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本文引用的文献

1
Heart rate-based window segmentation improves accuracy of classifying posttraumatic stress disorder using heart rate variability measures.基于心率的窗口分割通过心率变异性测量提高了创伤后应激障碍分类的准确性。
Physiol Meas. 2017 Jun;38(6):1061-1076. doi: 10.1088/1361-6579/aa6e9c. Epub 2017 May 10.
2
Schizophrenia.精神分裂症。
Nat Rev Dis Primers. 2015 Nov 12;1:15067. doi: 10.1038/nrdp.2015.67.
3
Why significant variables aren't automatically good predictors.为什么显著变量并非自动成为良好的预测指标。
Proc Natl Acad Sci U S A. 2015 Nov 10;112(45):13892-7. doi: 10.1073/pnas.1518285112. Epub 2015 Oct 26.
4
Heart rate variability and vagal tone in schizophrenia: A review.精神分裂症中的心率变异性与迷走神经张力:综述
J Psychiatr Res. 2015 Oct;69:57-66. doi: 10.1016/j.jpsychires.2015.07.025. Epub 2015 Jul 26.
5
Objective identification and analysis of physiological and behavioral signs of schizophrenia.精神分裂症生理和行为体征的客观识别与分析。
J Ment Health. 2015;24(5):276-82. doi: 10.3109/09638237.2015.1019048. Epub 2015 Jul 20.
6
Cortisol levels and risk for psychosis: initial findings from the North American prodrome longitudinal study.皮质醇水平与精神病风险:来自北美前驱期纵向研究的初步发现。
Biol Psychiatry. 2013 Sep 15;74(6):410-7. doi: 10.1016/j.biopsych.2013.02.016. Epub 2013 Apr 3.
7
Impact of antipsychotics and anticholinergics on autonomic modulation in patients with schizophrenia.抗精神病药和抗胆碱能药物对精神分裂症患者自主神经调节的影响。
J Clin Psychopharmacol. 2013 Apr;33(2):170-7. doi: 10.1097/JCP.0b013e3182839052.
8
Stress and neurodevelopmental processes in the emergence of psychosis.精神分裂症发病中的应激与神经发育过程。
Neuroscience. 2013 Sep 26;249:172-91. doi: 10.1016/j.neuroscience.2012.12.017. Epub 2013 Jan 5.
9
Analysis of heart rate variability using fuzzy measure entropy.基于模糊测度熵的心率变异性分析。
Comput Biol Med. 2013 Feb;43(2):100-8. doi: 10.1016/j.compbiomed.2012.11.005. Epub 2012 Dec 27.
10
Sleep and circadian rhythm disruption in schizophrenia.精神分裂症中的睡眠和昼夜节律紊乱。
Br J Psychiatry. 2012 Apr;200(4):308-16. doi: 10.1192/bjp.bp.111.096321. Epub 2011 Dec 22.

利用心率和加速度计数据对精神分裂症进行持续评估。

Continuous assessment of schizophrenia using heart rate and accelerometer data.

作者信息

Reinertsen Erik, Osipov Maxim, Liu Chengyu, Kane John M, Petrides Georgios, Clifford Gari D

机构信息

Department of Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA, United States of America.

出版信息

Physiol Meas. 2017 Jun 27;38(7):1456-1471. doi: 10.1088/1361-6579/aa724d.

DOI:10.1088/1361-6579/aa724d
PMID:28653659
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5699450/
Abstract

OBJECTIVE

Schizophrenia has been associated with changes in heart rate (HR) and physical activity measures. However, the relationship between analysis window length and classifier accuracy using these features has yet to be quantified.

APPROACH

Here we used objective HR and activity data to classify contiguous days of data as belonging to a schizophrenia patient or a healthy control. HR and physical activity recordings were made on 12 medicated subjects with schizophrenia and 12 healthy controls. Features derived from these data included classical statistical characteristics, rest-activity metrics, transfer entropy, and multiscale fuzzy entropy. We varied the analysis window length from two to eight days, and selected features via minimal-redundancy-maximal-relevance. A support vector machine was trained to classify schizophrenia from control windows on a daily basis. Model performance was assessed via subject-wise leave-one-out-crossfold-validation.

MAIN RESULTS

An analysis window length of eight days resulted in an area under a receiver operating characteristic curve (AUC) of 0.96. Reducing the analysis window length to two days only lowered the AUC to 0.91. The type of most predictive features varied with analysis window length.

SIGNIFICANCE

Our results suggest continuous tracking of subjects with schizophrenia over short time scales may be sufficient to estimate illness severity on a daily basis.

摘要

目的

精神分裂症与心率(HR)和身体活动指标的变化有关。然而,使用这些特征时分析窗口长度与分类器准确性之间的关系尚未得到量化。

方法

在此,我们使用客观的心率和活动数据将连续几天的数据分类为属于精神分裂症患者或健康对照。对12名患有精神分裂症的服药受试者和12名健康对照进行了心率和身体活动记录。从这些数据中得出的特征包括经典统计特征、静息-活动指标、转移熵和多尺度模糊熵。我们将分析窗口长度从两天变化到八天,并通过最小冗余最大相关性选择特征。训练了一个支持向量机,以便每天根据对照窗口对精神分裂症进行分类。通过受试者逐一留一交叉折叠验证评估模型性能。

主要结果

八天的分析窗口长度导致受试者工作特征曲线(AUC)下的面积为0.96。将分析窗口长度减少到两天只会使AUC降至0.91。最具预测性的特征类型随分析窗口长度而变化。

意义

我们的结果表明,在短时间尺度上对精神分裂症患者进行持续跟踪可能足以每天估计疾病严重程度。