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Detection of Osteoporosis from Percussion Responses Using an Electronic Stethoscope and Machine Learning

机译:使用电子听诊器和机器学习从敲击反应中检测骨质疏松症

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摘要

Osteoporosis is an asymptomatic bone condition that affects a large proportion of the elderly population around the world, resulting in increased bone fragility and increased risk of fracture. Previous studies had shown that the vibroacoustic response of bone can indicate the quality of the bone condition. Therefore, the aim of the authors’ project is to develop a new method to exploit this phenomenon to improve detection of osteoporosis in individuals. In this paper a method is described that uses a reflex hammer to exert testing stimuli on a patient’s tibia and an electronic stethoscope to acquire the impulse responses. The signals are processed as mel frequency cepstrum coefficients and passed through an artificial neural network to determine the likelihood of osteoporosis from the tibia’s impulse responses. Following some discussions of the mechanism and procedure, this paper details the signal acquisition using the stethoscope and the subsequent signal processing and the statistical machine learning algorithm. Pilot testing with 12 patients achieved over 80% sensitivity with a false positive rate below 30% and accuracies in the region of 70%. An extended dataset of 110 patients achieved an error rate of 30% with some room for improvement in the algorithm. By using common clinical apparatus and strategic machine learning, this method might be suitable as a large population screening test for the early diagnosis of osteoporosis, thus avoiding secondary complications.
机译:骨质疏松症是一种无症状的骨骼疾病,影响了世界上大部分老年人,导致骨骼脆弱性增加和骨折风险增加。先前的研究表明,骨骼的声音响应可以指示骨骼状况的质量。因此,作者项目的目的是开发一种利用这种现象的新方法,以改善个人对骨质疏松症的检测。在本文中,描述了一种方法,该方法使用反射锤对患者的胫骨施加测试刺激,并使用电子听诊器获取冲动响应。这些信号被作为梅尔频率倒谱系数处理,并通过人工神经网络传递,从而根据胫骨的冲动反应确定骨质疏松的可能性。在对机制和过程进行了一些讨论之后,本文详细介绍了使用听诊器进行信号采集以及随后的信号处理和统计机器学习算法。对12名患者进行的试点测试达到了80%以上的敏感性,假阳性率低于30%,准确度在70%左右。扩展的110位患者的数据集实现了30%的错误率,并且在算法上还有改进的余地。通过使用常见的临床设备和策略性机器学习,该方法可能适合作为骨质疏松症的早期诊断的大型人群筛查测试,从而避免了继发性并发症。

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