Amra Ramović Hamzagić, Marina Gazdić Janković, D. Cvetković, D. Nikolić, Sandra Nikolić, Nevena Milivojević Dimitrijević, N. Kastratović, Marko N. Živanović, Marina Miletić Kovačević, B. Ljujic
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引用次数: 0
摘要
癌症干细胞(CSCs)在肿瘤进展过程中扮演着关键角色,因为它们往往是耐药性和转移的罪魁祸首。聚苯乙烯造成的环境污染对人类健康产生了负面影响。我们通过对 CD24、CD44、ABCG2、ALDH1 及其组合进行流式细胞分析,研究了聚苯乙烯纳米颗粒(PSNPs)对癌细胞干性的影响。本研究同时使用体外细胞系和硅学机器学习(ML)模型来预测结肠癌(HCT-116)和乳腺癌(MDA-MB-231)细胞中癌症干细胞(CSC)亚群的进展。我们的研究结果表明,PSNPs 会诱导癌症干细胞显著增加。暴露于聚苯乙烯纳米颗粒会刺激肿瘤内分化程度较低的细胞亚群的发展,这是肿瘤侵袭性增加的标志。实验结果被进一步用于训练一个能准确预测 CSC 标记发展的 ML 模型。机器学习,尤其是遗传算法,可能有助于预测癌症干细胞随时间的发展。
Machine Learning Model for Prediction of Development of Cancer Stem Cell Subpopulation in Tumurs Subjected to Polystyrene Nanoparticles
Cancer stem cells (CSCs) play a key role in tumor progression, as they are often responsible for drug resistance and metastasis. Environmental pollution with polystyrene has a negative impact on human health. We investigated the effect of polystyrene nanoparticles (PSNPs) on cancer cell stemness using flow cytometric analysis of CD24, CD44, ABCG2, ALDH1 and their combinations. This study uses simultaneous in vitro cell lines and an in silico machine learning (ML) model to predict the progression of cancer stem cell (CSC) subpopulations in colon (HCT-116) and breast (MDA-MB-231) cancer cells. Our findings indicate a significant increase in cancer stemness induced by PSNPs. Exposure to polystyrene nanoparticles stimulated the development of less differentiated subpopulations of cells within the tumor, a marker of increased tumor aggressiveness. The experimental results were further used to train an ML model that accurately predicts the development of CSC markers. Machine learning, especially genetic algorithms, may be useful in predicting the development of cancer stem cells over time.