Cargando…

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

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 Canad...

Descripción completa

Detalles Bibliográficos
Autores principales: Wang, Lei, Heywood, Ashley, Stocks, Jane, Bae, Jinhyeong, Ma, Da, Popuri, Karteek, Toga, Arthur W., Kantarci, Kejal, Younes, Laurent, Mackenzie, Ian R., Zhang, Fengqing, Beg, Mirza Faisal, Rosen, Howard
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6868780/
https://www.ncbi.nlm.nih.gov/pubmed/31754634
http://dx.doi.org/10.20900/jpbs.20190017
_version_ 1783472341966127104
author Wang, Lei
Heywood, Ashley
Stocks, Jane
Bae, Jinhyeong
Ma, Da
Popuri, Karteek
Toga, Arthur W.
Kantarci, Kejal
Younes, Laurent
Mackenzie, Ian R.
Zhang, Fengqing
Beg, Mirza Faisal
Rosen, Howard
author_facet Wang, Lei
Heywood, Ashley
Stocks, Jane
Bae, Jinhyeong
Ma, Da
Popuri, Karteek
Toga, Arthur W.
Kantarci, Kejal
Younes, Laurent
Mackenzie, Ian R.
Zhang, Fengqing
Beg, Mirza Faisal
Rosen, Howard
author_sort Wang, Lei
collection PubMed
description 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.
format Online
Article
Text
id pubmed-6868780
institution National Center for Biotechnology Information
language English
publishDate 2019
record_format MEDLINE/PubMed
spelling pubmed-68687802019-11-21 Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis Wang, Lei Heywood, Ashley Stocks, Jane Bae, Jinhyeong Ma, Da Popuri, Karteek Toga, Arthur W. Kantarci, Kejal Younes, Laurent Mackenzie, Ian R. Zhang, Fengqing Beg, Mirza Faisal Rosen, Howard J Psychiatr Brain Sci Article 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. 2019-10-30 2019 /pmc/articles/PMC6868780/ /pubmed/31754634 http://dx.doi.org/10.20900/jpbs.20190017 Text en http://creativecommons.org/licenses/by/4.0 Licensee Hapres, London, United Kingdom. This is an open access article distributed under the terms and conditions of Creative Commons Attribution 4.0 International License.
spellingShingle Article
Wang, Lei
Heywood, Ashley
Stocks, Jane
Bae, Jinhyeong
Ma, Da
Popuri, Karteek
Toga, Arthur W.
Kantarci, Kejal
Younes, Laurent
Mackenzie, Ian R.
Zhang, Fengqing
Beg, Mirza Faisal
Rosen, Howard
Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis
title Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis
title_full Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis
title_fullStr Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis
title_full_unstemmed Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis
title_short Grant Report on PREDICT-ADFTD: Multimodal Imaging Prediction of AD/FTD and Differential Diagnosis
title_sort grant report on predict-adftd: multimodal imaging prediction of ad/ftd and differential diagnosis
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6868780/
https://www.ncbi.nlm.nih.gov/pubmed/31754634
http://dx.doi.org/10.20900/jpbs.20190017
work_keys_str_mv AT wanglei grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT heywoodashley grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT stocksjane grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT baejinhyeong grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT mada grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT popurikarteek grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT togaarthurw grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT kantarcikejal grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT youneslaurent grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT mackenzieianr grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT zhangfengqing grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT begmirzafaisal grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT rosenhoward grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis
AT grantreportonpredictadftdmultimodalimagingpredictionofadftdanddifferentialdiagnosis