Torok Rebeka, Meszaros Brigitta, Gombas Veronika, Vathy-Fogarassy Agnes, Szabo Miklos, Csanky Eszter, Jarvas Gabor, Guttman Andras
Research Institute of Biomolecular and Chemical Engineering, University of Pannonia, Veszprem, Hungary.
Research Institute of Biomolecular and Chemical Engineering, University of Pannonia, Veszprem, Hungary; Horváth Csaba Memorial Laboratory of Bioseparation Sciences, Research Center for Molecular Medicine, Doctoral School of Molecular Medicine, Faculty of Medicine, University of Debrecen, Debrecen, Hungary.
Comput Biol Med. 2025 Mar;186:109681. doi: 10.1016/j.compbiomed.2025.109681. Epub 2025 Jan 27.
An efficient novel approach is introduced to predict the effectiveness of chemotherapy treatment in lung cancer by monitoring the serum N-glycome of patients combined with artificial intelligence-based data analysis. The study involved thirty-three lung cancer patients undergoing chemotherapy treatments. Serum samples were taken before and after the treatment. The N-linked oligosaccharides were enzymatically released, fluorophore-labeled, and analyzed by capillary electrophoresis with laser-induced fluorescence detection. The resulting electropherograms were thoroughly processed and evaluated by artificial intelligence-based classifiers, i.e., utilizing a machine learning algorithm to categorize the data into two (binary) classes. The classifier analysis method revealed a strong association between the structural changes in the N-glycans and the outcomes of the chemotherapy treatments (ROC >0.9). This novel combination of bioanalytical and AI methods provided a precise and rapid tool for predicting the effectiveness of chemotherapy.
通过监测肺癌患者血清N-聚糖并结合基于人工智能的数据分析,引入了一种有效的新方法来预测肺癌化疗治疗的效果。该研究涉及33名接受化疗的肺癌患者。在治疗前后采集血清样本。通过酶法释放N-连接寡糖,用荧光团标记,并通过激光诱导荧光检测的毛细管电泳进行分析。所得的电泳图由基于人工智能的分类器进行全面处理和评估,即利用机器学习算法将数据分类为两类(二元)。分类器分析方法揭示了N-聚糖结构变化与化疗治疗结果之间的强烈关联(ROC>0.9)。这种生物分析和人工智能方法的新组合为预测化疗效果提供了一种精确且快速的工具。