用于远程创伤评估的半自主机器人系统

B. Mathur, A. Topiwala, Saul Schaffer, M. Kam, H. Saeidi, T. Fleiter, A. Krieger
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引用次数: 8

摘要

在美国,创伤是导致死亡的主要原因之一,高达29%的院前创伤死亡归因于不受控制的出血。本文报道了一种半自主机器人系统,该系统能够使用2D和3D图像分析来评估创伤,并在前往医院的途中使用创伤超声(FAST)进行远程集中评估,以进行早期创伤诊断和更快地初始化挽救生命的护理。该系统能够使用测量的脐幻影尺寸和位置准确计算患者特定幻影的FAST扫描位置。该系统能够准确地对伤口进行分类和定位,因此在超声扫描期间可以避免伤口。这些物体的定位精度为0.94±0.179cm, FAST的检查位置估计精度为2.2±1.88cm。一名放射科医生使用该系统成功完成了对幻体的远程快速扫描,图像质量优于手动扫描,证明了该系统的可行性。
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A Semi-Autonomous Robotic System for Remote Trauma Assessment
Trauma is among the leading causes of death in the United States with up to 29% of pre-hospital trauma deaths attributed to uncontrolled hemorrhages. This paper reports a semi-autonomous robotic system capable of assessing trauma using 2D and 3D image analysis and enabling remote focused assessment with sonography for trauma (FAST) en route to the hospital for earlier trauma diagnosis and faster initialization of life saving care. The system was able to accurately calculate FAST scan positions of patient specific phantoms using the measured phantom sizes and positions of the umbilicus. The system was capable of accurately classifying and localizing wounds, so they can be avoided during the ultrasound scan. These objects were localized with an accuracy of 0.94 ± 0.179cm and FAST exam locations were estimated with an accuracy of 2.2 ± 1.88cm. A radiologist successfully completed a remote FAST scan of the phantom using the system with improved image quality over manual scans, demonstrating feasibility of the system.
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