4.4 Review

Automated deep learning in ophthalmology: AI that can build AI

期刊

CURRENT OPINION IN OPHTHALMOLOGY
卷 32, 期 5, 页码 406-412

出版社

LIPPINCOTT WILLIAMS & WILKINS
DOI: 10.1097/ICU.0000000000000779

关键词

artificial medical intelligence; automated deep learning; code-free deep learning; deep learning

资金

  1. Springboard Grant from the Moorfields Eye Charity
  2. Moorfields Eye Charity Career Development Award [R190028A]
  3. UK Research & Innovation Future Leaders Fellowship [MR/T019050/1]

向作者/读者索取更多资源

Automated deep learning allows users without coding expertise to develop deep learning algorithms, rapidly establishing itself as a valuable tool for those with limited technical experience. Despite residual challenges, it offers considerable potential in the future of patient management, clinical research and medical education.
Purpose of review The purpose of this review is to describe the current status of automated deep learning in healthcare and to explore and detail the development of these models using commercially available platforms. We highlight key studies demonstrating the effectiveness of this technique and discuss current challenges and future directions of automated deep learning. Recent findings There are several commercially available automated deep learning platforms. Although specific features differ between platforms, they utilise the common approach of supervised learning. Ophthalmology is an exemplar speciality in the area, with a number of recent proof-of-concept studies exploring classification of retinal fundus photographs, optical coherence tomography images and indocyanine green angiography images. Automated deep learning has also demonstrated impressive results in other specialities such as dermatology, radiology and histopathology. Summary Automated deep learning allows users without coding expertise to develop deep learning algorithms. It is rapidly establishing itself as a valuable tool for those with limited technical experience. Despite residual challenges, it offers considerable potential in the future of patient management, clinical research and medical education.

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