Neural Network Model of eFAST Target Prediction for Robotic Ultrasound Diagnostics in Austere Environments

Jaeyeon Lee, Ethan Quist, Stan German, Michael Kim, Nathaniel Fisher
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引用次数: 1

Abstract

Modern robotic technology has the potential to solve complex problems in healthcare, such as providing technology to support medical care in austere environments characterized by the restricted availability of local medical professionals or with high patient-to-caregiver ratios. Medical robots can be deployed as a force multiplier in situations when skilled healthcare providers are limited and can reduce the risk of medical failures during diagnostic and intervention procedures. One example is detecting free-flowing blood in the abdomen and pneumothorax by performing the extended Focused Assessment with Sonography for Trauma (eFAST) ultrasound diagnostics examination. We developed a semi-autonomous robotic ultrasound system that intelligently perceives the patient’s pose and determines the corresponding eFAST configuration for the robotic-assisted procedure. The dynamic pose of the patient is identified in real-time using an optimization-based algorithm, while the eFAST configurations are predicted by a neural network model. A robot manipulator holding an ultrasound device is autonomously driven to the body-normal vector of each eFAST target. This approach accomplishes robust prediction for non-linear problems, even with dynamic posture of the detected body in highly unstructured sites with variable patient shape and pose.
恶劣环境下机器人超声诊断eFAST目标预测的神经网络模型
现代机器人技术具有解决医疗保健领域复杂问题的潜力,例如在当地医疗专业人员有限或患者与护理人员比例较高的严峻环境中提供技术支持医疗保健。在熟练的医疗保健提供者有限的情况下,医疗机器人可以作为力量倍增器部署,并可以降低诊断和干预过程中医疗失败的风险。一个例子是通过使用创伤超声诊断检查(eFAST)进行扩展的聚焦评估来检测腹部和气胸的自由流动血液。我们开发了一种半自动机器人超声系统,它可以智能地感知患者的姿势,并为机器人辅助手术确定相应的eFAST配置。采用基于优化的算法实时识别患者的动态姿态,同时通过神经网络模型预测eFAST的配置。手持超声设备的机械臂被自动驱动到每个eFAST目标的体法向量上。该方法实现了对非线性问题的鲁棒预测,即使在高度非结构化的部位,具有可变的患者形状和姿势的检测身体的动态姿态。
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