基于支持向量机的图像分析系统在脑肿瘤星形细胞瘤临床分级诊断中的应用。

D Glotsos, P Spyridonos, D Cavouras, P Ravazoula, P Arapantoni Dadioti, G Nikiforidis
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引用次数: 25

摘要

为了辅助临床常规脑肿瘤星形细胞瘤的分级诊断,开发了一种基于支持向量机(SVM)概念的图像分析系统。140例星形细胞瘤的活检根据WHO系统分为II级、III级和IV级。活检图像被数字化,并通过在一组小波、自相关和parzen估计描述符中编码纹理变化并使用无监督支持向量机聚类方法自动检测细胞核区域。基于核的形态和纹理特征,决策树分类方案采用支持向量机分类器区分不同级别的肿瘤。该系统对从两家不同医院收集的临床材料进行了验证。平均而言,SVM聚类算法正确识别并准确描绘了95%的核。低级别肿瘤与高级别肿瘤的区分准确率为90.2%,III级肿瘤与IV级肿瘤的区分准确率为88.3%。该系统在新的临床数据集中进行了测试,分类率分别为87.5%和83.8%。考虑到该方法是基于日常临床标准开发的,分割和分类结果非常令人鼓舞。该方法可与常规分级并行使用,以支持常规诊断程序并减少星形细胞瘤分级的主观性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An image-analysis system based on support vector machines for automatic grade diagnosis of brain-tumour astrocytomas in clinical routine.

An image-analysis system based on the concept of Support Vector Machines (SVM) was developed to assist in grade diagnosis of brain tumour astrocytomas in clinical routine. One hundred and forty biopsies of astrocytomas were characterized according to the WHO system as grade II, III and IV. Images from biopsies were digitized, and cell nuclei regions were automatically detected by encoding texture variations in a set of wavelet, autocorrelation and parzen estimated descriptors and using an unsupervised SVM clustering methodology. Based on morphological and textural nuclear features, a decision-tree classification scheme distinguished between different grades of tumours employing an SVM classifier. The system was validated for clinical material collected from two different hospitals. On average, the SVM clustering algorithm correctly identified and accurately delineated 95% of all nuclei. Low-grade tumours were distinguished from high-grade tumours with an accuracy of 90.2% and grade III from grade IV with an accuracy of 88.3% The system was tested in a new clinical data set, and the classification rates were 87.5 and 83.8%, respectively. Segmentation and classification results are very encouraging, considering that the method was developed based on every-day clinical standards. The proposed methodology might be used in parallel with conventional grading to support the regular diagnostic procedure and reduce subjectivity in astrocytomas grading.

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