基于条件生成对抗网络的合成视网膜电图信号生成。

IF 2.6 4区 医学 Q2 OPHTHALMOLOGY
Mikhail Kulyabin, Aleksei Zhdanov, Irene O Lee, David H Skuse, Dorothy A Thompson, Andreas Maier, Paul A Constable
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引用次数: 0

摘要

目的:视网膜电图(ERG)记录视网膜的功能反应。在某些神经系统疾病中,ERG波形可能会改变,并可能支持生物标志物的发现。在异构或稀有种群中,无论是大数据集还是数据的可用性都可能是一个挑战,人工智能(AI)的合成信号可能有助于减轻这些因素,以支持分类模型。方法:使用公开的真实ERGs数据集对该方法进行了测试,n = 560 (ASD)和n = 498(对照组)记录了来自n = 18 ASD(平均年龄12.2±2.7岁)和n = 31对照组(平均年龄11.8±3.3岁)的9种不同的闪光强度,这些闪光强度通过条件生成对抗网络生成的合成波形增强。使用两种深度学习模型对组进行分类,分别使用真实的纯ergg或真实与合成ergg的组合。一个是时间序列变压器(具有原始形式的波形),第二个是利用ERGs的连续小波变换衍生的小波图像的可视化变压器模型。以平衡精度(BA)作为主要结果衡量指标来评估模型在分组分类方面的表现。结果:在时间序列变压器训练的所有记录中包括合成ERGs时,BA从0.756提高到0.879。该模型在单闪强度为0.95 log cd s m-2的真实波形和合成波形下也取得了最佳性能,BA为0.89。结论:合成波形的深度学习模型性能的提高支持了人工智能应用于改进ERG记录的群体分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic electroretinogram signal generation using a conditional generative adversarial network.

Purpose: The electroretinogram (ERG) records the functional response of the retina. In some neurological conditions, the ERG waveform may be altered and could support biomarker discovery. In heterogeneous or rare populations, where either large data sets or the availability of data may be a challenge, synthetic signals with Artificial Intelligence (AI) may help to mitigate against these factors to support classification models.

Methods: This approach was tested using a publicly available dataset of real ERGs, n = 560 (ASD) and n = 498 (Control) recorded at 9 different flash strengths from n = 18 ASD (mean age 12.2 ± 2.7 years) and n = 31 Controls (mean age 11.8 ± 3.3 years) that were augmented with synthetic waveforms, generated through a Conditional Generative Adversarial Network. Two deep learning models were used to classify the groups using either the real only or combined real and synthetic ERGs. One was a Time Series Transformer (with waveforms in their original form) and the second was a Visual Transformer model utilizing images of the wavelets derived from a Continuous Wavelet Transform of the ERGs. Model performance at classifying the groups was evaluated with Balanced Accuracy (BA) as the main outcome measure.

Results: The BA improved from 0.756 to 0.879 when synthetic ERGs were included across all recordings for the training of the Time Series Transformer. This model also achieved the best performance with a BA of 0.89 using real and synthetic waveforms from a single flash strength of 0.95 log cd s m-2.

Conclusions: The improved performance of the deep learning models with synthetic waveforms supports the application of AI to improve group classification with ERG recordings.

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来源期刊
Documenta Ophthalmologica
Documenta Ophthalmologica 医学-眼科学
CiteScore
3.50
自引率
21.40%
发文量
46
审稿时长
>12 weeks
期刊介绍: Documenta Ophthalmologica is an official publication of the International Society for Clinical Electrophysiology of Vision. The purpose of the journal is to promote the understanding and application of clinical electrophysiology of vision. Documenta Ophthalmologica will publish reviews, research articles, technical notes, brief reports and case studies which inform the readers about basic and clinical sciences related to visual electrodiagnosis and means to improve diagnosis and clinical management of patients using visual electrophysiology. Studies may involve animals or humans. In either case appropriate care must be taken to follow the Declaration of Helsinki for human subject or appropriate humane standards of animal care (e.g., the ARVO standards on Animal Care and Use).
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