脑MRI与低维共现特征方法的肿瘤检测

Q3 Engineering
Marta Mirkov, A. Gavrovska
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引用次数: 0

摘要

医学影像学的研究主要集中在计算机辅助诊断系统中有用的方法。在现代,这些系统通常具有自动检测感兴趣的区域,成像技术提供了许多优势,例如开发可靠的辅助算法的可能性。磁共振成像(MRI)因其良好的软组织对比性,为脑肿瘤的检测提供了引人注目的特点,具有重要的临床价值。为了帮助临床医生做出诊断,目前用于处理和医学图像分类的算法可能依赖于复杂的深度学习设计,这需要大量的硬件资源和漫长的执行时间。这无疑有助于理解疾病机制和标记脑肿瘤鉴定的困难实例。另一方面,统计低维特征集,包括基于共发生的特征集,在处理肿瘤检测时可能是有用的,避免了可能的复杂性。本文分析了用于MRI脑肿瘤分类的特征提取和约简的统计方法,并在一个公开可用的用于机器学习任务的脑肿瘤检测数据库上对结果进行了评价。采用贝叶斯和kNN分类器,以及四种距离度量和两种特征约简方法进行分析。研究结果似乎有助于开发一种简单且对硬件要求较低的程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tumor detection using brain MRI and low-dimension co-occurrence feature approach
Research in medical imaging focuses on methods useful in computer-aided diagnosis systems. In modern times, these systems often have automatic detection of regions of interest, and imaging technologies offer numerous advantages, like the possibility of developing reliable assisting algorithms. Magnetic Resonance Imaging (MRI) provides compelling features for brain tumor detection due to good soft tissue contrast and has important clinical value. To help clinicians in making diagnoses, current algorithms for processing and medical image classification may depend on intricate deep learning designs that demand large hardware resources and lengthy execution times. This is with no doubt helpful in understanding disease mechanisms and in labeling difficult instances for brain tumor identification. On the other hand, statistical low-dimension feature sets including co-occurrence-based ones could be useful in dealing with tumor detection avoiding possible complexity. In this paper, statistical approaches for feature extraction and reduction are analyzed for MRI brain tumor classification, and the evaluation of the results is presented on one of the publicly available brain tumor detection database commonly used for machine learning tasks. Bayes and kNN classifiers are applied for the analysis, as well as four distance metrics, and two methods for feature reduction. The results seem promising in developing a simple and less hardware-demanding procedure.
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来源期刊
Serbian Journal of Electrical Engineering
Serbian Journal of Electrical Engineering Energy-Energy Engineering and Power Technology
CiteScore
1.30
自引率
0.00%
发文量
16
审稿时长
25 weeks
期刊介绍: The main aims of the Journal are to publish peer review papers giving results of the fundamental and applied research in the field of electrical engineering. The Journal covers a wide scope of problems in the following scientific fields: Applied and Theoretical Electromagnetics, Instrumentation and Measurement, Power Engineering, Power Systems, Electrical Machines, Electrical Drives, Electronics, Telecommunications, Computer Engineering, Automatic Control and Systems, Mechatronics, Electrical Materials, Information Technologies, Engineering Mathematics, etc.
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