Sébastien Benzekry, Pirmin Schlicke, Alice Mogenet, Laurent Greillier, Pascale Tomasini, Eléonore Simon
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We propose a mechanistic mathematical model able to derive computational markers from primary tumor and BM data at [Formula: see text] and estimate the amount and sizes of (visible and invisible) BMs, as well as their future behavior. These two key computational markers are [Formula: see text], the proliferation rate of a single tumor cell; and [Formula: see text], the per day, per cell, probability to metastasize. The predictive value of these individual computational biomarkers was evaluated. The model was able to correctly describe the number and size of metastases at [Formula: see text] for 20 patients. Parameters [Formula: see text] and [Formula: see text] were significantly associated with overall survival (OS) (HR 1.65 (1.07-2.53) p = 0.0029 and HR 1.95 (1.31-2.91) p = 0.0109, respectively). 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引用次数: 0
摘要
早期非小细胞肺癌(NSCLC)治愈性治疗后的颅内进展发生率为 10%至 50%,鉴于临床表现的异质性和现有治疗方法的差异性,这种进展很难控制。本研究的目的是建立一个颅内进展的机理模型,以预测首次发生脑转移(BM)事件后的生存期[公式:见正文]。数据包括以治愈为目的接受治疗的早期 NSCLC 患者,他们的首次和单一复发部位均为脑转移灶(N = 31)。我们提出了一个机理数学模型,能够从原发肿瘤和骨髓瘤数据中得出计算标记物[公式:见正文],并估算(可见和不可见)骨髓瘤的数量和大小及其未来行为。这两个关键的计算标记是:[公式:见正文],单个肿瘤细胞的增殖率;[公式:见正文],每个细胞每天发生转移的概率。对这些计算生物标志物的预测价值进行了评估。该模型能够正确描述 20 名患者在[公式:见正文]时的转移数量和大小。公式:见正文]和[公式:见正文]参数与总生存期(OS)显著相关(分别为 HR 1.65 (1.07-2.53) p = 0.0029 和 HR 1.95 (1.31-2.91) p = 0.0109)。在临床标记物中加入计算标记物可明显提高 OS 的预测价值(c 指数从 0.585(95% CI 0.569-0.602)提高到 0.713(95% CI 0.700-0.726),p = 0.0029)。
Computational markers for personalized prediction of outcomes in non-small cell lung cancer patients with brain metastases.
Intracranial progression after curative treatment of early-stage non-small cell lung cancer (NSCLC) occurs from 10 to 50% and is difficult to manage, given the heterogeneity of clinical presentations and the variability of treatments available. The objective of this study was to develop a mechanistic model of intracranial progression to predict survival following a first brain metastasis (BM) event occurring at a time [Formula: see text]. Data included early-stage NSCLC patients treated with a curative intent who had a BM as the first and single relapse site (N = 31). We propose a mechanistic mathematical model able to derive computational markers from primary tumor and BM data at [Formula: see text] and estimate the amount and sizes of (visible and invisible) BMs, as well as their future behavior. These two key computational markers are [Formula: see text], the proliferation rate of a single tumor cell; and [Formula: see text], the per day, per cell, probability to metastasize. The predictive value of these individual computational biomarkers was evaluated. The model was able to correctly describe the number and size of metastases at [Formula: see text] for 20 patients. Parameters [Formula: see text] and [Formula: see text] were significantly associated with overall survival (OS) (HR 1.65 (1.07-2.53) p = 0.0029 and HR 1.95 (1.31-2.91) p = 0.0109, respectively). Adding the computational markers to the clinical ones significantly improved the predictive value of OS (c-index increased from 0.585 (95% CI 0.569-0.602) to 0.713 (95% CI 0.700-0.726), p < 0.0001). We demonstrated that our model was applicable to brain oligoprogressive patients in NSCLC and that the resulting computational markers had predictive potential. This may help lung cancer physicians to guide and personalize the management of NSCLC patients with intracranial oligoprogression.
期刊介绍:
The Journal''s scope encompasses all aspects of metastasis research, whether laboratory-based, experimental or clinical and therapeutic. It covers such areas as molecular biology, pharmacology, tumor biology, and clinical cancer treatment (with all its subdivisions of surgery, chemotherapy and radio-therapy as well as pathology and epidemiology) insofar as these disciplines are concerned with the Journal''s core subject of metastasis formation, prevention and treatment.