4.7 Article

Assessment of a Vision-Based Technique for an Automatic Van Herick Measurement System

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIM.2022.3196323

关键词

Optical imaging; Instruments; Adaptive optics; Biomedical optical imaging; Machine learning; Optical sensors; Cameras; Artificial intelligence (AI); computer vision; convolutional neural network (CNN); machine learning (ML); Van Herick (VH); vision-based measurement (VBM)

资金

  1. Velux Stiftung foundation (ZURICH, SWITZERLAND) [1278]
  2. UniMoRe -FAR Mission Oriented 2021

向作者/读者索取更多资源

The adoption of artificial intelligence methods in the field of instrumentation and measurements is an attractive research area, allowing for automatic measurements and improved test accuracy and diagnostic accessibility.
The adoption of artificial intelligence (AI) methods within the instrumentation and measurements field is nowadays an attractive research area. On the one hand, making machines learn from data how to perform an activity, rather than hard code sequential instructions, is a convenient and effective solution in many modern research areas. On the other hand, AI allows for the compensation of inaccurate or not complete models of specific phenomena or systems. In this context, this article investigates the possibility to exploit suitable machine learning (ML) techniques in a vision-based ophthalmic instrument to perform automatic anterior chamber angle (ACA) measurements. In particular, two convolutional neural network (CNN)-based networks have been identified to automatically classify acquired images and select the ones suitable for the Van Herick procedure. Extensive clinical trials have been conducted by clinicians, from which a realistic and heterogeneous image dataset has been collected. The measurement accuracy of the proposed instrument is derived by extracting measures from the images of the aforementioned dataset, as well as the system performances have been assessed with respect to differences in patients' eye color. Currently, the ACA measurement procedure is performed manually by appropriately trained medical personnel. For this reason, ML and vision-based techniques may greatly improve both test objectiveness and diagnostic accessibility, by enabling an automatic measurement procedure.

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