Department of Laboratory Medicine, Kangnam Sacred Heart Hospital, Hallym University College of Medicine, Seoul, South Korea.
Department of Laboratory Medicine, Hangang Sacred Heart Hospital, Hallym University College of Medicine, Seoul, South Korea.
PLoS One. 2022 Aug 24;17(8):e0273284. doi: 10.1371/journal.pone.0273284. eCollection 2022.
Protein electrophoresis (PEP) is an important tool in supporting the analytical characterization of protein status in diseases related to monoclonal components, inflammation, and antibody deficiency. Here, we developed a deep learning-based PEP classification algorithm to supplement the labor-intensive PEP interpretation and enhance inter-observer reliability.
A total of 2,578 gel images and densitogram PEP images from January 2018 to July 2019 were split into training (80%), validation (10%), and test (10.0%) sets. The PEP images were assessed based on six major findings (acute-phase protein, monoclonal gammopathy, polyclonal gammopathy, hypoproteinemia, nephrotic syndrome, and normal). The images underwent processing, including color-to-grayscale and histogram equalization, and were input into neural networks.
Using densitogram PEP images, the area under the receiver operating characteristic curve (AUROC) for each diagnosis ranged from 0.873 to 0.989, and the accuracy for classifying all the findings ranged from 85.2% to 96.9%. For gel images, the AUROC ranged from 0.763 to 0.965, and the accuracy ranged from 82.0% to 94.5%.
The deep learning algorithm demonstrated good performance in classifying PEP images. It is expected to be useful as an auxiliary tool for screening the results and helpful in environments where specialists are scarce.
蛋白质电泳(PEP)是支持分析与单克隆成分、炎症和抗体缺乏相关疾病的蛋白质状态的重要工具。在这里,我们开发了一种基于深度学习的 PEP 分类算法,以补充劳动密集型 PEP 解释并提高观察者间的可靠性。
总共将 2018 年 1 月至 2019 年 7 月的 2578 张凝胶图像和密度图 PEP 图像分为训练集(80%)、验证集(10%)和测试集(10.0%)。根据六个主要发现(急性期蛋白、单克隆丙种球蛋白病、多克隆丙种球蛋白病、低蛋白血症、肾病综合征和正常)对 PEP 图像进行评估。对图像进行处理,包括颜色到灰度和直方图均衡化,并将其输入到神经网络中。
使用密度图 PEP 图像,每个诊断的接收者操作特征曲线(AUROC)下面积从 0.873 到 0.989 不等,对所有发现进行分类的准确率从 85.2%到 96.9%不等。对于凝胶图像,AUROC 从 0.763 到 0.965 不等,准确率从 82.0%到 94.5%不等。
深度学习算法在分类 PEP 图像方面表现出良好的性能。它有望成为筛选结果的有用辅助工具,并且在专家稀缺的环境中很有帮助。