School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA, 30332, USA.
Emory University School of Medicine, Atlanta, GA, 30329, USA.
Ann Biomed Eng. 2021 Sep;49(9):2399-2411. doi: 10.1007/s10439-021-02788-x. Epub 2021 May 13.
The characteristics of joint acoustic emissions (JAEs) measured from the knee have been shown to contain information regarding underlying joint health. Researchers have developed methods to process JAE measurements and combined them with machine learning algorithms for knee injury diagnosis. While these methods are based on JAEs measured in controlled settings, we anticipate that JAE measurements could enable accessible and affordable diagnosis of acute knee injuries also in field-deployable settings. However, in such settings, the noise and interference would be greater than in sterile, laboratory environments, which could decrease the performance of existing knee health classification methods using JAEs. To address the need for an objective noise and interference detection method for JAE measurements as a step towards field-deployable settings, we propose a novel experimental data augmentation method to locate and then, remove the corrupted parts of JAEs measured in clinical settings. In the clinic, we recruited 30 participants, and collected data from both knees, totaling 60 knees (36 healthy and 24 injured knees) to be used subsequently for knee health classification. We also recruited 10 healthy participants to collect artifact and joint sounds (JS) click templates, which are audible, short duration and high amplitude JAEs from the knee. Spectral and temporal features were extracted, and clinical data was augmented in five-dimensional subspace by fusing the existing clinical dataset into experimentally collected templates. Then knee scores were calculated by training and testing a linear soft classifier utilizing leave-one-subject-out cross-validation (LOSO-CV). The area under the curve (AUC) was 0.76 for baseline performance without any window removal with a logistic regression classifier (sensitivity = 0.75, specificity = 0.78). We obtained an AUC of 0.86 with the proposed algorithm (sensitivity = 0.80, specificity = 0.89), and on average, 95% of all clinical data was used to achieve this performance. The proposed algorithm improved knee health classification performance by the added information through identification and collection of common artifact sources in JAE measurements. This method when combined with wearable systems could provide clinically relevant supplementary information for both underserved populations and individuals requiring point-of-injury diagnosis in field-deployable settings.
关节声发射(JAEs)的特征已被证明包含有关关节健康的信息。研究人员已经开发出处理 JAE 测量的方法,并将其与机器学习算法结合起来,用于膝关节损伤诊断。虽然这些方法是基于在受控环境中测量的 JAEs,但我们预计 JAE 测量也可以在可部署的现场环境中实现对急性膝关节损伤的便捷和经济实惠的诊断。然而,在这种环境中,噪声和干扰会比在无菌、实验室环境中更大,这可能会降低使用 JAEs 的现有膝关节健康分类方法的性能。为了解决在可部署现场环境中对 JAE 测量进行客观噪声和干扰检测的需求,我们提出了一种新的实验数据增强方法,用于定位并去除临床环境中测量的 JAEs 的损坏部分。在临床环境中,我们招募了 30 名参与者,并从每个参与者的两条腿上收集数据,总共 60 条腿(36 条健康腿和 24 条受伤腿),随后用于膝关节健康分类。我们还招募了 10 名健康参与者来收集伪影和关节声音(JS)点击模板,这是从膝关节发出的可听、短持续时间和高振幅的 JAEs。提取了光谱和时间特征,并通过将现有临床数据集融合到实验采集的模板中,在五维子空间中增强了临床数据。然后,通过利用受试者间交叉验证(LOSO-CV)训练和测试线性软分类器来计算膝关节评分。使用逻辑回归分类器时,不进行任何窗口移除的基线性能的曲线下面积(AUC)为 0.76(灵敏度=0.75,特异性=0.78)。使用提出的算法,我们获得了 0.86 的 AUC(灵敏度=0.80,特异性=0.89),平均而言,使用了所有临床数据的 95%来实现这一性能。该算法通过识别和收集 JAE 测量中常见的伪影源,提供了额外的信息,从而提高了膝关节健康分类性能。当与可穿戴系统结合使用时,该方法可以为可部署现场环境中的服务不足人群和需要伤后即时诊断的个人提供临床相关的补充信息。