A Deep Learning Approach to Digitally Stain Optical Coherence Tomography Images of the Optic Nerve Head

被引:74
|
作者
Devalla, Sripad Krishna [1 ]
Chin, Khai Sing [2 ]
Mari, Jean-Martial [3 ]
Tun, Tin A. [4 ]
Strouthidis, Nicholas G. [4 ,5 ,6 ,7 ]
Aung, Tin [4 ,8 ]
Thiery, Alexandre H. [2 ]
Girard, Michael J. A. [1 ,4 ]
机构
[1] Natl Univ Singapore, Fac Engn, Dept Biomed Engn, Ophthalm Engn & Innovat Lab, Singapore, Singapore
[2] Natl Univ Singapore, Dept Stat & Appl Probabil, 6 Sci Dr 2, Singapore 17546, Singapore
[3] Univ Polynesie Francaise, GePaSud, Tahiti, French Polynesi, France
[4] Singapore Natl Eye Ctr, Singapore Eye Res Inst, Singapore, Singapore
[5] Moorfields Eye Hosp NHS Fdn Trust, NIHR Biomed Res Ctr, London, England
[6] UCL Inst Ophthalmol, London, England
[7] Univ Sydney, Discipline Clin Ophthalmol & Eye Hlth, Sydney, NSW, Australia
[8] Natl Univ Singapore, Yong Loo Lin Sch Med, Singapore, Singapore
基金
英国医学研究理事会;
关键词
glaucoma; artificial intelligence; deep learning; optic nerve head; optical coherence tomography; digital staining; adaptive compensation; LAMINA-CRIBROSA VISIBILITY; FIBER LAYER THICKNESS; AUTOMATIC SEGMENTATION; OCT IMAGES; DEPTH; ENHANCEMENT; DEFORMATION; MORPHOLOGY; DEFECTS; HEALTHY;
D O I
10.1167/iovs.17-22617
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
PURPOSE. To develop a deep learning approach to digitally stain optical coherence tomography (OCT) images of the optic nerve head (ONH). METHODS. A horizontal B-scan was acquired through the center of the ONH using OCT (Spectralis) for one eye of each of 100 subjects (40 healthy and 60 glaucoma). All images were enhanced using adaptive compensation. A custom deep learning network was then designed and trained with the compensated images to digitally stain (i.e., highlight) six tissue layers of the ONH. The accuracy of our algorithm was assessed (against manual segmentations) using the dice coefficient, sensitivity, specificity, intersection over union (IU), and accuracy. We studied the effect of compensation, number of training images, and performance comparison between glaucoma and healthy subjects. RESULTS. For images it had not yet assessed, our algorithm was able to digitally stain the retinal nerve fiber layer + prelamina, the RPE, all other retinal layers, the choroid, and the peripapillary sclera and lamina cribrosa. For all tissues, the dice coefficient, sensitivity, specificity, IU, and accuracy (mean) were 0.84 +/- 0.03, 0.92 +/- 0.03, 0.99 +/- 0.00, 0.89 +/- 0.03, and 0.94 +/- 0.02, respectively. Our algorithm performed significantly better when compensated images were used for training (P < 0.001). Besides offering a good reliability, digital staining also performed well on OCT images of both glaucoma and healthy individuals. CONCLUSIONS. Our deep learning algorithm can simultaneously stain the neural and connective tissues of the ONH, offering a framework to automatically measure multiple key structural parameters of the ONH that may be critical to improve glaucoma management.
引用
收藏
页码:63 / 74
页数:12
相关论文
共 50 条
  • [1] A Device-Independent Deep Learning Approach to Digitally Stain Optical Coherence Tomography Images of the Optic Nerve Head
    Devalla, Sripad Krishna
    Mari, Jean-Martial
    Tun, Tin A.
    Chin, Khai Sing
    Strouthidis, NIcholas
    Aung, Tin
    Thiery, Alexandre H.
    Girard, Michael J. A.
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2018, 59 (09)
  • [2] A Deep Learning Approach to Denoise Optical Coherence Tomography Images of the Optic Nerve Head
    Devalla, Sripad Krishna
    Subramanian, Giridhar
    Tan Hung Pham
    Wang, Xiaofei
    Perera, Shamira
    Tun, Tin A.
    Aung, Tin
    Schmetterer, Leopold
    Thiery, Alexandre H.
    Girard, Michael J. A.
    SCIENTIFIC REPORTS, 2019, 9 (1)
  • [3] A Deep Learning Approach to Denoise Optical Coherence Tomography Images of the Optic Nerve Head
    Sripad Krishna Devalla
    Giridhar Subramanian
    Tan Hung Pham
    Xiaofei Wang
    Shamira Perera
    Tin A. Tun
    Tin Aung
    Leopold Schmetterer
    Alexandre H. Thiéry
    Michaël J. A. Girard
    Scientific Reports, 9
  • [4] Characteristics of Optic Nerve Head Drusen on Optical Coherence Tomography Images
    Wester, Sara Tullis
    Fantes, Francisco E.
    Lam, Byron L.
    Anderson, Douglas R.
    McSoley, John J.
    Knighton, Robert W.
    OPHTHALMIC SURGERY LASERS & IMAGING, 2010, 41 (01) : 83 - 90
  • [5] A Digital Staining Algorithm for Optical Coherence Tomography Images of the Optic Nerve Head
    Mari, Jean-Martial
    Aung, Tin
    Cheng, Ching-Yu
    Strouthidis, Nicholas G.
    Girard, Michael J. A.
    TRANSLATIONAL VISION SCIENCE & TECHNOLOGY, 2017, 6 (01):
  • [6] Optic Nerve Head Diagnostics with Optical Coherence Tomography
    Unterlauft, J. D.
    Tegetmeyer, H.
    KLINISCHE MONATSBLATTER FUR AUGENHEILKUNDE, 2018, 235 (01) : 47 - 57
  • [7] Optical Coherence Tomography in Optic Nerve Head Avulsion
    Murchison, Ann P.
    Affel, Elizabeth L.
    Garg, Sunir J.
    Bilyk, Jurij R.
    ORBIT-AN INTERNATIONAL JOURNAL ON ORBITAL DISORDERS AND FACIAL RECONSTRUCTIVE SURGERY, 2012, 31 (02): : 97 - 101
  • [8] Comparison of Deep Learning Glaucoma Detection Using Optic Nerve Head Fundus Photos and Optical Coherence Tomography
    Christopher, Mark
    Bowd, Christopher
    Walker, Evan
    Belghith, Akram
    Goldbaum, Michael Henry
    Rezapour, Jasmin
    Fazio, Massimo A.
    Girkin, Christopher A.
    De Moraes, Gustavo
    Liebmann, Jeffrey M.
    Weinreb, Robert N.
    Grzybowski, Andrzej
    Zangwill, Linda
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2022, 63 (07)
  • [9] Deep Learning Prediction of Visual Field Combining Optic Nerve Head and Macular Optical Coherence Tomography Scans
    Shi, Min
    Tian, Yu
    Luo, Yan
    Eslami, Mohammad
    Hashemabad, Saber Kazeminasab
    Elze, Tobias
    Wang, Mengyu
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2023, 64 (09)
  • [10] Optic nerve head segmentation using fundus images and optical coherence tomography images for glaucoma detection
    Babu, T. R. Ganesh
    Devi, S. Shenbaga
    Venkatesh, R.
    BIOMEDICAL PAPERS-OLOMOUC, 2015, 159 (04): : 607 - 615