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Identification of Optimum Panel of Blood-based Biomarkers for Alzheimer’s Disease Diagnosis Using Machine Learning

机译:使用机器学习识别阿尔茨海默病诊断的血液基生物标志物的最优介绍

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With the increasing number of people living with Alzheimer's disease (AD), there is a need for low-cost and easy to use methods to detect AD early to facilitate access to appropriate care pathways. Neuroimaging biomarkers (such as those based on PET and MRI) and biochemical biomarkers (such as those based on CSF) are recommended by international guidelines to facilitate diagnosis. However, neuroimaging is expensive and may not be widely available and CSF testing is invasive. Blood-based biomarkers offer the potential for the development of a low-cost and more time efficient tool to detect AD to complement CSF and neuroimaging as blood is much easier to obtain. Although no single blood biomarker is yet able to detect AD, combinations of biomarkers (also called panels) have shown good results. However, a large number of biomarkers are often needed to achieve a satisfactory detection performance. In addition, it is difficult to reproduce reported results within and across different study cohorts because of data overfitting and lack of access to the datasets used in the studies. In this study, our focus is to identify an optimum panel (in terms of the least number of blood biomarkers to meet the specified diagnostic performance of 80% sensitivity and specificity) based on a widely accessible data set, and to demonstrate a testing methodology that reinforces reproducibility of results. Realizing a panel with reduced number of markers will have significant impact on the complexity and cost of diagnosis and potential development of cost-effective point of care devices.
机译:随着患有阿尔茨海默病(广告)的人数越来越多,需要低成本且易于使用的方法来检测早期的广告,以便获得适当的护理途径。通过国际准则建议,通过国际指南建议,通过促进诊断,建立了神经影像生物标志物(如基于PET和MRI的那些)和生物化学生物标志物(例如基于CSF的生物化学生物标志物(例如基于CSF)。然而,神经影像成本昂贵,可能不广泛可用,并且CSF测试是侵入性的。基于血液的生物标志物提供了开发低成本和更多时间效率的潜力,以检测AD以补充CSF和神经影像,因为血液更容易获得。虽然没有单血生物标志物尚未检测到广告,但生物标志物的组合(也称为面板)显示出良好的结果。然而,通常需要大量的生物标志物来实现令人满意的检测性能。此外,由于数据过度装备,并且缺乏对研究中使用的数据集的访问,难以在不同的研究队列内部再现报告的结果。在本研究中,我们的重点是基于广泛访问的数据集,识别最佳面板(根据血液生物标志物的最少数量的血液生物标志物,以满足80%的灵敏度和特异性的规定诊断性能),并展示测试方法强化结果的再现性。实现具有减少数量的标记的面板对诊断的复杂性和成本产生重大影响以及经济高效的护理设备的潜在发展。

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