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Using Multi-Scale Genetic Neuroimaging and Clinical Data for Predicting Alzheimer’s Disease and Reconstruction of Relevant Biological Mechanisms

机译:使用多尺度遗传神经影像和临床数据预测阿尔茨海默氏病和相关生物学机制的重建

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摘要

Alzheimer’s Disease (AD) is among the most frequent neuro-degenerative diseases. Early diagnosis is essential for successful disease management and chance to attenuate symptoms by disease modifying drugs. In the past, a number of cerebrospinal fluid (CSF), plasma and neuro-imaging based biomarkers have been proposed. Still, in current clinical practice, AD diagnosis cannot be made until the patient shows clear signs of cognitive decline, which can partially be attributed to the multi-factorial nature of AD. In this work, we integrated genotype information, neuro-imaging as well as clinical data (including neuro-psychological measures) from ~900 normal and mild cognitively impaired (MCI) individuals and developed a highly accurate machine learning model to predict the time until AD is diagnosed. We performed an in-depth investigation of the relevant baseline characteristics that contributed to the AD risk prediction. More specifically, we used Bayesian Networks to uncover the interplay across biological scales between neuro-psychological assessment scores, single genetic variants, pathways and neuro-imaging related features. Together with information extracted from the literature, this allowed us to partially reconstruct biological mechanisms that could play a role in the conversion of normal/MCI into AD pathology. This in turn may open the door to novel therapeutic options in the future.
机译:阿尔茨海默氏病(AD)是最常见的神经退行性疾病之一。早期诊断对于成功地进行疾病管理和通过改变疾病的药物减轻症状的机会至关重要。过去,已经提出了许多基于脑脊液(CSF),血浆和神经影像的生物标记物。尽管如此,在当前的临床实践中,直到患者显示出明显的认知能力下降迹象,才可以做出AD诊断,这可以部分归因于AD的多因素性质。在这项工作中,我们整合了约900名正常和轻度认知障碍(MCI)个体的基因型信息,神经影像以及临床数据(包括神经心理测量),并开发了一种高度精确的机器学习模型来预测直到AD的时间被诊断。我们对有助于AD风险预测的相关基线特征进行了深入研究。更具体地说,我们使用贝叶斯网络揭示了神经心理学评估得分,单一遗传变异,途径和神经影像相关特征之间跨生物学尺度的相互作用。连同从文献中提取的信息,这使我们能够部分重构可能在正常/ MCI向AD病理学转化中起作用的生物学机制。反过来,这可能会在将来为新型治疗选择打开大门。

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