医学图像诊断系统的剪枝关联分类技术

P. Rajendran, M. Madheswaran
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引用次数: 18

摘要

脑肿瘤是近年来导致死亡的主要原因之一。本文提出了在CT扫描脑图像中进行肿瘤检测,以辅助医学图像诊断系统。该方法利用关联规则挖掘技术对CT扫描图像进行分类。它结合了从图像中提取的低级特征和专家的高级知识。该系统包括:预处理阶段、特征提取阶段、挖掘生成的事务数据库阶段、构建分类器和生成诊断建议阶段。该方法构建的分类器有一个重要的特点,即可以在每张图像中提出多个关键词,从而提高了准确率。在脑图像预诊断数据库上的实验结果显示出较高的准确率(高达95%),表明使用联想分类器是辅助诊断任务的一种有效技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pruned Associative Classification Technique for the Medical Image Diagnosis System
Brain tumor is one of the leading cause of death in recent years. This paper proposes the tumor detection in CT scan brain images, which can assist the medical image diagnosis system. The method proposed here makes use of association rule mining technique to classify the CT scan brain images. It combines the low-level features extracted from images and high level knowledge from specialists. The proposed system consists of: a pre-processing phase, feature extraction phase, a phase for mining the resultant transaction database, a final phase to build the classifier and generating the suggestion of diagnosis. The classifier built in this method has an important characteristic that it can suggest multiple keywords per image, which improves the accuracy. Experimental results on pre-diagnosed database of brain images shows high accuracy (up to 95%), allowing us to claim that the use of associative classifier is an efficient technique to assist in the diagnosing task.
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