The imagistic textural model of the prostatic adenocarcinoma

D. Mitrea, S. Nedevschi, B. Petrut, I. Coman
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引用次数: 1

Abstract

The prostatic adenocarcinoma (ADKP) is the most frequent neoplasy and also the major cause of death for men in United States. Detecting this tumor by human eye from biomedical images is difficult and invasive methods like the prostate needle biopsy are dangerous for the patient. The aim of our research is to develop reliable, non-invasive, computerized methods in order to provide an accurate characterization of ADKP through textural features extracted from ultrasound images, for the final purpose of automatic diagnosis. Thus, in our previous works, we defined the textural imagistic model of ADKP, consisting in the non-redundant set of the best textural features appropriate for ADKP characterization and in the statistical parameters associated to each relevant feature. In this work, we extend the textural imagistic model of ADKP by adding new, more expressive textural features and by improving the feature selection methods through combining them in an efficient manner.
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前列腺腺癌的图像纹理模型
前列腺腺癌(ADKP)是美国最常见的肿瘤,也是男性死亡的主要原因。通过人眼从生物医学图像中检测这种肿瘤是困难的,像前列腺穿刺活检这样的侵入性方法对患者来说是危险的。我们的研究目的是开发可靠的,非侵入性的,计算机化的方法,以便通过从超声图像中提取的纹理特征提供ADKP的准确表征,最终实现自动诊断。因此,在我们之前的工作中,我们定义了ADKP的纹理意象模型,包括适合ADKP表征的最佳纹理特征的非冗余集以及与每个相关特征相关的统计参数。在这项工作中,我们通过添加新的、更具表现力的纹理特征和通过有效地组合它们来改进特征选择方法来扩展ADKP的纹理意象模型。
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