Unit of Clinical Pharmacology and Pharmacogenetics, Department of Clinical and Experimental Medicine, University Hospital of Pisa, Pisa, Italy.
Unit of Pneumology, Department of Translational Research and New Technologies in Medicine, University Hospital of Pisa, Pisa, Italy.
Pharmacol Res. 2021 Jul;169:105643. doi: 10.1016/j.phrs.2021.105643. Epub 2021 Apr 30.
Lung cancer has become a paradigm for precision medicine in oncology, and liquid biopsy (LB) together with radiomics may have a great potential in this scenario. They are both minimally invasive, easy to perform, and can be repeated during patient's follow-up. Also, increasing evidence suggest that LB and radiomics may provide an efficient way to screen and diagnose tumors at an early stage, including the monitoring of any change in the tumor molecular profile. This could allow treatment optimization, improvement of patients' quality of life, and healthcare-related costs reduction. Latest reports on lung cancer patients suggest a combination of these two strategies, along with cutting-edge data analysis, to decode valuable information regarding tumor type, aggressiveness, progression, and response to treatment. The approach seems more compatible with clinical practice than the current standard, and provides new diagnostic companions being able to suggest the best treatment strategy compared to conventional methods. To implement radiomics and liquid biopsy directly into clinical practice, an artificial intelligence (AI)-based system could help to link patients' clinical data together with tumor molecular profiles and imaging characteristics. AI could also solve problems and limitations related to LB and radiomics methodologies. Further work is needed, including new health policies and the access to large amounts of high-quality and well-organized data, allowing a complementary and synergistic combination of LB and imaging, to provide an attractive choice e in the personalized treatment of lung cancer.
肺癌已成为肿瘤精准医学的典范,液体活检(LB)和放射组学在这种情况下具有巨大的潜力。它们都是微创、易于操作的,可以在患者的随访过程中重复进行。此外,越来越多的证据表明,LB 和放射组学可能为早期筛查和诊断肿瘤提供一种有效的方法,包括监测肿瘤分子谱的任何变化。这可以实现治疗优化、提高患者的生活质量并降低医疗保健相关成本。最新的肺癌患者报告表明,这两种策略与先进的数据分析相结合,可以解码有关肿瘤类型、侵袭性、进展和对治疗反应的有价值信息。这种方法似乎比目前的标准更符合临床实践,提供了新的诊断工具,可以根据传统方法建议最佳的治疗策略。为了将放射组学和液体活检直接应用于临床实践,可以使用基于人工智能(AI)的系统将患者的临床数据与肿瘤分子谱和影像学特征联系起来。AI 还可以解决 LB 和放射组学方法学相关的问题和限制。还需要进一步的工作,包括制定新的卫生政策和获取大量高质量、组织良好的数据,以便 LB 和影像学能够互补和协同组合,为肺癌的个体化治疗提供一个有吸引力的选择。