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Beyond Performance Metrics: Automatic Deep Learning Retinal OCT Analysis Reproduces Clinical Trial Outcome.

Publication ,  Conference
Loo, J; Clemons, TE; Chew, EY; Friedlander, M; Jaffe, GJ; Farsiu, S
Published in: Ophthalmology
June 2020

To validate the efficacy of a fully automatic, deep learning-based segmentation algorithm beyond conventional performance metrics by measuring the primary outcome of a clinical trial for macular telangiectasia type 2 (MacTel2).Evaluation of diagnostic test or technology.A total of 92 eyes from 62 participants with MacTel2 from a phase 2 clinical trial (NCT01949324) randomized to 1 of 2 treatment groups METHODS: The ellipsoid zone (EZ) defect areas were measured on spectral domain OCT images of each eye at 2 time points (baseline and month 24) by a fully automatic, deep learning-based segmentation algorithm. The change in EZ defect area from baseline to month 24 was calculated and analyzed according to the clinical trial protocol.Difference in the change in EZ defect area from baseline to month 24 between the 2 treatment groups.The difference in the change in EZ defect area from baseline to month 24 between the 2 treatment groups measured by the fully automatic segmentation algorithm was 0.072±0.035 mm2 (P = 0.021). This was comparable to the outcome of the clinical trial using semiautomatic measurements by expert readers, 0.065±0.033 mm2 (P = 0.025).The fully automatic segmentation algorithm was as accurate as semiautomatic expert segmentation to assess EZ defect areas and was able to reliably reproduce the statistically significant primary outcome measure of the clinical trial. This approach, to validate the performance of an automatic segmentation algorithm on the primary clinical trial end point, provides a robust gauge of its clinical applicability.

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Published In

Ophthalmology

DOI

EISSN

1549-4713

ISSN

0161-6420

Publication Date

June 2020

Volume

127

Issue

6

Start / End Page

793 / 801

Related Subject Headings

  • Visual Fields
  • Visual Field Tests
  • Visual Acuity
  • Treatment Outcome
  • Tomography, Optical Coherence
  • Retinal Vessels
  • Retinal Telangiectasis
  • Retinal Photoreceptor Cell Outer Segment
  • Retinal Photoreceptor Cell Inner Segment
  • Reproducibility of Results
 

Citation

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Loo, J., Clemons, T. E., Chew, E. Y., Friedlander, M., Jaffe, G. J., & Farsiu, S. (2020). Beyond Performance Metrics: Automatic Deep Learning Retinal OCT Analysis Reproduces Clinical Trial Outcome. In Ophthalmology (Vol. 127, pp. 793–801). https://doi.org/10.1016/j.ophtha.2019.12.015
Loo, Jessica, Traci E. Clemons, Emily Y. Chew, Martin Friedlander, Glenn J. Jaffe, and Sina Farsiu. “Beyond Performance Metrics: Automatic Deep Learning Retinal OCT Analysis Reproduces Clinical Trial Outcome.” In Ophthalmology, 127:793–801, 2020. https://doi.org/10.1016/j.ophtha.2019.12.015.
Loo J, Clemons TE, Chew EY, Friedlander M, Jaffe GJ, Farsiu S. Beyond Performance Metrics: Automatic Deep Learning Retinal OCT Analysis Reproduces Clinical Trial Outcome. In: Ophthalmology. 2020. p. 793–801.
Loo, Jessica, et al. “Beyond Performance Metrics: Automatic Deep Learning Retinal OCT Analysis Reproduces Clinical Trial Outcome.Ophthalmology, vol. 127, no. 6, 2020, pp. 793–801. Epmc, doi:10.1016/j.ophtha.2019.12.015.
Loo J, Clemons TE, Chew EY, Friedlander M, Jaffe GJ, Farsiu S. Beyond Performance Metrics: Automatic Deep Learning Retinal OCT Analysis Reproduces Clinical Trial Outcome. Ophthalmology. 2020. p. 793–801.
Journal cover image

Published In

Ophthalmology

DOI

EISSN

1549-4713

ISSN

0161-6420

Publication Date

June 2020

Volume

127

Issue

6

Start / End Page

793 / 801

Related Subject Headings

  • Visual Fields
  • Visual Field Tests
  • Visual Acuity
  • Treatment Outcome
  • Tomography, Optical Coherence
  • Retinal Vessels
  • Retinal Telangiectasis
  • Retinal Photoreceptor Cell Outer Segment
  • Retinal Photoreceptor Cell Inner Segment
  • Reproducibility of Results