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Prognostic value of adaptive textural features--the effect of standardizing nuclear first-order gray level statistics and mixing information from nuclei having different area.

机译:自适应纹理特征的预后价值-标准化核一级灰度统计数据并混合来自具有不同面积的核的信息的效果。

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BACKGROUND: Nuclear texture analysis is a useful method to obtain quantitative information for use in prognosis of cancer. The first-order gray level statistics of a digitized light microscopic nuclear image may be influenced by variations in the image input conditions. Therefore, we have previously standardized the nuclear gray level mean value and standard deviation. However, there is a clear relation between nuclear DNA content, area, first-order statistics, and texture. For nuclei with approximately the same DNA content, the mean gray level increases with an increasing nuclear area. The aims of the present methodical work were to study: (1) whether the prognostic value of adaptive textural features varies with nuclear area, and (2) the effect of standardizing nuclear first-order statistics. METHODS: Nuclei from 134 cases of ovarian cancer were grouped into intervals according to nuclear area. Adaptive features were extracted from two different image sets, i.e., standardized and non-standardized nuclear images. RESULTS: The prognostic value of adaptive textural features varied strongly with nuclear area. A standardization of the first-order statistics significantly reduced this prognostic information. Several single features discriminated the two classes of cancer with a correct classification rate of 70%. CONCLUSION: Nuclei having an area between 2000-4999 pixels contained most of the class distance information between the good and poor prognosis classes of cancer. By considering the relation between nuclear area and texture, we avoided a loss of information caused by standardizing the first-order statistics and mixing data from cells having different nuclear area.
机译:背景:核纹理分析是一种获得定量信息以用于癌症预后的有用方法。数字化光学显微核图像的一阶灰度统计可能会受到图像输入条件变化的影响。因此,我们之前已经标准化了核灰阶平均值和标准偏差。但是,核DNA含量,面积,一阶统计量和质地之间存在明确的关系。对于具有大致相同的DNA含量的核,平均灰度级随核面积的增加而增加。本方法研究的目的是研究:(1)适应性纹理特征的预后价值是否随核面积而异;(2)标准化核一级统计的效果。方法:根据核面积将134例卵巢癌的细胞核分为不同的间隔。从两个不同的图像集(即标准化和非标准化核图像)中提取自适应特征。结果:适应性纹理特征的预后价值随核面积的不同而有很大差异。一阶统计数据的标准化显着减少了该预后信息。几个单一特征以正确分类率为70%区分了两种癌症。结论:核的面积在2000-4999像素之间,包含了癌症预后好坏之间的大多数类距离信息。通过考虑核面积和纹理之间的关系,我们避免了由于标准化一阶统计数据和混合来自具有不同核面积的细胞的数据而造成的信息丢失。

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