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Novel Iterative Attention Focusing Strategy for Joint Pathology Localization and Prediction of MCI Progression

机译:关节病理学定位和MCI进展预测的新型迭代注意力集中策略

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Mild Cognitive Impairment (MCI) is the prodromal stage of Alzheimer's disease (AD), with a high incident rate converting to AD. Hence, it is critical to identify MCI patients who will convert to AD patients for early and effective treatment. Recently, many machine learning or deep learning based methods have been proposed to first localize the pathology-related brain regions and then extract respective features for MCI progression diagnosis. However, the intrinsic relationship between pathological region localization and respective feature extraction was usually neglected. To address this issue, in this paper, we proposed a novel iterative attention focusing strategy for joint pathological region localization and identification of progressive MCI (pMCI) from stable MCI (sMCI). Moreover, by connecting diagnosis network and attention map generator, the pathological regions can be iteratively localized, and the respective diagnosis performance is in turn improved. Experiments on 393 training subjects from the ADNI-1 dataset and other 277 testing subjects from the ADNI-2 dataset show that our method can achieve 81.59% accuracy for pMCI vs. sMCI diagnosis. Our results outperform those with the state-of-the-art methods, while additionally providing a focused attention map on specific pathological locations related to MCI progression, i.e., left temporal lobe, entorhinal and hippocampus. This allows for more insights and better understanding of the progression of MCI to AD.
机译:轻度认知障碍(MCI)是阿尔茨海默氏病(AD)的前驱阶段,高发病率转化为AD。因此,至关重要的是要确定将要转化为AD患者以进行早期有效治疗的MCI患者。最近,已经提出了许多基于机器学习或深度学习的方法来首先定位与病理相关的大脑区域,然后提取相应的特征以进行MCI进展诊断。但是,通常忽略了病理区域定位与各个特征提取之间的内在联系。为了解决这个问题,在本文中,我们提出了一种新的迭代注意力集中策略,用于联合病理区域定位和从稳定MCI(sMCI)识别进行性MCI(pMCI)。此外,通过连接诊断网络和注意力图生成器,可以迭代定位病理区域,进而提高了各自的诊断性能。对来自ADNI-1数据集的393个训练对象和来自ADNI-2数据集的其他277个测试对象的实验表明,我们的方法在pMCI与sMCI诊断方面的准确率达到81.59%。我们的结果优于使用最新方法的结果,同时还提供了与MCI进展相关的特定病理位置(即左颞叶,内嗅和海马体)的集中注意力图。这可以为MCI向AD的进展提供更多的见解和更好的理解。

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