Louie Anna D, Huntington Kelsey, Carlsen Lindsey, Zhou Lanlan, El-Deiry Wafik S
Laboratory of Translational Oncology and Experimental Cancer Therapeutics, Warren Alpert Medical School, Brown University, Providence, RI, United States.
Department of Surgery, Lifespan Health System and Brown University, Providence, RI, United States.
Front Pharmacol. 2021 Oct 19;12:747194. doi: 10.3389/fphar.2021.747194. eCollection 2021.
Biomarkers can contribute to clinical cancer therapeutics at multiple points along the patient's diagnostic and treatment course. Diagnostic biomarkers can screen or classify patients, while prognostic biomarkers predict their survival. Biomarkers can also predict treatment efficacy or toxicity and are increasingly important in development of novel cancer therapeutics. Strategies for biomarker identification have involved large-scale genomic and proteomic analyses. Pathway-specific biomarkers are already in use to assess the potential efficacy of immunotherapy and targeted cancer therapies. Judicious application of machine learning techniques can identify disease-relevant features from large data sets and improve predictive models. The future of biomarkers likely involves increasing utilization of liquid biopsy and multiple samplings to better understand tumor heterogeneity and identify drug resistance.
生物标志物可在患者诊断和治疗过程的多个环节对临床癌症治疗发挥作用。诊断性生物标志物可用于筛查或分类患者,而预后性生物标志物则可预测患者的生存期。生物标志物还能预测治疗效果或毒性,在新型癌症治疗方法的研发中愈发重要。生物标志物的识别策略涉及大规模基因组和蛋白质组分析。特定通路的生物标志物已被用于评估免疫疗法和靶向癌症疗法的潜在疗效。明智地应用机器学习技术可从大数据集中识别与疾病相关的特征并改进预测模型。生物标志物的未来可能包括更多地利用液体活检和多次采样,以更好地了解肿瘤异质性并识别耐药性。