Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis.

Journal of psychiatry and brain science Pub Date : 2019-01-01 Epub Date: 2019-10-30 DOI:10.20900/jpbs.20190017
Lei Wang, Ashley Heywood, Jane Stocks, Jinhyeong Bae, Da Ma, Karteek Popuri, Arthur W Toga, Kejal Kantarci, Laurent Younes, Ian R Mackenzie, Fengqing Zhang, Mirza Faisal Beg, Howard Rosen
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Abstract

We report on the ongoing project "PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis" describing completed and future work supported by this grant. This project is a multi-site, multi-study collaboration effort with research spanning seven sites across the US and Canada. The overall goal of the project is to study neurodegeneration within Alzheimer's Disease, Frontotemporal Dementia, and related neurodegenerative disorders, using a variety of brain imaging and computational techniques to develop methods for the early and accurate prediction of disease and its course. The overarching goal of the project is to develop the earliest and most accurate biomarker that can differentiate clinical diagnoses to inform clinical trials and patient care. In its third year, this project has already completed several projects to achieve this goal, focusing on (1) structural MRI (2) machine learning and (3) FDG-PET and multimodal imaging. Studies utilizing structural MRI have identified key features of underlying pathology by studying hippocampal deformation that is unique to clinical diagnosis and also post-mortem confirmed neuropathology. Several machine learning experiments have shown high classification accuracy in the prediction of disease based on Convolutional Neural Networks utilizing MRI images as input. In addition, we have also achieved high accuracy in predicting conversion to DAT up to five years in the future. Further, we evaluated multimodal models that combine structural and FDG-PET imaging, in order to compare the predictive power of multimodal to unimodal models. Studies utilizing FDG-PET have shown significant predictive ability in the prediction and progression of disease.

PREDICT-ADFTD的资助报告:AD/FTD的多模式成像预测和鉴别诊断
我们报告了正在进行的项目“PREDICT-ADFTD:AD/FTD的多模式成像预测和鉴别诊断”,描述了该赠款支持的已完成和未来的工作。该项目是一个多站点、多研究的合作项目,研究范围遍及美国和加拿大的七个站点。该项目的总体目标是研究阿尔茨海默病、额颞叶痴呆和相关神经退行性疾病中的神经退行性病变,使用各种大脑成像和计算技术来开发早期准确预测疾病及其病程的方法。该项目的首要目标是开发最早、最准确的生物标志物,以区分临床诊断,为临床试验和患者护理提供信息。在第三年,该项目已经完成了几个项目来实现这一目标,重点是(1)结构MRI(2)机器学习和(3)FDG-PET和多模式成像。利用结构MRI的研究通过研究临床诊断和尸检证实的神经病理学所特有的海马变形,确定了潜在病理学的关键特征。一些机器学习实验已经表明,在利用MRI图像作为输入的卷积神经网络的疾病预测中具有高分类精度。此外,我们在预测未来五年内转化为DAT方面也实现了高精度。此外,我们评估了结合结构和FDG-PET成像的多模式模型,以比较多模式和单峰模型的预测能力。利用FDG-PET的研究已经显示出在疾病的预测和进展方面的显著预测能力。
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