应用精神分裂症数据检验多模态整合假说

M. C. Axelsen, Nikolaj Bak, Lars Kai Hansen
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引用次数: 2

摘要

多模态数据集越来越普遍。通过整合这些数据集,可以将来自每种模式的信息组合起来,以提高分类问题的性能。模式的融合/整合可以在几个层面上完成。最合适的融合水平与模态之间的条件依赖有关。不同程度的模态间依赖可以出现在模态之间。因此,需要一种方法来评估模态的条件依赖结构及其与每个模态中的模态内依赖关系。本文的目的是提出一种评估这些模态间依赖性的方法。该方法基于分析数据集的两种排列,每种排列都探索模式之间和模式内部的不同依赖关系。在Kaggle MLSP 2014精神分裂症分类挑战数据集上对该方法进行了测试,该数据集由功能磁共振成像(MRI)和结构磁共振成像(MRI)特征组成。结果支持使用排列策略来测试多模态分类问题中模态之间的条件依赖关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing Multimodal Integration Hypotheses with Application to Schizophrenia Data
Multimodal data sets are getting more and more common. Integrating these data sets, the information from each modality can be combined to improve performance in classification problems. Fusion/integration of modalities can be done at several levels. The most appropriate fusion level is related to the conditional dependency between modalities. A varying degree of inter-modality dependency can be present across the modalities. A method for assessing the conditional dependency structure of the modalities and their relationship to intra-modality dependencies in each modality is therefore needed. The aim of the present paper is to propose a method for assessing these inter-modality dependencies. The approach is based on two permutations of an analyzed data set, each exploring different dependencies between and within modalities. The method was tested on the Kaggle MLSP 2014 Schizophrenia Classification Challenge data set which is composed of features from functional magnetic resonance imaging (MRI) and structural MRI. The results support the use of a permutation strategy for testing conditional dependencies between modalities in a multimodal classification problem.
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