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A machine learning perspective on the development of clinical decision support systems utilizing mass spectra of blood samples.

机译:关于利用血液样本质谱开发临床决策支持系统的机器学习观点。

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摘要

Currently, the best way to reduce the mortality of cancer is to detect and treat it in the earliest stages. Technological advances in genomics and proteomics have opened a new realm of methods for early detection that show potential to overcome the drawbacks of current strategies. In particular, pattern analysis of mass spectra of blood samples has attracted attention as an approach to early detection of cancer. Mass spectrometry provides rapid and precise measurements of the sizes and relative abundances of the proteins present in a complex biological/chemical mixture. This article presents a review of the development of clinical decision support systems using mass spectrometry from a machine learning perspective. The literature is reviewed in an explicit machine learning framework, the components of which are preprocessing, feature extraction, feature selection, classifier training, and evaluation.
机译:当前,降低癌症死亡率的最佳方法是尽早检测和治疗。基因组学和蛋白质组学的技术进步为早期检测方法开辟了一个新领域,显示了克服现有策略缺陷的潜力。特别地,作为早期检测癌症的方法,血液样品的质谱图的模式分析已引起关注。质谱可以快速,精确地测量复杂的生物/化学混合物中蛋白质的大小和相对丰度。本文从机器学习的角度对使用质谱技术的临床决策支持系统的发展进行了综述。在一个明确的机器学习框架中对文献进行了审查,该框架的组成部分包括预处理,特征提取,特征选择,分类器训练和评估。

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