X-MassFP:专注于质谱指纹识别模式研究的平台

Manuel T. Ibáñez-Barrios, Xaviera A. López-Cortés
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引用次数: 2

摘要

病原体是寄生在宿主体内的传染性微生物,是引起疾病的原因。在许多情况下,病原体的检测在资源和时间上都很昂贵。通过这种方式,质谱法与数据挖掘技术相结合,可以实现快速、高效、低成本的病原体检测。提出了一个名为X-MassFP的自动化桌面平台,用于分析和训练能够基于质谱中的m/z数据识别病原体的预测机器学习模型。先前的研究分析了健康和患病鲑科鱼的血清样本,并对鲑科鱼进行了沙门氏菌感染。获得了它们的光谱,并利用它们在我们的平台上进行了多次对准和分束实验。然后,实现多种管道组合以获得最佳预测模型。实现了不同的bin大小和特征选择器,以及在不平衡数据集上使用过采样。X-MassFP平台获得的最佳结果对应于使用多重对齐的KNN和使用分形方法的SVM,准确率分别为90%和88.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
X-MassFP: a platform with focus on pattern research for mass spectrometry fingerprint recognition
Pathogens are infectious microorganisms that lodge in a host and are responsible for causing diseases. In many cases, the detection of pathogens is expensive in resources and time. In this way, mass spectrometry is combined with data mining techniques to produce fast, efficient, and low-cost pathogen detection. An automated desktop platform named X-MassFP is proposed to analyze and train predictive machine learning models capable of identifying pathogens based on m/z data from mass spectra. Previous research analyzed serum samples from healthy and diseased salmonid fishes with Piscirickettsia salmonis. Their spectra were obtained and used them to perform a multiple alignment and binning experiments with our platform. Then, many combinations of pipes were implemented to obtain the best predictive models. Different bin sizes and feature selectors were implemented, as well as the use of oversampling on unbalanced data sets. The best results obtained with the X-MassFP platform corresponded to KNN using multiple alignment and SVM using the binning method, with 90% and 88.8% of accuracy, respectively.
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