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Estimating cancer survival and clinical outcome based on genetic tumor progression scores

机译:根据遗传肿瘤进展评分估算癌症存活率和临床结局

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Motivation: In cancer research, prediction of time to death or relapse is important for a meaningful tumor classification and selecting appropriate therapies. Survival prognosis is typically based on clinical and histological parameters. There is increasing interest in identifying genetic markers that better capture the status of a tumor in order to improve on existing predictions. The accumulation of genetic alterations during tumor progression can be used for the assessment of the genetic status of the tumor. For modeling dependences between the genetic events, evolutionary tree models have been applied.Results: Mixture models of oncogenetic trees provide a probabilistic framework for the estimation of typical pathogenetic routes. From these models we derive a genetic progression score (GPS) that estimates the genetic status of a tumor. GPS is calculated for glioblastoma patients from loss of heterozygosity measurements and for prostate cancer patients from comparative genomic hybridization measurements. Cox proportional hazard models are then fitted to observed survival times of glioblastoma patients and to times until PSA relapse following radical prostatectomy of prostate cancer patients. It turns out that the genetically defined GPS is predictive even after adjustment for classical clinical markers and thus can be considered a medically relevant prognostic factor.
机译:动机:在癌症研究中,预测死亡或复发时间对于有意义的肿瘤分类和选择合适的治疗方法很重要。生存预后通常基于临床和组织学参数。为了更好地改善现有的预测,人们越来越需要鉴定能够更好地捕获肿瘤状态的遗传标记。肿瘤进展过程中遗传改变的积累可用于评估肿瘤的遗传状态。为了建立遗传事件之间的依赖性模型,已经使用了进化树模型。结果:致癌树的混合模型为估计典型的致病途径提供了一个概率框架。从这些模型中,我们得出了遗传进展评分(GPS),该评分可以估算肿瘤的遗传状况。根据杂合性丧失的测量结果为胶质母细胞瘤患者计算GPS,根据比较基因组杂交的测量结果为前列腺癌患者计算GPS。然后将Cox比例风险模型拟合到胶质母细胞瘤患者的观察生存时间以及前列腺癌患者根治性前列腺切除术后PSA复发之前的时间。事实证明,即使对经典临床标志物进行了调整,遗传定义的GPS仍具有预测性,因此可以认为是医学上相关的预后因素。

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