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肝细胞癌和肝转移灶中细胞核及血管形态的分形分析鉴别

Fractal analysis differentiation of nuclear and vascular patterns in hepatocellular carcinomas and hepatic metastasis.

作者信息

Streba C T, Pirici D, Vere C C, Mogoantă L, Comănescu Violeta, Rogoveanu I

机构信息

University of Medicine and Pharmacy of Craiova, Romania.

出版信息

Rom J Morphol Embryol. 2011;52(3):845-54.

Abstract

Hepatocellular carcinoma (HCC) currently represents the fifth most common cancer worldwide, while being the third leading cause of cancer death. Fractal analysis is a novel tool used in quantitative and qualitative image assessment. Vascular patterns and cellular nuclei particularities in tumoral pathology make ideal candidates for this technique. Our aim was to apply fractal analysis in quantifying nuclear chromatin patterns and vascular axels in order to identify differences between images of primary HCC, liver metastasis (LM) and surrounding normal liver tissue. Formalin-fixed, paraffin-embedded tissue sections from 40 cases of HCC and 40 LM of various origins were used. We performed Hematoxylin staining for nuclear chromatin as well as immunohistochemical staining for vascular patterns. High-resolution images were captured; nuclear and vascular morphologies were assessed on binarized skeleton masks using the fractal box counting method. Analysis was performed using the free, public domain Java-based image processing tool, ImageJ, which provided the fractal dimensions (FDs) for each studied element. Statistical analysis was performed using the ANOVA test with Bonferroni post-tests and t-tests for paired samples. Fractal analysis of vascular patterns clearly differentiated between tumoral tissue and normal surrounding tissue (p<0.01). Further analysis of nuclear FDs improved the specificity of these results, providing clear differentiation between pathological and normal tissue (p<0.01). When comparing primary HCC images with metastatic formations, we encountered statistically significant differences in nuclear chromatin assessment. However, blood vessels had a higher FD in primary tumors when compared with liver metastasis (p<0.05) and also allowed for a differentiation between primary liver tumors with and without neurodifferentiation. Fractal analysis represents a potent tool for discriminating between tumoral and non-tumoral tissue images. It provides accurate, quantifiable data, which can be easily correlated with the pathology at hand. Primary and metastatic liver tissue can be differentiated to some extent, however further studies, possibly including other variables (cellular matrix for instance) are needed in order to validate the method.

摘要

肝细胞癌(HCC)目前是全球第五大常见癌症,也是癌症死亡的第三大主要原因。分形分析是一种用于定量和定性图像评估的新型工具。肿瘤病理学中的血管模式和细胞核特征使其成为该技术的理想候选对象。我们的目的是应用分形分析来量化核染色质模式和血管轴,以识别原发性肝癌、肝转移瘤(LM)和周围正常肝组织图像之间的差异。使用了来自40例不同来源的肝癌和40例肝转移瘤的福尔马林固定、石蜡包埋组织切片。我们对核染色质进行苏木精染色,并对血管模式进行免疫组织化学染色。捕获高分辨率图像;使用分形盒计数法在二值化骨架蒙版上评估核和血管形态。使用基于Java的免费公共领域图像处理工具ImageJ进行分析,该工具为每个研究元素提供分形维数(FDs)。使用ANOVA检验以及Bonferroni事后检验和配对样本t检验进行统计分析。血管模式的分形分析清楚地区分了肿瘤组织和周围正常组织(p<0.01)。对核FDs的进一步分析提高了这些结果的特异性,明确区分了病理组织和正常组织(p<0.01)。在比较原发性肝癌图像和转移灶时,我们在核染色质评估中遇到了统计学上的显著差异。然而,与肝转移瘤相比,原发性肿瘤中的血管FDs更高(p<0.05),并且还可以区分有无神经分化的原发性肝肿瘤。分形分析是区分肿瘤和非肿瘤组织图像的有力工具。它提供准确、可量化的数据,这些数据可以很容易地与手头的病理学相关联。原发性和转移性肝组织在一定程度上可以区分,然而,需要进一步的研究,可能包括其他变量(例如细胞基质)来验证该方法。

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