AI-based monitoring of retinal fluid in disease activity and under therapy

被引:47
作者
Schmidt-Erfurth, Ursula [1 ]
Reiter, Gregor S. [1 ]
Riedl, Sophie [1 ]
Seeboeck, Philipp [1 ]
Vogl, Wolf-Dieter [1 ]
Blodi, Barbara A. [2 ]
Domalpally, Amitha [2 ]
Fawzi, Amani [3 ]
Jia, Yali [4 ]
Sarraf, David [5 ]
Bogunovic, Hrvoje [1 ]
机构
[1] Med Univ Vienna, Dept Ophthalmol, Spitalgasse 23, A-1090 Vienna, Austria
[2] Univ Wisconsin, Fundus Photograph Reading Ctr, Dept Ophthalmol & Visual Sci, Madison, WI USA
[3] Northwestern Univ, Feinberg Sch Med, Chicago, IL 60611 USA
[4] Oregon Hlth & Sci Univ, Casey Eye Inst, Ophthalmol, Portland, OR 97201 USA
[5] Univ Calif Los Angeles, Stein Eye Inst, Los Angeles, CA USA
关键词
Optical coherence tomography (OCT); Deep learning (DL); Intraretinal fluid (IRF); Subretinal fluid (SRF); Fluid; function correlation; Automated algorithms; OPTICAL COHERENCE TOMOGRAPHY; ENDOTHELIAL GROWTH-FACTOR; DIABETIC MACULAR EDEMA; ANTI-VEGF TREATMENT; TREAT-AND-EXTEND; PIGMENT EPITHELIAL DETACHMENT; MIXED EFFECTS MODEL; VISUAL-ACUITY; CHOROIDAL NEOVASCULARIZATION; SUBRETINAL FLUID;
D O I
10.1016/j.preteyeres.2021.100972
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
Retinal fluid as the major biomarker in exudative macular disease is accurately visualized by high-resolution three-dimensional optical coherence tomography (OCT), which is used world-wide as a diagnostic gold standard largely replacing clinical examination. Artificial intelligence (AI) with its capability to objectively identify, localize and quantify fluid introduces fully automated tools into OCT imaging for personalized disease management. Deep learning performance has already proven superior to human experts, including physicians and certified readers, in terms of accuracy and speed. Reproducible measurement of retinal fluid relies on precise AIbased segmentation methods that assign a label to each OCT voxel denoting its fluid type such as intraretinal fluid (IRF) and subretinal fluid (SRF) or pigment epithelial detachment (PED) and its location within the central 1-, 3- and 6-mm macular area. Such reliable analysis is most relevant to reflect differences in pathophysiological mechanisms and impacts on retinal function, and the dynamics of fluid resolution during therapy with different regimens and substances. Yet, an in-depth understanding of the mode of action of supervised and unsupervised learning, the functionality of a convolutional neural net (CNN) and various network architectures is needed. Greater insight regarding adequate methods for performance, validation assessment, and device- and scanningpattern-dependent variations is necessary to empower ophthalmologists to become qualified AI users. Fluid/ function correlation can lead to a better definition of valid fluid variables relevant for optimal outcomes on an individual and a population level. AI-based fluid analysis opens the way for precision medicine in real-world practice of the leading retinal diseases of modern times.
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页数:42
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共 304 条
  • [1] CO2-induced ion and fluid transport in human retinal pigment epithelium
    Adijanto, Jeffrey
    Banzon, Tina
    Jalickee, Stephen
    Wang, Nam S.
    Miller, Sheldon S.
    [J]. JOURNAL OF GENERAL PHYSIOLOGY, 2009, 133 (06) : 603 - 622
  • [2] Commentary: Hyperreflective dots - An imaging biomarker of inflammation?
    Agarwal, Aniruddha
    [J]. INDIAN JOURNAL OF OPHTHALMOLOGY, 2019, 67 (11) : 1855 - 1856
  • [3] Ahlers Christian, 2008, Ophthalmology, V115, pe39, DOI 10.1016/j.ophtha.2008.05.017
  • [4] Three-Dimensional Configuration of Subretinal Fluid in Central Serous Chorioretinopathy
    Ahn, Soh-Eun
    Oh, Jaeryung
    Oh, Jong-Hyun
    Oh, In Kyung
    Kim, Seong-Woo
    Huh, Kuhl
    [J]. INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2013, 54 (09) : 5944 - 5952
  • [5] Rationale for the Diabetic Retinopathy Clinical Research Network Treatment Protocol for Center-Involved Diabetic Macular Edema
    Aiello, Lloyd Paul
    Beck, Roy W.
    Bressler, Neil M.
    Browning, David J.
    Chalam, K. V.
    Davis, Matthew
    Ferris, Frederick L., III
    Glassman, Adam R.
    Maturi, Raj K.
    Stockdale, Cynthia R.
    Topping, Trexler M.
    [J]. OPHTHALMOLOGY, 2011, 118 (12) : E5 - E14
  • [6] QUANTITATIVE OPTICAL COHERENCE TOMOGRAPHY ANGIOGRAPHY FEATURES FOR OBJECTIVE CLASSIFICATION AND STAGING OF DIABETIC RETINOPATHY
    Alam, Minhaj
    Zhang, Yue
    Lim, Jennifer, I
    Chan, Robison V. P.
    Yang, Min
    Yao, Xincheng
    [J]. RETINA-THE JOURNAL OF RETINAL AND VITREOUS DISEASES, 2020, 40 (02): : 322 - 332
  • [7] American Society of Retina Specialists, 2020, GLOB TRENDS RET
  • [8] Antonetti D A, 1999, Semin Ophthalmol, V14, P240, DOI 10.3109/08820539909069543
  • [9] Bab-Hadiashar A., 2018, RETOUCH RETINAL OCT
  • [10] Detection of Nonexudative Choroidal Neovascularization and Progression to Exudative Choroidal Neovascularization Using OCT Angiography
    Bailey, Steven T.
    Thaware, Omkar
    Wang, Jie
    Hagag, Ahmed M.
    Zhang, Xinbo
    Flaxel, Christina J.
    Lauer, Andreas K.
    Hwang, Thomas S.
    Lin, Phoebe
    Huang, David
    Jia, Yali
    [J]. OPHTHALMOLOGY RETINA, 2019, 3 (08): : 629 - 636