利用深度学习纵向眼底图像预测年龄相关性黄斑变性进展。

Junghwan Lee, Tingyi Wanyan, Qingyu Chen, Tiarnan D L Keenan, Benjamin S Glicksberg, Emily Y Chew, Zhiyong Lu, Fei Wang, Yifan Peng
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引用次数: 1

摘要

准确预测患者进展到晚期黄斑变性(AMD)的风险是困难的,但对于个性化医疗至关重要。虽然现有的进展到晚期AMD的风险预测模型对患者的分类是有用的,但没有一个利用患者病史中的纵向彩色眼底照片(CFPs)来估计在给定的后续时间间隔内发生晚期AMD的风险。在这项工作中,我们试图评估深度神经网络如何捕获纵向CFPs的序列信息,并提高对2年和5年进展为晚期AMD风险的预测。具体而言,我们提出了CNN-LSTM和CNN-Transformer两种深度学习模型,分别使用长短期记忆(LSTM)和变压器,结合卷积神经网络(CNN)来捕获纵向CFPs中的序列信息。我们将我们的模型与年龄相关眼病研究的基线进行比较,该研究是CFPs中最大的纵向AMD队列之一。所提出的模型优于仅使用单次就诊CFPs预测晚期AMD风险的基线模型(2年预测AUC为0.879 vs 0.868, 5年预测为0.879 vs 0.862)。进一步的实验表明,在更长的时间内使用纵向cfp有助于深度学习模型预测晚期AMD的风险。我们在https://github.com/bionlplab/AMD_prognosis_mlmi2022上提供了源代码,以促进未来寻求开发用于晚期AMD预测的深度学习模型的工作。
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Predicting Age-related Macular Degeneration Progression with Longitudinal Fundus Images Using Deep Learning.

Accurately predicting a patient's risk of progressing to late age-related macular degeneration (AMD) is difficult but crucial for personalized medicine. While existing risk prediction models for progression to late AMD are useful for triaging patients, none utilizes longitudinal color fundus photographs (CFPs) in a patient's history to estimate the risk of late AMD in a given subsequent time interval. In this work, we seek to evaluate how deep neural networks capture the sequential information in longitudinal CFPs and improve the prediction of 2-year and 5-year risk of progression to late AMD. Specifically, we proposed two deep learning models, CNN-LSTM and CNN-Transformer, which use a Long-Short Term Memory (LSTM) and a Transformer, respectively with convolutional neural networks (CNN), to capture the sequential information in longitudinal CFPs. We evaluated our models in comparison to baselines on the Age-Related Eye Disease Study, one of the largest longitudinal AMD cohorts with CFPs. The proposed models outperformed the baseline models that utilized only single-visit CFPs to predict the risk of late AMD (0.879 vs 0.868 in AUC for 2-year prediction, and 0.879 vs 0.862 for 5-year prediction). Further experiments showed that utilizing longitudinal CFPs over a longer time period was helpful for deep learning models to predict the risk of late AMD. We made the source code available at https://github.com/bionlplab/AMD_prognosis_mlmi2022 to catalyze future works that seek to develop deep learning models for late AMD prediction.

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