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Convolutional neural network for preprocessing-free bacterial Spectra identification

机译:用于预处理细菌谱识别的卷积神经网络

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摘要

Identifying bacterial species is essential to epidemiological surveillance. However, the determination of bacterial species is a tedious and labor-intensive process. Various machine learning methods have been used for identifying bacterial species with mass spectral fingerprints. Although machine learning methods achieve real-time identification without human experts, it still requires data preprocessing. To address this issue, we proposed a unified solution for the identification of bacterial species with a convolutional neural network. The neural network automatically determined species according to their mass spectra without the preprocessing steps. The convolutional and pooling layers in the neural network could replace the binning, baseline correction, and scaling procedures. Moreover, because of the explainable structure, the model could identify important regions of spectra to discriminate each bacterial species. We used spectral samples obtained from the fatty acid methyl esters of 10 samples from 16 bacterial species (a total of 16) to demonstrate the usefulness of the proposed method by comparing it with existing classification methods preceded by preprocessing. The comparison results confirmed that the proposed method outperformed the alternatives in terms of classification accuracy and robustness. Moreover, the classification results of the proposed method are interpretable.
机译:鉴定细菌物种对于流行病学监测至关重要。然而,细菌种类的测定是一种乏味和劳动密集型的过程。各种机器学习方法已被用于鉴定具有质谱指纹的细菌种类。虽然机器学习方法在没有人力专家的实时识别,但它仍然需要数据预处理。为了解决这个问题,我们提出了统一的解决方案,用于鉴定具有卷积神经网络的细菌种类。神经网络根据其质谱,无需预处理步骤自动确定物种。神经网络中的卷积和池池层可以取代搭档,基线校正和缩放程序。此外,由于可说明的结构,该模型可以识别光谱的重要区域以区分每种细菌种类。我们使用从16种样品的脂肪酸甲酯获得的光谱样品,从16种细菌物种(共16个)中,通过将其与预处理前面的现有分类方法进行比较来证明所提出的方法的有用性。比较结果证实,所提出的方法在分类准确性和鲁棒性方面表现出替代方案。此外,所提出的方法的分类结果是可解释的。

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