Label-Free, Noninvasive Bone Cell Classification by Hyperspectral Confocal Raman Microscopy

Zachary T. Piontkowski*, Dulce C. Hayes, Anthony McDonald, Kalista Pattison, Kimberly S. Butler and Jerilyn A. Timlin*, 
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Abstract

Characterizing and identifying cells in multicellular in vitro models remain a substantial challenge. Here, we utilize hyperspectral confocal Raman microscopy and principal component analysis coupled with linear discriminant analysis to form a label-free, noninvasive approach for classifying bone cells and osteosarcoma cells. Through the development of a library of hyperspectral Raman images of the K7M2-wt osteosarcoma cell lines, 7F2 osteoblast cell lines, RAW 264.7 macrophage cell line, and osteoclasts induced from RAW 264.7 macrophages, we built a linear discriminant model capable of correctly identifying each of these cell types. The model was cross-validated using a k-fold cross validation scheme. The results show a minimum of 72% accuracy in predicting cell type. We also utilize the model to reconstruct the spectra of K7M2 and 7F2 to determine whether osteosarcoma cancer cells and normal osteoblasts have any prominent differences that can be captured by Raman. We find that the main differences between these two cell types are the prominence of the β-sheet protein secondary structure in K7M2 versus the α-helix protein secondary structure in 7F2. Additionally, differences in the CH2 deformation Raman feature highlight that the membrane lipid structure is different between these cells, which may affect the overall signaling and functional contrasts. Overall, we show that hyperspectral confocal Raman microscopy can serve as an effective tool for label-free, nondestructive cellular classification and that the spectral reconstructions can be used to gain deeper insight into the differences that drive different functional outcomes of different cells.

Abstract Image

利用高光谱共焦拉曼显微镜进行无标记、无创骨细胞分类
在多细胞体外模型中描述和识别细胞仍然是一项巨大的挑战。在这里,我们利用高光谱共焦拉曼显微镜和主成分分析以及线性判别分析,形成了一种无标记、非侵入性的骨细胞和骨肉瘤细胞分类方法。通过开发 K7M2-wt 骨肉瘤细胞系、7F2 成骨细胞系、RAW 264.7 巨噬细胞系和由 RAW 264.7 巨噬细胞诱导的破骨细胞的高光谱拉曼图像库,我们建立了一个线性判别模型,能够正确识别这些细胞类型。我们使用 k 倍交叉验证方案对模型进行了交叉验证。结果显示,预测细胞类型的准确率至少为 72%。我们还利用该模型重建了 K7M2 和 7F2 的光谱,以确定骨肉瘤癌细胞和正常成骨细胞是否存在拉曼所能捕捉到的显著差异。我们发现,这两种细胞的主要区别在于 K7M2 的 β 片状蛋白质二级结构与 7F2 的 α 螺旋蛋白质二级结构之间的显著差异。此外,CH2 变形拉曼特征的差异突出表明这些细胞的膜脂结构不同,这可能会影响整体的信号传递和功能对比。总之,我们的研究表明,高光谱共焦拉曼显微镜可作为一种有效的工具,用于无标记、无损的细胞分类,光谱重建可用于深入了解驱动不同细胞产生不同功能结果的差异。
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来源期刊
Chemical & Biomedical Imaging
Chemical & Biomedical Imaging 化学与生物成像-
CiteScore
1.00
自引率
0.00%
发文量
0
期刊介绍: Chemical & Biomedical Imaging is a peer-reviewed open access journal devoted to the publication of cutting-edge research papers on all aspects of chemical and biomedical imaging. This interdisciplinary field sits at the intersection of chemistry physics biology materials engineering and medicine. The journal aims to bring together researchers from across these disciplines to address cutting-edge challenges of fundamental research and applications.Topics of particular interest include but are not limited to:Imaging of processes and reactionsImaging of nanoscale microscale and mesoscale materialsImaging of biological interactions and interfacesSingle-molecule and cellular imagingWhole-organ and whole-body imagingMolecular imaging probes and contrast agentsBioluminescence chemiluminescence and electrochemiluminescence imagingNanophotonics and imagingChemical tools for new imaging modalitiesChemical and imaging techniques in diagnosis and therapyImaging-guided drug deliveryAI and machine learning assisted imaging
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