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A Support Vector Machine Classification of Thyroid Bioptic Specimens Using MALDI-MSI Data

机译:基于MALDI-MSI数据的甲状腺活检标本的支持向量机分类

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摘要

Biomarkers able to characterise and predict multifactorial diseases are still one of the most important targets for all the “omics” investigations. In this context, Matrix-Assisted Laser Desorption/Ionisation-Mass Spectrometry Imaging (MALDI-MSI) has gained considerable attention in recent years, but it also led to a huge amount of complex data to be elaborated and interpreted. For this reason, computational and machine learning procedures for biomarker discovery are important tools to consider, both to reduce data dimension and to provide predictive markers for specific diseases. For instance, the availability of protein and genetic markers to support thyroid lesion diagnoses would impact deeply on society due to the high presence of undetermined reports (THY3) that are generally treated as malignant patients. In this paper we show how an accurate classification of thyroid bioptic specimens can be obtained through the application of a state-of-the-art machine learning approach (i.e., Support Vector Machines) on MALDI-MSI data, together with a particular wrapper feature selection algorithm (i.e., recursive feature elimination). The model is able to provide an accurate discriminatory capability using only 20 out of 144 features, resulting in an increase of the model performances, reliability, and computational efficiency. Finally, tissue areas rather than average proteomic profiles are classified, highlighting potential discriminating areas of clinical interest.
机译:能够表征和预测多因素疾病的生物标志物仍然是所有“组学”研究中最重要的目标之一。在这种情况下,近年来,基质辅助激光解吸/电离质谱光谱成像(MALDI-MSI)得到了相当大的关注,但同时也导致了大量复杂数据的拟定和解释。因此,用于生物标记物发现的计算和机器学习程序是要考虑的重要工具,既可以减少数据量,又可以为特定疾病提供预测性标记物。例如,由于存在大量未定报告(THY3),通常将其视为恶性患者,因此支持甲状腺病变诊断的蛋白质和遗传标记的可用性将对社会产生深远影响。在本文中,我们展示了如何通过对MALDI-MSI数据应用最先进的机器学习方法(即支持向量机)以及特定的包装功能来获得甲状腺活检标本的准确分类选择算法(即,递归特征消除)。该模型仅使用144个功能中的20个即可提供准确的判别能力,从而提高了模型的性能,可靠性和计算效率。最后,对组织区域而不是平均蛋白质组图谱进行分类,突出了潜在的具有临床意义的区分区域。

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