Banner Banner

Current and Future View on Artificial Intelligence in Cardiothoracic Surgery

Sandy Engelhardt
Georgii Kostiuchik
Branislav Bezak
Jacob Chacko
Edgar Daeter
Hazem Fallouh
Philippe Grieshaber
Nabil Hussein
Alexander Meyer
Paola Quattroni
Gabriele Romano
Amir H Sadeghi
Mark Hazekamp
Friedhelm Beyersdorf

April 13, 2026

Artificial intelligence (AI) has made significant advancements across various surgical disciplines. Its evolution has been remarkable, transitioning from single-purpose models to sophisticated multi-task foundation models, including multimodal models based on transformers or AI agents including large language models (LLMs). Vision language models and Generative AI are currently transforming the way surgical procedures are analysed. These advancements have the potential to enhance decision-making, precision, and patient outcomes. However, one of the most pressing challenges in surgical AI is data integration. The complex and dynamic nature of the surgical environment makes it difficult to aggregate and utilize diverse data sources effectively. Ensuring seamless integration is crucial for optimizing AI applications in surgery. In this work, we highlight existing resources, key concepts, and notable research efforts in education and training and perioperative support. By showcasing examples from cardiothoracic surgery (CTS) and other fields, we aim to provide insights into AI’s expanding role and the ongoing efforts to enhance its effectiveness in surgical practice.