Department of Computer Science, Babasaheb Bhimrao Ambedkar University, Amethi, UP, India.
Department of Computer Science Engineering, Maharaj Agrasen Institute of Technology, Delhi, India; Chitkara University, Punjab, India.
J Neurosci Methods. 2024 Sep;409:110183. doi: 10.1016/j.jneumeth.2024.110183. Epub 2024 Jun 3.
The significance of diagnosing illnesses associated with brain cognitive and gait freezing phase patterns has led to a recent surge in interest in the study of gait for mental disorders. A more precise and effective way to characterize and classify many common gait problems, such as foot and brain pulse disorders, can improve prognosis evaluation and treatment options for Parkinson patients. Nonetheless, the primary clinical technique for assessing gait abnormalities at the moment is visual inspection, which depends on the subjectivity of the observer and can be inaccurate.
This study investigates whether it is possible to differentiate between gait brain disorder and the typical walking pattern using machine learning driven supervised learning techniques and data obtained from inertial measurement unit sensors for brain, hip and leg rehabilitation.
The proposed method makes use of the Daphnet freezing of Gait Data Set, consisted of 237 instances with 9 attributes. The method utilizes machine learning and feature reduction approaches in leg and hip gait recognition.
From the obtained results, it is concluded that among all classifiers RF achieved highest accuracy as 98.9 % and Perceptron achieved lowest i.e. 70.4 % accuracy. While utilizing LDA as feature reduction approach, KNN, RF and NB also achieved promising accuracy and F1-score in comparison with SVM and LR classifiers.
In order to distinguish between the different gait disorders associated with brain tissues freezing/non-freezing and normal walking gait patterns, it is shown that the integration of different machine learning algorithms offers a viable and prospective solution. This research implies the need for an impartial approach to support clinical judgment.
诊断与大脑认知和步态冻结阶段模式相关的疾病的意义促使人们最近对精神障碍的步态研究产生了浓厚的兴趣。更精确和有效的方法来描述和分类许多常见的步态问题,如脚和大脑脉冲障碍,可以改善帕金森病患者的预后评估和治疗选择。尽管如此,目前评估步态异常的主要临床技术是视觉检查,它依赖于观察者的主观性,并且可能不准确。
本研究旨在探讨是否可以使用机器学习驱动的监督学习技术以及从脑、髋和腿部康复惯性测量单元传感器获得的数据来区分步态脑障碍和典型行走模式。
该方法利用 Daphnet 冻结步态数据集,该数据集由 237 个实例和 9 个属性组成。该方法利用机器学习和特征减少方法来识别腿部和髋部步态。
从获得的结果可以得出结论,在所有分类器中,RF 实现了最高的准确性,为 98.9%,而感知机的准确性最低,为 70.4%。当利用 LDA 作为特征减少方法时,KNN、RF 和 NB 与 SVM 和 LR 分类器相比,也实现了有希望的准确性和 F1 分数。
为了区分与脑组织冻结/非冻结和正常行走步态模式相关的不同步态障碍,表明集成不同的机器学习算法提供了一种可行和有前景的解决方案。这项研究意味着需要一种公正的方法来支持临床判断。