College of Information Science and Engineering, Xinjiang University, Urumqi, 830046, China.
College of Information Science and Engineering, Xinjiang University, Urumqi, 830046, China; Xinjiang Key Laboratory of Signal Detection and Processing, Urumqi, 830017,China; Department of Electronic Engineering, and Beijing National Research Center for Information Science and Technology, Tsinghua University, Beijing, 100084, China.
Talanta. 2024 Jan 1;266(Pt 2):125052. doi: 10.1016/j.talanta.2023.125052. Epub 2023 Aug 6.
Diabetic kidney disease (DKD) is one of the most common kidney diseases worldwide. It is estimated that approximately 537 million adults worldwide have diabetes, and up to 30%-40% of diabetic patients are at risk of developing nephropathy. The pathogenesis of DKD is complex, and its onset is insidious. Currently, the clinical diagnosis of DKD primarily relies on the increase of urinary albumin and the decrease in glomerular filtration rate in diabetic patients. However, the excretion of urinary albumin is influenced by various factors, such as physical activity, infections, fever, and high blood glucose, making it challenging to achieve an objective and accurate diagnosis. Therefore, there is an urgent need to develop an efficient, fast, and low-cost auxiliary diagnostic technology for DKD. In this study, an improved Dual Branch Attention Network (DBAN) was developed to quickly identify DKD. Serum Raman spectroscopy samples were collected from 32 DKD patients and 32 healthy volunteers. The collected data were preprocessed using the adaptive iteratively reweighted penalized least squares (airPLS) algorithm, and the DBAN was used to classify the serum Raman spectroscopy data of DKD. The model consists of a dual branch structure that extracts features using Convolutional Neural Network (CNN) and bottleneck layer modules. The attention module allows the model to learn features specifically, and lateral connections are added between the dual branches to achieve multi-level and multi-scale fusion of shallow and deep features, as well as local and global features, improving the classification accuracy of the experiment. The results of the study showed that compared to traditional deep learning algorithms such as Artificial Neural Network (ANN), CNN, GoogleNet, ResNet, and AlexNet, our proposed DBAN classification model achieved 95.4% accuracy, 98.0% precision, 96.5% sensitivity, and 97.2% specificity, demonstrating the best classification performance. This is the best method for identifying DKD, and has important reference value for the diagnosis of DKD patients, as well as improving the accuracy of medical auxiliary diagnosis.
糖尿病肾病(DKD)是全球最常见的肾脏疾病之一。据估计,全球约有 5.37 亿成年人患有糖尿病,多达 30%-40%的糖尿病患者有发生肾病的风险。DKD 的发病机制复杂,起病隐匿。目前,DKD 的临床诊断主要依赖于糖尿病患者尿白蛋白的增加和肾小球滤过率的降低。然而,尿白蛋白的排泄受到多种因素的影响,如体力活动、感染、发热和高血糖等,因此难以进行客观准确的诊断。因此,迫切需要开发一种高效、快速、低成本的 DKD 辅助诊断技术。本研究中,我们开发了一种改进的 Dual Branch Attention Network(DBAN)来快速识别 DKD。从 32 名 DKD 患者和 32 名健康志愿者中采集血清拉曼光谱样本。使用自适应迭代重加权惩罚最小二乘法(airPLS)算法对采集到的数据进行预处理,然后使用 DBAN 对 DKD 的血清拉曼光谱数据进行分类。该模型由一个双分支结构组成,使用卷积神经网络(CNN)和瓶颈层模块提取特征。注意力模块允许模型专门学习特征,并且在双分支之间添加横向连接,以实现浅层和深层特征、局部和全局特征的多层次多尺度融合,提高实验的分类准确性。研究结果表明,与传统的深度学习算法(如人工神经网络(ANN)、CNN、GoogleNet、ResNet 和 AlexNet)相比,我们提出的 DBAN 分类模型的准确率、精确率、敏感度和特异度分别为 95.4%、98.0%、96.5%和 97.2%,具有最佳的分类性能。这是识别 DKD 的最佳方法,对 DKD 患者的诊断以及提高医学辅助诊断的准确性具有重要的参考价值。