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Use of multimodality imaging and artificial intelligence for diagnosis and prognosis of early stages of Alzheimer's disease

机译:多层成像和人工智能用于阿尔茨海默病早期诊断和预后

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摘要

Alzheimer's disease (AD) is a major neurodegenerative disease and the most common cause of dementia. Currently, no treatment exists to slow down or stop the progression of AD. There is converging belief that disease-modifying treatments should focus on early stages of the disease, that is, the mild cognitive impairment (MCI) and preclinical stages. Making a diagnosis of AD and offering a prognosis (likelihood of converting to AD) at these early stages are challenging tasks but possible with the help of multimodality imaging, such as magnetic resonance imaging (MRI), fluorodeoxyglucose (FDG)-positron emission topography (PET), amyloid-PET, and recently introduced tau-PET, which provides different but complementary information. This article is a focused review of existing research in the recent decade that used statistical machine learning and artificial intelligence methods to perform quantitative analysis of multimodality image data for diagnosis and prognosis of AD at the MCI or preclinical stages. We review the existing work in 3 subareas: diagnosis, prognosis, and methods for handling modality-wise missing data—a commonly encountered problem when using multimodality imaging for prediction or classification. Factors contributing to missing data include lack of imaging equipment, cost, difficulty of obtaining patient consent, and patient drop-off (in longitudinal studies). Finally, we summarize our major findings and provide some recommendations for potential future research directions.
机译:阿尔茨海默病(AD)是一种主要的神经退行性疾病和痴呆症最常见的原因。目前,没有治疗才能减缓或停止广告的进展。会融合疾病改性治疗应该关注疾病的早期阶段,即轻度认知障碍(MCI)和临床前阶段。在这些早期阶段进行广告和提供预后(转换为AD的可能性)的诊断是具有挑战性的任务,而是可能在多层阶段成像的帮助下,例如磁共振成像(MRI),氟脱氧葡萄糖(FDG) - 复制品发射形貌(宠物),淀粉样素宠物,最近推出了Tau-Pet,提供了不同但互补的信息。本文是最近十年来对现有研究的一项重点审查,用于使用统计机器学习和人工智能方法来对MCI或临床前阶段进行诊断和预后的多模图像数据进行定量分析。我们在3个子草图中查看现有的工作:诊断,预后和处理模型明智的数据的方法 - 在使用多模态成像以进行预测或分类时通常遇到的问题。有助于缺失数据的因素包括缺乏成像设备,成本,获得患者同意的难度,以及患者下降(在纵向研究中)。最后,我们总结了我们的主要发现,并为潜在的未来研究方向提供了一些建议。

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