首页> 外文期刊>Cancer: A Journal of the American Cancer Society >Predicting neuroendocrine tumor (carcinoid) neoplasia using gene expression profiling and supervised machine learning.
【24h】

Predicting neuroendocrine tumor (carcinoid) neoplasia using gene expression profiling and supervised machine learning.

机译:使用基因表达谱分析和有监督的机器学习来预测神经内分泌肿瘤(类癌)的肿瘤形成。

获取原文
获取原文并翻译 | 示例
       

摘要

BACKGROUND:: A more accurate taxonomy of small intestinal (SI) neuroendocrine tumors (NETs) is necessary to accurately predict tumor behavior and prognosis and to define therapeutic strategy. In this study, the authors identified a panel of such markers that have been implicated in tumorigenicity, metastasis, and hormone production and hypothesized that transcript levels of the genes melanoma antigen family D2 (MAGE-D2), metastasis-associated 1 (MTA1), nucleosome assembly protein 1-like (NAP1L1), Ki-67 (a marker of proliferation), survivin, frizzled homolog 7 (FZD7), the Kiss1 metastasis suppressor (Kiss1), neuropilin 2 (NRP2), and chromogranin A (CgA) could be used to define primary SI NETs and to predict the development of metastases. METHODS:: Seventy-three clinically and World Health Organization pathologically classified NET samples (primary tumor, n = 44 samples; liver metastases, n = 29 samples) and 30 normal human enterochromaffin (EC) cell preparations were analyzed using real-time polymerase chain reaction. Transcript levels were normalized to 3 NET housekeeping genes (asparagine-linked glycosylation 9 or ALG9, transcription factor CP2 or TFCP2, and zinc finger protein 410 or ZNF410) using geNorm analysis. A predictive gene-based model was constructed using supervised learning algorithms from the transcript expression levels. RESULTS:: Primary SI NETs could be differentiated from normal human EC cell preparations with 100% specificity and 92% sensitivity. Well differentiated NETs (WDNETs), well differentiated neuroendocrine carcinomas, and poorly differentiated NETs (PDNETs) were classified with a specificity of 78%, 78%, and 71%, respectively; whereas poorly differentiated neuroendocrine carcinomas were misclassified as either WDNETs or PDNETs. Metastases were predicted in all cases with 100% sensitivity and specificity. CONCLUSIONS:: The current results indicated that gene expression profiling and supervised machine learning can be used to classify SI NET subtypes and accurately predict metastasis. The authors believe that the application of this technique will facilitate accurate molecular pathologic delineation of NET disease, better define its extent, facilitate the assessment of prognosis, and provide a guide for the identification of appropriate strategies for individualized patient treatment. Cancer 2009. (c) 2009 American Cancer Society.
机译:背景:小肠(SI)神经内分泌肿瘤(NET)的更准确分类法对于准确预测肿瘤行为和预后以及确定治疗策略是必要的。在这项研究中,作者鉴定出一组与肿瘤发生,转移和激素产生有关的标记,并假设其与黑色素瘤抗原家族D2(MAGE-D2),转移相关1(MTA1),核小体组装蛋白1样(NAP1L1),Ki-67(增殖标志物),存活蛋白,卷曲的同源物7(FZD7),Kiss1转移抑制剂(Kiss1),神经纤毛蛋白2(NRP2)和嗜铬粒蛋白A(CgA)用于定义主要的SI NET并预测转移的发展。方法:使用实时聚合酶链分析了73种经临床和世界卫生组织病理分类的NET样品(原发肿瘤,n = 44个样品;肝转移瘤,n = 29个样品)和30种正常人肠嗜铬(EC)细胞制剂反应。使用geNorm分析将转录本水平标准化为3个NET管家基因(天冬酰胺连接的糖基化9或ALG9,转录因子CP2或TFCP2以及锌指蛋白410或ZNF410)。使用基于转录表达水平的监督学习算法,构建了基于预测基因的模型。结果:初级SI NETs可以与正常人EC细胞制备物区分开,具有100%的特异性和92%的敏感性。高分化的NET(WDNET),高分化的神经内分泌癌和低分化的NET(PDNET)的特异性分别为78%,78%和71%。而分化差的神经内分泌癌被错误分类为WDNETs或PDNETs。在所有情况下均以100%的敏感性和特异性预测转移。结论::目前的结果表明,基因表达谱分析和监督机器学习可用于对SI NET亚型进行分类并准确预测转移。作者认为,该技术的应用将有助于NET疾病的准确分子病理学描述,更好地确定其范围,促进对预后的评估,并为确定个性化患者治疗的适当策略提供指导。癌症2009。(c)2009美国癌症协会。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

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