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基于贝叶斯网络的心率变异性进行抑郁识别。

Depression recognition according to heart rate variability using Bayesian Networks.

机构信息

Department of Biomedical Engineering, South China University of Technology, Guangzhou, China.

Department of Biomedical Engineering, South China University of Technology, Guangzhou, China.

出版信息

J Psychiatr Res. 2017 Dec;95:282-287. doi: 10.1016/j.jpsychires.2017.09.012. Epub 2017 Sep 11.

Abstract

BACKGROUND

Doctors mainly use scale tests and subjective judgment in the clinical diagnosis of depression. Researches have demonstrated that depression is associated with the dysfunction of the autonomic nervous system (ANS), where its modulation can be evaluated by heart rate variability (HRV). Depression patients have lower HRV than healthy subjects. Therefore, HRV may be used to distinguish depression patients from healthy people.

METHODS

HRV signals were collected from 76 female subjects composed of 38 depression patients and 38 healthy people. Time domain, frequency domain, and non-linear features were extracted from the HRV signals of these subjects, who were subjected to the Ewing test as an ANS stimulus. Then, these multiple features were input into Bayesian networks, served as a classifier, to distinguish depression patients from healthy people. Hence, accuracy, sensitivity, and specificity were calculated to evaluate the performance of the classifier.

RESULTS

Recognition results indicate 86.4% accuracy, 89.5% sensitivity, and 84.2% specificity. The individuals subjected to the Ewing test showed better recognition results than those at individual test states (resting state, deep breathing state, Valsalva state, and standing state) of the Ewing test. The root mean square of successive differences (RMSSD) of the HRV exhibits a significant relevance with recognition.

CONCLUSION

Bayesian networks can be applied to the recognition of depression patients from healthy people and the recognition results demonstrate the significant association between depression and HRV. The Ewing test is a good ANS stimulus for acquiring the difference of HRV between depression patients and healthy people to recognize depression. The RMSSD of the HRV is important in recognition and may be a significant index in distinguishing depression patients from healthy people.

摘要

背景

医生在临床诊断抑郁症时主要使用量表测试和主观判断。研究表明,抑郁症与自主神经系统(ANS)功能障碍有关,其可以通过心率变异性(HRV)进行评估。抑郁症患者的 HRV 低于健康受试者。因此,HRV 可用于区分抑郁症患者和健康人群。

方法

从由 38 名抑郁症患者和 38 名健康人组成的 76 名女性受试者中收集 HRV 信号。对这些受试者进行 Ewing 测试作为 ANS 刺激,从 HRV 信号中提取时域、频域和非线性特征。然后,将这些多个特征输入到贝叶斯网络中,作为分类器,以区分抑郁症患者和健康人。因此,计算准确性、敏感性和特异性来评估分类器的性能。

结果

识别结果表明,准确性为 86.4%,敏感性为 89.5%,特异性为 84.2%。接受 Ewing 测试的个体比在 Ewing 测试的个体测试状态(静息状态、深呼吸状态、瓦尔萨尔瓦状态和站立状态)下具有更好的识别结果。HRV 的连续差异均方根(RMSSD)与识别具有显著相关性。

结论

贝叶斯网络可用于识别抑郁症患者和健康人群,识别结果表明抑郁症与 HRV 之间存在显著关联。Ewing 测试是获取抑郁症患者和健康人群 HRV 差异以识别抑郁症的良好 ANS 刺激。HRV 的 RMSSD 在识别中很重要,可能是区分抑郁症患者和健康人群的重要指标。

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