首页> 外文会议>International Conference on Neural Information Processing(ICONIP 2004); 20041122-25; Calcutta(IN) >Automated Diagnosis of Brain Tumours Using a Novel Density Estimation Method for Image Segmentation and Independent Component Analysis Combined with Support Vector Machines for Image Classification
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Automated Diagnosis of Brain Tumours Using a Novel Density Estimation Method for Image Segmentation and Independent Component Analysis Combined with Support Vector Machines for Image Classification

机译:新型的密度估计方法用于图像分割和独立成分分析结合支持向量机的图像分类自动诊断脑肿瘤

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摘要

A computer-aided system was developed for the automatic diagnosis of brain tumours using a novel density estimation method for image segmentation and independent component analysis (ICA) combined with Support Vector Machines (SVM) for image classification. Images from 87 tumor biopsies were digitized and classified into low and high-grade. Segmentation was performed utilizing a density estimation clustering method that isolated nuclei from background. Nuclear features were quantified to encode tumour malignancy. 46 cases were used to construct the SVM classifier. ICA determined the most important feature combination. Classifier performance was evaluated using the leave-one-out method. 41 cases collected from a different hospital were used to validate the systems' generalization. For the training set the SVM classifier gave 84.9%. For the validation set classification performance was 82.9%. The proposed methodology is a dynamic new alternative to computer-aided diagnosis of brain tumours malignancy since it combines robust segmentation and high effective classification algorithm.
机译:开发了一种用于计算机辅助系统的自动诊断脑肿瘤的系统,该系统使用新颖的密度估计方法进行图像分割和独立成分分析(ICA),并结合支持向量机(SVM)进行图像分类。将来自87个肿瘤活组织检查的图像数字化,并分为低级和高级。利用密度估计聚类方法进行分割,该方法从背景中分离出细胞核。核特征被量化以编码肿瘤恶性肿瘤。 46个案例用于构建SVM分类器。 ICA确定了最重要的功能组合。分类器的性能使用留一法进行评估。从另一家医院收集的41例病例用于验证系统的通用性。对于训练集,SVM分类器占84.9%。对于验证集,分类性能为82.9%。所提出的方法是一种动态的新方法,可替代计算机辅助诊断脑肿瘤恶性肿瘤,因为它结合了可靠的分割和高效的分类算法。

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