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Methods of Profiling Mass Spectral Data Using Neural Networks

机译:使用神经网络分析质谱数据的方法

摘要

Methods are provided to classify and identify features in mass spectral data using neural network algorithms. A convolutional neural network (CNN) was trained to identify amino acids from an unknown protein sample. The CNN was trained using known peptide sequences to predict amino acid presence, diversity, and frequency, peptide length, subsequences of amino acids classified by features include aliphatic/aromatic, hydrophobic/hydrophilic, positive/negative charge, and combinations thereof. Mass spectra data of a sample unknown to the trained CNN was discretized into a one-dimensional vector and input into the CNN. The CNN models can potentially be integrated to determine the complete peptide sequence from a spectrum, thereby improving the yield of identifiable protein sequences from mass spec analysis.
机译:提供了使用神经网络算法对质谱数据中的特征进行分类和识别的方法。卷积神经网络(CNN)受过训练,可以从未知蛋白质样品中鉴定氨基酸。使用已知的肽序列训练CNN,以预测氨基酸的存在,多样性和频率,肽长度,按特征分类的氨基酸子序列包括脂肪族/芳香族,疏水性/亲水性,正/负电荷及其组合。将训练后的CNN未知的样品的质谱数据离散为一维向量,然后输入到CNN中。可以整合CNN模型,从光谱中确定完整的肽序列,从而从质谱分析中提高可识别蛋白质序列的产量。

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