Machine learning based detection of depression from task-based fMRI using weighted-3D-DWT denoising method

被引:0
作者
Güzin Özmen
Seral Özşen
Yahya Paksoy
Özkan Güler
Rukiye Tekdemir
机构
[1] Selcuk University,Department of Biomedical Engineering, Faculty of Technology
[2] Konya Technical University,Department of Electrical
[3] Neuroscience Institute,Electronical Engineering, Faculty of Engineering and Natural Science
[4] Hamad Medical Corporation,Neuroradiology Department
[5] Selcuk University,Department of Radiology
[6] Department of Neuroradiology Qatar University,Department of Psychiatry, Faculty of Medicine
[7] Selcuk University,undefined
来源
Multimedia Tools and Applications | 2024年 / 83卷
关键词
Depression; fMRI; 3D-Discrete wavelet transform; Machine learning; PCA; Spm.T;
D O I
暂无
中图分类号
学科分类号
摘要
Depression has become an important public health problem in recent years because the probability of a depressive episode in a person's entire life is generally between 18-20%. Neuroimaging techniques investigate diagnostic biomarkers in depression disorders and support traditional communication-based diagnosis in psychiatry. The quality of the brain images used in functional MRI (fMRI), and the design of decision support systems using these images are essential for accurate diagnosis. The Gaussian smoothing for fMRI preprocessing blurs the image for statistical analysis but is inadequate because image detail is lost during filtering, leading to poor classification results. We argue that the weighted-3 Dimensional-Discrete Wavelet Transform (weighted-3D-DWT) denoising approach instead of Gaussian smoothing for task-based fMRI. The activation maps show differences in intensity values in the cluster size of voxels in the mood-related regions between patients and control subjects (p<0.05). Thus, we classify depression disorders using a machine learning approach and improve the classification accuracy using weighted-3D-DWT. The classification results show that weighted-3D- DWT with Random Forest and 10-fold cross-validation achieves 96.4% accuracy, while Gaussian Smoothing with a Support Vector Machine achieves 83.9% classification accuracy. Classification accuracy increases to 97.3% when 30 components are used with principal component analysis. Our results show that an fMRI experiment with visual stimuli that can aid the diagnosis of depression provides significant classification accuracy using weighted-3D-DWT.
引用
收藏
页码:11805 / 11829
页数:24
相关论文
共 117 条
[21]  
Jogia J(2013)Pattern classification of brain activation during emotional processing in subclinical depression: Psychosis proneness as potential confounding factor PeerJ 1 2013-123
[22]  
Friston KJ(1997)A Tutorial on Generalized Linear Models J Qual Technol 29 274-S209
[23]  
Ashburner J(1984)Depression as measured by the DSM-III and the Beck Depression Inventory in an unselected adult population J Consult Clin Psychol 52 892-880
[24]  
Frith CD(2016)Studying depression using imaging and machine learning methods Neuroimage Clin 10 115-506
[25]  
Poline J(2009)Machine learning classifiers and fMRI: A tutorial overview Neuroimage 45 S199-291
[26]  
Heather JD(2012)The general linear model and fMRI: Does love last forever? Neuroimage 62 871-658
[27]  
Frackowiak RSJ(2015)Sparse network-based models for patient classification using fMRI Neuroimage 105 493-242
[28]  
Gibbs P(2015)Machine learning algorithm accurately detects fMRI signature of vulnerability to major depression Psychiatry Res Neuroimaging 233 289-320
[29]  
Buckley DL(2001)Increased amygdala response to masked emotional faces in depressed subjects resolves with antidepressant treatment: an fMRI study Biol Psychiatry 50 651-401
[30]  
Blackband SJ(2019)Machine-learning-based classification between post-traumatic stress disorder and major depressive disorder using P300 features Neuroimage Clin 24 102001-888