Kajor Marcin, Kucharski Dariusz, Grochala Justyna, Loster Jolanta E
Faculty of Electrical Engineering, Automatics, Computer Science and Biomedical Engineering, AGH University of Science and Technology, 30-059 Kraków, Poland.
Department of Prosthodontics, Institute of Dentistry, Jagiellonian University Medical College, Jagiellonian University, 31-155 Kraków, Poland.
J Clin Med. 2022 May 11;11(10):2706. doi: 10.3390/jcm11102706.
(1) Background: The stethoscope is one of the main accessory tools in the diagnosis of temporomandibular joint disorders (TMD). However, the clinical auscultation of the masticatory system still lacks computer-aided support, which would decrease the time needed for each diagnosis. This can be achieved with digital signal processing and classification algorithms. The segmentation of acoustic signals is usually the first step in many sound processing methodologies. We postulate that it is possible to implement the automatic segmentation of the acoustic signals of the temporomandibular joint (TMJ), which can contribute to the development of advanced TMD classification algorithms. (2) Methods: In this paper, we compare two different methods for the segmentation of TMJ sounds which are used in diagnosis of the masticatory system. The first method is based solely on digital signal processing (DSP) and includes filtering and envelope calculation. The second method takes advantage of a deep learning approach established on a U-Net neural network, combined with long short-term memory (LSTM) architecture. (3) Results: Both developed methods were validated against our own TMJ sound database created from the signals recorded with an electronic stethoscope during a clinical diagnostic trail of TMJ. The Dice score of the DSP method was 0.86 and the sensitivity was 0.91; for the deep learning approach, Dice score was 0.85 and there was a sensitivity of 0.98. (4) Conclusions: The presented results indicate that with the use of signal processing and deep learning, it is possible to automatically segment the TMJ sounds into sections of diagnostic value. Such methods can provide representative data for the development of TMD classification algorithms.
(1) 背景:听诊器是颞下颌关节紊乱病(TMD)诊断中的主要辅助工具之一。然而,咀嚼系统的临床听诊仍缺乏计算机辅助支持,而这会减少每次诊断所需的时间。这可以通过数字信号处理和分类算法来实现。声学信号的分割通常是许多声音处理方法的第一步。我们推测有可能实现颞下颌关节(TMJ)声学信号的自动分割,这有助于先进的TMD分类算法的开发。(2) 方法:在本文中,我们比较了两种用于咀嚼系统诊断中TMJ声音分割的不同方法。第一种方法仅基于数字信号处理(DSP),包括滤波和包络计算。第二种方法利用基于U-Net神经网络并结合长短期记忆(LSTM)架构的深度学习方法。(3) 结果:两种开发的方法均针对我们自己的TMJ声音数据库进行了验证,该数据库由在TMJ临床诊断试验期间用电子听诊器记录的信号创建。DSP方法的Dice分数为0.86,灵敏度为0.91;对于深度学习方法,Dice分数为0.85,灵敏度为0.98。(4) 结论:所呈现的结果表明,通过使用信号处理和深度学习,可以将TMJ声音自动分割成具有诊断价值的部分。此类方法可为TMD分类算法的开发提供代表性数据。