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首页> 外文期刊>CPT: Pharmacometrics & Systems Pharmacology >A New Method to Model and Predict Progression Free Survival Based on Tumor Growth Dynamics
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A New Method to Model and Predict Progression Free Survival Based on Tumor Growth Dynamics

机译:基于肿瘤生长动态的模型和预测进展自由生存的新方法

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Progression‐free survival (PFS) has been increasingly used as a primary endpoint for early clinical development. The aim of the present work was to develop a model where target lesion dynamics and risk for nontarget progression are jointly modeled for predicting PFS. The model was developed based on a pooled platinum‐resistant ovarian cancer dataset comprising four different treatments and a wide range of dose levels. The target lesion progression was derived from tumor growth dynamics based on the Response Evaluation Criteria in Solid Tumors (RECIST) criteria. The nontarget progression hazard was correlated to the first derivative of target lesion tumor size with respect to time. The PFS time was determined by the first occurring event, target lesion progression, or nontarget progression. The final joint model not only captured target lesion tumor growth dynamics but also predicted PFS well. A similar approach can potentially be used to predict PFS in future oncology studies.
机译:无进展生存期(PFS)越来越多地用作早期临床发展的主要终点。本工作的目的是开发一种模型,其中针对预测PFS共同建模了目标病变动态和非靶案的风险。该模型是基于汇集铂抗性卵巢癌数据集开发,包含四种不同的治疗和各种剂量水平。基于实体瘤中的响应评估标准(RECIST)标准,靶病变进程来自肿瘤生长动力学。 Nontarget进展危害与时间相对于时间的靶病变肿瘤大小的第一种衍生物相关。 PFS时间由第一个发生的事件,目标病变进展或非明显进展决定。最终的联合模型不仅捕获了靶病变肿瘤生长动态,还预测了PFS。类似的方法可能用于预测未来肿瘤学研究中的PFS。

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