Classifying malignant brain tumours from 1H-MRS data using Breadth Ensemble Learning

A. Vilamala, L. B. Muñoz, A. Vellido
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引用次数: 3

Abstract

In neuro oncology, the accurate diagnostic identification and characterization of tumours is paramount for determining their prognosis and the adequate course of treatment. This is usually a difficult problem per se, due to the localization of the tumour in an extremely sensitive and difficult to reach organ such as the brain. The clinical analysis of brain tumours often requires the use of non-invasive measurement methods, the most common of which resort to imaging techniques. The discrimination between high-grade malignant tumours of different origin but similar characteristics, such as glioblastomas and metastases, is a particularly difficult problem in this context. This is because imaging techniques are often not sensitive enough and their spectroscopic signal is overall too similar. In spite of this, machine learning techniques, coupled with robust feature selection procedures, have recently made substantial inroads into the problem. In this study, magnetic resonance spectroscopy data from an international, multi-centre database were used to discriminate between these two types of malignant brain tumours using ensemble learning techniques, with a focus on the definition of a feature selection method specifically designed for ensembles. This method, Breadth Ensemble Learning, takes advantage of the fact that many of the frequencies of the available spectra convey no relevant information for the discrimination of the tumours. The potential of the proposed method is supported by some of the best results reported to date for this problem.
利用广度集成学习从1H-MRS数据中分类恶性脑肿瘤
在神经肿瘤学中,肿瘤的准确诊断和特征对于确定其预后和适当的治疗过程至关重要。这通常是一个困难的问题本身,由于肿瘤定位在一个极其敏感和难以到达的器官,如大脑。脑肿瘤的临床分析通常需要使用非侵入性测量方法,其中最常见的是求助于成像技术。在这种情况下,鉴别来源不同但特征相似的高级别恶性肿瘤,如胶质母细胞瘤和转移瘤,是一个特别困难的问题。这是因为成像技术往往不够灵敏,它们的光谱信号总体上太相似了。尽管如此,机器学习技术,加上强大的特征选择程序,最近在这个问题上取得了实质性的进展。在这项研究中,来自国际多中心数据库的磁共振波谱数据被用于使用集成学习技术区分这两种类型的恶性脑肿瘤,重点是定义专门为集成设计的特征选择方法。这种方法,广度集成学习,利用了这样一个事实,即许多可用光谱的频率没有传达肿瘤的识别相关信息。迄今为止针对该问题报道的一些最佳结果支持了所提出方法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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