共 54 条
Computer-aided classifying and characterizing of methamphetamine use disorder using resting-state EEG
被引:28
作者:
Khajehpour, Hassan
[1
,6
]
Mohagheghian, Fahimeh
[4
]
Ekhtiari, Hamed
[2
,3
]
Makkiabadi, Bahador
[1
,6
]
Jafari, Amir Homayoun
[1
,6
]
Eqlimi, Ehsan
[1
,6
]
Harirchian, Mohammad Hossein
[5
]
机构:
[1] Univ Tehran Med Sci, Sch Med, Dept Med Phys & Biomed Engn, Tehran, Iran
[2] Laureate Inst Brain Res, Tulsa, OK USA
[3] Univ Tehran Med Sci, Iranian Natl Ctr Addict Studies, Tehran, Iran
[4] Shahid Beheshti Univ Med Sci SBMU, Sch Med, Dept Med Phys & Biomed Engn, Tehran, Iran
[5] Univ Tehran Med Sci, Iranian Ctr Neurol Res, Neurosci Inst, Tehran, Iran
[6] Univ Tehran Med Sci, Res Ctr Biomed Technol & Robot, Inst Adv Med Technol, Tehran, Iran
关键词:
Support vector machine;
Weighted phase lag index;
Functional brain connectivity network;
Electroencephalography;
Meth dependence;
INTERNET GAMING DISORDER;
FUNCTIONAL CONNECTIVITY;
QUANTITATIVE EEG;
BRAIN-FUNCTION;
ALCOHOL;
POWER;
ABSTINENT;
BETA;
NETWORKS;
DYNAMICS;
D O I:
10.1007/s11571-019-09550-z
中图分类号:
Q189 [神经科学];
学科分类号:
071006 ;
摘要:
Methamphetamine (meth) is potently addictive and is closely linked to high crime rates in the world. Since meth withdrawal is very painful and difficult, most abusers relapse to abuse in traditional treatments. Therefore, developing accurate data-driven methods based on brain functional connectivity could be helpful in classifying and characterizing the neural features of meth dependence to optimize the treatments. Accordingly, in this study, computation of functional connectivity using resting-state EEG was used to classify meth dependence. Firstly, brain functional connectivity networks (FCNs) of 36 meth dependent individuals and 24 normal controls were constructed by weighted phase lag index, in six frequency bands: delta (1-4 Hz), theta (4-8 Hz), alpha (8-15 Hz), beta (15-30 Hz), gamma (30-45 Hz) and wideband (1-45 Hz).Then, significant differences in graph metrics and connectivity values of the FCNs were used to distinguish the two groups. Support vector machine classifier had the best performance with 93% accuracy, 100% sensitivity, 83% specificity and 0.94 F-score for differentiating between MDIs and NCs. The best performance yielded when selected features were the combination of connectivity values and graph metrics in the beta frequency band.
引用
收藏
页码:519 / 530
页数:12
相关论文