首页> 美国卫生研究院文献>Frontiers in Oncology >The Pan-Cytokeratin Staining Intensity and Fractal Computational Analysis of Breast Tumor Malignant Growth Patterns Prognosticate the Occurrence of Distant Metastasis
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The Pan-Cytokeratin Staining Intensity and Fractal Computational Analysis of Breast Tumor Malignant Growth Patterns Prognosticate the Occurrence of Distant Metastasis

机译:泛细胞角蛋白染色强度和乳腺癌肿瘤恶性生长方式的分形计算分析预测远处转移的发生。

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摘要

Improved prognosis of breast cancer outcome could prolong patient survival by reliable identification of patients at high risk of metastasis occurrence which could benefit from more aggressive treatments. Based on such clinical need, we prognostically evaluated the malignant cells in breast tumors, as the obvious potential source of unexploited prognostic information. The patient group was homogeneous, without any systemic treatments or lymph node spread, with smaller tumor size (pT1/2) and a long follow-up. Epithelial cells were labeled with AE1/AE3 pan-cytokeratin antibody cocktail and comprehensively analyzed. Monofractal and multifractal analyses were applied for quantification of distribution, shape, complexity and texture of malignant cell clusters, while mean pixel intensity and total area were measures of the pan-cytokeratin immunostaining intensity. The results surprisingly indicate that simple binary images and monofractal analysis provided better prognostic information then grayscale images and multifractal analysis. The key findings were that shapes and distribution of malignant cell clusters (by binary fractal dimension; AUC = 0.29), their contour shapes (by outline fractal dimension; AUC = 0.31) and intensity of the pan-cytokeratin immunostaining (by mean pixel intensity; AUC = 0.30) offered significant performance in metastasis risk prognostication. The results reveal an association between the lower pan-cytokeratin staining intensity and the high metastasis risk. Another interesting result was that multivariate analysis could confirm the prognostic independence only for fractal but not for immunostaining intensity features. The obtained results reveal several novel and unexpected findings highlighting the independent prognostic efficacy of malignant cell cluster distribution and contour shapes in breast tumors.
机译:乳腺癌预后的改善预后可以通过可靠地确定发生转移的高风险患者来延长患者的生存,这可以从更积极的治疗中受益。基于此类临床需求,我们对乳腺肿瘤中的恶性细胞进行了预后评估,将其作为未开发的预后信息的明显潜在来源。患者组是均质的,没有任何全身性治疗或淋巴结扩散,肿瘤尺寸较小(pT1 / 2),且随访时间长。上皮细胞用AE1 / AE3泛细胞角蛋白抗体混合物标记并进行全面分析。单分形和多重分形分析用于量化恶性细胞簇的分布,形状,复杂性和质地,而平均像素强度和总面积是泛细胞角蛋白免疫染色强度的量度。结果令人惊讶地表明,与灰度图像和多重分形分析相比,简单的二进制图像和单形分析提供了更好的预后信息。关键发现是恶性细胞团的形状和分布(按二进制分形维数; AUC = 0.29),它们的轮廓形状(按轮廓分形维数; AUC = 0.31)和泛细胞角蛋白免疫染色的强度(按平均像素强度;平均像素强度)。 AUC = 0.30)在转移风险预后方面有显着表现。结果表明较低的泛细胞角蛋白染色强度与高转移风险之间存在关联。另一个有趣的结果是,多变量分析只能证实分形的预后独立性,而不能证实免疫染色的强度特征。获得的结果揭示了一些新颖和出乎意料的发现,突出了恶性细胞簇分布和轮廓在乳腺癌中的独立预后功效。

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