Department of Economics, Engineering, Society and Business Organization (DEIM), University of Tuscia, 01100 Viterbo, Italy.
Department of Human Sciences, Università Telematica Degli Studi IUL, 50122 Florence, Italy.
Sensors (Basel). 2024 Jun 4;24(11):3646. doi: 10.3390/s24113646.
Temporomandibular disorders (TMDs) refer to a group of conditions that affect the temporomandibular joint, causing pain and dysfunction in the jaw joint and related muscles. The diagnosis of TMDs typically involves clinical assessment through operator-based physical examination, a self-reported questionnaire and imaging studies. To objectivize the measurement of TMD, this study aims at investigating the feasibility of using machine-learning algorithms fed with data gathered from low-cost and portable instruments to identify the presence of TMD in adult subjects. Through this aim, the experimental protocol involved fifty participants, equally distributed between TMD and healthy subjects, acting as a control group. The diagnosis of TMD was performed by a skilled operator through the typical clinical scale. Participants underwent a baropodometric analysis by using a pressure matrix and the evaluation of the cervical mobility through inertial sensors. Nine machine-learning algorithms belonging to support vector machine, k-nearest neighbours and decision tree algorithms were compared. The k-nearest neighbours algorithm based on cosine distance was found to be the best performing, achieving performances of 0.94, 0.94 and 0.08 for the accuracy, F1-score and G-index, respectively. These findings open the possibility of using such methodology to support the diagnosis of TMDs in clinical environments.
颞下颌关节紊乱症(TMDs)是一组影响颞下颌关节的疾病,导致颌关节和相关肌肉疼痛和功能障碍。TMD 的诊断通常涉及通过基于操作者的体格检查、自我报告问卷和影像学研究进行临床评估。为了客观测量 TMD,本研究旨在探讨使用机器学习算法对从低成本和便携式仪器收集的数据进行分析,以识别成年患者是否存在 TMD 的可行性。为了实现这一目标,实验方案涉及 50 名参与者,他们在 TMD 和健康对照组中平均分配。TMD 的诊断由熟练的操作者通过典型的临床量表进行。参与者使用压力矩阵进行足底压力分析,并通过惯性传感器评估颈椎活动度。比较了属于支持向量机、k-最近邻和决策树算法的 9 种机器学习算法。基于余弦距离的 k-最近邻算法表现最佳,其准确性、F1 评分和 G 指数分别为 0.94、0.94 和 0.08。这些发现为在临床环境中使用这种方法支持 TMD 诊断提供了可能性。