Nafe Reinhold, Yan Bernard, Schlote Wolfgang, Schneider Berthold
Department of Neuroradiology, Clinics of JW Goethe-University, Hannover, Germany.
Anal Quant Cytol Histol. 2006 Apr;28(2):69-77.
To study the discriminatory power of different methods designed for nuclear shape analysis with reference to the differentiation and grading of brain tumors and the differentiation between proliferating and nonproliferating nuclei.
At least 300 tumor cell nuclei per case were measured by means of a digital image analysis system. Fourier amplitudes no. 1 to 15, moments no. 1 to 7 according to Hu, roundness factor, ellipse shape factor, concavity factor, Feret ratio, fractal dimension and bending energy were determined for each nucleus. The discriminatory power of these parameters was tested in three pairwise comparisons: (1) oligodendrogliomas WHO grade II (n = 13) vs. grade III (n = 11), (2) medulloblastomas WHO grade IV (n = 14) vs. anaplastic ependymomas WHO grade III (n = 12), (3) Ki-67-positive vs. Ki-67-negative tumor cell nuclei in the 14 medulloblastomas.
When data from Fourier analysis were included in statistical analysis, cross-validated discriminant analysis led to a 100% correct reclassification for the first and for the second pairwise comparison and to a 75% correct reclassification when comparing Ki-67-positive and Ki-67-negative nucleifrom medulloblastomas. Different combinations of the other shape parameters led to a lower percentage of correctly reclassified cases for all three pairwise comparisons, especially when Fourier analysis was not included in the analysis.
Fourier analysis provided an optimal statistical discrimination between different brain tumor entities and between data sets from proliferating and nonproliferating tumor cell nuclei. Since nuclear shape is an important criterion for the investigation of tumors, the application of Fourier analysis is therefore recommended for quantitative histologic investigations in neuro-oncology.
参照脑肿瘤的分化与分级以及增殖性和非增殖性细胞核之间的差异,研究为核形态分析设计的不同方法的鉴别能力。
通过数字图像分析系统对每个病例至少300个肿瘤细胞核进行测量。确定每个细胞核的傅里叶振幅第1至15项、根据胡氏算法的矩第1至7项、圆度因子、椭圆形状因子、凹度因子、费雷特比率、分形维数和弯曲能量。在三组两两比较中测试这些参数的鉴别能力:(1)世界卫生组织二级少突胶质细胞瘤(n = 13)与三级(n = 11);(2)世界卫生组织四级髓母细胞瘤(n = 14)与世界卫生组织三级间变性室管膜瘤(n = 12);(3)14例髓母细胞瘤中Ki-67阳性与Ki-67阴性肿瘤细胞核。
当将傅里叶分析数据纳入统计分析时,交叉验证判别分析在第一组和第二组两两比较中实现了100%的正确重新分类,在比较髓母细胞瘤中Ki-67阳性和Ki-67阴性细胞核时实现了75%的正确重新分类。其他形状参数的不同组合在所有三组两两比较中导致正确重新分类的病例百分比更低,尤其是在分析中未纳入傅里叶分析时。
傅里叶分析为不同脑肿瘤实体以及增殖性和非增殖性肿瘤细胞核数据集之间提供了最佳的统计鉴别。由于核形态是肿瘤研究的重要标准,因此建议在神经肿瘤学的定量组织学研究中应用傅里叶分析。