Suppr超能文献

基于使用机器学习以及均匀流形逼近与投影方法的运动活动的活动记录仪记录来检测和分类单相和双相抑郁症

Unipolar and Bipolar Depression Detection and Classification Based on Actigraphic Registration of Motor Activity Using Machine Learning and Uniform Manifold Approximation and Projection Methods.

作者信息

Zakariah Mohammed, Alotaibi Yousef Ajami

机构信息

Department of Computer Science, College of Computer and Information Sciences, King Saud University, Riyadh P.O. Box 11442, Saudi Arabia.

Department of Computer Engineering, College of Computer and Information Sciences, King Saud University, Riyadh P.O. Box 11451, Saudi Arabia.

出版信息

Diagnostics (Basel). 2023 Jul 10;13(14):2323. doi: 10.3390/diagnostics13142323.

Abstract

Modern technology frequently uses wearable sensors to monitor many aspects of human behavior. Since continuous records of heart rate and activity levels are typically gathered, the data generated by these devices have a lot of promise beyond counting the number of daily steps or calories expended. Due to the patient's inability to obtain the necessary information to understand their conditions and detect illness, such as depression, objectively, methods for evaluating various mental disorders, such as the Montgomery-Asberg depression rating scale (MADRS) and observations, currently require a significant amount of effort on the part of specialists. In this study, a novel dataset was provided, comprising sensor data gathered from depressed patients. The dataset included 32 healthy controls and 23 unipolar and bipolar depressive patients with motor activity recordings. Along with the sensor data collected over several days of continuous measurement for each patient, some demographic information was also offered. The result of the experiment showed that less than 70 of the 100 epochs of the model's training were completed. The Cohen Kappa score did not even pass 0.1 in the validation set, due to an imbalance in the class distribution, whereas in the second experiment, the majority of scores peaked in about 20 epochs, but because training continued during each epoch, it took much longer for the loss to decline before it fell below 0.1. In the second experiment, the model soon reached an accuracy of 0.991, which is as expected given the outcome of the UMAP dimensionality reduction. In the last experiment, UMAP and neural networks worked together to produce the best outcomes. They used a variety of machine learning classification algorithms, including the nearest neighbors, linear kernel SVM, Gaussian process, and random forest. This paper used the UMAP unsupervised machine learning dimensionality reduction without the neural network and showed a slightly lower score (QDA). By considering the ratings of the patient's depressive symptoms that were completed by medical specialists, it is possible to better understand the relationship between depression and motor activity.

摘要

现代技术经常使用可穿戴传感器来监测人类行为的许多方面。由于通常会收集心率和活动水平的连续记录,这些设备生成的数据在计算每日步数或消耗的卡路里数量之外还有很大的潜力。由于患者无法客观地获取了解自身状况和检测疾病(如抑郁症)所需的必要信息,目前评估各种精神障碍的方法,如蒙哥马利-阿斯伯格抑郁评定量表(MADRS)和观察法,需要专家付出大量精力。在本研究中,提供了一个新颖的数据集,包括从抑郁症患者收集的传感器数据。该数据集包括32名健康对照者以及23名单相和双相抑郁症患者的运动活动记录。除了为每位患者连续测量数天收集的传感器数据外,还提供了一些人口统计学信息。实验结果表明,模型训练的100个轮次中完成的不到70个。由于类别分布不均衡,验证集中的科恩卡帕分数甚至未超过0.1,而在第二个实验中,大多数分数在大约20个轮次时达到峰值,但由于每个轮次都持续训练,损失下降到0.1以下之前花费的时间要长得多。在第二个实验中,模型很快达到了0.991的准确率,这与UMAP降维的结果相符。在最后一个实验中,UMAP和神经网络共同作用产生了最佳结果。他们使用了多种机器学习分类算法,包括最近邻、线性核支持向量机、高斯过程和随机森林。本文在没有神经网络的情况下使用了UMAP无监督机器学习降维,并显示出略低的分数(QDA)。通过考虑医学专家完成的患者抑郁症状评分,可以更好地理解抑郁症与运动活动之间的关系。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7067/10377958/1094ad748096/diagnostics-13-02323-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验