使用运动活动数据的特征工程的卷积神经网络和机器学习模型用于精神分裂症分类

Fellipe Paes Ferreira, Aengus Daly
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引用次数: 1

摘要

随着智能手表等可穿戴传感器的功能不断增强,人们对其输出的兴趣也越来越大,它们的使用正变得越来越受欢迎。这引起了相应的兴趣,并增加了研究人员开发工具来分析输出数据。在这项研究中,机器学习和深度学习算法应用于使用时间序列活动数据对精神分裂症的存在进行分类。数据集是从一项关于精神分裂症患者行为模式的研究中收集的,该研究包含54名参与者平均每分钟12.7天的运动活动测量,其中22名患有精神分裂症,32名没有精神分裂症。通过首先在时域中生成统计度量,然后将一天细分为3个单独的时间类别,代表昼夜节律的不同部分,开发了新的特征。使用这些特征训练了五个机器学习模型。这些模型将参与者分为条件组(有精神分裂症)和对照组(没有精神分裂症)。此外,还开发了一种深度学习卷积神经网络(ConvNet),该网络也利用了一天中的时间类别。使用10倍交叉验证的最佳机器学习模型的平均精度为97.6%,而分析该数据集的原始论文的基线精度为83.6%。使用LOPO作为验证技术,机器学习模型的准确率为86.7%,深度学习模型的平均准确率为87.6%,与最先进的88%-92.5%相当。据研究人员所知,这是第一次将深度学习卷积神经网络模型应用于这项任务。
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ConvNet and machine learning models with feature engineering using motor activity data for schizophrenia classification
The use of wearable sensors such as smartwatches is becoming increasingly popular allied with their increasing functionality and interest in their outputs. This has led to a corresponding interest and increase by researchers to develop tools to analyse the outputted data. In this research, machine learning and deep learning algorithms are applied to classify the presence of schizophrenia using time series activity data. The dataset was collected from a study about behavioural patterns in people with schizophrenia which contains per minute motor activity measurements for an average of 12.7 days for 54 participants, 22 with schizophrenia and 32 without. New features were developed by firstly generating statistical measures in the time domain and secondly by subdividing the day into 3 separate time categories, representing different portions of the circadian rhythm. Five machine learning models are trained using these features. These models classify participants into the condition group (with schizophrenia) and the control group (without schizophrenia). A deep learning convolutional neural network (ConvNet) was also developed which also utilized time of day categories. The best machine learning model using 10-fold cross-validation achieved an average precision of 97.6% compared to a baseline of 83.6% from the original paper that analysed this dataset. Using Leave One Patient Out (LOPO) as a validation technique the machine learning model gives an accuracy of 86.7%, with the deep learning model giving an average accuracy of 87.6% which is comparable to the state-of-the-art of 88%-92.5%. This is the first time to the best of the researchers' knowledge that a deep learning ConvNet model has been applied to this task.
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