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Improving Single-Modal Neuroimaging Based Diagnosis of Brain Disorders via Boosted Privileged Information Learning Framework

机译:通过增强的特权信息学习框架改善基于单模神经影像学的脑部疾病诊断

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In clinical practice, it is more prevalent to use only a single-modal neuroimaging for diagnosis of brain disorders, such as structural magnetic resonance imaging. A neuroimaging dataset generally suffers from the small-sample-size problem, which makes it difficult to train a robust and effective classifier. The learning using privileged information (LUPI) is a newly proposed paradigm, in which the privileged information is available only at the training phase to provide additional information about training samples, but unavailable in the testing phase. LUPI can effectively help construct a better predictive rule to promote classification performance. In this paper, we propose to apply LUPI for the single-modal neuroimaging based diagnosis of brain diseases along with multi-modal training data. Moreover, a boosted LUPI framework is developed, which performs LUPI-based random subspace learning and then ensembles all the LUPI classifiers with the multiple kernel boosting (MKB) algorithm. The experimental results on two neuroimaging datasets show that LUPI-based algorithms are superior to the traditional classifier models for single-modal neuroimaging based diagnosis of brain disorders, and the proposed boosted LUPI framework achieves best performance.
机译:在临床实践中,更普遍的是仅使用单模态神经成像来诊断脑部疾病,例如结构磁共振成像。神经影像数据集通常会遇到小样本大小的问题,这使得训练稳健而有效的分类器变得困难。使用特权信息(LUPI)的学习是一种新提出的范例,其中特权信息仅在训练阶段可用,以提供有关训练样本的附加信息,但在测试阶段不可用。 LUPI可以有效地帮助构建更好的预测规则以提高分类性能。在本文中,我们建议将LUPI与多模式训练数据一起用于基于单模式神经影像的脑疾病诊断。此外,开发了增强的LUPI框架,该框架执行基于LUPI的随机子空间学习,然后将所有LUPI分类器与多核增强(MKB)算法融合在一起。在两个神经影像数据集上的实验结果表明,基于LUPI的算法优于传统的基于分类器模型的基于单模态神经影像的脑部疾病诊断,并且提出的增强LUPI框架实现了最佳性能。

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