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Machine learning-based method for personalized and cost-effective detection of Alzheimer's Disease

机译:基于机器学习的个性化和具有成本效益的阿尔茨海默氏病检测方法

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摘要

Diagnosis of Alzheimer's disease (AD) is often difficult, especially early in the disease process at the stage of mild cognitive impairment (MCI). Yet, it is at this stage that treatment is most likely to be effective, so there would be great advantages in improving the diagnosis process. We describe and test a machine learning approach for personalized and cost-effective diagnosis of AD. It uses locally weighted learning to tailor a classifier model to each patient and computes the sequence of biomarkers most informative or cost-effective to diagnose patients. Using ADNI data, we classified AD versus controls and MCI patients who progressed to AD within a year, against those who did not. The approach performed similarly to considering all data at once, while significantly reducing the number (and cost) of the biomarkers needed to achieve a confident diagnosis for each patient. Thus, it may contribute to a personalized and effective detection of AD, and may prove useful in clinical settings.
机译:阿尔茨海默氏病(AD)的诊断通常很困难,尤其是在轻度认知障碍(MCI)阶段的疾病早期。然而,正是在这一阶段,治疗最有可能是有效的,因此改善诊断过程将具有巨大的优势。我们描述和测试用于个性化和成本效益的AD诊断的机器学习方法。它使用局部加权学习为每个患者量身定制分类器模型,并计算出最有信息或最具成本效益的诊断患者的生物标志物序列。使用ADNI数据,我们将AD,对照和MCI患者在一年内进展为AD,而未归为AD的患者进行了分类。该方法的执行类似于一次考虑所有数据,同时显着减少了对每个患者进行可靠诊断所需的生物标志物的数量(和成本)。因此,它可能有助于个性化和有效地检测AD,并可能在临床环境中证明是有用的。

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