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Classification of lung adenocarcinoma and squamous cell carcinoma samples based on their gene expression profile in the sbv IMPROVER Diagnostic Signature Challenge

机译:基于sbv IMPROVER诊断签名挑战中基因表达谱的肺腺癌和鳞状细胞癌样品分类

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Barriers, such as the lack of confidence in the robustness of disease signatures based on gene expression measurements, still hinder progress toward personalized medicine. It is therefore important that once derived, a signature is verified via an unbiased process. The IMPROVER initiative was set up to establish an impartial view of methods and results for the classification of patients, based on molecular profiles of disease-relevant or surrogate tissues. Here, the focus is on the Lung Cancer Signature Challenge, in which participants have been asked to classify lung tumor gene expression profiles into 4 classes: adenocarcinoma (AC) and squamous cell carcinoma (SCC), each at either stage 1 or 2. The method reported here was the best performing method in the 4-way classification. The original method is presented as well as an algorithmic approach to replace the empirical (non-computational) steps used in the challenge. In the discussion, the difficulty in classifying stages of tumors as compared with the relatively good classification of subtypes is examined. Hypotheses are made concerning possible reasons for erroneous classification of some of the samples, in view of additional information on the test samples that was not made available to challenge participants.
机译:诸如基于基因表达测量结果对疾病特征的鲁棒性缺乏信心等障碍仍然阻碍了个性化医学的发展。因此,重要的是,一旦获得签名,就必须通过无偏过程来验证签名。建立IMPROVER计划的目的是根据疾病相关组织或替代组织的分子特征,建立对患者分类方法和结果的公正看法。在这里,重点是“肺癌签名挑战”,其中要求参与者将肺癌基因表达谱分为4类:腺癌(AC)和鳞状细胞癌(SCC),分别处于1期或2期。此处报告的方法是4向分类中效果最好的方法。提出了原始方法以及一种算法方法,以代替挑战中使用的经验(非计算)步骤。在讨论中,检查了与相对好的亚型分类相比,将肿瘤分类的难度。考虑到测试样本的附加信息可能无法挑战参与者,因此对某些样本错误分类的可能原因进行了假设。

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