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APPLYING SPARSE CODING TO SURFACE MULTIVARIATE TENSOR-BASED MORPHOMETRY TO PREDICT FUTURE COGNITIVE DECLINE

机译:将稀疏编码应用于基于多张量张量的Morphhometry预测未来的认知下降

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摘要

Alzheimer’s disease (AD) is a progressive brain disease. Accurate diagnosis of AD and its prodromal stage, mild cognitive impairment, is crucial for clinical trial design. There is also growing interests in identifying brain imaging biomarkers that help evaluate AD risk presymptomatically. Here, we applied a recently developed multivariate tensor-based morphometry (mTBM) method to extract features from hippocampal surfaces, derived from anatomical brain MRI. For such surface-based features, the feature dimension is usually much larger than the number of subjects. We used dictionary learning and sparse coding to effectively reduce the feature dimensions. With the new features, an Adaboost classifier was employed for binary group classification. In tests on publicly available data from the Alzheimers Disease Neuroimaging Initiative, the new framework outperformed several standard imaging measures in classifying different stages of AD. The new approach combines the efficiency of sparse coding with the sensitivity of surface mTBM, and boosts classification performance.
机译:阿尔茨海默氏病(AD)是一种进行性脑部疾病。准确诊断AD及其前驱阶段,轻度认知障碍,对临床试验设计至关重要。识别有助于影像学前评估AD风险的脑成像生物标记物的兴趣也越来越高。在这里,我们应用了最近开发的基于张量的多元形态学(mTBM)方法,从解剖脑MRI提取海马表面特征。对于此类基于表面的特征,特征尺寸通常比对象数量大得多。我们使用字典学习和稀疏编码来有效减少特征尺寸。利用新功能,Adaboost分类器被用于二进制组分类。在对阿尔茨海默氏病神经影像学计划的公开可用数据进行的测试中,在对AD的不同阶段进行分类时,新框架优于几种标准的影像学测量方法。新方法将稀疏编码的效率与表面mTBM的灵敏度相结合,并提高了分类性能。

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