Convolutional neural network to identify symptomatic Alzheimer's disease using multimodal retinal imaging.
Abstract
BACKGROUND/AIMS:To develop a convolutional neural network (CNN) to detect symptomatic
Alzheimer's disease (AD) using a combination of multimodal retinal images and patient
data. METHODS:Colour maps of ganglion cell-inner plexiform layer (GC-IPL) thickness,
superficial capillary plexus (SCP) optical coherence tomography angiography (OCTA)
images, and ultra-widefield (UWF) colour and fundus autofluorescence (FAF) scanning
laser ophthalmoscopy images were captured in individuals with AD or healthy cognition.
A CNN to predict AD diagnosis was developed using multimodal retinal images, OCT and
OCTA quantitative data, and patient data. RESULTS:284 eyes of 159 subjects (222 eyes
from 123 cognitively healthy subjects and 62 eyes from 36 subjects with AD) were used
to develop the model. Area under the receiving operating characteristic curve (AUC)
values for predicted probability of AD for the independent test set varied by input
used: UWF colour AUC 0.450 (95% CI 0.282, 0.592), OCTA SCP 0.582 (95% CI 0.440, 0.724),
UWF FAF 0.618 (95% CI 0.462, 0.773), GC-IPL maps 0.809 (95% CI 0.700, 0.919). A model
incorporating all images, quantitative data and patient data (AUC 0.836 (CI 0.729,
0.943)) performed similarly to models only incorporating all images (AUC 0.829 (95%
CI 0.719, 0.939)). GC-IPL maps, quantitative data and patient data AUC 0.841 (95%
CI 0.739, 0.943). CONCLUSION:Our CNN used multimodal retinal images to successfully
predict diagnosis of symptomatic AD in an independent test set. GC-IPL maps were the
most useful single inputs for prediction. Models including only images performed similarly
to models also including quantitative data and patient data.
Type
Journal articlePermalink
https://hdl.handle.net/10161/21874Published Version (Please cite this version)
10.1136/bjophthalmol-2020-317659Publication Info
Wisely, C Ellis; Wang, Dong; Henao, Ricardo; Grewal, Dilraj S; Thompson, Atalie C;
Robbins, Cason B; ... Fekrat, Sharon (2020). Convolutional neural network to identify symptomatic Alzheimer's disease using multimodal
retinal imaging. The British journal of ophthalmology. 10.1136/bjophthalmol-2020-317659. Retrieved from https://hdl.handle.net/10161/21874.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
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Show full item recordScholars@Duke
James Robert Burke
Professor of Neurology
My research focuses on the characterization of cognitive change with age. I am specifically
interested in delineating the change between normal and pathologic changes associated
with aging and developing therapies to delay decline. My area of expertise is neurodegenerative
diseases and dementia with an emphasis on Alzheimer's disease. Keywords: Alzheimer's
disease.
Lawrence Carin
Professor of Electrical and Computer Engineering
Lawrence Carin earned the BS, MS, and PhD degrees in electrical engineering at the
University of Maryland, College Park, in 1985, 1986, and 1989, respectively. In 1989
he joined the Electrical Engineering Department at Polytechnic University (Brooklyn)
as an Assistant Professor, and became an Associate Professor there in 1994. In September
1995 he joined the Electrical and Computer Engineering (ECE) Department at Duke University,
where he is now a Professor. He was ECE Department Chair from 2011
Sharon Fekrat
Professor of Ophthalmology
Sharon Fekrat, MD, FACS is a board-certified, fellowship-trained vitreoretinal surgeon
and has been part of the Duke faculty for 25 years since completing her training at
the Wilmer Ophthalmological Institute of Johns Hopkins Medical Institutions where
she was the first woman Assistant Chief of Service on-call for ocular trauma and retinal
conditions continuously for 365 days. Dr. Fekrat has co-authored over 200 publications
in peer-reviewed medical journals and over 50 textbook chapters
Dilraj Singh Grewal
Associate Professor of Ophthalmology
Vitreoretinal and Uveitis Specialist
Dilraj Grewal, MD specializes in the medical and surgical management of patients with
complex Vitreoretinal pathology and Uveitis. He joined the Duke Eye Center in December
2016 following completion of his Vitreoretinal Surgery fellowship at Duke and Uveitis
fellowship training at Moorfields Eye Hospital in London. Dr. Grewal is excited about
treating patients with several of the new diagnostic and therapeutic modalities available
as well as s
Ricardo Henao
Associate Professor in Biostatistics & Bioinformatics
Andrew John Liu
Assistant Professor of Neurology
While striving to provide excellent clinical care, I also have several research interests:1.
Investigate a neurodevelopmental disorder, Tuberous Sclerosis Complex, which has the
potential to provide insight into the pathophysiological mechanism of a neurodegenerative
disorders, Alzheimer's Disease. 2. In collaboration with Dr. Cathrine Hoyo, we are
investigating an epigenetic mechanism to explain the racial disparities in the development
of Alzheimer's disease b
Stephen Paul Yoon
Clinical Associate in the department of Ophthalmology
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