利用机器学习分析辅助表面增强拉曼光谱评估肝祖细胞和肝细胞样细胞分化。

IF 8.1 Q1 ENGINEERING, BIOMEDICAL
Biomaterials research Pub Date : 2025-05-07 eCollection Date: 2025-01-01 DOI:10.34133/bmr.0190
Sanghwa Lee, Eunyoung Tak, Jiwan Choi, Seoon Kang, Kwanhee Lee, Jung-Man Namgoong, Jun Ki Kim
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引用次数: 0

摘要

人类间充质干细胞(hMSCs)向肝细胞样细胞(hlc)和肝祖细胞(HPCs)分化的过程监测技术已经发展起来。这些从MSCs分化出来的细胞系在伦理上是没有问题的,并且作为治疗各种肝损伤的有前途的基于细胞的疗法而受到关注。与人工智能相结合的高灵敏度、无标签、实时监测技术已被用于评估和优化细胞分化,以提高细胞治疗递送的效率。利用基于Au-ZnO纳米棒阵列的表面增强拉曼散射(SERS)传感芯片,通过对细胞分泌物的光谱分析,对细胞从hMSCs向HPCs和hlc的分化进行无损监测。采用主成分提取法减少变量,然后进行判别分析(DA)。将主成分-线性判别分析(PC-LDA)人工智能算法应用于光谱数据,实现了hMSCs、HPCs和hlc的清晰分组,监测准确率分别为96.3%、98.8%和98.8%。在从hMSCs到HPCs和从HPCs到hlc的分化过程中观察到的光谱变化在几天内证明了SERS结合机器学习算法分析进行分化监测的有效性。这种方法能够实时、无损地观察细胞分化,只需最少的样品标记和预处理,使其对感知分化验证和稳定性有用。基于机器学习和纳米结构的SERS评估系统被应用于伦理来源的MSCs的分化,并通过使用患者来源的样本证明了临床适用性的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Hepatic Progenitor and Hepatocyte-Like Cell Differentiation Using Machine Learning Analysis-Assisted Surface-Enhanced Raman Spectroscopy.

Technology has been developed to monitor the differentiation process of human mesenchymal stem cells (hMSCs) into hepatocyte-like cells (HLCs) and hepatic progenitor cells (HPCs). These cell lineages, differentiated from MSCs, are ethically unproblematic and are gaining attention as promising cell-based therapies for treating various liver injuries. High-sensitivity, label-free, real-time monitoring technologies integrated with artificial intelligence have been used to evaluate and optimize cell differentiation for enhancing the efficiency of cell therapy delivery. Using an Au-ZnO nanorod array-based surface-enhanced Raman scattering (SERS) sensing chip, cell differentiation from hMSCs to HPCs and HLCs was nondestructively monitored through spectral analysis of cell secretions. Principal component extraction was employed to reduce variables, followed by discriminant analysis (DA). The application of principal component-linear discriminant analysis (PC-LDA), an artificial intelligence algorithm, to spectral data enabled clear grouping of hMSCs, HPCs, and HLCs, with monitoring accuracies of 96.3%, 98.8%, and 98.8%, respectively. Spectral changes observed during the differentiation from hMSCs to HPCs and from HPCs to HLCs over several days demonstrated the effectiveness of SERS combined with machine learning algorithm analysis for differentiation monitoring. This approach enabled real-time, nondestructive observation of cell differentiation with minimal sample labeling and preprocessing, making it useful for sensing differentiation validation and stability. The machine learning- and nanostructure-based SERS evaluation system was applied to the differentiation of ethically sourced MSCs and demonstrated substantial potential for clinical applicability through the use of patient-derived samples.

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