对比注意和时间感知LSTM预测年龄相关性黄斑变性进展。

Changchang Yin, Sayoko E Moroi, Ping Zhang
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引用次数: 0

摘要

在发达国家,年龄相关性黄斑变性(AMD)是导致不可逆失明的主要原因。识别进展到晚期AMD(视力威胁阶段)的高风险患者对临床行动至关重要,包括医疗干预和及时监测。近年来,基于深度学习的模型得到了发展,并在AMD后期预测方面取得了优异的成绩。然而,大多数现有方法仅限于最后一次眼科就诊时的彩色眼底摄影(CFP),而不包括前几年就诊时的CFP纵向病史和AMD进展。不同AMD亚表型的患者在AMD疾病的不同阶段可能有不同的进展速度。在前几年的访问中获取进展信息可能有助于预测AMD的进展。在这项工作中,我们提出了一个基于对比注意的时间感知长短期记忆网络(CAT-LSTM)来预测AMD的进展。首先,我们采用卷积神经网络(CNN)模型和对比注意模块(CA)从cfp中提取异常特征。然后,我们利用时间感知LSTM (T-LSTM)来建模患者的病史并考虑AMD的进展信息。将疾病进展、基因型信息、人口统计学和CFP特征的组合发送到T-LSTM。此外,我们利用自编码器将时序CFP序列表示为固定大小的向量,并采用k-means将它们聚类到亚表型中。基于实际数据集对该模型进行了评估,结果表明,该模型在接收机工作特性(AUROC)下的5年晚期amd预测面积达到0.925,优于现有方法3%以上,证明了所提CAT-LSTM的有效性。在分析了通过自动编码器学习到的患者表征后,我们确定了AMD患者的3种新的亚表型,它们具有不同的特征和进展到晚期AMD的速度,为改进AMD的个性化管理铺平了道路。CAT-LSTM的代码可以在GitHub上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Age-Related Macular Degeneration Progression with Contrastive Attention and Time-Aware LSTM.

Age-related macular degeneration (AMD) is the leading cause of irreversible blindness in developed countries. Identifying patients at high risk of progression to late AMD, the sight-threatening stage, is critical for clinical actions, including medical interventions and timely monitoring. Recently, deep-learning-based models have been developed and achieved superior performance for late AMD prediction. However, most existing methods are limited to the color fundus photography (CFP) from the last ophthalmic visit and do not include the longitudinal CFP history and AMD progression during the previous years' visits. Patients in different AMD subphenotypes might have various speeds of progression in different stages of AMD disease. Capturing the progression information during the previous years' visits might be useful for the prediction of AMD progression. In this work, we propose a Contrastive-Attention-based Time-aware Long Short-Term Memory network (CAT-LSTM) to predict AMD progression. First, we adopt a convolutional neural network (CNN) model with a contrastive attention module (CA) to extract abnormal features from CFPs. Then we utilize a time-aware LSTM (T-LSTM) to model the patients' history and consider the AMD progression information. The combination of disease progression, genotype information, demographics, and CFP features are sent to T-LSTM. Moreover, we leverage an auto-encoder to represent temporal CFP sequences as fixed-size vectors and adopt k-means to cluster them into subphenotypes. We evaluate the proposed model based on real-world datasets, and the results show that the proposed model could achieve 0.925 on area under the receiver operating characteristic (AUROC) for 5-year late-AMD prediction and outperforms the state-of-the-art methods by more than 3%, which demonstrates the effectiveness of the proposed CAT-LSTM. After analyzing patient representation learned by an auto-encoder, we identify 3 novel subphenotypes of AMD patients with different characteristics and progression rates to late AMD, paving the way for improved personalization of AMD management. The code of CAT-LSTM can be found at GitHub.

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