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Low Rank Self-calibrated Brain Network Estimation and Autoweighted Centralized Multi-Task Learning for Early Mild Cognitive Impairment Diagnosis

机译:低等级自校正脑网络估计和自动加权集中式多任务学习对早期轻度认知障碍的诊断

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Detection of mild cognitive impairment (MCI) is important, and appropriate interventions can be taken to delay or prevent its progression to Alzheimer's disease (AD). The construction of brain networks based on brain image data to depict the interaction of brain functions or structures at the level of brain connections has been widely used to identify individuals with MCI/AD from the normal control (NC). Exploring the structural and functional connections and interactions between brain regions is beneficial to detect MCI. For this reason, we propose a new model for automatic MCI diagnosis based on this information. Firstly, a new functional brain network estimation method is proposed. Self-calibration is introduced using quality indicators, and functional brain network estimation is performed at the same time. Then we integrate the functional and structural connected neuroimaging patterns into our multitask learning model to select informative feature. By identifying synergies and differences between different tasks, the most discriminative features are determined. Finally, the most relevant features are sent to the support vector machine classifier for diagnosis and identification of MCI. The experimental results based on the public Alzheimer’s disease neuroimaging (ADNI) show that our method can effectively diagnose different stages of MCI and assist the physician to improve the MCI diagnostic accuracy. At the same time, compared with the existing classification methods, the proposed method achieves relatively high classification accuracy. In addition, it can identify the most discriminative brain regions. These findings suggest that our approach not only improves classification performance, but also successfully identifies important biomarkers associated with disease.
机译:轻度认知障碍(MCI)的检测很重要,可以采取适当的干预措施以延迟或预防其发展为阿尔茨海默氏病(AD)。基于大脑图像数据描述大脑功能水平上的大脑功能或结构相互作用的大脑网络的构建已广泛用于从正常对照(NC)识别具有MCI / AD的个体。探索大脑区域之间的结构和功能连接以及相互作用对检测MCI是有益的。因此,我们基于此信息提出了一种用于MCI自动诊断的新模型。首先,提出了一种新的功能性脑网络估计方法。使用质量指标引入自校准,并同时执行功能性大脑网络估计。然后,我们将功能性和结构性连接的神经影像学模式整合到我们的多任务学习模型中,以选择信息功能。通过识别不同任务之间的协同作用和差异,可以确定最具区别性的功能。最后,将最相关的特征发送到支持向量机分类器,以进行MCI的诊断和识别。基于公开的阿尔茨海默氏病神经影像学(ADNI)的实验结果表明,我们的方法可以有效诊断MCI的不同阶段,并帮助医生提高MCI的诊断准确性。同时,与现有的分类方法相比,该方法具有较高的分类精度。此外,它可以识别最有区别的大脑区域。这些发现表明,我们的方法不仅可以提高分类性能,而且可以成功地识别与疾病相关的重要生物标志物。

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