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关于生物可解释性和计算机辅助特征对儿童髓母细胞瘤细胞分类的贡献研究。

Study on Contribution of Biological Interpretable and Computer-Aided Features Towards the Classification of Childhood Medulloblastoma Cells.

机构信息

Center for Computation and Numerical Studies, Institute of Advanced Study in Science and Technology, Guwahati, 781035, India.

Department of Pathology, Guwahati Neurological Research Centre, Guwahati, 781006, India.

出版信息

J Med Syst. 2018 Jul 4;42(8):151. doi: 10.1007/s10916-018-1008-4.

Abstract

Diagnosis and Prognosis of brain tumour in children is always a critical case. Medulloblastoma is that subtype of brain tumour which occurs most frequently amongst children. Post-operation, the classification of its subtype is most vital for further clinical management. In this paper a novel approach of pathological subtype classification using biological interpretable and computer-aided textural features is forwarded. The classifier for accurate features prediction is built purely on the feature set obtained by segmentation of the ground truth cells from the original histological tissue images, marked by an experienced pathologist. The work is divided into five stages: marking of ground truth, segmentation of ground truth images, feature extraction, feature reduction and finally classification. Kmeans colour segmentation is used to segment out the ground truth cells from histological images. For feature extraction we used morphological, colour and textural features of the cells followed by feature reduction using Principal Component Analysis. Finally both binary and multiclass classification is done using Support Vector Method (SVM). The classification was compared using six different classifiers and performance was evaluated employing five-fold cross-validation technique. The accuracy achieved for binary and multiclass classification before applying PCA were 95.4 and 62.1% and after applying PCA were 100 and 84.9% respectively. The run-time analysis are also shown. Results reveal that this technique of cell level classification can be successfully adopted as architectural view can be confusing. Moreover it conforms substantially to the pathologist's point of view regarding morphological and colour features, with the addition of computer assisted texture feature.

摘要

儿童脑瘤的诊断和预后一直是一个关键问题。髓母细胞瘤是儿童中最常见的脑瘤亚型。手术后,对其亚型的分类对于进一步的临床管理至关重要。本文提出了一种使用生物可解释和计算机辅助纹理特征的病理亚型分类新方法。用于准确特征预测的分类器纯粹是基于从原始组织学图像的真实细胞分割中获得的特征集构建的,这些特征是由有经验的病理学家标记的。这项工作分为五个阶段:真实标记、真实图像分割、特征提取、特征减少和最终分类。Kmeans 颜色分割用于从组织学图像中分割出真实细胞。对于特征提取,我们使用细胞的形态、颜色和纹理特征,然后使用主成分分析进行特征减少。最后,使用支持向量机(SVM)进行二进制和多类分类。使用六种不同的分类器进行分类比较,并使用五重交叉验证技术进行性能评估。在应用 PCA 之前,二进制和多类分类的准确率分别为 95.4%和 62.1%,应用 PCA 后分别为 100%和 84.9%。还展示了运行时分析。结果表明,这种细胞级分类技术可以成功采用,因为结构视图可能会令人困惑。此外,它在形态和颜色特征方面与病理学家的观点基本一致,并且增加了计算机辅助纹理特征。

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