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A similarity-based approach to leverage multi-cohort medical data on the diagnosis and prognosis of Alzheimer's disease

机译:基于相似度的方法来利用多队列医学数据来诊断和预测阿尔茨海默氏病

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Motivation Heterogeneous diseases such as Alzheimer's disease (AD) manifest a variety of phenotypes among populations. Early diagnosis and effective treatment offer cost benefits. Many studies on biochemical and imaging markers have shown potential promise in improving diagnosis, yet establishing quantitative diagnostic criteria for ancillary tests remains challenging. Results We have developed a similarity-based approach that matches individuals to subjects with similar conditions. We modeled the disease with a Gaussian process, and tested the method in the Alzheimer's Disease Big Data DREAM Challenge. Ranked the highest among submitted methods, our diagnostic model predicted cognitive impairment scores in an independent dataset test with a correlation score of 0.573. It differentiated AD patients from control subjects with an area under the receiver operating curve of 0.920. Without knowing longitudinal information about subjects, the model predicted patients who are vulnerable to conversion from mild-cognitive impairment to AD through the similarity network. This diagnostic framework can be applied to other diseases with clinical heterogeneity, such as Parkinson's disease.
机译:动机阿尔茨海默氏病(AD)等异质性疾病在人群中表现出多种表型。早期诊断和有效治疗具有成本优势。关于生化和成像标记的许多研究表明,在改善诊断方面有潜在的希望,但是建立辅助测试的定量诊断标准仍然具有挑战性。结果我们开发了一种基于相似度的方法,可以将个体与条件相似的受试者相匹配。我们使用高斯过程对疾病进行了建模,并在阿尔茨海默氏病大数据DREAM挑战赛中测试了该方法。在提交的方法中排名最高,我们的诊断模型在独立的数据集测试中预测了认知障碍得分,相关得分为0.573。它将接受者操作曲线下面积小于0.920的AD患者与对照对象区分开。在不了解有关受试者的纵向信息的情况下,该模型预测了容易通过相似网络从轻度认知障碍转换为AD的患者。该诊断框架可以应用于具有临床异质性的其他疾病,例如帕金森氏病。

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