Chellamani Ganesh Kumar, N Aishwarya, P Bhavesh Kumar, Reddy Palle Sravan Kumar, Babu Rakesh Thoppaen Suresh
Department of ECE, Amrita School of Engineering, Amrita Vishwa Vidyapeetham, Chennai, India.
Data Scientist Fiserv Inc, USA.
Data Brief. 2025 Jun 17;61:111798. doi: 10.1016/j.dib.2025.111798. eCollection 2025 Aug.
Robot-assisted surgery (RAS) is transforming modern healthcare by enhancing precision, reducing human error, and improving patient outcomes. A crucial step toward fully autonomous robotic surgery is the accurate and real-time recognition of surgical instruments. In this work, we present a comprehensive surgical instrument dataset named as SID-RAS which comprises of 6000 high resolution images categorized into nine distinct classes: cotton, episiotomy scissors, forceps, gloves, hemostats, mayo, scalpel, stitch scissors, and syringe. To ensure dataset's diversity and simulate real world surgical scenarios, multiple augmentations were applied, including motion blur, varying lighting conditions (low light and high brightness), simulated blood stains, and 360-degree rotation. The dataset was evaluated using YOLOv10 (nano, small, medium) and YOLOv11 (nano, small, medium) object detection models, aiming to assess their effectiveness in recognizing and localizing surgical instruments in real-time. On an average, the models have attained 99.3% of mean Average Precision (mAP) and 99.2% F1-score, demonstrating the quality of SID-RAS dataset for surgical tool detection. These findings contribute to the preliminary development of AI-driven robotic surgical assistance systems, which can be extended to various types of surgeries.
机器人辅助手术(RAS)正在通过提高精准度、减少人为失误和改善患者预后改变现代医疗保健。迈向完全自主机器人手术的关键一步是准确实时识别手术器械。在这项工作中,我们展示了一个名为SID-RAS的综合手术器械数据集,它由6000张高分辨率图像组成,分为九个不同类别:棉球、会阴侧切剪、镊子、手套、止血钳、梅奥剪、手术刀、缝线剪和注射器。为确保数据集的多样性并模拟真实世界的手术场景,应用了多种增强方法,包括运动模糊、不同光照条件(低光和高亮度)、模拟血迹以及360度旋转。使用YOLOv10(nano、small、medium)和YOLOv11(nano、small、medium)目标检测模型对该数据集进行评估,旨在评估它们在实时识别和定位手术器械方面的有效性。这些模型平均达到了99.3%的平均精度均值(mAP)和99.2%的F1分数,证明了SID-RAS数据集在手术工具检测方面的质量。这些发现有助于人工智能驱动的机器人手术辅助系统的初步开发,该系统可扩展到各种类型的手术。