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Abstract - A labeled dataset of simulated phlebotomy procedures for medical AI: polygon annotations for object detection and human-object interaction
This data article presents a dataset of 11,884 labeled images documenting a simulated blood extraction (phlebotomy) procedure performed on a training arm. Images were extracted from high-definition videos recorded under controlled conditions and curated to reduce redundancy using Structural Similarity Index Measure (SSIM) filtering. An automated face-anonymization step was applied to all videos prior to frame selection. Each image contains polygon annotations for five medically relevant classes: syringe, rubber band, disinfectant wipe, gloves, and training arm. The annotations were exported in a segmentation format compatible with modern object detection frameworks (e.g., YOLOv8), ensuring broad usability. This dataset is partitioned into training (70%), validation (15%), and test (15%) subsets and is designed to advance research in medical training automation and human-object interaction. It enables multiple applications, including phlebotomy tool detection, procedural step recognition, workflow analysis, conformance checking, and the development of educational systems that provide structured feedback to medical trainees. The data and accompanying label files are publicly available on Zenodo.
用于医疗AI的模拟静脉穿刺手术标注数据集:面向目标检测与人-物交互的多边形标注 /
A labeled dataset of simulated phlebotomy procedures for medical AI: polygon annotations for object detection and human-object interaction
1️⃣ 一句话总结
这篇论文发布了一个包含近1.2万张标注图像的模拟抽血手术数据集,用于帮助AI系统识别医疗工具和操作步骤,以推动医疗培训自动化和人机交互研究。