Determination of probability of causative pathogen in infectious keratitis using deep learning algorithm of slit-lamp images.

Journal: Scientific reports
Published Date:

Abstract

Corneal opacities are important causes of blindness, and their major etiology is infectious keratitis. Slit-lamp examinations are commonly used to determine the causative pathogen; however, their diagnostic accuracy is low even for experienced ophthalmologists. To characterize the "face" of an infected cornea, we have adapted a deep learning architecture used for facial recognition and applied it to determine a probability score for a specific pathogen causing keratitis. To record the diverse features and mitigate the uncertainty, batches of probability scores of 4 serial images taken from many angles or fluorescence staining were learned for score and decision level fusion using a gradient boosting decision tree. A total of 4306 slit-lamp images including 312 images obtained by internet publications on keratitis by bacteria, fungi, acanthamoeba, and herpes simplex virus (HSV) were studied. The created algorithm had a high overall accuracy of diagnosis, e.g., the accuracy/area under the curve for acanthamoeba was 97.9%/0.995, bacteria was 90.7%/0.963, fungi was 95.0%/0.975, and HSV was 92.3%/0.946, by group K-fold validation, and it was robust to even the low resolution web images. We suggest that our hybrid deep learning-based algorithm be used as a simple and accurate method for computer-assisted diagnosis of infectious keratitis.

Authors

  • Ayumi Koyama
    Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan.
  • Dai Miyazaki
    Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan. miyazaki-ttr@umin.ac.jp.
  • Yuji Nakagawa
    Technology Laboratory, CRESCO LTD., Tokyo, Japan.
  • Yuji Ayatsuka
    Cresco Ltd, Technology Laboratory, Tokyo, Japan.
  • Hitomi Miyake
    Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan.
  • Fumie Ehara
    Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan.
  • Shin-Ichi Sasaki
    Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan.
  • Yumiko Shimizu
    Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan.
  • Yoshitsugu Inoue
    Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan.