4.1 Article

Deep Learning Applications in Surgery: Current Uses and Future Directions

期刊

AMERICAN SURGEON
卷 89, 期 1, 页码 36-42

出版社

SAGE PUBLICATIONS INC
DOI: 10.1177/00031348221101490

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machine learning; artificial intelligence; deep learning; neural networks; surgery; surgical technology; computer vision; surgical innovation

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Deep learning has gained significant traction in surgical fields, enabling feature extraction and pattern recognition of complex, large-volume data. It is being applied to optimize surgical processes and improve patient outcomes.
Deep learning (DL) is a subset of machine learning that is rapidly gaining traction in surgical fields. Its tremendous capacity for powerful data-driven problem-solving has generated computational breakthroughs in many realms, with the fields of medicine and surgery becoming increasingly prominent avenues. Through its multi-layer architecture of interconnected neural networks, DL enables feature extraction and pattern recognition of highly complex and large-volume data. Across various surgical specialties, DL is being applied to optimize both preoperative planning and intraoperative performance in new and innovative ways. Surgeons are now able to integrate deep learning tools into their practice to improve patient safety and outcomes. Through this review, we explore the applications of deep learning in surgery and related subspecialties with an aim to shed light on the practical utilization of this technology in the present and near future.

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