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使用原子力显微镜(AFM)结合数据挖掘技术进行脑肿瘤分类。

Brain tumor classification using AFM in combination with data mining techniques.

机构信息

School of Applied Health and Social Sciences, University of Applied Sciences Upper Austria, Garnisonstraße 21, 4020 Linz, Austria.

出版信息

Biomed Res Int. 2013;2013:176519. doi: 10.1155/2013/176519. Epub 2013 Aug 25.

Abstract

Although classification of astrocytic tumors is standardized by the WHO grading system, which is mainly based on microscopy-derived, histomorphological features, there is great interobserver variability. The main causes are thought to be the complexity of morphological details varying from tumor to tumor and from patient to patient, variations in the technical histopathological procedures like staining protocols, and finally the individual experience of the diagnosing pathologist. Thus, to raise astrocytoma grading to a more objective standard, this paper proposes a methodology based on atomic force microscopy (AFM) derived images made from histopathological samples in combination with data mining techniques. By comparing AFM images with corresponding light microscopy images of the same area, the progressive formation of cavities due to cell necrosis was identified as a typical morphological marker for a computer-assisted analysis. Using genetic programming as a tool for feature analysis, a best model was created that achieved 94.74% classification accuracy in distinguishing grade II tumors from grade IV ones. While utilizing modern image analysis techniques, AFM may become an important tool in astrocytic tumor diagnosis. By this way patients suffering from grade II tumors are identified unambiguously, having a less risk for malignant transformation. They would benefit from early adjuvant therapies.

摘要

尽管星形细胞瘤的分类已被世界卫生组织(WHO)分级系统标准化,该系统主要基于显微镜下的形态学特征,但仍存在很大的观察者间变异性。其主要原因被认为是肿瘤间和患者间形态学细节的复杂性不同、染色方案等组织病理学技术的变化,以及诊断病理学家的个体经验不同。因此,为了将星形细胞瘤的分级提高到更客观的标准,本文提出了一种基于原子力显微镜(AFM)衍生图像的方法,该方法结合了数据挖掘技术,从组织病理学样本中获得。通过将 AFM 图像与同一区域的相应光学显微镜图像进行比较,发现由于细胞坏死而形成的空洞逐渐形成是计算机辅助分析的典型形态学标志物。使用遗传编程作为特征分析工具,创建了一个最佳模型,该模型在区分 II 级肿瘤和 IV 级肿瘤方面的分类准确率达到 94.74%。通过利用现代图像分析技术,AFM 可能成为星形细胞瘤诊断的重要工具。通过这种方式,可以明确识别出患有 II 级肿瘤的患者,他们恶变的风险较低。他们将受益于早期辅助治疗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/959c/3766995/b3024e4b96ad/BMRI2013-176519.001.jpg

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