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Erschienen in: Journal of Intelligent Information Systems 2/2021

02.08.2021

Depression detection from sMRI and rs-fMRI images using machine learning

verfasst von: Marzieh Mousavian, Jianhua Chen, Zachary Traylor, Steven Greening

Erschienen in: Journal of Intelligent Information Systems | Ausgabe 2/2021

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Abstract

Major Depression Disorder (MDD) is a common mental disorder that negatively affects many people’s lives worldwide. Developing an automated method to find useful diagnostic biomarkers from brain imaging data would help clinicians to detect MDD in its early stages. Depression is known to be a brain connectivity disorder problem. In this paper, we present a brain connectivity-based machine learning (ML) workflow that utilizes similarity/dissimilarity of spatial cubes in brain MRI images as features for depression detection. The proposed workflow provides a unified framework applicable to both structural MRI images and resting-state functional MRI images. Several cube similarity measures have been explored, including Pearson or Spearman correlations, Minimum Distance Covariance, or inverse of Minimum Distance Covariance. Discriminative features from the cube similarity matrix are chosen with the Wilcoxon rank-sum test. The extracted features are fed into machine learning classifiers to train MDD prediction models. To address the challenge of data imbalance in MDD detection, oversampling is performed to balance the training data. The proposed workflow is evaluated through experiments on three independent public datasets, all imbalanced, of structural MRI and resting-state fMRI images with depression labels. Experimental results show good performance on all three datasets in terms of prediction accuracy, specificity, sensitivity, and area under the Receiver Operating Characteristic (ROC) curve. The use of features from both structured MRI and resting state functional MRI is also investigated.

