Linh Nguyen Phuong, Sébastien Salas, Sébastien Benzekry
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引用次数: 0
摘要
目的:液体活检,特别是循环无细胞 DNA(cfDNA),已成为多种癌症类型的癌症早期诊断、预后和治疗监测的有力工具。要充分发挥 cfDNA 数据的潜力,以实时、无创的方式深入了解肿瘤生物学,从而提高临床决策水平,就必须对 cfDNA 数据进行计算建模(CM):本研究综述了应用于临床肿瘤学的CM-cfDNA方法,强调了机器学习(ML)技术和机理方法。后者整合了生物学原理,能够更深入地了解 cfDNA 动态及其与肿瘤演变的关系:结果:主要研究结果强调了CM-cfDNA方法在提高诊断准确性、确定预后标志物和预测治疗结果方面的有效性。整合了 cfDNA 浓度、碎片模式和突变检测的 ML 模型可实现早期癌症检测的高灵敏度和高特异性。机理模型描述了 cfDNA 动力学,将其与肿瘤生长和对治疗(如免疫检查点抑制剂)的反应联系起来。纵向数据和先进的统计构造进一步完善了这些模型,以量化个体间和个体内的变异性:CM-cfDNA代表了精准肿瘤学的关键进步。它弥补了大量 cfDNA 数据与可操作的临床见解之间的差距,支持将其纳入常规癌症治疗。未来的工作重点应放在标准化方案、验证不同人群的模型以及探索将 ML 与机理建模相结合的混合方法上,以提高对生物学的理解。
Computational Modeling for Circulating Cell-Free DNA in Clinical Oncology.
Purpose: Liquid biopsy, specifically circulating cell-free DNA (cfDNA), has emerged as a powerful tool for cancer early diagnosis, prognosis, and treatment monitoring over a wide range of cancer types. Computational modeling (CM) of cfDNA data is essential to harness its full potential for real-time, noninvasive insights into tumor biology, enhancing clinical decision making.
Design: This work reviews CM-cfDNA methods applied to clinical oncology, emphasizing both machine learning (ML) techniques and mechanistic approaches. The latter integrate biological principles, enabling a deeper understanding of cfDNA dynamics and its relationship with tumor evolution.
Results: Key findings highlight the effectiveness of CM-cfDNA approaches in improving diagnostic accuracy, identifying prognostic markers, and predicting therapeutic outcomes. ML models integrating cfDNA concentration, fragmentation patterns, and mutation detection achieve high sensitivity and specificity for early cancer detection. Mechanistic models describe cfDNA kinetics, linking them to tumor growth and response to treatment, for example, immune checkpoint inhibitors. Longitudinal data and advanced statistical constructs further refine these models for quantification of interindividual and intraindividual variability.
Conclusion: CM-cfDNA represents a pivotal advancement in precision oncology. It bridges the gap between extensive cfDNA data and actionable clinical insights, supporting its integration into routine cancer care. Future efforts should focus on standardizing protocols, validating models across populations, and exploring hybrid approaches combining ML with mechanistic modeling to improve biological understanding.