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Bayesian and survival model for tumor relapse status and disease-specific survival, with applications to breast cancer.

机译:用于肿瘤复发状态和疾病特异性生存的贝叶斯和生存模型,并应用于乳腺癌。

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Breast cancer is the most common non-skin cancer and the second leading cause of cancer-related death in women in the United States. Studies on ipsilateral breast tumor relapse (IBTR) status and disease-specific survival will help guide clinic treatment and predict patient prognosis.;After breast conservation therapy, patients with breast cancer may experience breast tumor relapse. This relapse is classified into two distinct types: true local recurrence (TR) and new ipsilateral primary tumor (NP). However, the methods used to classify the relapse types are imperfect and are prone to misclassification. In addition, some observed survival data (e.g., time to relapse and time from relapse to death)are strongly correlated with relapse types. The first part of this dissertation presents a Bayesian approach to (1) modeling the potentially misclassified relapse status and the correlated survival information, (2) estimating the sensitivity and specificity of the diagnostic methods, and (3) quantify the covariate effects on event probabilities. A shared frailty was used to account for the within-subject correlation between survival times. The inference was conducted using a Bayesian framework via Markov Chain Monte Carlo simulation implemented in softwareWinBUGS. Simulation was used to validate the Bayesian method and assess its frequentist properties. The new model has two important innovations: (1) it utilizes the additional survival times correlated with the relapse status to improve the parameter estimation, and (2) it provides tools to address the correlation between the two diagnostic methods conditional to the true relapse types.;Prediction of patients at highest risk for IBTR after local excision of ductal carcinoma in situ (DCIS) remains a clinical concern. The goals of the second part of this dissertation were to evaluate a published nomogram from Memorial Sloan-Kettering Cancer Center, to determine the risk of IBTR in patients with DCIS treated with local excision, and to determine whether there is a subset of patients at low risk of IBTR. Patients who had undergone local excision from 1990 through 2007 at MD Anderson Cancer Center with a final diagnosis of DCIS (n=794) were included in this part. Clinicopathologic factors and the performance of the Memorial Sloan-Kettering Cancer Center nomogram for prediction of IBTR were assessed for 734 patients with complete data. Nomogram for prediction of 5- and 10-year IBTR probabilities were found to demonstrate imperfect calibration and discrimination, with an area under the receiver operating characteristic curve of .63 and a concordance index of .63. In conclusion, predictive models for IBTR in DCIS patients treated with local excision are imperfect. Our current ability to accurately predict recurrence based on clinical parameters is limited.;The American Joint Committee on Cancer (AJCC) staging of breast cancer is widely used to determine prognosis, yet survival within each AJCC stage shows wide variation and remains unpredictable. For the third part of this dissertation, biologic markers were hypothesized to be responsible for some of this variation, and the addition of biologic markers to current AJCC staging were examined for