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Literatur
Zurück zum Zitat Bae, J.N., MacFall, J.R., Krishnan, K.R.R., Payne, M.E., Steffens, D.C., & et al (2006). Dorsolateral prefrontal cortex and anterior cingulate cortex white matter alterations in late-life depression. Biological Psychiatry, 60(12), 1356–1363.CrossRef Bae, J.N., MacFall, J.R., Krishnan, K.R.R., Payne, M.E., Steffens, D.C., & et al (2006). Dorsolateral prefrontal cortex and anterior cingulate cortex white matter alterations in late-life depression. Biological Psychiatry, 60(12), 1356–1363.CrossRef
Zurück zum Zitat Beck, A.T., Steer, R.A., & Brown, G. (1996). Beck depression inventory–ii. Psychological Assessment. Beck, A.T., Steer, R.A., & Brown, G. (1996). Beck depression inventory–ii. Psychological Assessment.
Zurück zum Zitat Biswal, B.B., & Ulmer, J.L. (1999). Blind source separation of multiple signal sources of fmri data sets using independent component analysis. Journal of Computer Assisted Tomography, 23(2), 265–271.CrossRef Biswal, B.B., & Ulmer, J.L. (1999). Blind source separation of multiple signal sources of fmri data sets using independent component analysis. Journal of Computer Assisted Tomography, 23(2), 265–271.CrossRef
Zurück zum Zitat Brandt, W.A., Loew, T., von Heymann, F., Stadtmüller, G., Tischinger, M., & et al (2015). How does the icd-10 symptom rating (isr) with four items assess depression compared to the bdi-ii? a validation study. Journal of Affective Disorders, 173, 143–145.CrossRef Brandt, W.A., Loew, T., von Heymann, F., Stadtmüller, G., Tischinger, M., & et al (2015). How does the icd-10 symptom rating (isr) with four items assess depression compared to the bdi-ii? a validation study. Journal of Affective Disorders, 173, 143–145.CrossRef
Zurück zum Zitat Casanova, R., Wagner, B., Whitlow, C.T., Williamson, J.D., Shumaker, S.A., & et al (2011). High dimensional classification of structural mri alzheimer’s disease data based on large scale regularization. Frontiers in Neuroinformatics, 5, 22.CrossRef Casanova, R., Wagner, B., Whitlow, C.T., Williamson, J.D., Shumaker, S.A., & et al (2011). High dimensional classification of structural mri alzheimer’s disease data based on large scale regularization. Frontiers in Neuroinformatics, 5, 22.CrossRef
Zurück zum Zitat Chen, T., Kendrick, K.M., Wang, J., Wu, M., Li, K., & et al (2017). Anomalous single-subject based morphological cortical networks in drug-naive, first-episode major depressive disorder. Human Brain Mapping, 38(5), 2482–2494.CrossRef Chen, T., Kendrick, K.M., Wang, J., Wu, M., Li, K., & et al (2017). Anomalous single-subject based morphological cortical networks in drug-naive, first-episode major depressive disorder. Human Brain Mapping, 38(5), 2482–2494.CrossRef
Zurück zum Zitat De Luca, M., Beckmann, C.F., De Stefano, N., Matthews, P.M., & Smith, S.M. (2006). fmri resting state networks define distinct modes of long-distance interactions in the human brain. NeuroImage, 29(4), 1359–1367.CrossRef De Luca, M., Beckmann, C.F., De Stefano, N., Matthews, P.M., & Smith, S.M. (2006). fmri resting state networks define distinct modes of long-distance interactions in the human brain. NeuroImage, 29(4), 1359–1367.CrossRef
Zurück zum Zitat Esteban, O., Markiewicz, C.J., Blair, R.W., Moodie, C.A., Isik, A.I., & et al (2019). fmriprep: a robust preprocessing pipeline for functional mri. Nature Methods, 16(1), 111–116.CrossRef Esteban, O., Markiewicz, C.J., Blair, R.W., Moodie, C.A., Isik, A.I., & et al (2019). fmriprep: a robust preprocessing pipeline for functional mri. Nature Methods, 16(1), 111–116.CrossRef
Zurück zum Zitat Faber, J., Antoneli, P.C., Araújo, N S, Pinheiro, D.J., & Cavalheiro, E. (2020). Critical elements for connectivity analysis of brain networks. In Functional brain mapping: methods and aims (pp. 67–107). Springer. Faber, J., Antoneli, P.C., Araújo, N S, Pinheiro, D.J., & Cavalheiro, E. (2020). Critical elements for connectivity analysis of brain networks. In Functional brain mapping: methods and aims (pp. 67–107). Springer.
Zurück zum Zitat Foland-Ross, L.C., Sacchet, M.D., Prasad, G., Gilbert, B., Thompson, P.M., & et al (2015). Cortical thickness predicts the first onset of major depression in adolescence. International Journal of Developmental Neuroscience, 46, 125–131.CrossRef Foland-Ross, L.C., Sacchet, M.D., Prasad, G., Gilbert, B., Thompson, P.M., & et al (2015). Cortical thickness predicts the first onset of major depression in adolescence. International Journal of Developmental Neuroscience, 46, 125–131.CrossRef
