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System for deep venous thrombosis detection using objective compression measures

机译:使用客观压缩措施的深静脉血栓形成检测系统

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摘要

A system for objective vessel compression assessment for deep venous thrombosis characterization using ultrasound image data and a sensorized ultrasound probe is presented. Two new objective measures calculated from applied force and transverse vessel area are also presented and used to describe vessel compressibility. A modified star-Kalman algorithm is used for feature detection in acquired ultrasound images, and objective measures of vessel compressibility are calculated from the detected features and acquired force and location data from the sensorized probe. A three-dimensional shape model of the examined vessel that includes compressibility measures mapped as colors to its surface is presented on the user interface, as well as a virtual representation of the image plane. The compressibility measures were validated using expert segmentation of healthy and diseased vessels and compared using paired t-tests, which showed a significant difference between healthy and diseased cases for both measures. 100% sensitivity and specificity were obtained for both measures. The system was implemented in real-time (16 Hz) and evaluated using a tissue phantom and on healthy human subjects. Sensitivity was 100% and 60%, while specificity was 97% for both measures when implemented. The initial results for the system and its components are promising.
机译:提出了一种用于使用深层静脉血栓形成进行客观血管压缩评估的系统,该系统使用超声图像数据和传感器化超声探头。还介绍了根据作用力和横向血管面积计算出的两个新的客观量度,并用于描述血管的可压缩性。改进的star-Kalman算法用于获取的超声图像中的特征检测,并根据检测到的特征以及从传感器探头获取的力和位置数据来计算血管可压缩性的客观度量。在用户界面上显示了已检查血管的三维形状模型,其中包括以颜色映射到其表面的可压缩性度量以及图像平面的虚拟表示。可压缩性措施使用健康和患病血管的专家分割进行验证,并使用配对t检验进行比较,这表明健康和患病病例在这两种措施之间均存在显着差异。两种方法均获得100%的敏感性和特异性。该系统是实时(16 Hz)实施的,并使用人体模型对健康的人类受试者进行了评估。两种方法实施时的敏感性分别为100%和60%,特异性为97%。该系统及其组件的初步结果令人鼓舞。

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