arXiv Open Access 2023

An open-source deep learning algorithm for efficient and fully-automatic analysis of the choroid in optical coherence tomography

Jamie Burke Justin Engelmann Charlene Hamid Megan Reid-Schachter Tom Pearson +7 lainnya
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Abstrak

Purpose: To develop an open-source, fully-automatic deep learning algorithm, DeepGPET, for choroid region segmentation in optical coherence tomography (OCT) data. Methods: We used a dataset of 715 OCT B-scans (82 subjects, 115 eyes) from 3 clinical studies related to systemic disease. Ground truth segmentations were generated using a clinically validated, semi-automatic choroid segmentation method, Gaussian Process Edge Tracing (GPET). We finetuned a UNet with MobileNetV3 backbone pre-trained on ImageNet. Standard segmentation agreement metrics, as well as derived measures of choroidal thickness and area, were used to evaluate DeepGPET, alongside qualitative evaluation from a clinical ophthalmologist. Results: DeepGPET achieves excellent agreement with GPET on data from 3 clinical studies (AUC=0.9994, Dice=0.9664; Pearson correlation of 0.8908 for choroidal thickness and 0.9082 for choroidal area), while reducing the mean processing time per image on a standard laptop CPU from 34.49s ($\pm$15.09) using GPET to 1.25s ($\pm$0.10) using DeepGPET. Both methods performed similarly according to a clinical ophthalmologist, who qualitatively judged a subset of segmentations by GPET and DeepGPET, based on smoothness and accuracy of segmentations. Conclusions: DeepGPET, a fully-automatic, open-source algorithm for choroidal segmentation, will enable researchers to efficiently extract choroidal measurements, even for large datasets. As no manual interventions are required, DeepGPET is less subjective than semi-automatic methods and could be deployed in clinical practice without necessitating a trained operator.

Penulis (12)

J

Jamie Burke

J

Justin Engelmann

C

Charlene Hamid

M

Megan Reid-Schachter

T

Tom Pearson

D

Dan Pugh

N

Neeraj Dhaun

S

Stuart King

T

Tom MacGillivray

M

Miguel O. Bernabeu

A

Amos Storkey

I

Ian J. C. MacCormick

Format Sitasi

Burke, J., Engelmann, J., Hamid, C., Reid-Schachter, M., Pearson, T., Pugh, D. et al. (2023). An open-source deep learning algorithm for efficient and fully-automatic analysis of the choroid in optical coherence tomography. https://arxiv.org/abs/2307.00904

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Tahun Terbit
2023
Bahasa
en
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arXiv
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Open Access ✓