A multi-modal AI-driven cohort selection tool based on response to loading-phase aflibercept for neovascular age-related macular degeneration: PRECISE study

Author:

Chorev Michal1ORCID,Haderlein Jonas1,Chandra Shruti2,Menon Geeta3,Burton Benjamin4,Pearce Ian5,McKibbin Martin6,Thottarath Sridevi7,Karatsai Eleni7,Chandak Swati7,Kotagiri Ajay8,Talks S9,Grabowska Anna10,Ghanchi Faruque11,Gale Richard12,Hamilton Robin7,Antony Bhavna1,Garnavi Rahil1,Mareels Iven1,Giani Andrea13,Chong Victor7,Sivaprasad Sobha14ORCID

Affiliation:

1. IBM Australia

2. National Institute of Health Research, Moorfields Biomedical Research Centre, Moorfields Eye Hospital

3. Frimley Health NHS Foundation Trus

4. James Paget University Hospitals NHS Foundation Trust,

5. The Royal Liverpool and Broadgreen University Hospitals NHS Foundation Trust

6. Leeds Teaching Hospitals NHS Trust

7. Institute of Ophthalmology, University College London

8. South Tyneside and Sunderland NHS Foundation Trust

9. Newcastle upon Tyne Hospitals NHS Foundation Trust

10. King’s College Hospital NHS Foundation Trust

11. Bradford Teaching Hospitals NHS Foundation Trust

12. York Teaching Hospital NHS Foundation Trust

13. Boehringer Ingelheim

14. NIHR Moorfields Biomedical Research Centre, Moorfields Eye Hospital NHS Foundation Trust

Abstract

Abstract Patients diagnosed with neovascular age-related macular degeneration are commonly treated with anti-vascular endothelial growth factor (anti-VEGF) agents. However, response to treatment is heterogeneous, without a clinical explanation. Predicting suboptimal response at baseline will enable more efficient clinical trial designs for novel, future interventions and facilitate individualised therapies. In this multicentre study, we trained a multi-modal artificial intelligence (AI) system to identify suboptimal responders to the loading-phase of the anti-VEGF agent, aflibercept from baseline characteristics. We collected clinical features and optical coherence tomography scans from 1720 eyes of 1612 patients between 2019 and 2021. We evaluated our AI system as a patient selection method by emulating hypothetical clinical trials of different sizes based on our test set. Our method detected up to 57.6% more suboptimal responders than random selection, and up to 24.2% more than any alternative selection criteria tested. Applying this method to the entry process of candidates into randomised controlled trials may contribute to the success of such trials and further inform personalised care.

Publisher

Research Square Platform LLC

Reference41 articles.

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3. Ishikawa M, Jin D, Sawada Y, Abe S, Yoshitomi T. Future therapies of wet age-related macular degeneration. J Ophthalmol 2015; 2015: 138070.

4. Predictors of anti-VEGF treatment response in neovascular age-related macular degeneration;Finger RP;Surv Ophthalmol,2014

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