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Frequentist and Bayesian approaches for a joint model for prostate cancer risk and longitudinal prostate-specific antigen data

机译:针对前列腺癌风险和纵向前列腺特异性抗原数据的联合模型的频率和贝叶斯方法

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The paper describes the use of frequentist and Bayesian shared-parameter joint models of longitudinal measurements of prostate-specific antigen (PSA) and the risk of prostate cancer (PCa). The motivating dataset corresponds to the screening arm of the Spanish branch of the European Randomized Screening for Prostate Cancer study. The results show that PSA is highly associated with the risk of being diagnosed with PCa and that there is an age-varying effect of PSA on PCa risk. Both the frequentist and Bayesian paradigms produced very close parameter estimates and subsequent 95% confidence and credibility intervals. Dynamic estimations of disease-free probabilities obtained using Bayesian inference highlight the potential of joint models to guide personalized risk-based screening strategies.
机译:这篇论文描述了对前列腺特异性抗原(PSA)的纵向测量和前列腺癌风险(PCa)的频度和贝叶斯共享参数联合模型的使用。激励数据集对应于欧洲前列腺癌随机筛查研究的西班牙分支的筛查部门。结果表明,PSA与被诊断为PCa的风险高度相关,并且PSA对PCa风险具有随年龄变化的影响。经常性范式和贝叶斯范式都产生了非常接近的参数估计值,随后产生了95%的置信度和可信度区间。使用贝叶斯推断获得的无病概率的动态估计突出了联合模型指导个性化基于风险的筛查策略的潜力。

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