Convolutional neural networks for vibrational spectroscopic data analysis

被引:310
|
作者
Acquarelli, Jacopo [1 ]
van Laarhoven, Twan [1 ]
Gerretzen, Jan [2 ]
Tran, Thanh N. [2 ,3 ]
Buydens, Lutgarde M. C. [2 ]
Marchiori, Elena [1 ]
机构
[1] Radboud Univ Nijmegen, Inst Comp & Informat Sci, NL-6525 ED Nijmegen, Netherlands
[2] Radboud Univ Nijmegen, Inst Mol & Mat, NL-6525 ED Nijmegen, Netherlands
[3] Merck Sharp & Dohme Ltd, Ctr Math Sci, Oss, Netherlands
关键词
Vibrational spectroscopy; Convolutional neural networks; Preprocessing; MIDINFRARED SPECTROSCOPY; LEAST-SQUARES; TRANSFORM;
D O I
10.1016/j.aca.2016.12.010
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
In this work we show that convolutional neural networks (CNNs) can be efficiently used to classify vibrational spectroscopic data and identify important spectral regions. CNNs are the current state-of-the-art in image classification and speech recognition and can learn interpretable representations of the data. These characteristics make CNNs a good candidate for reducing the need for preprocessing and for highlighting important spectral regions, both of which are crucial steps in the analysis of vibrational spectroscopic data. Chemometric analysis of vibrational spectroscopic data often relies on preprocessing methods involving baseline correction, scatter correction and noise removal, which are applied to the spectra prior to model building. Preprocessing is a critical step because even in simple problems using 'reasonable' preprocessing methods may decrease the performance of the final model. We develop a new CNN based method and provide an accompanying publicly available software. It is based on a simple CNN architecture with a single convolutional layer (a so-called shallow CNN). Our method outperforms standard classification algorithms used in chemometrics (e.g. PLS) in terms of accuracy when applied to non-preprocessed test data (86% average accuracy compared to the 62% achieved by PLS), and it achieves better performance even on preprocessed test data (96% average accuracy compared to the 89% achieved by PIS). For interpretability purposes, our method includes a procedure for finding important spectral regions, thereby facilitating qualitative interpretation of results. (C) 2016 Elsevier B.V. All rights reserved.
引用
收藏
页码:22 / 31
页数:10
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