Zurück zum Zitat Fritz, C.O., Morris, P.E., & Richler, J.J. (2012). Effect size estimates: current use, calculations, and interpretation. Journal of Experimental Psychology: General, 141(1), 2.CrossRef Fritz, C.O., Morris, P.E., & Richler, J.J. (2012). Effect size estimates: current use, calculations, and interpretation. Journal of Experimental Psychology: General, 141(1), 2.CrossRef
Zurück zum Zitat Fu, C.H., Williams, S.C., Cleare, A.J., Brammer, M.J., Walsh, N.D., & et al (2004). Attenuation of the neural response to sad faces in major depressionby antidepressant treatment: a prospective, event-related functional magnetic resonance imagingstudy. Archives of general psychiatry, 61(9), 877–889.CrossRef Fu, C.H., Williams, S.C., Cleare, A.J., Brammer, M.J., Walsh, N.D., & et al (2004). Attenuation of the neural response to sad faces in major depressionby antidepressant treatment: a prospective, event-related functional magnetic resonance imagingstudy. Archives of general psychiatry, 61(9), 877–889.CrossRef
Zurück zum Zitat Gabrieli, J.D., Ghosh, S.S., & Whitfield-Gabrieli, S. (2015). Prediction as a humanitarian and pragmatic contribution from human cognitive neuroscience. Neuron, 85(1), 11–26.CrossRef Gabrieli, J.D., Ghosh, S.S., & Whitfield-Gabrieli, S. (2015). Prediction as a humanitarian and pragmatic contribution from human cognitive neuroscience. Neuron, 85(1), 11–26.CrossRef
Zurück zum Zitat Gao, S., Osuch, E.A., Wammes, M., Théberge, J, Jiang, T.Z., & et al (2017). Discriminating bipolar disorder from major depression based on kernel svm using functional independent components. In 2017 IEEE 27th international workshop on machine learning for signal processing (MLSP) (pp. 1–6). IEEE. Gao, S., Osuch, E.A., Wammes, M., Théberge, J, Jiang, T.Z., & et al (2017). Discriminating bipolar disorder from major depression based on kernel svm using functional independent components. In 2017 IEEE 27th international workshop on machine learning for signal processing (MLSP) (pp. 1–6). IEEE.
Zurück zum Zitat Gorgolewski, K.J., Auer, T., Calhoun, V.D., Craddock, R.C., Das, S., & et al (2016). The brain imaging data structure, a format for organizing and describing outputs of neuroimaging experiments. Scientific Data, 3(1), 1–9.CrossRef Gorgolewski, K.J., Auer, T., Calhoun, V.D., Craddock, R.C., Das, S., & et al (2016). The brain imaging data structure, a format for organizing and describing outputs of neuroimaging experiments. Scientific Data, 3(1), 1–9.CrossRef
Zurück zum Zitat Greening, S.G., Osuch, E.A., Williamson, P.C., & Mitchell, D.G. (2014). The neural correlates of regulating positive and negative emotions in medication-free major depression. Social Cognitive and Affective Neuroscience, 9(5), 628–637.CrossRef Greening, S.G., Osuch, E.A., Williamson, P.C., & Mitchell, D.G. (2014). The neural correlates of regulating positive and negative emotions in medication-free major depression. Social Cognitive and Affective Neuroscience, 9(5), 628–637.CrossRef
Zurück zum Zitat Guo, Wb, Liu, F., Xue, Zm, Xu, X., Wu, Rr, & et al (2012). Alterations of the amplitude of low-frequency fluctuations in treatment-resistant and treatment-response depression: a resting-state fmri study. Progress in neuro-psychopharmacology and amp. Biological Psychiatry, 37(1), 153–160. https://doi.org/10.1016/j.pnpbp.2012.01.011. Guo, Wb, Liu, F., Xue, Zm, Xu, X., Wu, Rr, & et al (2012). Alterations of the amplitude of low-frequency fluctuations in treatment-resistant and treatment-response depression: a resting-state fmri study. Progress in neuro-psychopharmacology and amp. Biological Psychiatry, 37(1), 153–160. https://​doi.​org/​10.​1016/​j.​pnpbp.​2012.​01.​011.
Zurück zum Zitat He, H., Bai, Y., Garcia, E.A., & Li, S. (2008). Adasyn: Adaptive synthetic sampling approach for imbalanced learning. In 2008 IEEE international joint conference on neural networks (IEEE world congress on computational intelligence) (pp. 1322–1328). IEEE. He, H., Bai, Y., Garcia, E.A., & Li, S. (2008). Adasyn: Adaptive synthetic sampling approach for imbalanced learning. In 2008 IEEE international joint conference on neural networks (IEEE world congress on computational intelligence) (pp. 1322–1328). IEEE.
Zurück zum Zitat He, H., Sui, J., Du, Y., Yu, Q., Lin, D., & et al (2017). Co-altered functional networks and brain structure in unmedicated patients with bipolar and major depressive disorders. Brain Structure and Function, 222(9), 4051–4064.CrossRef He, H., Sui, J., Du, Y., Yu, Q., Lin, D., & et al (2017). Co-altered functional networks and brain structure in unmedicated patients with bipolar and major depressive disorders. Brain Structure and Function, 222(9), 4051–4064.CrossRef
