Smart Operation Theatre: An AI-based System for Surgical Gauze Counting
Saraf Krish, Cai Yiyu, Huang Li Hui

TL;DR
This paper presents an AI-based system utilizing YOLOv5 for real-time surgical gauze counting, improving accuracy and speed, and addressing manual counting limitations during surgeries to prevent Gossypiboma.
Contribution
The development of an integrated AI system with enhanced accuracy and speed for gauze counting in operating theatres, incorporating manual adjustments and trained on a large dataset.
Findings
Increased frame rate from 8 to 15 FPS.
Improved accuracy with an integrated model for humans and gauzes.
System supports manual count adjustments for reliability.
Abstract
During surgeries, there is a risk of medical gauzes being left inside patients' bodies, leading to "Gossypiboma" in patients and can cause serious complications in patients and also lead to legal problems for hospitals from malpractice lawsuits and regulatory penalties. Diagnosis depends on imaging methods such as X-rays or CT scans, and the usual treatment involves surgical excision. Prevention methods, such as manual counts and RFID-integrated gauzes, aim to minimize gossypiboma risks. However, manual tallying of 100s of gauzes by nurses is time-consuming and diverts resources from patient care. In partnership with Singapore General Hospital (SGH) we have developed a new prevention method, an AI-based system for gauze counting in surgical settings. Utilizing real-time video surveillance and object recognition technology powered by YOLOv5, a Deep Learning model was designed to monitor…
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Taxonomy
TopicsHemostasis and retained surgical items · Pressure Ulcer Prevention and Management · Traumatic Ocular and Foreign Body Injuries
