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Home detection of freezing of gait using support vector machines through a single waist-worn triaxial accelerometer

机译:通过单腰穿式三轴加速度计使用支持向量机对步态冻结进行家庭检测

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摘要

Among Parkinson’s disease (PD) symptoms, freezing of gait (FoG) is one of the most debilitating. To assess FoG, current clinical practice mostly employs repeated evaluations over weeks and months based on questionnaires, which may not accurately map the severity of this symptom. The use of a non-invasive system to monitor the activities of daily living (ADL) and the PD symptoms experienced by patients throughout the day could provide a more accurate and objective evaluation of FoG in order to better understand the evolution of the disease and allow for a more informed decision-making process in making adjustments to the patient’s treatment plan. This paper presents a new algorithm to detect FoG with a machine learning approach based on Support Vector Machines (SVM) and a single tri-axial accelerometer worn at the waist. The method is evaluated through the acceleration signals in an outpatient setting gathered from 21 PD patients at their home and evaluated under two different conditions: first, a generic model is tested by using a leave-one-out approach and, second, a personalised model that also uses part of the dataset from each patient. Results show a significant improvement in the accuracy of the personalised model compared to the generic model, showing enhancement in the specificity and sensitivity geometric mean (GM) of 7.2%. Furthermore, the SVM approach adopted has been compared to the most comprehensive FoG detection method currently in use (referred to as MBFA in this paper). Results of our novel generic method provide an enhancement of 11.2% in the GM compared to the MBFA generic model and, in the case of the personalised model, a 10% of improvement with respect to the MBFA personalised model. Thus, our results show that a machine learning approach can be used to monitor FoG during the daily life of PD patients and, furthermore, personalised models for FoG detection can be used to improve monitoring accuracy.
机译:在帕金森氏症(PD)症状中,步态冻结(FoG)是最令人衰弱的症状之一。为了评估FoG,当前的临床实践大多采用基于调查表的为期数周和数月的反复评估,这可能无法准确反映该症状的严重程度。使用非侵入性系统来监测患者全天的日常生活(ADL)活动和PD症状可以提供对FoG的更准确和客观的评估,以便更好地了解疾病的进展并允许以便在调整患者的治疗计划时做出更明智的决策过程。本文提出了一种基于支持向量机(SVM)和腰部佩戴的单个三轴加速度计的机器学习方法来检测FoG的新算法。该方法是通过从21位PD患者在家中收集的门诊环境中的加速信号进行评估的,并在两种不同条件下进行评估:首先,使用留一法进行通用模型的测试,其次,是个性化模型还使用了每个患者的部分数据集。结果表明,与通用模型相比,个性化模型的准确性有了显着提高,特异性和灵敏度几何平均值(GM)提高了7.2%。此外,已将采用的SVM方法与当前使用的最全面的FoG检测方法(在本文中称为MBFA)进行了比较。与MBFA通用模型相比,我们新颖的通用方法的结果使GM提高了11.2%,而在个性化模型的情况下,与MBFA个性化模型相比,改进了10%。因此,我们的结果表明,机器学习方法可用于在PD患者的日常生活中监测FoG,此外,可使用个性化的FoG检测模型来提高监测准确性。

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