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基于眼底图像预测 T2DM 患者颈动脉内膜中层厚度的泰式 ResNeXt 网络。

A Siamese ResNeXt network for predicting carotid intimal thickness of patients with T2DM from fundus images.

机构信息

Department of Endocrinology, The Second Affiliated Hospital of Anhui Medical University, Hefei, China.

Department of Clinical Pharmacology, The Second Affiliated Hospital of Anhui Medical University, Hefei, China.

出版信息

Front Endocrinol (Lausanne). 2024 Mar 14;15:1364519. doi: 10.3389/fendo.2024.1364519. eCollection 2024.

Abstract

OBJECTIVE

To develop and validate an artificial intelligence diagnostic model based on fundus images for predicting Carotid Intima-Media Thickness (CIMT) in individuals with Type 2 Diabetes Mellitus (T2DM).

METHODS

In total, 1236 patients with T2DM who had both retinal fundus images and CIMT ultrasound records within a single hospital stay were enrolled. Data were divided into normal and thickened groups and sent to eight deep learning models: convolutional neural networks of the eight models were all based on ResNet or ResNeXt. Their encoder and decoder modes are different, including the standard mode, the Parallel learning mode, and the Siamese mode. Except for the six unimodal networks, two multimodal networks based on ResNeXt under the Parallel learning mode or the Siamese mode were embedded with ages. Performance of eight models were compared via the confusion matrix, precision, recall, specificity, F1 value, and ROC curve, and recall was regarded as the main indicator. Besides, Grad-CAM was used to visualize the decisions made by Siamese ResNeXt network, which is the best performance.

RESULTS

Performance of various models demonstrated the following points: 1) the RexNeXt showed a notable improvement over the ResNet; 2) the structural Siamese networks, which extracted features parallelly and independently, exhibited slight performance enhancements compared to the traditional networks. Notably, the Siamese networks resulted in significant improvements; 3) the performance of classification declined if the age factor was embedded in the network. Taken together, the Siamese ResNeXt unimodal model performed best for its superior efficacy and robustness. This model achieved a recall rate of 88.0% and an AUC value of 90.88% in the validation subset. Additionally, heatmaps calculated by the Grad-CAM algorithm presented concentrated and orderly mappings around the optic disc vascular area in normal CIMT groups and dispersed, irregular patterns in thickened CIMT groups.

CONCLUSION

We provided a Siamese ResNeXt neural network for predicting the carotid intimal thickness of patients with T2DM from fundus images and confirmed the correlation between fundus microvascular lesions and CIMT.

摘要

目的

开发并验证一种基于眼底图像的人工智能诊断模型,用于预测 2 型糖尿病(T2DM)患者的颈动脉内膜中层厚度(CIMT)。

方法

共纳入 1236 例在单一住院期间同时具有眼底图像和 CIMT 超声记录的 T2DM 患者。数据分为正常组和增厚组,并发送给 8 种深度学习模型:8 种模型的卷积神经网络均基于 ResNet 或 ResNeXt。它们的编码器和解码器模式不同,包括标准模式、并行学习模式和 Siamese 模式。除了 6 个单模态网络外,两个基于并行学习模式或 Siamese 模式的 ResNeXt 多模态网络嵌入了年龄。通过混淆矩阵、精度、召回率、特异性、F1 值和 ROC 曲线比较 8 种模型的性能,并将召回率作为主要指标。此外,使用 Grad-CAM 可视化表现最佳的 Siamese ResNeXt 网络的决策。

结果

各种模型的性能表现如下:1)ResNeXt 明显优于 ResNet;2)并行独立提取特征的结构 Siamese 网络的性能略优于传统网络,而 Siamese 网络的性能则显著提高;3)如果在网络中嵌入年龄因素,分类性能会下降。综上所述,Siamese ResNeXt 单模态模型因其优异的效果和稳健性表现最佳。该模型在验证子集中的召回率为 88.0%,AUC 值为 90.88%。此外,通过 Grad-CAM 算法计算的热图显示,正常 CIMT 组的视盘血管区域周围呈现集中有序的映射,而增厚 CIMT 组则呈现分散、不规则的模式。

结论

我们提供了一种基于眼底图像预测 T2DM 患者颈动脉内膜中层厚度的 Siamese ResNeXt 神经网络,并证实了眼底微血管病变与 CIMT 之间的相关性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef0f/10973133/3ced6215b146/fendo-15-1364519-g001.jpg

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