机器学习和代谢组学预测2D和3D培养的间充质干细胞成骨分化。

IF 5 3区 医学 Q1 ENGINEERING, BIOMEDICAL Journal of Functional Biomaterials Pub Date : 2024-12-05 DOI:10.3390/jfb15120367
Michail E Klontzas, Spyros I Vernardis, Aristea Batsali, Fotios Papadogiannis, Nicki Panoskaltsis, Athanasios Mantalaris
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引用次数: 0

摘要

干细胞已被广泛应用于人工骨移植。尽管如此,干细胞分化程度的可变性是人工移植物发展的一个固有缺点,需要强大的评估工具来证明干细胞产品的质量,并避免与源组织相关和患者特异性的结果可变性。组学分析已被用于评估干细胞生物制造的所有阶段的干细胞属性。在此,代谢组学与机器学习相结合被用于在2D和3D培养中对成骨分化质量进行基准测试。代谢组学分析采用气相色谱-质谱联用(GC-MS)。使用11种代谢物训练XGboost模型,该模型在区分分化和未分化脐血间充质干细胞(UCB MSCs)方面表现优异。该模型针对训练集中不存在的样本进行基准测试,能够有效地捕获3D UCB MSC培养物中的成骨作用,曲线下面积(AUC)为82.6%。相反,该模型没有捕捉到沃顿商学院果冻MSC样本中的任何分化,这些样本在成骨分化方面表现不佳(AUC为56.2%)。矿化与富马酸盐、甘油和肌醇水平显著相关,这四种代谢物对模型性能最重要(R2 = 0.89、R2 = 0.94和R2 = 0.96, p = 0.016、p = 0.0059和p = 0.0022)。总之,我们的研究结果表明,代谢组学与机器学习的结合可以用于开发可靠的效价分析,以评估先进治疗药物。
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Machine Learning and Metabolomics Predict Mesenchymal Stem Cell Osteogenic Differentiation in 2D and 3D Cultures.

Stem cells have been widely used to produce artificial bone grafts. Nonetheless, the variability in the degree of stem cell differentiation is an inherent drawback of artificial graft development and requires robust evaluation tools that can certify the quality of stem cell-based products and avoid source-tissue-related and patient-specific variability in outcomes. Omics analyses have been utilised for the evaluation of stem cell attributes in all stages of stem cell biomanufacturing. Herein, metabolomics in combination with machine learning was utilised for the benchmarking of osteogenic differentiation quality in 2D and 3D cultures. Metabolomics analysis was performed with the use of gas chromatography-mass spectrometry (GC-MS). A set of 11 metabolites was used to train an XGboost model which achieved excellent performance in distinguishing between differentiated and undifferentiated umbilical cord blood mesenchymal stem cells (UCB MSCs). The model was benchmarked against samples not present in the training set, being able to efficiently capture osteogenesis in 3D UCB MSC cultures with an area under the curve (AUC) of 82.6%. On the contrary, the model did not capture any differentiation in Wharton's Jelly MSC samples, which are well-known underperformers in osteogenic differentiation (AUC of 56.2%). Mineralisation was significantly correlated with the levels of fumarate, glycerol, and myo-inositol, the four metabolites found most important for model performance (R2 = 0.89, R2 = 0.94, and R2 = 0.96, and p = 0.016, p = 0.0059, and p = 0.0022, respectively). In conclusion, our results indicate that metabolomics in combination with machine learning can be used for the development of reliable potency assays for the evaluation of Advanced Therapy Medicinal Products.

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来源期刊
Journal of Functional Biomaterials
Journal of Functional Biomaterials Engineering-Biomedical Engineering
CiteScore
4.60
自引率
4.20%
发文量
226
审稿时长
11 weeks
期刊介绍: Journal of Functional Biomaterials (JFB, ISSN 2079-4983) is an international and interdisciplinary scientific journal that publishes regular research papers (articles), reviews and short communications about applications of materials for biomedical use. JFB covers subjects from chemistry, pharmacy, biology, physics over to engineering. The journal focuses on the preparation, performance and use of functional biomaterials in biomedical devices and their behaviour in physiological environments. Our aim is to encourage scientists to publish their results in as much detail as possible. Therefore, there is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Several topical special issues will be published. Scope: adhesion, adsorption, biocompatibility, biohybrid materials, bio-inert materials, biomaterials, biomedical devices, biomimetic materials, bone repair, cardiovascular devices, ceramics, composite materials, dental implants, dental materials, drug delivery systems, functional biopolymers, glasses, hyper branched polymers, molecularly imprinted polymers (MIPs), nanomedicine, nanoparticles, nanotechnology, natural materials, self-assembly smart materials, stimuli responsive materials, surface modification, tissue devices, tissue engineering, tissue-derived materials, urological devices.
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