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Joint modelling of longitudinal CEA tumour marker progression and survival data on breast cancer

机译:纵向CEA肿瘤标志物进展和存活数据对乳腺癌的联合建模

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This work proposes the use of Biostatistics methods to study breast cancer in patients of Braga's Hospital Senology Unit, located in Portugal. The primary motivation is to contribute to the understanding of the progression of breast cancer, within the Portuguese population, using a more complex statistical model assumptions than the traditional analysis that take into account a possible existence of a serial correlation structure within a same subject observations. We aim to infer which risk factors aect the survival of Braga's Hospital patients, diagnosed with breast tumour. Whilst analysing risk factors that aect a tumour markers used on the surveillance of disease progression the Carcinoembryonic antigen (CEA). As survival and longitudinal processes may be associated, it is important to model these two processes together. Hence, a joint modelling of these two processes to infer on the association of these was conducted. A data set of 540 patients, along with 50 variables, was collected from medical records of the Hospital. A joint model approach was used to analyse these data. Two dierent joint models were applied to the same data set, with dierent parameterizations which give dierent interpretations to model parameters. These were used by convenience as the ones implemented in R software. Results from the two models were compared. Results from joint models, showed that the longitudinal CEA values were signicantly associated with the survival probability of these patients. A comparison between parameter estimates obtained in this analysis and previous independent survival[4] and longitudinal analysis[5][6], lead us to conclude that independent analysis brings up bias parameter estimates. Hence, an assumption of association between the two processes in a joint model of breast cancer data is necessary. Results indicate that the longitudinal progression of CEA is signicantly associated with the probability of survival of these patients. Hence, an assumption of assoc
机译:这项工作提出使用生物统计方法来研究布拉加医院Senology单位患者的乳腺癌,位于葡萄牙。主要动机是为了理解葡萄牙人群体内的乳腺癌进展,使用比传统分析更复杂的统计模型假设,以考虑到同一主题观察中的串行相关结构的可能存在。我们的目标是推断出一种危险因素为乳腺肿瘤诊断患者的Braga医院患者的生存。同时分析了对疾病进展监测使用的肿瘤标志物的危险因素进行癌症,而癌症抗原(CEA)。随着生存和纵向过程可能与生存和纵向过程相关联,重要的是将这两个过程组合在一起。因此,进行了这两个过程的联合建模,以推断出这些协会。从医院的病历中收集了540名患者的数据集,以及50名患者。联合模型方法用于分析这些数据。两个Dirent联合模型应用于相同的数据集,具有解除参数化的分解参数,可以为模型参数提供Dikent解释。这些是通过在R软件中实现的方便使用的。比较了这两种模型的结果。联合模型的结果表明,纵向CEA值与这些患者的存活概率显着相关。在该分析中获得的参数估计与先前的独立存活[4]和纵向分析[5] [6],引导我们得出结论,独立分析带来了偏置参数估计。因此,需要假设乳腺癌数据的联合模型中的两个过程之间的关联。结果表明,CEA的纵向进展与这些患者的存活概率有显着相关。因此,assoc的假设

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