首页> 外文会议>International Work-Conference on Artificial Neural Networks(IWANN 2007); 20070620-22; San Sebastian(ES) >Genomics and Metabolomics Research for Brain Tumour Diagnosis Based on Machine Learning
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Genomics and Metabolomics Research for Brain Tumour Diagnosis Based on Machine Learning

机译:基于机器学习的脑肿瘤诊断基因组学和代谢组学研究

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The incorporation of new biomedical technologies in the diagnosis and prognosis of cancer is changing medicine to an evidence-based diagnosis. We summarize some studies related to brain tumour research in Europe, based on the metabolic information provided by in vivo Magnetic Resonance Spec-troscopy (MRS) and transcriptomic profiling observed by DNA microarrays. The first result presents the improvement in brain tumour diagnosis by combining Long TE and Short TE single voxel MR Spectra. Afterwards, a mixture model for binned and truncated data to characterize and classify MRS is reviewed. The classification of Glioblastomas Multiforme and Meningothelial Meningiomas using single-labeling cDNA-based microarrays was studied as proof of principle in the incorporation of genomic information to clinical diagnosis. Finally, we present a Decision Support System for in-vivo classification of brain tumours were the best inferred classifiers are deployed for their clinical use.
机译:在癌症的诊断和预后中纳入新的生物医学技术正在将医学转变为基于证据的诊断。我们根据体内磁共振波谱(MRS)提供的代谢信息和DNA芯片观察到的转录组谱,总结了与欧洲脑肿瘤研究相关的一些研究。第一个结果通过结合长TE和短TE单体素MR谱图提出了脑肿瘤诊断的改进。之后,审查了用于分类和截断MRS的合并和截断数据的混合模型。研究了使用基于单标记cDNA的微阵列对胶质母细胞瘤和脑膜脑膜瘤的分类,作为将基因组信息纳入临床诊断的原理证明。最后,我们提出了脑肿瘤体内分类的决策支持系统,这是为临床应用而部署的最佳推断分类器。

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