Laboratory of Complex Biological Systems and Bioinformatics (CBB), Department of Bioinformatics, Institute of Biochemistry and Biophysics (IBB), University of Tehran, Tehran, Iran.
Bioinformatics Group, Kish International Campus, University of Tehran, Kish Island, Iran.
Sci Rep. 2024 Oct 28;14(1):25825. doi: 10.1038/s41598-024-71439-7.
In this study, a comprehensive methodology combining machine learning and statistical analysis was employed to investigate alterations in the metabolite profiles, including lipids, of breast cancer tissues and their subtypes. By integrating biological and machine learning feature selection techniques, along with univariate and multivariate analyses, a notable lipid signature was identified in breast cancer tissues. The results revealed elevated levels of saturated and monounsaturated phospholipids in breast cancer tissues, consistent with external validation findings. Additionally, lipidomics analysis in both the original and validation datasets indicated lower levels of most triacylglycerols compared to non-cancerous tissues, suggesting potential alterations in lipid storage and metabolism within cancer cells. Analysis of cancer subtypes revealed that levels of PC 30:0 were relatively reduced in HER2(-) samples that were ER(+) and PR(+) compared to those that were ER(-) and PR(-). Conversely, HER2(+) tumors, which were ER(-) and PR(-), exhibited increased concentrations of PC 30:0. This increase could potentially be linked to the role of Stearoyl-CoA-Desaturase 1 in breast cancer. Comprehensive metabolomic analyses of breast cancer can offer crucial insights into cancer development, aiding in early detection and treatment evaluation of this devastating disease.
在这项研究中,我们采用了一种结合机器学习和统计分析的综合方法,研究了乳腺癌组织及其亚型的代谢物谱变化,包括脂质。通过整合生物学和机器学习特征选择技术,以及单变量和多变量分析,我们在乳腺癌组织中确定了一个显著的脂质特征。结果表明,乳腺癌组织中饱和和单不饱和磷脂的水平升高,这与外部验证结果一致。此外,在原始和验证数据集的脂质组学分析中,与非癌组织相比,大多数三酰基甘油的水平较低,表明癌细胞内的脂质储存和代谢可能发生了改变。对癌症亚型的分析表明,与 ER(-)和 PR(-)的 ER(+)和 PR(+)相比,HER2(-)样本中 PC 30:0 的水平相对较低。相反,HER2(+)的 ER(-)和 PR(-)肿瘤中 PC 30:0 的浓度增加。这种增加可能与乳腺癌中 Stearoyl-CoA-Desaturase 1 的作用有关。对乳腺癌的全面代谢组学分析可以为癌症的发展提供重要的见解,有助于这种毁灭性疾病的早期检测和治疗评估。