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Physical activity based classification of serious mental illness group participants in the UK Biobank using ensemble dense neural networks

机译:基于身体活动的英国BioBank中的严重精神疾病群参与者的分类,使用集合密集神经网络

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Serious Mental Illnesses (SMIs) including schizophrenia and bipolar disorder are long term conditions which place major burdens on health and social care services. Locomotor activity is altered in many cases of SMI, and so in the long term wearable activity trackers could potentially aid in the early detection of SMI relapse, allowing early and targeted intervention. To move towards this goal, in this paper we use accelerometer activity tracking data collected from the UK Biobank to classify people as being either in a self-reported SMI group or an age and gender matched control group. Using an ensemble dense neural network algorithm we exploited hourly and average derived features from the wearable activity data and the created model obtained an accuracy of 91.3%.
机译:严重的精神疾病(SMIS)包括精神分裂症和双相情感障碍是长期条件,可对健康和社会护理服务的主要负担。在许多SMI的情况下,机车活动被改变,因此在长期可穿戴活动跟踪器中可能有助于早期检测SMI复发,从而提前和有针对性的干预。为了实现这一目标,在本文中,我们使用从英国BioBank收集的加速度计活动跟踪数据将人们分类为在自我报告的SMI集团或年龄和性别匹配的对照组中。使用我们利用的集合密集神经网络算法,从可穿戴活动数据和创建的模型中利用了每小时和平均导出的特征,获得了91.3%的精度。

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