Cargando…

A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition

PURPOSE: To develop a machine learning tool capable of differentiating eyes of subjects with normal cognition from those with mild cognitive impairment (MCI) using OCT and OCT angiography (OCTA). DESIGN: Evaluation of a diagnostic technology. PARTICIPANTS: Subjects with normal cognition were compare...

Descripción completa

Detalles Bibliográficos
Autores principales: Wisely, C. Ellis, Richardson, Alexander, Henao, Ricardo, Robbins, Cason B., Ma, Justin P., Wang, Dong, Johnson, Kim G., Liu, Andy J., Grewal, Dilraj S., Fekrat, Sharon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10591009/
https://www.ncbi.nlm.nih.gov/pubmed/37877003
http://dx.doi.org/10.1016/j.xops.2023.100355
_version_ 1785124127767527424
author Wisely, C. Ellis
Richardson, Alexander
Henao, Ricardo
Robbins, Cason B.
Ma, Justin P.
Wang, Dong
Johnson, Kim G.
Liu, Andy J.
Grewal, Dilraj S.
Fekrat, Sharon
author_facet Wisely, C. Ellis
Richardson, Alexander
Henao, Ricardo
Robbins, Cason B.
Ma, Justin P.
Wang, Dong
Johnson, Kim G.
Liu, Andy J.
Grewal, Dilraj S.
Fekrat, Sharon
author_sort Wisely, C. Ellis
collection PubMed
description PURPOSE: To develop a machine learning tool capable of differentiating eyes of subjects with normal cognition from those with mild cognitive impairment (MCI) using OCT and OCT angiography (OCTA). DESIGN: Evaluation of a diagnostic technology. PARTICIPANTS: Subjects with normal cognition were compared to subjects with MCI. METHODS: A multimodal convolutional neural network (CNN) was built to predict likelihood of MCI from ganglion cell-inner plexiform layer (GC-IPL) thickness maps, OCTA images, and quantitative data including patient characteristics. MAIN OUTCOME MEASURES: Area under the receiver operating characteristic curve (AUC) and summaries of the confusion matrix (sensitivity and specificity) were used as performance metrics for the prediction outputs of the CNN. RESULTS: Images from 236 eyes of 129 cognitively normal subjects and 154 eyes of 80 MCI subjects were used for training, validating, and testing the CNN. When applied to the independent test set using inputs including GC-IPL thickness maps, OCTA images, and quantitative OCT and OCTA data, the AUC value for the CNN was 0.809 (95% confidence interval [CI]: 0.681–0.937). This model achieved a sensitivity of 79% and specificity of 83%. The AUC value for GC-IPL thickness maps alone was 0.681 (95% CI: 0.529–0.832), for OCTA images alone was 0.625 (95% CI: 0.466–0.784) and for both GC-IPL maps and OCTA images was 0.693 (95% CI: 0.543–0.843). Models using quantitative data alone were also tested, with a model using quantitative data derived from images, 0.960 (95% CI: 0.902–1.00), outperforming a model using demographic data alone, 0.580 (95% CI: 0.417–0.742). CONCLUSIONS: This novel CNN was able to identify an MCI diagnosis using an independent test set comprised of OCT and OCTA images and quantitative data. The GC-IPL thickness maps provided more useful decision support than the OCTA images. The addition of quantitative data inputs also provided significant decision support to the CNN to identify individuals with MCI. Quantitative imaging metrics provided superior decision support than demographic data. FINANCIAL DISCLOSURE(S): Proprietary or commercial disclosure may be found after the references.
format Online
Article
Text
id pubmed-10591009
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-105910092023-10-24 A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition Wisely, C. Ellis Richardson, Alexander Henao, Ricardo Robbins, Cason B. Ma, Justin P. Wang, Dong Johnson, Kim G. Liu, Andy J. Grewal, Dilraj S. Fekrat, Sharon Ophthalmol Sci Original Article PURPOSE: To develop a machine learning tool capable of differentiating eyes of subjects with normal cognition from those with mild cognitive impairment (MCI) using OCT and OCT angiography (OCTA). DESIGN: Evaluation of a diagnostic technology. PARTICIPANTS: Subjects with normal cognition were compared to subjects with MCI. METHODS: A multimodal convolutional neural network (CNN) was built to predict likelihood of MCI from ganglion cell-inner plexiform layer (GC-IPL) thickness maps, OCTA images, and quantitative data including patient characteristics. MAIN OUTCOME MEASURES: Area under the receiver operating characteristic curve (AUC) and summaries of the confusion matrix (sensitivity and specificity) were used as performance metrics for the prediction outputs of the CNN. RESULTS: Images from 236 eyes of 129 cognitively normal subjects and 154 eyes of 80 MCI subjects were used for training, validating, and testing the CNN. When applied to the independent test set using inputs including GC-IPL thickness maps, OCTA images, and quantitative OCT and OCTA data, the AUC value for the CNN was 0.809 (95% confidence interval [CI]: 0.681–0.937). This model achieved a sensitivity of 79% and specificity of 83%. The AUC value for GC-IPL thickness maps alone was 0.681 (95% CI: 0.529–0.832), for OCTA images alone was 0.625 (95% CI: 0.466–0.784) and for both GC-IPL maps and OCTA images was 0.693 (95% CI: 0.543–0.843). Models using quantitative data alone were also tested, with a model using quantitative data derived from images, 0.960 (95% CI: 0.902–1.00), outperforming a model using demographic data alone, 0.580 (95% CI: 0.417–0.742). CONCLUSIONS: This novel CNN was able to identify an MCI diagnosis using an independent test set comprised of OCT and OCTA images and quantitative data. The GC-IPL thickness maps provided more useful decision support than the OCTA images. The addition of quantitative data inputs also provided significant decision support to the CNN to identify individuals with MCI. Quantitative imaging metrics provided superior decision support than demographic data. FINANCIAL DISCLOSURE(S): Proprietary or commercial disclosure may be found after the references. Elsevier 2023-06-25 /pmc/articles/PMC10591009/ /pubmed/37877003 http://dx.doi.org/10.1016/j.xops.2023.100355 Text en © 2023 by the American Academy of Ophthalmology. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Wisely, C. Ellis
Richardson, Alexander
Henao, Ricardo
Robbins, Cason B.
Ma, Justin P.
Wang, Dong
Johnson, Kim G.
Liu, Andy J.
Grewal, Dilraj S.
Fekrat, Sharon
A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition
title A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition
title_full A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition
title_fullStr A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition
title_full_unstemmed A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition
title_short A Convolutional Neural Network Using Multimodal Retinal Imaging for Differentiation of Mild Cognitive Impairment from Normal Cognition
title_sort convolutional neural network using multimodal retinal imaging for differentiation of mild cognitive impairment from normal cognition
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10591009/
https://www.ncbi.nlm.nih.gov/pubmed/37877003
http://dx.doi.org/10.1016/j.xops.2023.100355
work_keys_str_mv AT wiselycellis aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT richardsonalexander aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT henaoricardo aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT robbinscasonb aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT majustinp aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT wangdong aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT johnsonkimg aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT liuandyj aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT grewaldilrajs aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT fekratsharon aconvolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT wiselycellis convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT richardsonalexander convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT henaoricardo convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT robbinscasonb convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT majustinp convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT wangdong convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT johnsonkimg convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT liuandyj convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT grewaldilrajs convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition
AT fekratsharon convolutionalneuralnetworkusingmultimodalretinalimagingfordifferentiationofmildcognitiveimpairmentfromnormalcognition