Applying machine learning for multi-individual Raman spectroscopic data to identify different stages of proliferating human hepatocytes

应用机器学习对多个个体拉曼光谱数据进行分析,以识别人类肝细胞增殖的不同阶段

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作者:Bihan Shen, Chen Ma, Lili Tang, Zhitao Wu, Zhaoliang Peng, Guoyu Pan, Hong Li

Abstract

Cell therapy using proliferating human hepatocytes (ProliHHs) is an effective treatment approach for advanced liver diseases. However, rapid and accurate identification of high-quality ProliHHs from different donors is challenging due to individual heterogeneity. Here, we developed a machine learning framework to integrate single-cell Raman spectroscopy from multiple donors and identify different stages of ProliHHs. A repository of more than 14,000 Raman spectra, consisting of primary human hepatocytes (PHHs) and different passages of ProliHHs from six donors, was generated. Using a sliding window algorithm, potential biomarkers distinguishing the different cell stages were identified through differential analysis. Leveraging machine learning models, accurate classification of cell stages was achieved in both within-donor and cross-donor prediction tasks. Furthermore, the study assessed the relationship between donor and cell numbers and its impact on prediction accuracy, facilitating improved quality control design. A similar workflow can also be extended to encompass other cell types.

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