Machine Learning-Guided Prediction of Central Anterior Chamber Depth Using Slit Lamp Images from a Portable Smartphone Device.

Journal: Biosensors
PMID:

Abstract

There is currently no objective portable screening modality for narrow angles in the community. In this prospective, single-centre image validation study, we used machine learning on slit lamp images taken with a portable smartphone device (MIDAS) to predict the central anterior chamber depth (ACD) of phakic patients with undilated pupils. Patients 60 years or older with no history of laser or intraocular surgery were recruited. Slit lamp images were taken with MIDAS, followed by anterior segment optical coherence tomography (ASOCT; Casia SS-1000, Tomey, Nagoya, Japan). After manual annotation of the anatomical landmarks of the slit lamp photos, machine learning was applied after image processing and feature extraction to predict the ACD. These values were then compared with those acquired from the ASOCT. Sixty-six eyes (right = 39, 59.1%) were included for analysis. The predicted ACD values formed a strong positive correlation with the measured ACD values from ASOCT (R = 0.91 for training data and R = 0.73 for test data). This study suggests the possibility of estimating central ACD using slit lamp images taken from portable devices.

Authors

  • David Chen
    Temerty Faculty of Medicine, University of Toronto, Toronto, ON, Canada.
  • Yvonne Ho
    Keio-NUS CUTE Center, Smart Systems Institute, National University of Singapore, Singapore 117602, Singapore.
  • Yuki Sasa
    Keio-NUS CUTE Center, Smart Systems Institute, National University of Singapore, Singapore 117602, Singapore.
  • Jieying Lee
    Keio-NUS CUTE Center, Smart Systems Institute, National University of Singapore, Singapore 117602, Singapore.
  • Ching Chiuan Yen
    Keio-NUS CUTE Center, Smart Systems Institute, National University of Singapore, Singapore 117602, Singapore.
  • Clement Tan
    Department of Ophthalmology, National University Hospital, Singapore 119228, Singapore.