Automated Extraction of Skin Wound Healing Biomarkers From In Vivo Label-Free Multiphoton Microscopy Using Convolutional Neural Networks

被引:6
|
作者
Jones, Jake D. [1 ]
Rodriguez, Marcos R. [1 ]
Quinn, Kyle P. [1 ]
机构
[1] Univ Arkansas, Dept Biomed Engn, 123 John A White Jr,Engn Hall, Fayetteville, AR 72701 USA
关键词
convolutional neural network; deep learning; segmentation; in vivo; multiphoton microscopy; optical redox ratio; wound healing; PYRIDINE-NUCLEOTIDE; CELLS; LOCALIZATION; MORPHOLOGY; COLLAGEN; TISSUES; HEALTH; NADH;
D O I
10.1002/lsm.23375
中图分类号
R75 [皮肤病学与性病学];
学科分类号
100206 ;
摘要
Background and Objectives: Histological analysis is a gold standard technique for studying impaired skin wound healing. Label-free multiphoton microscopy (MPM) can provide natural image contrast similar to histological sections and quantitative metabolic information using NADH and FAD autofluorescence. However, MPM analysis requires time-intensive manual segmentation of specific wound tissue regions limiting the practicality and usage of the technology for monitoring wounds. The goal of this study was to train a series of convolutional neural networks (CNNs) to segment MPM images of skin wounds to automate image processing and quantification of wound geometry and metabolism. Study Design/Materials and Methods: Two CNNs with a 4-layer U-Net architecture were trained to segment unstained skin wound tissue sections and in vivo z-stacks of the wound edge. The wound section CNN used 380 distinct MPM images while the in vivo CNN used 5,848 with both image sets being randomly distributed to training, validation, and test sets following a 70%, 20%, and 10% split. The accuracy of each network was evaluated on the test set of images, and the effectiveness of automated measurement of wound geometry and optical redox ratio were compared with hand traced outputs of six unstained wound sections and 69 wound edge z-stacks from eight mice. Results: The MPM wound section CNN had an overall accuracy of 92.83%. Measurements of epidermal/dermal thickness, wound depth, wound width, and % re-epithelialization were within 10% error when evaluated on six full wound sections from days 3, 5, and 10 post-wounding that were not included in the training set. The in vivo wound z-stack CNN had an overall accuracy of 89.66% and was able to isolate the wound edge epithelium in z-stacks from eight mice across post-wound time points to quantify the optical redox ratio within 5% of what was recorded by manual segmentations. Conclusion: The CNNs trained and presented in this study can accurately segment MPM imaged wound sections and in vivo z-stacks to enable automated and rapid calculation of wound geometry and metabolism. Although MPM is a noninvasive imaging modality well suited to imaging living wound tissue, its use has been limited by time-intensive user segmentation. The use of CNNs for automated image segmentation demonstrate that it is possible for MPM to deliver near real-time quantitative readouts of tissue structure and function. Lasers Surg. Med. (c) 2021 Wiley Periodicals LLC
引用
收藏
页码:1086 / 1095
页数:10
相关论文
共 50 条
  • [1] Non-invasive in vivo characterization of skin wound healing using label-free multiphoton microscopy
    Jones, Jake D.
    Majid, Fariah
    Ramser, Hallie
    Quinn, Kyle P.
    PHOTONICS IN DERMATOLOGY AND PLASTIC SURGERY, 2017, 10037
  • [2] Using In Vivo Label-free Multiphoton Microscopy to Monitor Wound Metabolism
    Jones, Jake D.
    Ramser, Hallie E.
    Woessner, Alan
    Quinn, Kyle P.
    WOUND REPAIR AND REGENERATION, 2018, 26 (01) : A10 - A10
  • [3] Label-free in vivo imaging of Drosophila melanogaster by multiphoton microscopy
    Lin, Chiao-Ying
    Hovhannisyan, Vladimir
    Wu, June-Tai
    Lin, Sung-Jan
    Lin, Chii-Wann
    Chen, Horng
    Dong, Chen-Yuan
    MULTIPHOTON MICROSCOPY IN THE BIOMEDICAL SCIENCES VIII, 2008, 6860
  • [4] QUANTITATIVE LABEL-FREE OPTICAL BIOMARKERS OF DIABETIC WOUND HEALING
    Quinn, K. P.
    Leal, E. C.
    Tellechea, A.
    Kafanas, A.
    Auster, M. E.
    Veves, A.
    Georgakoudi, I.
    WOUND REPAIR AND REGENERATION, 2016, 24 (02) : A21 - A21
  • [5] Automated classification of pancreatic neuroendocrine tumors using label-free multiphoton microscopy and deep learning
    Guan, Shuyuan
    Daigle, Noelle
    Sawyer, Travis W.
    LABEL-FREE BIOMEDICAL IMAGING AND SENSING, LBIS 2024, 2024, 12854
  • [6] Label-Free Imaging of Gastrointestinal Disease Using Multiphoton Microscopy
    Waldner, Maximilian J.
    Foersch, Sebastian
    Schuermann, Sebastian
    Atreya, Raja
    Neumann, Helmut
    Neufert, Clemens
    Friedrich, Oliver
    Neurath, Markus F.
    GASTROENTEROLOGY, 2013, 144 (05) : S890 - S891
  • [7] Label-Free Detection of Breast Masses Using Multiphoton Microscopy
    Wu, Xiufeng
    Chen, Gang
    Lu, Jianping
    Zhu, Weifeng
    Qiu, Jingting
    Chen, Jianxin
    Xie, Shusen
    Zhuo, Shuangmu
    Yan, Jun
    PLOS ONE, 2013, 8 (06):
  • [8] Label-free identification of intestinal metaplasia in the stomach using multiphoton microscopy
    Wu, G.
    Wei, J.
    Zheng, Z.
    Ye, J.
    Zeng, S.
    LASER PHYSICS LETTERS, 2014, 11 (06)
  • [9] Label-free monitoring of colonic cancer progression using multiphoton microscopy
    Zhuo, Shuangmu
    Yan, Jun
    Chen, Gang
    Chen, Jianxin
    Liu, Yuchun
    Lu, Jianping
    Zhu, Xiaoqin
    Jiang, Xingshan
    Xie, Shusen
    BIOMEDICAL OPTICS EXPRESS, 2011, 2 (03): : 615 - 619
  • [10] Rapid, label-free identification of cerebellar structures using multiphoton microscopy
    Wang, Shu
    Chen, Xiuqiang
    Wu, Weilin
    Chen, Zhida
    Du, Huiping
    Wang, Xingfu
    Fu, Yu Vincent
    Hu, Liwen
    Chen, Jianxin
    JOURNAL OF BIOPHOTONICS, 2017, 10 (12) : 1617 - 1626