Price Nathan D, Trent Jonathan, El-Naggar Adel K, Cogdell David, Taylor Ellen, Hunt Kelly K, Pollock Raphael E, Hood Leroy, Shmulevich Ilya, Zhang Wei
Institute for Systems Biology, Seattle, WA 98103, USA.
Proc Natl Acad Sci U S A. 2007 Feb 27;104(9):3414-9. doi: 10.1073/pnas.0611373104. Epub 2007 Feb 21.
Gastrointestinal stromal tumor (GIST) has emerged as a clinically distinct type of sarcoma with frequent overexpression and mutation of the c-Kit oncogene and a favorable response to imatinib mesylate [also known as STI571 (Gleevec)] therapy. However, a significant diagnostic challenge remains in the differentiation of GIST from leiomyosarcomas (LMSs). To improve on the diagnostic evaluation and to complement the immunohistochemical evaluation of these tumors, we performed a whole-genome gene expression study on 68 well characterized tumor samples. Using bioinformatic approaches, we devised a two-gene relative expression classifier that distinguishes between GIST and LMS with an accuracy of 99.3% on the microarray samples and an estimated accuracy of 97.8% on future cases. We validated this classifier by using RT-PCR on 20 samples in the microarray study and on an additional 19 independent samples, with 100% accuracy. Thus, our two-gene relative expression classifier is a highly accurate diagnostic method to distinguish between GIST and LMS and has the potential to be rapidly implemented in a clinical setting. The success of this classifier is likely due to two general traits, namely that the classifier is independent of data normalization and that it uses as simple an approach as possible to achieve this independence to avoid overfitting. We expect that the use of simple marker pairs that exhibit these traits will be of significant clinical use in a variety of contexts.
胃肠道间质瘤(GIST)已成为一种临床上独特的肉瘤类型,其c-Kit癌基因频繁过度表达和突变,且对甲磺酸伊马替尼[也称为STI571(格列卫)]治疗反应良好。然而,将GIST与平滑肌肉瘤(LMS)区分开来仍存在重大诊断挑战。为了改进诊断评估并补充这些肿瘤的免疫组织化学评估,我们对68个特征明确的肿瘤样本进行了全基因组基因表达研究。使用生物信息学方法,我们设计了一种双基因相对表达分类器,该分类器区分GIST和LMS的准确率在微阵列样本上为99.3%,在未来病例上估计准确率为97.8%。我们通过在微阵列研究中的20个样本以及另外19个独立样本上使用RT-PCR验证了该分类器,准确率为100%。因此,我们的双基因相对表达分类器是一种区分GIST和LMS的高度准确的诊断方法,并且有可能在临床环境中快速实施。该分类器的成功可能归因于两个一般特征,即该分类器独立于数据归一化,并且它使用尽可能简单的方法来实现这种独立性以避免过度拟合。我们预计,使用具有这些特征的简单标记对将在各种情况下具有重要的临床用途。