...
首页> 外文期刊>Cancer research: The official organ of the American Association for Cancer Research, Inc >Early Prediction of Disease Progression in Small Cell Lung Cancer: Toward Model-Based Personalized Medicine in Oncology
【24h】

Early Prediction of Disease Progression in Small Cell Lung Cancer: Toward Model-Based Personalized Medicine in Oncology

机译:小细胞肺癌疾病进展的早期预测:肿瘤学中基于模型的个性化医学

获取原文
获取原文并翻译 | 示例
           

摘要

Predictive biomarkers can play a key role in individualized disease monitoring. Unfortunately, the use of biomarkers in clinical settings has thus far been limited. We have previously shown that mechanism-based pharmacokinetic/pharmacodynamic modeling enables integration of nonvalidated biomarker data to provide predictive model-based biomarkers for response classification. The biomarker model we developed incorporates an underlying latent variable (disease) representing (unobserved) tumor size dynamics, which is assumed to drive biomarker production and to be influenced by exposure to treatment. Here, we show that by integrating CT scan data, the population model can be expanded to include patient outcome. Moreover, we show that in conjunction with routine medical monitoring data, the population model can support accurate individual predictions of outcome. Our combined model predicts that a change in disease of 29.2% (relative standard error 20%) between two consecutive CT scans (i.e., 6-8 weeks) gives a probability of disease progression of 50%. We apply this framework to an external dataset containing biomarker data from 22 small cell lung cancer patients (four patients progressing during follow-up). Using only data up until the end of treatment (a total of 137 lactate dehydrogenase and 77 neuron-specific enolase observations), the statistical framework prospectively identified 75% of the individuals as having a predictable outcome in follow-up visits. This included two of the four patients who eventually progressed. In all identified individuals, the model-predicted outcomes matched the observed outcomes. This framework allows at risk patients to be identified early and therapeutic intervention/monitoring to be adjusted individually, which may improve overall patient survival. (C) 2015 AACR.
机译:预测性生物标志物可以在个体化疾病监测中发挥关键作用。不幸的是,迄今为止,在临床环境中使用生物标志物一直受到限制。先前我们已经表明,基于机理的药代动力学/药效学建模能够整合未经验证的生物标记数据,从而为响应分类提供基于预测模型的生物标记。我们开发的生物标志物模型结合了潜在的潜在变量(疾病),该变量代表(未观察到的)肿瘤大小动态,这被认为可以驱动生物标志物的产生并受到暴露于治疗的影响。在这里,我们表明通过集成CT扫描数据,可以扩展总体模型以包括患者预后。此外,我们显示,结合常规医学监测数据,人口模型可以支持对结果的准确个体预测。我们的组合模型预测,两次连续的CT扫描(即6-8周)之间疾病的变化为29.2%(相对标准误差为20%),则疾病进展的可能性为50%。我们将此框架应用于包含22个小细胞肺癌患者(四名患者在随访期间进展)的生物标志物数据的外部数据集。仅使用直至治疗结束的数据(总共137个乳酸脱氢酶和77个神经元特异性烯醇酶的观察值),该统计框架前瞻性地确定了75%的患者在随访中具有可预测的结果。这包括最终进展的四名患者中的两名。在所有确定的个体中,模型预测的结果与观察到的结果相匹配。该框架允许及早发现有风险的患者,并分别调整治疗干预/监测,这可以改善总体患者生存率。 (C)2015 AACR。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号