Radiation Oncology Branch, Center for Cancer Research, National Cancer Institute, National Institutes of Health (NIH), Bethesda, MD 20892, USA.
Department of Pathology, Immunology and Laboratory Medicine, University of Florida, Gainesville, FL 32610, USA.
Int J Mol Sci. 2024 Oct 11;25(20):10965. doi: 10.3390/ijms252010965.
Glioblastoma (GBM) is a highly malignant and devastating brain cancer characterized by its ability to rapidly and aggressively grow, infiltrating brain tissue, with nearly universal recurrence after the standard of care (SOC), which comprises maximal safe resection followed by chemoirradiation (CRT). The metabolic triggers leading to the reprogramming of tumor behavior and resistance are an area increasingly studied in relation to the tumor molecular features associated with outcome. There are currently no metabolomic biomarkers for GBM. Studying the metabolomic alterations in GBM patients undergoing CRT could uncover the biochemical pathways involved in tumor response and resistance, leading to the identification of novel biomarkers and the optimization of the treatment response. The feature selection process identifies key factors to improve the model's accuracy and interpretability. This study utilizes a combined feature selection approach, incorporating both Least Absolute Shrinkage and Selection Operator (LASSO) and Minimum Redundancy-Maximum Relevance (mRMR), alongside a rank-based weighting method (i.e., MetaWise) to link metabolomic biomarkers to CRT and the 12-month and 20-month overall survival (OS) status in patients with GBM. Our method shows promising results, reducing feature dimensionality when employed on serum-based large-scale metabolomic datasets (University of Florida) for all our analyses. The proposed method successfully identified a set of eleven serum biomarkers shared among three datasets. The computational results show that the utilized method achieves 96.711%, 92.093%, and 86.910% accuracy rates with 48, 46, and 33 selected features for the CRT, 12-month, and 20-month OS-based metabolomic datasets, respectively. This discovery has implications for developing personalized treatment plans and improving patient outcomes.
胶质母细胞瘤(GBM)是一种高度恶性和破坏性的脑癌,其特点是能够快速而积极地生长,浸润脑组织,在标准治疗(SOC)后几乎普遍复发,SOC 包括最大限度的安全切除,然后进行化疗和放疗(CRT)。导致肿瘤行为和耐药性重新编程的代谢触发因素是与与预后相关的肿瘤分子特征越来越多的研究领域。目前,GBM 没有代谢组学生物标志物。研究接受 CRT 的 GBM 患者的代谢组学改变可以揭示参与肿瘤反应和耐药性的生化途径,从而鉴定新的生物标志物并优化治疗反应。特征选择过程确定了提高模型准确性和可解释性的关键因素。本研究采用了一种组合特征选择方法,结合了最小绝对收缩和选择算子(LASSO)和最小冗余-最大相关性(mRMR),以及一种基于排名的加权方法(即 MetaWise),将代谢组学生物标志物与 CRT 以及 GBM 患者的 12 个月和 20 个月总生存率(OS)相关联。我们的方法显示出有希望的结果,当应用于基于血清的大规模代谢组学数据集(佛罗里达大学)进行所有分析时,降低了特征的维度。所提出的方法成功地在三个数据集之间识别出了一组 11 种血清生物标志物。计算结果表明,所使用的方法在 CRT、12 个月和 20 个月 OS 基于代谢组学数据集上分别具有 48、46 和 33 个选定特征时,分别达到了 96.711%、92.093%和 86.910%的准确率。这一发现对制定个性化治疗计划和改善患者预后具有重要意义。