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Self-weighted Multi-task Learning for Subjective Cognitive Decline Diagnosis

机译:用于主观认知下降诊断的自我加权多任务学习

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Subjective cognitive decline (SCD) is an early stage of mild cognitive impairment (MCI) and may represent the first symptom manifestation of Alzheimer's disease (AD). Early diagnosis of MCI is important because early identification and intervention can delay or even reverse the progression of this disease. This paper proposes an automatic diagnostic framework for SCD and MCI. Specifically, we design a new multi-task learning model to integrate neu-roimaging functional and structural connectivity in a predictive framework. We construct a functional brain network by sparse low-rank brain network estimation methods, and a structural brain network is constructed using fiber bundle tracking. Subsequently, we use multi-task learning methods to select features for integrated functional and structural connections, the importance of each task and the balance between both modalities are automatically learned. By integrating both functional and structural information, the most discriminative features of the disease are obtained for diagnosis. The experiments on the dataset show that our proposed method achieves good performance and is superior to the traditional algorithms. In addition, the proposed method can identify the most discriminative brain regions and connections. These results follow current clinical findings and add new findings for disease detection and future medical analysis.
机译:主观认知下降(SCD)是轻度认知障碍(MCI)的早期阶段,并且可以代表阿尔茨海默病(AD)的第一个症状表现。 MCI的早期诊断很重要,因为早期鉴定和干预可以延迟甚至逆转这种疾病的进展。本文为SCD和MCI提出了一种自动诊断框架。具体地,我们设计了一种新的多任务学习模型,以在预测框架中集成Neu-Roimaging功能和结构连接。我们通过稀疏的低级脑网络估计方法构建功能性大脑网络,并且使用光纤束跟踪构建结构脑网络。随后,我们使用多任务学习方法来选择集成功能和结构连接的功能,每项任务的重要性和两个模式之间的平衡都会自动学习。通过整合功能和结构信息,可以获得疾病的最辨别特征以进行诊断。数据集的实验表明,我们的提出方法实现了良好的性能,优于传统算法。此外,所提出的方法可以识别最辨别性的脑区和连接。这些结果遵循目前的临床发现,并为疾病检测和未来的医学分析添加新发现。

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