Khera Preeti, Kumar Ashok, Kapila Rajat
Department of Computer Science and Engineering, Apex Institute of Technology, Chandigarh University, Mohali, 140413, Punjab, India.
Model Institute of Engineering and Technology, Jammu, J&K, 181122, India.
Sci Rep. 2025 Jul 19;15(1):26247. doi: 10.1038/s41598-025-12097-1.
Accurate and timely diagnosis of neurodegenerative disease (NDD) severity is crucial for clinical needs. Existing assessment methods for grading disease severity are mostly dependent on movement disorder specialist opinion resulting in subjectivity and inherent limitations. Gait instrumentation, on the other hand, can be used as a reliable tool to record various contrasting primary gait features. However, these features are agonized by individual's physical dimensions causing data dispersion. This study proposes normalized feature set, and a decision tree (DT) based model to evaluate NDD severity. The study investigates the use of raw sensor signals from foot resistive switches (FSR) to determine high-level gait features for detection of disease severity in patients suffering from neurodegenerative disorders. The methodology includes three-step DT-based approach. First, NDD patients were classified from healthy controls (HC). Disorders were categorized into Parkinson's disease (PD), Amyotrophic lateral sclerosis (ALS), and Huntington's disease (HD). Finally, disease severity was determined on clinical scale. Experimental results were established using 11,084 gait pattern recordings from NDD patients and HC. The proposed framework achieved a high coefficient of determination (R ≈ 0.90) and low error rates with stratified 10-fold cross-validation. Comparatively, it outperformed conventional DT models. Statistical validation via the Wilcoxon signed-rank test confirmed the significance of the finding. The proposed computer aided gait analysis framework demonstrated high accuracy and reliability in diagnosing NDD severity. The accuracy and reliability of proposed framework for disease severity diagnosis is crucial for dose management and to determine the disease progress rate in NDD patients.
准确及时地诊断神经退行性疾病(NDD)的严重程度对临床需求至关重要。现有的疾病严重程度分级评估方法大多依赖于运动障碍专家的意见,从而导致主观性和固有局限性。另一方面,步态检测仪器可作为记录各种不同主要步态特征的可靠工具。然而,这些特征会受到个体身体尺寸的影响,导致数据分散。本研究提出了归一化特征集以及基于决策树(DT)的模型来评估NDD的严重程度。该研究调查了来自足部电阻开关(FSR)的原始传感器信号的使用情况,以确定用于检测神经退行性疾病患者疾病严重程度的高级步态特征。该方法包括基于DT的三步法。首先,将NDD患者与健康对照(HC)进行分类。疾病分为帕金森病(PD)、肌萎缩侧索硬化症(ALS)和亨廷顿舞蹈病(HD)。最后,根据临床量表确定疾病严重程度。使用来自NDD患者和HC的11,084个步态模式记录建立了实验结果。所提出的框架在分层10折交叉验证中实现了高决定系数(R≈0.90)和低错误率。相比之下,它优于传统的DT模型。通过Wilcoxon符号秩检验进行的统计验证证实了这一发现的显著性。所提出的计算机辅助步态分析框架在诊断NDD严重程度方面表现出高准确性和可靠性。所提出框架用于疾病严重程度诊断的准确性和可靠性对于剂量管理以及确定NDD患者的疾病进展率至关重要。