干细胞染色质多分辨率纹理分析的性能评价

R. Mangoubi, Mukund Desai, N. Lowry, P. Sammak
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引用次数: 14

摘要

基于观察到人类胚胎干细胞在分化过程中染色质变得更加颗粒化,我们将纹理图像分析应用于干细胞细胞核的自动分类。利用已知的纹理多分辨率分解概率模型,推导出似然比检验统计量。我们还推导了这些非高斯统计量的概率密度函数,并用它们来评估分类测试的性能。结果表明,该试验能以0.95的概率区分多能性细胞核和分化程度不同的细胞核。即使先前的信息相反,该测试也能识别出分化水平相似的细胞核。该方法将有助于对人类发育过程中全基因组表观遗传变化和染色质重塑进行分类。最后,测试统计量及其密度函数适用于一般的纹理分类问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance evaluation of multiresolution texture analysis of stem cell chromatin
We apply texture image analysis to automated classification of stem cell nuclei, based on the observation that chromatin in human embryonic stem cells becomes more granular during differentiation. Using known probability models for texture multiresolution decompositions, we derive likelihood ratio test statistics. We also derive the probability density functions of these non-Gaussian statistics and use them to evaluate the performance of the classification test. Results indicate that the test can distinguish with probability 0.95 between nuclei that are pluripotent and those with varying degrees of differentiation. The test recognizes nuclei with similar differentiation level even if prior information says the contrary. This approach should be useful for classifying genome-wide epigenetic changes and chromatin remodeling during human development. Finally, the test statistics and their density functions are applicable to a general texture classification problem.
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