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基于血清和尿液拉曼光谱结合深度学习方法快速诊断膜性肾病。

Rapid diagnosis of membranous nephropathy based on serum and urine Raman spectroscopy combined with deep learning methods.

机构信息

People's Hospital of Xinjiang Uygur Autonomous Region, Urumqi, 830001, China.

College of Software, Xinjiang University, Urumqi, 830046, China.

出版信息

Sci Rep. 2023 Feb 28;13(1):3418. doi: 10.1038/s41598-022-22204-1.

Abstract

Membranous nephropathy is the main cause of nephrotic syndrome, which has an insidious onset and may progress to end-stage renal disease with a high mortality rate, such as renal failure and uremia. At present, the diagnosis of membranous nephropathy mainly relies on the clinical manifestations of patients and pathological examination of kidney biopsy, which are expensive, time-consuming, and have certain chance and other disadvantages. Therefore, there is an urgent need to find a rapid, accurate and non-invasive diagnostic technique for the diagnosis of membranous nephropathy. In this study, Raman spectra of serum and urine were combined with deep learning methods to diagnose membranous nephropathy. After baseline correction and smoothing of the data, Gaussian white noise of different decibels was added to the training set for data amplification, and the amplified data were imported into ResNet, AlexNet and GoogleNet models to obtain the evaluation results of the models for membranous nephropathy. The experimental results showed that the three deep learning models achieved an accuracy of 1 for the classification of serum data of patients with membranous nephropathy and control group, and the discrimination of urine data was above 0.85, among which AlexNet was the best classification model for both samples. The above experimental results illustrate the great potential of serum- and urine-based Raman spectroscopy combined with deep learning methods for rapid and accurate identification of patients with membranous nephropathy.

摘要

膜性肾病是肾病综合征的主要病因,其起病隐匿,可进展为终末期肾病,死亡率高,如肾衰竭和尿毒症。目前,膜性肾病的诊断主要依赖于患者的临床表现和肾活检的病理检查,这些方法昂贵、耗时,且具有一定的偶然性等缺点。因此,迫切需要找到一种快速、准确、无创的诊断技术来诊断膜性肾病。在这项研究中,我们结合拉曼光谱和深度学习方法来诊断膜性肾病。在对数据进行基线校正和平滑处理后,向训练集添加不同分贝的高斯白噪声以进行数据扩增,并将扩增后的数据导入 ResNet、AlexNet 和 GoogleNet 模型,以获得模型对膜性肾病的评价结果。实验结果表明,对于膜性肾病患者和对照组的血清数据,这三个深度学习模型的分类准确率达到了 1,尿液数据的判别率均高于 0.85,其中 AlexNet 是两种样本的最佳分类模型。上述实验结果说明了基于血清和尿液的拉曼光谱结合深度学习方法在快速准确识别膜性肾病患者方面具有巨大潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a68a/9974944/5c2c5e4147c1/41598_2022_22204_Fig1_HTML.jpg

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