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Clustering Ensemble Technique Applied in the Discovery and Diagnosis of Brain Lesions

机译:聚类集成技术在脑损伤的发现和诊断中的应用

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Medical image based computer aided diagnosis is considers to be an important and challenging task, it has extracted more and more research work in recent years. Due to its interdisciplinarity and complexity, there remain many problems not solved. In this paper, a novel diagnosis method named SeCED is proposed, which utilized as the core mechanism of our medical image based computer aided encephalopathy diagnosis system. The SeCED is built on a two-level architecture, where the kM-DBSCAN algorithm is employ as the base clusterer in each level and the k-Medoids algorithm is utilized to select a subset of clusterer for ensemble. Benefit from its selective clusterer ensemble technique, SeCED hold an improved generalization ability and achieved a satisfactory result of identify brain lesions in the real data experiment, and all the detailed experimental data will be presented in the end of this paper
机译:基于医学图像的计算机辅助诊断被认为是一项重要且具有挑战性的任务,近年来它吸引了越来越多的研究工作。由于其跨学科性和复杂性,仍然存在许多未解决的问题。本文提出了一种名为SeCED的新型诊断方法,该方法被用作我们基于医学图像的计算机辅助脑病诊断系统的核心机制。 SeCED建立在两级体系结构上,其中kM-DBSCAN算法被用作每一级的基本聚类器,而k-Medoids算法则被用于选择用于集成的聚类器的子集。得益于其选择性聚类集成技术,SeCED在实际数据实验中具有增强的泛化能力,并在识别脑部病变方面取得了令人满意的结果,所有详细的实验数据将在本文末尾提供。

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