一种新的基于混合分类器的神经成像挖掘模型

Atif Alvi, Usman Qamar, A. W. Muzaffar, Wasi Haider Butt
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引用次数: 1

摘要

静息状态功能磁共振成像(fMRI)在癫痫的检测和诊断中具有重要的临床意义。使用统计和连通性措施从时间序列数据中提取了各种神经成像标记。强大的数据挖掘规则、基于关联的技术和分类器用于从大数据集中提取信息。数据挖掘在神经影像学中的应用研究很少。提出了一种基于混合分类的集成学习方法,用于神经成像中癫痫检测的挖掘。本文结合多种特征提取和特征选择方法,从多个层面提取判别性统计特征、进化特征和功能连通性特征。然后将特征提交给混合分类系统,该系统利用集成学习方法训练分类器,并根据多数投票选择最佳分类结果。解释了从神经成像系统中提取生物标记物的方法,解释了特征向量的组合及其对分类精度的影响。使用一些生物标记物的分类精度结果非常令人鼓舞。所提出的方法结合了数据集的线性、非线性和概率方面,可以扩展到任何用于临床诊断和预后的神经成像系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Hybrid Classifiers based Model for mining in Neuro-imaging
Resting state functional magnetic resonance imaging (fMRI) has great clinical significance in detection and diagnosis of epilepsy. Various neuro-imaging markers have been extracted from time series data using statistical and connectivity measures. Powerful data mining rules, association based techniques and classifiers are used to extract information from big datasets. The application of data mining in neuro-imaging has been explored rarely. This paper proposes a hybrid classification based ensemble learning method for mining in neuro-imaging to detect epilepsy. The paper combines various feature extraction and feature selection methods to extract discriminative statistical, evolutionary and functional connectivity features at multiple levels. The features are then presented to a hybrid classification system that utilizes ensemble learning methods to train the classifiers and the best classification result is selected based on majority voting. The extraction of bio-markers from the neuro-imaging system has been explained and the combination of feature vectors and their impact on classification accuracy has been explained. The classification accuracy results using some of the biomarkers have been very encouraging. The proposed methodology combines the linear, non-linear and probabilistic aspects of the dataset and can be extended to any neuro-imaging system for clinical diagnosis and prognosis.
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