possibly provide improved prognostication. The initial cohort included patients treated with surgery as first intervention at MDACC from 1997 to 2006. Cox proportional hazards models were used to create prognostic scoring systems. AJCC pathologic staging parameters and biologic tumor markers were investigated to devise the scoring systems. Surveillance Epidemiology and End Results (SEER) data was used as the external cohort to validate the scoring systems. Binary indicators for pathologic stage (PS), estrogen receptor status (E), and tumor grade (G) were summed to create PS+EG scoring systems devised to predict 5-year patient outcomes. These scoring systems facilitated separation of the study population into more refined subgroups than the current AJCC staging system. The ability of the PS+EG score to stratify outcomes was confirmed in both internal and external validation cohorts. The current study proposes and validates a new staging system by incorporating tumor grade and ER status into current AJCC staging. We recommend that biologic markers be incorporating into revised versions of the AJCC staging system for patients receiving surgery as the first intervention.;Chapter 1 focuses on developing a Bayesian method to solve misclassified relapse status and application to breast cancer data. Chapter 2 focuses on evaluation of a breast cancer nomogram for predicting risk of IBTR in patients with DCIS after local excision gives the statement of the problem in the clinical research. Chapter 3 focuses on validation of a novel staging system for disease-specific survival in patients with breast cancer treated with surgery as the first intervention.
机译:乳腺癌是最常见的非皮肤癌,并且是美国女性与癌症相关的死亡的第二大主要原因。对同侧乳腺肿瘤复发(IBTR)状态和疾病特异性生存率的研究将有助于指导临床治疗并预测患者的预后。乳腺癌保乳治疗后,乳腺癌患者可能会出现乳腺肿瘤复发。这种复发分为两种不同的类型:真正的局部复发(TR)和新的同侧原发性肿瘤(NP)。但是,用于分类复发类型的方法是不完善的,并且易于分类错误。另外,一些观察到的生存数据(例如,复发时间和从复发到死亡的时间)与复发类型密切相关。本文的第一部分提出了一种贝叶斯方法:(1)对潜在的错误分类的复发状态和相关的生存信息进行建模,(2)估计诊断方法的敏感性和特异性,(3)量化对事件概率的协变量影响。一个共同的脆弱被用来解释生存时间之间的受试者内部相关性。通过软件WinBUGS中实现的Markov Chain Monte Carlo仿真,使用贝叶斯框架进行推断。仿真用于验证贝叶斯方法并评估其频繁性。新模型具有两项重要的创新:(1)利用与复发状态相关的额外生存时间来改善参数估计,(2)它提供了工具来解决两种诊断方法之间的相关性,这些诊断方法取决于真实的复发类型。;对导管原位癌局部切除术(DCIS)术后IBTR最高风险的患者的预测仍然是临床关注的问题。本论文第二部分的目的是评估纪念斯隆-凯特琳癌症中心发表的列线图,确定接受局部切除的DCIS患者IBTR的风险,并确定是否有一部分患者处于低位IBTR的风险。此部分包括1990年至2007年在MD Anderson癌症中心接受局部切除并最终诊断为DCIS的患者(n = 794)。对734名完整数据的患者评估了临床病理因素和纪念斯隆-凯特琳癌症中心诺模图预测IBTR的性能。发现用于预测5年期和10年期IBTR概率的线型图显示出不完善的校准和辨别力,接收器工作特性曲线下的面积为0.63,一致性指数为0.63。总之,局部切除治疗的DCIS患者的IBTR预测模型并不完善。我们目前基于临床参数准确预测复发的能力有限。美国乳腺癌联合委员会(AJCC)分期被广泛用于确定预后,但每个AJCC阶段的生存率均存在很大差异且仍不可预测。对于本论文的第三部分,假设生物标志物是造成这种变化的原因,并且研究了将生物标志物添加到当前的AJCC分期中可能会改善预后。最初的研究对象包括从1997年至2006年在MDACC接受外科手术治疗的患者。Cox比例风险模型用于创建预后评分系统。研究AJCC病理学分期参数和生物学肿瘤标志物以设计评分系统。监测流行病学和最终结果(SEER)数据用作外部队列以验证评分系统。总结了病理分期(PS),雌激素受体状态(E)和肿瘤等级(G)的二元指标,以创建PS + EG评分系统,旨在预测5年患者的预后。与当前的AJCC分期系统相比,这些评分系统有助于将研究人群分为更精细的亚组。内部和外部验证队列均证实了PS + EG评分对结果进行分层的能力。本研究通过将肿瘤分级和ER状态纳入当前的AJCC分期中,提出并验证了一种新的分期系统。我们建议将生物学标志物纳入接受手术的患者的AJCC分期系统的修订版中,作为第一种干预措施。;第一章重点研究开发贝叶斯方法以解决分类错误的复发状态并将其应用于乳腺癌数据。第2章着重评估乳腺癌诺模图,以预测局部切除后DCIS患者IBTR的风险,从而在临床研究中阐明了这一问题。第三章着重于对新型外科分期系统的验证,该系统用于以手术作为第一干预措施的乳腺癌患者的疾病特异性生存。

著录项

  • 作者

    Yi, Min.;

  • 作者单位

    The University of Texas School of Public Health.;

  • 授予单位 The University of Texas School of Public Health.;
  • 学科 Biology Biostatistics.;Health Sciences Oncology.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 100 p.
  • 总页数 100
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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