Artificial intelligence for the analysis of intracoronary optical coherence tomography images: a systematic review
European Heart Journal - Digital Health

Abstract
Intracoronary optical coherence tomography (OCT) is a valuable tool for, among others, periprocedural guidance of percutaneous coronary revascularization and the assessment of stent failure. However, manual OCT image interpretation is challenging and time-consuming, which limits widespread clinical adoption. Automated analysis of OCT frames using artificial intelligence (AI) offers a potential solution. For example, AI can be employed for automated OCT image interpretation, plaque quantification, and clinical event prediction. Many AI models for these purposes have been proposed in recent years. However, these models have not been systematically evaluated in terms of model characteristics, performances, and bias. We performed a systematic review of AI models developed for OCT analysis to evaluate the trends and performances, including a systematic evaluation of potential sources of bias in model development and evaluation.
Contributors

Ruben G A van der Waerden
Author

Thijs J Luttikholt
Author

Pierandrea Cancian
Author

Joske L van der Zande
Author

Gregg W Stone
Author

Elvin Kedhi
Author

Dario Pellegrini
Author

Giulio Guagliumi
Author

Shamir R Mehta
Author

Natalia Pinilla-Echeverri
Author

Raúl Moreno
Author

Lorenz Räber
Author

Tomasz Roleder
Author
Faculty of Medicine, Wroclaw Univerisity of Science and Technology Wroclaw , Poland

Bram van Ginneken
Author

Clara I Sánchez
Author

Ivana Išgum
Author




