Abstract
Aims
To investigate the efficacy of a bi-modality deep convolutional neural
network (DCNN) framework to categorise age-related macular degeneration (AMD)
and polypoidal choroidal vasculopathy (PCV) from colour fundus images and
optical coherence tomography (OCT) images.
Methods
A retrospective cross-sectional study was proposed of patients with AMD or
PCV who came to Peking Union Medical College Hospital. Diagnoses of all
patients were confirmed by two retinal experts based on diagnostic gold
standard for AMD and PCV. Patients with concurrent retinal vascular diseases
were excluded. Colour fundus images and spectral domain OCT images were taken
from dilated eyes of patients and healthy controls, and anonymised. All images
were pre-labelled into normal, dry or wet AMD or PCV. ResNet-50 models were
used as the backbone and alternate machine learning models including random
forest classifiers were constructed for further comparison. For human-machine
comparison, the same testing data set was diagnosed by three retinal experts
independently. All images from the same participant were presented only within
a single partition subset.
Results
On a test set of 143 fundus and OCT image pairs from 80 eyes (20 eyes
per-group), the bi-modal DCNN demonstrated the best performance, with accuracy
87.4%, sensitivity 88.8% and specificity 95.6%, and a perfect agreement with
diagnostic gold standard (Cohen’s κ 0.828), exceeds slightly over the best
expert (Human1, Cohen’s κ 0.810). For recognising PCV, the model outperformed
the best expert as well.
Conclusion
A bi-modal DCNN for automated classification of AMD and PCV is accurate
and promising in the realm of public health.
Funder
CAMS
Initiative for Innovative Medicine
The Non-profit
Central Research Institute Fund of Chinese Academy of Medical Sciences
Pharmaceutical
collaborative innovation research project of Beijing Science and
Technology Commission
Beijing
Natural Science Foundation
Beijing
Natural Science Foundation Haidian original innovation joint fund
National
Natural Science Foundation of China
Subject
Cellular and Molecular Neuroscience,Sensory Systems,Ophthalmology
Cited by
34 articles.
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