Classification of Low-Grade and High-Grade Glioma from MR Brain Images Using Multiple-Instance Learning with Combined Feature Set

C. C. Benson, V. Lajish, K. Rajamani
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Abstract

Fully automatic brain image classification of MR brain images is of great importance for research and clinical studies, since the precise detection may lead to a better treatment. In this work, an efficient method based on Multiple-Instance Learning (MIL) is proposed for the automatic classification of low-grade and high-grade MR brain tumor images. The main advantage of MIL-based approach over other classification methods is that MIL considers an image as a group of instances rather than a single instance, thus facilitating an effective learning process. The mi-Graph-based MIL approach is proposed for this classification. Two different implementations of MIL-based classification, viz. Patch-based MIL (PBMIL) and Superpixel-based MIL (SPBMIL), are made in this study. The combined feature set of LBP, SIFT and FD is used for the classification. The accuracies of low-grade–high-grade tumor image classification algorithm using SPBMIL method performed on [Formula: see text], [Formula: see text] and FLAIR images read 99.2765%, 99.4195% and 99.2265%, respectively. The error rate of the proposed classification system was noted to be insignificant and hence this automated classification system could be used for the classification of images with different pathological conditions, types and disease statuses.
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结合特征集的多实例学习方法在MR脑图像中分类低级别和高级别胶质瘤
磁共振脑图像全自动脑图像分类对于科研和临床研究具有重要意义,因为准确的检测可能会导致更好的治疗。本文提出了一种基于多实例学习(Multiple-Instance Learning, MIL)的低级别和高级别磁共振脑肿瘤图像自动分类方法。与其他分类方法相比,基于MIL的方法的主要优点是MIL将图像视为一组实例而不是单个实例,从而促进了有效的学习过程。针对这种分类,提出了基于mi图的MIL方法。本研究提出了两种不同的基于MIL的分类实现,即基于patch的MIL (pbil)和基于superpixel的MIL (SPBMIL)。使用LBP、SIFT和FD的组合特征集进行分类。采用SPBMIL方法对[公式:见文]、[公式:见文]和FLAIR图像进行低分级、高分级肿瘤图像分类的准确率分别为99.2765%、99.4195%和99.2265%。所提出的分类系统的错误率不显著,因此该自动分类系统可用于不同病理状态、类型和疾病状态的图像分类。
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