Rib detection using pitch-catch ultrasound and classification algorithms for a novel ultrasound therapy device.

Claire R W Kaiser, Adam B Tuma, Maryam Zebarjadi, Daniel P Zachs, Anna J Organ, Hubert H Lim, Morgan N Collins
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Abstract

Background: Noninvasive ultrasound (US) has been used therapeutically for decades, with applications in tissue ablation, lithotripsy, and physical therapy. There is increasing evidence that low intensity US stimulation of organs can alter physiological and clinical outcomes for treatment of health disorders including rheumatoid arthritis and diabetes. One major translational challenge is designing portable and reliable US devices that can be used by patients in their homes, with automated features to detect rib location and aid in efficient transmission of energy to organs of interest. This feasibility study aimed to assess efficacy in rib bone detection without conventional imaging, using a single channel US pitch-catch technique integrated into an US therapy device to detect pulsed US reflections from ribs.

Methods: In 20 healthy volunteers, the location of the ribs and spleen were identified using a diagnostic US imaging system. Reflected ultrasound signals were recorded at five positions over the spleen and adjacent ribs using the therapy device. Signals were classified as between ribs (intercostal), partially over a rib, or fully over a rib using four models: threshold-based time domain classification, threshold-based frequency domain classification, logistic regression, and support vector machine (SVM).

Results: SVM performed best overall on the All Participants cohort with accuracy up to 96.25%. All models' accuracies were improved by separating participants into two cohorts based on Body Mass Index (BMI) and re-fitting each model. After separation into Low BMI and High BMI cohorts, a simple time-thresholding approach achieved accuracies up to 100% and 93.75%, respectively.

Conclusion: These results demonstrate that US reflection signal classification can accurately provide low complexity, real-time automated onboard rib detection and user feedback to advance at-home therapeutic US delivery.

一种新型超声治疗装置的肋骨检测与分类算法。
背景:无创超声(US)用于治疗已有几十年的历史,应用于组织消融、碎石术和物理治疗。越来越多的证据表明,低强度的器官US刺激可以改变包括类风湿关节炎和糖尿病在内的健康疾病治疗的生理和临床结果。一个主要的转化挑战是设计便携式和可靠的美国设备,可以让患者在家中使用,具有自动检测肋骨位置的功能,并帮助有效地将能量传输到感兴趣的器官。这项可行性研究旨在评估在没有常规成像的情况下肋骨检测的有效性,将单通道超声pitch-catch技术集成到超声治疗设备中,以检测肋骨的脉冲超声反射。方法:在20名健康志愿者中,使用诊断性超声成像系统确定肋骨和脾脏的位置。利用该治疗装置在脾脏和邻近肋骨上方的五个位置记录反射超声信号。使用四种模型将信号分类为肋骨之间(肋间),部分在肋骨上或完全在肋骨上:基于阈值的时域分类,基于阈值的频域分类,逻辑回归和支持向量机(SVM)。结果:支持向量机在所有参与者队列中表现最好,准确率高达96.25%。通过根据身体质量指数(BMI)将参与者分成两个队列并重新拟合每个模型,所有模型的准确性都得到了提高。在分成低BMI和高BMI队列后,简单的时间阈值方法的准确率分别达到100%和93.75%。结论:这些结果表明,US反射信号分类可以准确地提供低复杂性,实时自动化机载肋骨检测和用户反馈,以推进家庭治疗US递送。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.90
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