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Feature-aware Multi-task feature learning for Predicting Cognitive Outcomes in Alzheimer's disease

机译:特征感知的多任务特征学习可预测阿尔茨海默氏病的认知结果

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Machine learning algorithms and multivariate data analysis methods have been widely utilized in the field of Alzheimer's disease (AD) research in recent years. Predicting cognitive performance of subjects from neuroimage measures and identifying relevant imaging biomarkers are important research topics in the study of Alzheimer's disease. Multi-task based feature learning (MTFL) have been widely studied to select a discriminative feature subset from MRI features, and improve the performance by incorporating inherent correlations among multiple clinical cognitive measures. It is known that the brain imaging measures are often correlated with each other, and AD is closely related to the inter-correlation among different brain regions. However, the multi-task based feature learning (MTFL) method neglects the inherent correlation among brain imaging measures. We present a novel regularized multi-task learning approach via a joint sparsity-inducing regularization to effectively incorporate both a relatedness among multiple cognitive score prediction tasks and a useful inherent correlation between brain imaging measures by exploiting correlations among features. It allows the simultaneous selection of a common set of biomarkers for all tasks and the preservation of the inherent structure of imaging measures. The reported experiments on the ADNI dataset show that the proposed method is effective and promising.
机译:近年来,机器学习算法和多元数据分析方法已广泛用于阿尔茨海默氏病(AD)研究领域。从神经影像学方法预测受试者的认知表现并识别相关的影像生物标志物是阿尔茨海默氏病研究中的重要研究课题。基于多任务的特征学习(MTFL)已被广泛研究,以从MRI特征中选择一个可区分的特征子集,并通过将多种临床认知测量方法之间的内在关联性纳入来提高性能。众所周知,大脑成像指标经常相互关联,而AD与不同大脑区域之间的相互关系密切相关。但是,基于多任务的特征学习(MTFL)方法忽略了大脑成像指标之间的内在关联。我们提出了一种新的正则化多任务学习方法,通过联合稀疏性诱导正则化来有效地结合多个认知评分预测任务之间的相关性和通过利用特征之间的相关性在大脑成像测量之间的有用的固有相关性。它允许为所有任务同时选择一组通用的生物标记,并保留成像措施的固有结构。在ADNI数据集上进行的实验报告表明,该方法是有效且有希望的。

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