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Two-Dimensional Matrix Algorithm Using Detrended Fluctuation Analysis to Distinguish Burkitt and Diffuse Large B-Cell Lymphoma

机译:基于趋势波动分析的二维矩阵算法用于区分Burkitt和弥漫性大型B细胞淋巴瘤

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摘要

A detrended fluctuation analysis (DFA) method is applied to image analysis. The 2-dimensional (2D) DFA algorithms is proposed for recharacterizing images of lymph sections. Due to Burkitt lymphoma (BL) and diffuse large B-cell lymphoma (DLBCL), there is a significant different 5-year survival rates after multiagent chemotherapy. Therefore, distinguishing the difference between BL and DLBCL is very important. In this study, eighteen BL images were classified as group A, which have one to five cytogenetic changes. Ten BL images were classified as group B, which have more than five cytogenetic changes. Both groups A and B BLs are aggressive lymphomas, which grow very fast and require more intensive chemotherapy. Finally, ten DLBCL images were classified as group C. The short-term correlation exponent α1 values of DFA of groups A, B, and C were 0.370 ± 0.033, 0.382 ± 0.022, and 0.435 ± 0.053, respectively. It was found that α1 value of BL image was significantly lower (P < 0.05) than DLBCL. However, there is no difference between the groups A and B BLs. Hence, it can be concluded that α1 value based on DFA statistics concept can clearly distinguish BL and DLBCL image.
机译:去趋势波动分析(DFA)方法应用于图像分析。提出了二维(2D)DFA算法,用于重新表征淋巴节的图像。由于伯基特淋巴瘤(BL)和弥漫性大B细胞淋巴瘤(DLBCL),多药化疗后5年生存率存在显着差异。因此,区分BL和DLBCL之间的差异非常重要。在这项研究中,有18个BL图像被分类为A组,它们具有1-5个细胞遗传学变化。十张BL图像被分类为B组,它们的细胞遗传学变化超过五个。 A组和B组BLs均为侵袭性淋巴瘤,它们的生长非常快,需要更强烈的化学疗法。最后,将十张DLBCL图像分类为C组。A,B和C组的DFA的短期相关指数α1值分别为0.370±0.033、0.382±0.022和0.435±0.053。发现BL图像的α1值显着低于DLBCL(P <0.05)。但是,组A和B BL之间没有区别。因此,可以得出结论,基于DFA统计概念的α1值可以清楚地区分BL和DLBCL图像。

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