Automated Identification and Segmentation of Ellipsoid Zone At-Risk Using Deep Learning on SD-OCT for Predicting Progression in Dry AMD

被引:12
|
作者
Kalra, Gagan [1 ]
Cetin, Hasan [1 ]
Whitney, Jon [1 ]
Yordi, Sari [1 ]
Cakir, Yavuz [1 ]
McConville, Conor [1 ]
Whitmore, Victoria [1 ]
Bonnay, Michelle [1 ]
Reese, Jamie L. [1 ]
Srivastava, Sunil K. [1 ]
Ehlers, Justis P. [1 ]
机构
[1] Cole Eye Inst, Tony & Leona Campane Ctr Excellence, Cleveland Clin, Image Guided Surg & Adv Imaging Res, Cleveland Hts, OH 44195 USA
关键词
ellipsoid zone integrity; photoreceptor damage; age-related macular degeneration; automated feature segmentation; deep learning; quantitative optical coherence tomography; geographic atrophy; progression prediction; clinical trial selection; OPTICAL COHERENCE TOMOGRAPHY; GEOGRAPHIC ATROPHY SECONDARY; MACULAR DEGENERATION; DISEASE; PREVALENCE;
D O I
10.3390/diagnostics13061178
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: The development and testing of a deep learning (DL)-based approach for detection and measurement of regions of Ellipsoid Zone (EZ) At-Risk to study progression in nonexudative age-related macular degeneration (AMD). Methods: Used in DL model training and testing were 341 subjects with nonexudative AMD with or without geographic atrophy (GA). An independent dataset of 120 subjects were used for testing model performance for prediction of GA progression. Accuracy, specificity, sensitivity, and intraclass correlation coefficient (ICC) for DL-based EZ At-Risk percentage area measurement was calculated. Random forest-based feature ranking of EZ At-Risk was compared to previously validated quantitative OCT-based biomarkers. Results: The model achieved a detection accuracy of 99% (sensitivity = 99%; specificity = 100%) for EZ At-Risk. Automatic EZ At-Risk measurement achieved an accuracy of 90% (sensitivity = 90%; specificity = 84%) and the ICC compared to ground truth was high (0.83). In the independent dataset, higher baseline mean EZ At-Risk correlated with higher progression to GA at year 5 (p < 0.001). EZ At-Risk was a top ranked feature in the random forest assessment for GA prediction. Conclusions: This report describes a novel high performance DL-based model for the detection and measurement of EZ At-Risk. This biomarker showed promising results in predicting progression in nonexudative AMD patients.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] Automated Identification and Quantification of Ellipsoid Zone At-Risk Using Deep Learning on SD-OCT in Dry AMD
    Budrevich, Jordan
    Yordi, Sari
    Kalra, Gagan
    Whitney, Jon
    Cetin, Hasan
    Cakir, Yavuz
    Reese, Jamie
    Srivastava, Sunil K.
    Ehlers, Justis P.
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2023, 64 (08)
  • [2] Automated choroid segmentation of SD-OCT volumes using deep learning
    Oakley, Jonathan D.
    Russakoff, Daniel B.
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2019, 60 (11)
  • [3] Automated Drusen Segmentation and Quantification from SD-OCT Images to Predict AMD Progression
    de Sisternes, Luis
    Leng, Theodore
    Chen, Qiang
    Ma, Jeffrey
    Mahendra, Vibha
    Rubin, Daniel
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2013, 54 (15)
  • [4] Automated Segmentation of Hyperreflective Foci on SD-OCT in DME patients using Deep Learning
    Maunz, Andreas
    Jones, Ian Lloyd
    Cohen, Yaniv
    Lu, Huanxiang
    Bachmeier, Isabel
    Yu, Siqing
    von Schulthess, Esther
    Carl, Glittenberg
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2023, 64 (08)
  • [5] Automated prediction of AMD progression from quantified SD-OCT images
    Leng, Theodore
    de Sisternes, Luis
    Chen, Qiang
    Ma, Jeffrey
    Mahendra, Vibha
    Rubin, Daniel
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2013, 54 (15)
  • [6] Improved Automated System to Predict Imminent AMD Progression using SD-OCT Images
    de Sisternes, Luis
    Leng, Theodore
    Rubin, Daniel L.
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2015, 56 (07)
  • [7] Deep ensemble learning for automated non-advanced AMD classification using optimized retinal layer segmentation and SD-OCT scans
    Moradi, Mousa
    Chen, Yu
    Du, Xian
    Seddon, Johanna M.
    COMPUTERS IN BIOLOGY AND MEDICINE, 2023, 154
  • [8] The Impact of Deep Learning Architecture on Fluid Segmentation and Classification on SD-OCT
    Sterben, Sydney
    Whitney, Jon
    Sevgi, Duriye Damla
    Bell, Jordan M.
    Hach, Jenna
    Srivastava, Sunil K.
    Reese, Jamie
    Ehlers, Justis P.
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2021, 62 (08)
  • [9] Classification of SD-OCT images using a Deep learning approach
    Awais, Muhammad
    Mueller, Henning
    Tang, Tong B.
    Meriaudeau, Fabrice
    2017 IEEE INTERNATIONAL CONFERENCE ON SIGNAL AND IMAGE PROCESSING APPLICATIONS (ICSIPA), 2017, : 489 - 492
  • [10] Retinal layer thickness measurement using automated retinal segmentation with SD-OCT
    Soubrane, Gisele
    Aknin, Isabelle
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2015, 56 (07)