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Personalized Diagnosis for Alzheimer's Disease

机译:Alzheimer疾病的个性化诊断

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Current learning-based methods for the diagnosis of Alzheimer's Disease (AD) rely on training a general classifier aiming to recognize abnormal structural alternations from homogenously distributed dataset deriving from a large population. However, due to diverse disease pathology, the real imaging data in routine clinic practices is highly complex and heterogeneous. Hence, prototype methods commonly performing well in the laboratory cannot achieve expected outcome when applied under the real clinic setting. To address this issue, herein we propose a novel personalized model for AD diagnosis. We customize a subject-specific AD classifier for the new testing data by iteratively reweighting the training data to reveal the latent testing data distribution and refining the classifier based on the weighted training data. Furthermore, to improve estimation of diagnosis result and clinical scores at the individual level, we extend our personalized AD diagnosis model to ajoint classification and regression scenario. Our model shows improved performance on classification and regression accuracy when applied on Magnetic Resonance Imaging (MRI) selected from Alzheimer's Disease Neuroimaging Initiative (ADNI) database. Our work pinpoints the clinical potential of personalized diagnosis framework in AD.
机译:基于目前的基于学习的Alzheimer疾病(AD)的方法依赖于培训一般分类器,旨在识别来自大群的均质分布数据集的异常结构交替。然而,由于疾病病理多样,常规诊所实践中的实际成像数据具有高度复杂和异质的。因此,在实验室中通常在实验室中表现良好的原型方法在实际诊所环境下施加时无法达到预期结果。为了解决这个问题,在此提出了一种用于广告诊断的新颖性化模型。我们通过迭代地重新重新重新重新重新重新重新重新重新重新重复培训数据来自定义特定于课程的广告分类器,以揭示基于加权训练数据的潜在测试数据分布并精制分类器。此外,为了改善个人级别的诊断结果和临床评分的估算,我们将个性化的广告诊断模型扩展到Ajoint分类和回归场景。当施加在选自阿尔茨海默病神经影像倡议(ADNI)数据库的磁共振成像(MRI)上时,我们的模型显示了分类和回归精度的性能。我们的工作针对广告中个性化诊断框架的临床潜力。

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