Feasibility of simple machine learning approaches to support detection of non-glaucomatous visual fields in future automated glaucoma clinics.
Peter Benjamin Michael ThomasThomas ChanThomas NixonBrinda MuthusamyAndrew WhitePublished in: Eye (London, England) (2019)
Traditional artificial neural networks perform well at detecting chiasmal field defects among a glaucoma cohort by inspecting bilateral field representations. Increasing automation of care means we will need robust methods of automatically diagnosing and managing disease. This work shows that machine learning can perform a useful role in diagnostic oversight in highly automated glaucoma clinics, enhancing patient safety.
Keyphrases
- machine learning
- patient safety
- optic nerve
- neural network
- quality improvement
- primary care
- deep learning
- artificial intelligence
- big data
- healthcare
- cataract surgery
- palliative care
- high throughput
- working memory
- optical coherence tomography
- current status
- real time pcr
- case report
- chronic pain
- sensitive detection
- loop mediated isothermal amplification
- affordable care act