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使用机器学习辅助的表面增强拉曼光谱技术,通过一滴血清进行肾移植排斥反应的诊断和分类。

Diagnosis and classification of kidney transplant rejection using machine learning-assisted surface-enhanced Raman spectroscopy using a single drop of serum.

机构信息

Department of Convergence Medicine, Asan Institute for Life Science, Asan Medical Center, Seoul, 05505, South Korea.

Division of Kidney and Pancreas Transplantation, Department of Surgery, Asan Medical Center, University of Ulsan College of Medicine, Seoul, 05505, South Korea.

出版信息

Biosens Bioelectron. 2024 Oct 1;261:116523. doi: 10.1016/j.bios.2024.116523. Epub 2024 Jun 24.

DOI:10.1016/j.bios.2024.116523
PMID:38924813
Abstract

The quest to reduce kidney transplant rejection has emphasized the urgent requirement for the development of non-invasive, precise diagnostic technologies. These technologies aim to detect antibody-mediated rejection (ABMR) and T-cell-mediated rejection (TCMR), which are asymptomatic and pose a risk of potential kidney damage. The protocols for managing rejection caused by ABMR and TCMR differ, and diagnosis has traditionally relied on invasive biopsy procedures. Therefore, a convergence system using a nano-sensing chip, Raman spectroscopy, and AI technology was introduced to facilitate diagnosis using serum samples obtained from patients with no major abnormality, ABMR, and TCMR after kidney transplantation. Tissue biopsy and Banff score analysis were performed across the groups for validation, and 5 μL of serum obtained at the same time was added onto the Au-ZnO nanorod-based Surface-Enhanced Raman Scattering sensing chip to obtain Raman spectroscopy signals. The accuracy of machine learning algorithms for principal component-linear discriminant analysis and principal component-partial least squares discriminant analysis was 93.53% and 98.82%, respectively. The collagen (an indicative of kidney injury), creatinine, and amino acid-derived signals (markers of kidney function) contributed to this accuracy; however, the high accuracy was primarily due to the ability of the system to analyze a broad spectrum of various biomarkers.

摘要

为降低肾移植排斥反应,我们急需开发非侵入性、精准的诊断技术。这些技术旨在检测抗体介导的排斥反应(ABMR)和 T 细胞介导的排斥反应(TCMR),因为它们是无症状的,但有潜在的肾脏损伤风险。ABMR 和 TCMR 引起的排斥反应的治疗方案不同,传统的诊断方法依赖于有创的活检程序。因此,引入了一种使用纳米传感芯片、拉曼光谱和人工智能技术的融合系统,以便使用从无明显异常、ABMR 和 TCMR 肾移植患者获得的血清样本进行诊断。对各组患者进行组织活检和 Banff 评分分析进行验证,同时将 5μL 血清添加到基于 Au-ZnO 纳米棒的表面增强拉曼散射传感芯片上,以获得拉曼光谱信号。主成分线性判别分析和主成分偏最小二乘判别分析的机器学习算法的准确率分别为 93.53%和 98.82%。这一准确率是由胶原蛋白(肾损伤的标志物)、肌酸酐和氨基酸衍生信号(肾功能标志物)贡献的;然而,该系统之所以具有如此高的准确率,主要是因为它能够分析广泛的各种生物标志物。

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