首页> 美国卫生研究院文献>Cancer Informatics >Data Requirements for Model-Based Cancer Prognosis Prediction
【2h】

Data Requirements for Model-Based Cancer Prognosis Prediction

机译:基于模型的癌症预后预测的数据要求

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。
获取外文期刊封面目录资料

摘要

Cancer prognosis prediction is typically carried out without integrating scientific knowledge available on genomic pathways, the effect of drugs on cell dynamics, or modeling mutations in the population. Recent work addresses some of these problems by formulating an uncertainty class of Boolean regulatory models for abnormal gene regulation, assigning prognosis scores to each network based on intervention outcomes, and partitioning networks in the uncertainty class into prognosis classes based on these scores. For a new patient, the probability distribution of the prognosis class was evaluated using optimal Bayesian classification, given patient data. It was assumed that (1) disease is the result of several mutations of a known healthy network and that these mutations and their probability distribution in the population are known and (2) only a single snapshot of the patient’s gene activity profile is observed. It was shown that, even in ideal settings where cancer in the population and the effect of a drug are fully modeled, a single static measurement is typically not sufficient. Here, we study what measurements are sufficient to predict prognosis. In particular, we relax assumption (1) by addressing how population data may be used to estimate network probabilities, and extend assumption (2) to include static and time-series measurements of both population and patient data. Furthermore, we extend the prediction of prognosis classes to optimal Bayesian regression of prognosis metrics. Even when time-series data is preferable to infer a stochastic dynamical network, we show that static data can be superior for prognosis prediction when constrained to small samples. Furthermore, although population data is helpful, performance is not sensitive to inaccuracies in the estimated network probabilities.
机译:通常在进行癌症预后预测时,无需整合有关基因组途径,药物对细胞动力学的影响或对群体突变建模的科学知识。最近的工作解决了这些问题中的一些问题,方法是为异常基因调控建立布尔调节模型的不确定性类别,根据干预结果为每个网络分配预后评分,并根据这些分数将不确定性类别中的网络划分为预后类别。对于新患者,给定患者数据,使用最佳贝叶斯分类法评估预后类别的概率分布。假定(1)疾病是已知健康网络的多个突变的结果,并且已知这些突变及其在人群中的概率分布,并且(2)仅观察到患者基因活性谱的一个快照。结果表明,即使在理想的环境中,对人群中的癌症和药物作用进行了完全建模,单个静态测量值通常也不足够。在这里,我们研究哪些测量足以预测预后。特别是,我们通过解决如何使用人口数据来估计网络概率来放宽假设(1),并扩展假设(2)以包括人口和患者数据的静态和时序测量。此外,我们将预后类别的预测扩展到预后指标的最佳贝叶斯回归。即使当最好使用时序数据来推断随机动态网络时,我们也表明,当限于小样本时,静态数据可以更好地预测预后。此外,尽管人口数据很有用,但是性能对估计的网络概率的不准确性并不敏感。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

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