TY - JOUR
T1 - Fully automated, deep learning segmentation of oxygen-induced retinopathy images
AU - Xiao, Sa
AU - Bucher, Felicitas
AU - Wu, Yue
AU - Rokem, Ariel
AU - Lee, Cecilia S.
AU - Marra, Kyle V.
AU - Fallon, Regis
AU - Diaz-Aguilar, Sophia
AU - Aguilar, Edith
AU - Friedlander, Martin
AU - Lee, Aaron Y.
N1 - Publisher Copyright:
© 2017 American Society for Clinical Investigation. All rights reserved.
PY - 2017/12/21
Y1 - 2017/12/21
N2 - Oxygen-induced retinopathy (OIR) is a widely used model to study ischemia-driven neovascularization (NV) in the retina and to serve in proof-of-concept studies in evaluating antiangiogenic drugs for ocular, as well as nonocular, diseases. The primary parameters that are analyzed in this mouse model include the percentage of retina with vaso-obliteration (VO) and NV areas. However, quantification of these two key variables comes with a great challenge due to the requirement of human experts to read the images. Human readers are costly, time-consuming, and subject to bias. Using recent advances in machine learning and computer vision, we trained deep learning neural networks using over a thousand segmentations to fully automate segmentation in OIR images. While determining the percentage area of VO, our algorithm achieved a similar range of correlation coefficients to that of expert inter-human correlation coefficients. In addition, our algorithm achieved a higher range of correlation coefficients compared with inter-expert correlation coefficients for quantification of the percentage area of neovascular tufts. In summary, we have created an open-source, fully automated pipeline for the quantification of key values of OIR images using deep learning neural networks.
AB - Oxygen-induced retinopathy (OIR) is a widely used model to study ischemia-driven neovascularization (NV) in the retina and to serve in proof-of-concept studies in evaluating antiangiogenic drugs for ocular, as well as nonocular, diseases. The primary parameters that are analyzed in this mouse model include the percentage of retina with vaso-obliteration (VO) and NV areas. However, quantification of these two key variables comes with a great challenge due to the requirement of human experts to read the images. Human readers are costly, time-consuming, and subject to bias. Using recent advances in machine learning and computer vision, we trained deep learning neural networks using over a thousand segmentations to fully automate segmentation in OIR images. While determining the percentage area of VO, our algorithm achieved a similar range of correlation coefficients to that of expert inter-human correlation coefficients. In addition, our algorithm achieved a higher range of correlation coefficients compared with inter-expert correlation coefficients for quantification of the percentage area of neovascular tufts. In summary, we have created an open-source, fully automated pipeline for the quantification of key values of OIR images using deep learning neural networks.
UR - https://www.scopus.com/pages/publications/85048158179
U2 - 10.1172/jci.insight.97585
DO - 10.1172/jci.insight.97585
M3 - Article
C2 - 29263301
AN - SCOPUS:85048158179
SN - 2379-3708
VL - 2
JO - JCI Insight
JF - JCI Insight
IS - 24
M1 - e97585
ER -