A multimodal sensing system for detection of traumatic brain injury

P. Ganapathy, J. Yadegar, Niranajan Kamath, Shantanu H. Joshi, C. Caluser
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Abstract

We propose to develop a portable, handheld, noninvasive solution for accurate screening and real-time monitoring of traumatic brain injury (TBI) in ambulatory/emergency response scenarios. A layered sensing concept that unifies modalities such as a) ultrasound (US) (B-mode, Doppler flow), b) tonometry and c) pulse oximeter to predict TBI, its severity and mode of recommendations for emergency medical service (EMS) personnel is currently investigated. Specifically, we aim to determine novel 3D morphometric parameters of optic nerve sheath (ONS) that can predict elevated intracranial pressure (EICP) from US data. These parameters when combined with intraocular pressure (IOP), blood oxygen saturation (SaO2) and Doppler flow readings of the carotid artery can improve the overall classification accuracy. In addition, we have also developed a preliminary decision-support system (DSS) to provide an automated analysis of subject's brain health status and thereby, recommend further screening, etc. In the demo, we would show the chain of processing starting from capture of our desired signals from a volunteer, pre-processing (reformatting, de-noising) of US data, post-processing of features extracted from the 3D US model and finally, the classification output of the DSS.
一种用于外伤性脑损伤检测的多模态传感系统
我们建议开发一种便携式,手持式,无创的解决方案,用于准确筛查和实时监测门诊/紧急情况下的创伤性脑损伤(TBI)。目前正在研究一种分层传感概念,该概念统一了A)超声(b模式,多普勒血流),b)血压计和c)脉搏血氧计等模式来预测TBI,其严重程度和紧急医疗服务(EMS)人员的建议模式。具体来说,我们的目标是确定视神经鞘(ONS)的新型3D形态测量参数,该参数可以从美国数据中预测颅内压(EICP)升高。这些参数与眼内压(IOP)、血氧饱和度(SaO2)和颈动脉多普勒血流读数相结合可提高整体分类精度。此外,我们还开发了一个初步决策支持系统(DSS),以提供受试者大脑健康状况的自动分析,从而建议进一步筛查等。在演示中,我们将展示从志愿者捕获所需信号开始的处理链,对美国数据进行预处理(重新格式化,去噪),对从3D美国模型中提取的特征进行后处理,最后是DSS的分类输出。
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