Machine learning-assisted mid-infrared spectrochemical fibrillar collagen imaging in clinical tissues

被引:2
|
作者
Adi, Wihan [1 ]
Perez, Bryan E. Rubio [2 ]
Liu, Yuming [3 ]
Runkle, Sydney [4 ]
Eliceiri, Kevin W. [1 ,3 ,5 ]
Yesilkoy, Filiz [1 ]
机构
[1] Univ Wisconsin, Dept Biomed Engn, Madison, WI 53706 USA
[2] Univ Wisconsin, Dept Elect & Comp Engn, Madison, WI USA
[3] Univ Wisconsin, Ctr Quantitat Cell Imaging, Madison, WI USA
[4] Univ Wisconsin, Dept Comp Sci, Madison, WI USA
[5] Morgridge Inst Res, Madison, WI USA
基金
美国国家卫生研究院;
关键词
mid-infrared spectral imaging; machine learning; second harmonic generation; fibrillar collagen imaging; tumor microenvironment; cancer; TRANSFORM IR SPECTROSCOPY; CROSS-LINKS; HISTOPATHOLOGY; FIBROSIS; MICROSCOPY; BAND;
D O I
10.1117/1.JBO.29.9.093511
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Significance Label-free multimodal imaging methods that can provide complementary structural and chemical information from the same sample are critical for comprehensive tissue analyses. These methods are specifically needed to study the complex tumor-microenvironment where fibrillar collagen's architectural changes are associated with cancer progression. To address this need, we present a multimodal computational imaging method where mid-infrared spectral imaging (MIRSI) is employed with second harmonic generation (SHG) microscopy to identify fibrillar collagen in biological tissues. Aim To demonstrate a multimodal approach where a morphology-specific contrast mechanism guides an MIRSI method to detect fibrillar collagen based on its chemical signatures. Approach We trained a supervised machine learning (ML) model using SHG images as ground truth collagen labels to classify fibrillar collagen in biological tissues based on their mid-infrared hyperspectral images. Five human pancreatic tissue samples (sizes are in the order of millimeters) were imaged by both MIRSI and SHG microscopes. In total, 2.8 million MIRSI spectra were used to train a random forest (RF) model. The other 68 million spectra were used to validate the collagen images generated by the RF-MIRSI model in terms of collagen segmentation, orientation, and alignment. Results Compared with the SHG ground truth, the generated RF-MIRSI collagen images achieved a high average boundary F-score (0.8 at 4-pixel thresholds) in the collagen distribution, high correlation (Pearson's R 0.82) in the collagen orientation, and similarly high correlation (Pearson's R 0.66) in the collagen alignment. Conclusions We showed the potential of ML-aided label-free mid-infrared hyperspectral imaging for collagen fiber and tumor microenvironment analysis in tumor pathology samples.
引用
收藏
页数:14
相关论文
共 50 条
  • [31] Deep learning analysis of mid-infrared microscopic imaging data for the diagnosis and classification of human lymphomas
    Zelger, P.
    Brunner, A.
    Zelger, B.
    Willenbacher, E.
    Unterberger, S. H.
    Stalder, R.
    Huck, C. W.
    Willenbacher, W.
    Pallua, J. D.
    JOURNAL OF BIOPHOTONICS, 2023, 16 (11)
  • [32] Design, Implementation, and Clinical Impact of a Machine Learning-Assisted Intervention Bundle to Improve Opioid Prescribing
    Marwaha, Jayson S.
    Beaulieu-Jones, Brendin R.
    Kennedy, Chris J.
    Nathanson, Larry A.
    Robinson, Kortney
    Tandon, Manu
    Brat, Gabriel A.
    NEJM CATALYST INNOVATIONS IN CARE DELIVERY, 2022, 3 (04):
  • [33] A Machine Learning-Assisted Inversion Method for Solving Biomedical Imaging Based on Semi-Experimental Data
    Wang, Jing
    Du, Naike
    Yin, Tiantian
    Song, Rencheng
    Xu, Kuiwen
    Sun, Sheng
    Ye, Xiuzhu
    ELECTRONICS, 2023, 12 (12)
  • [34] Quantitative Prediction of Latent Deterioration in Waterborne Coatings for Wood Using Mid-Infrared Spectroscopy and Machine Learning
    Teramoto, Yoshikuni
    Ito, Takumi
    Yamamoto, Chihiro
    Nishimura, Kaho
    Takano, Toshiyuki
    Ohki, Hironari
    ADVANCED SUSTAINABLE SYSTEMS, 2025,
  • [35] Mid-Infrared Spectroscopy and Machine Learning for Nondestructive Detection of Inapparent Deterioration in Acrylic Waterborne Coatings for Wood
    Teramoto, Yoshikuni
    Ito, Takumi
    Yamamoto, Chihiro
    Takano, Toshiyuki
    Ohki, Hironari
    ADVANCED SUSTAINABLE SYSTEMS, 2024, 8 (02)
  • [36] Machine learning-assisted diagnosis of parotid tumor by using contrast-enhanced CT imaging features
    Li, Jiaqi
    Weng, Jiuling
    Du, Wen
    Gao, Min
    Cui, Haobo
    Jiang, Pingping
    Wang, Haihui
    Peng, Xin
    JOURNAL OF STOMATOLOGY ORAL AND MAXILLOFACIAL SURGERY, 2025, 126 (01)
  • [37] Machine Learning Classifiers for Noninvasive Glucose Detection Using A Single Wavelength Mid-infrared Photoacoustic Spectroscopy
    Aloraynan, Abdulrahman
    Rassel, Shazzad
    Xu, Chao
    Ban, Dayan
    BIOMEDICAL SPECTROSCOPY, MICROSCOPY, AND IMAGING II, 2022, 12144
  • [38] Design of mid-infrared cascade micro-ring sensing devices using a machine learning algorithm
    Yang, Jinghao
    Caruso, Austin
    Lin, Zhihai
    Li, Junyan
    Lin, Pao Tai
    JOURNAL OF THE OPTICAL SOCIETY OF AMERICA B-OPTICAL PHYSICS, 2021, 38 (11) : 3292 - 3300
  • [39] Identification of Pleurotus Ostreatus From Different Producing Areas Based on Mid-Infrared Spectroscopy and Machine Learning
    Yang Cheng-en
    Su Ling
    Feng Wei-zhi
    Zhou Jian-yu
    Wu Hai-wei
    Yuan Yue-ming
    Wang Qi
    SPECTROSCOPY AND SPECTRAL ANALYSIS, 2023, 43 (02) : 577 - 582
  • [40] Plasmonic Mid-Infrared Filter Array-Detector Array Chemical Classifier Based on Machine Learning
    Meng, Jiajun
    Cadusch, Jasper J.
    Crozier, Kenneth B.
    ACS PHOTONICS, 2021, 8 (02) : 648 - 657