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Proteomic patterns for classification of ovarian cancer and CTCL serum samples utilizing peak pairs indicative of post-translational modifications

机译:使用峰对指示翻译后修饰的卵巢癌和CTCL血清样品分类的蛋白质组学模式

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摘要

Proteomic patterns as a potential diagnostic technology has been well established for several cancer conditions and other diseases. The use of machine learning techniques such as decision trees, neural networks, genetic algorithms, and other methods has been the basis for pattern determination. Cancer is known to involve signaling pathways that are regulated through PTM of proteins. These modifications are also detectable with high confidence using high-resolution MS. We generated data using a prOTOF mass spectrometer on two sets of patient samples: ovarian cancer and cutaneous t-cell lymphoma (CTCL) with matched normal samples for each disease. Using the knowledge of mass shifts caused by common modifications, we built models using peak pairs and compared this to a conventional technique using individual peaks. The results for each disease showed that a small number of peak pairs gave classification equal to or better than the conventional technique that used multiple individual peaks. This simple peak picking technique could be used to guide identification of important peak pairs involved in the disease process.
机译:蛋白质组学模式作为一种潜在的诊断技术已被广泛用于多种癌症和其他疾病。机器学习技术(例如决策树,神经网络,遗传算法和其他方法)的使用已成为模式确定的基础。已知癌症涉及通过蛋白质PTM调控的信号通路。使用高分辨率MS也可以高置信度检测到这些修饰。我们使用prOTOF质谱仪在两组患者样品上生成了数据:卵巢癌和皮肤T细胞淋巴瘤(CTCL),每种疾病均具有匹配的正常样品。利用常见修饰引起的质量转移知识,我们使用峰对建立了模型,并将其与使用单个峰的常规技术进行了比较。每种疾病的结果表明,少数峰对的分类与使用多个单个峰的常规技术相同或更好。这种简单的峰选择技术可用于指导疾病过程中涉及的重要峰对的识别。

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