classified into binary classes to find the presence of Ki67 protein in cancer-affected nucleus regions. Our model maps the multi-scale pyramid features and saliency information from local bounded regions and predicts the bounding box coordinates through regression. Our method validates the impact of Ki67 expression across a cohort of four hundred histology images treated with localized ccRCC and compares our results with the existing state-of-the-art nucleus detection methods. The precision and recall scores of the proposed method are computed and compared on the clinical data sets. The experimental results demonstrate that our model improves the F1 score up to 86.3% and an average area under the Precision-Recall curve as 85.73%.
翻译:清晰细胞细胞细胞癌(ccRCC)是肾癌研究中最常见的直肠内分泌形式之一。 CRCC 源自于蛋白质卷心血管管管的上侧衬衬里。 这些细胞在基67蛋白中突变异常,并通过细胞扩散形成一个类似包状的结构。 组织受影响部分肿瘤细胞的人工计数是肾癌最强的预测标记之一。 然而,这个程序耗时且容易受主观影响。 这些评估基于物理细胞的外观,并承受广泛的内部观察器变异。 因此, 在常规病理调查中,更好的细胞核探测和计数技术可以成为评估肿瘤细胞扩散的重要生物标志。 在本文中,我们引入了一个基于深层次学习的检测模型,用于对受组织影响的部分进行细胞分类。 这些图像被分类为二进制类别,以发现癌症影响核心区域存在基67蛋白蛋白。 我们的模型绘制了多尺度的金字型特征和直径精确度数据, 并用本地的直径直径分析方法 演示了我们的直径分析结果 。