Deep learning for 'artefact' removal in infrared spectroscopy

被引:29
|
作者
Guo, Shuxia [1 ,2 ,3 ,4 ]
Mayerhoefer, Thomas [1 ,2 ,3 ,4 ]
Pahlow, Susanne [1 ,2 ,3 ,4 ]
Huebner, Uwe [1 ,2 ]
Popp, Juergen [1 ,2 ,3 ,4 ]
Bocklitz, Thomas [1 ,2 ,3 ,4 ]
机构
[1] Leibniz Inst Photon Technol Jena IPHT Jena, D-07745 Jena, Germany
[2] Leibniz Hlth Technol, D-07745 Jena, Germany
[3] Friedrich Schiller Univ Jena, Inst Phys Chem, D-07743 Jena, Germany
[4] Friedrich Schiller Univ Jena, Abbe Ctr Photon, D-07743 Jena, Germany
关键词
FRINGES; SPECTRA;
D O I
10.1039/d0an00917b
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
It has been well recognized that infrared spectra of microscopically heterogeneous media do not merely reflect the absorption of the sample but are influenced also by geometric factors and the wave nature of light causing scattering, reflection, interference,etc. These phenomena often occur simultaneously in complex samples like tissues and manifest themselves as intense baseline profiles, fringes, band distortion and band intensity changes in a measured IR spectrum. The information on the molecular level contained in IR spectra is thus entangled with the geometric structure of a sample and the optical model behind it, which largely hinders the data interpretation and in many cases renders the Beer-Lambert law invalid. It is required to recover the pure absorption (i.e., absorbance) of the sample from the measurement (i.e., apparent absorbance), that is, to remove the 'artefacts' caused merely by optical influences. To do so, we propose an artefact removal approach based on a deep convolutional neural network (CNN), specifically a 1-dimensional U-shape convolutional neural network (1D U-Net), and based our study on poly(methyl methacrylate) (PMMA) as materials. To start, a simulated dataset composed of apparent absorbance and absorbance pairs was generated according to the Mie-theory for PMMA spheres. After a data augmentation procedure, this dataset was utilized to train the 1D U-Net aiming to transform the input apparent absorbance into the corrected absorbance. The performance of the artefact removal was evaluated by the hit-quality-index (HQI) between the corrected and the true absorbance. Based on the prediction and the HQI of two experimental and one simulated independent testing datasets, we could demonstrate that the network was able to retrieve the absorbance very well, even in cases where the absorbance is completely overwhelmed by extremely large 'artefacts'. As the testing datasets bear different patterns of absorbance and 'artefacts' to the training data, the promising correction also indicated a good generalization performance of the 1D U-Net. Finally, the reliability and computational mechanism of the trained network were illustratedviatwo interpretation approaches including a direct visualization of layer-wise outputs as well as a saliency-based method.
引用
收藏
页码:5213 / 5220
页数:8
相关论文
共 50 条
  • [1] Artefact removal from micrographs with deep learning based inpainting
    Squires, Isaac
    Dahari, Amir
    Cooper, Samuel J.
    Kench, Steve
    [J]. DIGITAL DISCOVERY, 2023, 2 (02): : 316 - 326
  • [2] Deep learning-based motion artifact removal in functional near-infrared spectroscopy
    Gao, Yuanyuan
    Chao, Hanqing
    Cavuoto, Lora
    Yan, Pingkun
    Kruger, Uwe
    Norfleet, Jack E.
    Makled, Basiel A.
    Schwaitzberg, Steven
    De, Suvranu
    Intes, Xavier
    [J]. NEUROPHOTONICS, 2022, 9 (04)
  • [3] MOTION ARTEFACT REMOVAL IN FUNCTIONAL NEAR-INFRARED SPECTROSCOPY SIGNALS BASED ON ROBUST ESTIMATION
    Wang, Mengmeng
    Seghouane, Abd-Krim
    [J]. 2019 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2019, : 1145 - 1149
  • [4] Deep Learning and Infrared Spectroscopy: Representation Learning with a β-Variational Autoencoder
    Grossutti, Michael
    D'Amico, Joseph
    Quintal, Jonathan
    MacFarlane, Hugh
    Quirk, Amanda
    Dutcher, John R.
    [J]. JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2022, 13 (25): : 5787 - 5793
  • [5] Deep Learning for Gas Sensing via Infrared Spectroscopy
    Chowdhury, M. Arshad Zahangir
    Oehlschlaeger, Matthew A.
    [J]. SENSORS, 2024, 24 (06)
  • [6] Learning MRI artefact removal with unpaired data
    Liu, Siyuan
    Thung, Kim-Han
    Qu, Liangqiong
    Lin, Weili
    Shen, Dinggang
    Yap, Pew-Thian
    [J]. NATURE MACHINE INTELLIGENCE, 2021, 3 (01) : 60 - 67
  • [7] Application of deep learning and near infrared spectroscopy in cereal analysis
    Ba Tuan Le
    [J]. VIBRATIONAL SPECTROSCOPY, 2020, 106
  • [8] Artefact removal in ground truth deficient fluctuations-based nanoscopy images using deep learning
    Jadhav, Suyog
    Acuna, Sebastian
    Opstad, Ida S.
    Ahluwalia, Balpreet Singh
    Agarwal, Krishna
    Prasad, Dilip K.
    [J]. BIOMEDICAL OPTICS EXPRESS, 2021, 12 (01) : 191 - 210
  • [9] Deep calibration transfer: Transferring deep learning models between infrared spectroscopy instruments
    Mishra, Puneet
    Passos, Dario
    [J]. INFRARED PHYSICS & TECHNOLOGY, 2021, 117
  • [10] Deep learning approaches for detection and removal of ghosting artifacts in MR spectroscopy
    Kyathanahally, Sreenath P.
    Doering, Andre
    Kreis, Roland
    [J]. MAGNETIC RESONANCE IN MEDICINE, 2018, 80 (03) : 851 - 863