Cheng Qing, Li Xuechan, Acharya Chaitanya R, Hyslop Terry, Sosa Julie Ann
Department of Surgery, Duke University Medical Center, Durham, NC 27710 USA.
Duke Cancer Institute, Duke University Medical Center, Durham, NC 27710 USA.
Oncotarget. 2017 Mar 7;8(10):16690-16703. doi: 10.18632/oncotarget.15128.
Although the majority of papillary thyroid cancer (PTC) is indolent, a subset of PTC behaves aggressively despite the best available treatment. A major clinical challenge is to reliably distinguish early on between those patients who need aggressive treatment from those who do not. Using a large cohort of PTC samples obtained from The Cancer Genome Atlas (TCGA), we analyzed the association between disease progression and multiple forms of genomic data, such as transcriptome, somatic mutations, and somatic copy number alterations, and found that genes related to FOXM1 signaling pathway were significantly associated with PTC progression. Integrative genomic modeling was performed, controlling for demographic and clinical characteristics, which included patient age, gender, TNM stages, histological subtypes, and history of other malignancy, using a leave-one-out elastic net model and 10-fold cross validation. For each subject, the model from the remaining subjects was used to determine the risk index, defined as a linear combination of the clinical and genomic variables from the elastic net model, and the stability of the risk index distribution was assessed through 2,000 bootstrap resampling. We developed a novel approach to combine genomic alterations and patient-related clinical factors that delineates the subset of patients who have more aggressive disease from those whose tumors are indolent and likely will require less aggressive treatment and surveillance (p = 4.62 × 10-10, log-rank test). Our results suggest that risk index modeling that combines genomic alterations with current staging systems provides an opportunity for more effective anticipation of disease prognosis and therefore enhanced precision management of PTC.
尽管大多数甲状腺乳头状癌(PTC)生长缓慢,但仍有一部分PTC即便接受了最佳治疗,其行为仍具有侵袭性。一个主要的临床挑战是要尽早可靠地区分哪些患者需要积极治疗,哪些患者不需要。我们使用从癌症基因组图谱(TCGA)获取的大量PTC样本,分析了疾病进展与多种基因组数据形式之间的关联,如转录组、体细胞突变和体细胞拷贝数改变,发现与FOXM1信号通路相关的基因与PTC进展显著相关。我们进行了综合基因组建模,使用留一法弹性网络模型和10倍交叉验证,控制人口统计学和临床特征,包括患者年龄、性别、TNM分期、组织学亚型以及其他恶性肿瘤病史。对于每个受试者,使用其余受试者的模型来确定风险指数,该指数定义为弹性网络模型中临床和基因组变量的线性组合,并通过2000次自助重采样评估风险指数分布的稳定性。我们开发了一种新方法,将基因组改变与患者相关临床因素相结合,从而区分出疾病侵袭性更强的患者子集与肿瘤生长缓慢且可能需要较少积极治疗和监测的患者子集(对数秩检验,p = 4.62×10⁻¹⁰)。我们的结果表明,将基因组改变与当前分期系统相结合的风险指数建模为更有效地预测疾病预后提供了机会,从而提高了PTC的精准管理水平。