Zurück zum Zitat Jabason, E., Ahmad, M.O., & Swamy, M. (2019). Hybrid feature fusion using rnn and pre-trained cnn for classification of alzheimer’s disease (poster). In 2019 22th International Conference On Information Fusion (FUSION) (pp. 1–4). IEEE. Jabason, E., Ahmad, M.O., & Swamy, M. (2019). Hybrid feature fusion using rnn and pre-trained cnn for classification of alzheimer’s disease (poster). In 2019 22th International Conference On Information Fusion (FUSION) (pp. 1–4). IEEE.
Zurück zum Zitat Jing, B., Long, Z., Liu, H., Yan, H., Dong, J., & et al (2017). Identifying current and remitted major depressive disorder with the hurst exponent: a comparative study on two automated anatomical labeling atlases. Oncotarget, 8(52), 90452.CrossRef Jing, B., Long, Z., Liu, H., Yan, H., Dong, J., & et al (2017). Identifying current and remitted major depressive disorder with the hurst exponent: a comparative study on two automated anatomical labeling atlases. Oncotarget, 8(52), 90452.CrossRef
Zurück zum Zitat Johnston, B.A., Steele, J.D., Tolomeo, S., Christmas, D., & Matthews, K. (2015). Structural mri-based predictions in patients with treatment-refractory depression (trd). PloS ONE, 10(7), e0132958.CrossRef Johnston, B.A., Steele, J.D., Tolomeo, S., Christmas, D., & Matthews, K. (2015). Structural mri-based predictions in patients with treatment-refractory depression (trd). PloS ONE, 10(7), e0132958.CrossRef
Zurück zum Zitat Kambeitz, J., Cabral, C., Sacchet, M.D., Gotlib, I.H., Zahn, R., & et al (2017). Detecting neuroimaging biomarkers for depression: a meta-analysis of multivariate pattern recognition studies. Biological Psychiatry, 82(5), 330–338.CrossRef Kambeitz, J., Cabral, C., Sacchet, M.D., Gotlib, I.H., Zahn, R., & et al (2017). Detecting neuroimaging biomarkers for depression: a meta-analysis of multivariate pattern recognition studies. Biological Psychiatry, 82(5), 330–338.CrossRef
Zurück zum Zitat Kaye, N.S. (2005). Is your depressed patient bipolar? The Journal of the American Board of Family Practice, 18(4), 271–281.CrossRef Kaye, N.S. (2005). Is your depressed patient bipolar? The Journal of the American Board of Family Practice, 18(4), 271–281.CrossRef
Zurück zum Zitat Kipli, K., & Kouzani, A.Z. (2015). Degree of contribution (doc) feature selection algorithm for structural brain mri volumetric features in depression detection. International Journal of Computer Assisted Radiology and Surgery, 10(7), 1003–1016.CrossRef Kipli, K., & Kouzani, A.Z. (2015). Degree of contribution (doc) feature selection algorithm for structural brain mri volumetric features in depression detection. International Journal of Computer Assisted Radiology and Surgery, 10(7), 1003–1016.CrossRef
Zurück zum Zitat Kelly, C.J., Karthikesalingam, A., Suleyman, M., Corrado, G., & King, D (2019). Dominic Key challenges for delivering clinical impact with artificial intelligence. BMC Medicine, 17(1), 1–9.CrossRef Kelly, C.J., Karthikesalingam, A., Suleyman, M., Corrado, G., & King, D (2019). Dominic Key challenges for delivering clinical impact with artificial intelligence. BMC Medicine, 17(1), 1–9.CrossRef
Zurück zum Zitat Lv, H., Wang, Z., Tong, E., Williams, L.M., Zaharchuk, G., & et al (2018). Resting-state functional mri: everything that nonexperts have always wanted to know. American Journal of Neuroradiology, 39(8), 1390–1399. Lv, H., Wang, Z., Tong, E., Williams, L.M., Zaharchuk, G., & et al (2018). Resting-state functional mri: everything that nonexperts have always wanted to know. American Journal of Neuroradiology, 39(8), 1390–1399.
Zurück zum Zitat Mendes, N., Oligschläger, S, Lauckner, M.E., Golchert, J., Huntenburg, J.M., & et al (2019). A functional connectome phenotyping dataset including cognitive state and personality measures. Scientific Data, 6(1), 1–19.CrossRef Mendes, N., Oligschläger, S, Lauckner, M.E., Golchert, J., Huntenburg, J.M., & et al (2019). A functional connectome phenotyping dataset including cognitive state and personality measures. Scientific Data, 6(1), 1–19.CrossRef
Zurück zum Zitat Mheich, A., Wendling, F., & Hassan, M. (2020). Brain network similarity: methods and applications. Network Neuroscience, 4(3), 507–527.CrossRef Mheich, A., Wendling, F., & Hassan, M. (2020). Brain network similarity: methods and applications. Network Neuroscience, 4(3), 507–527.CrossRef
Zurück zum Zitat Mohanty, R., Sethares, W.A., Nair, V.A., & Prabhakaran, V. (2020). Rethinking measures of functional connectivity via feature extraction. Scientific Reports, 10(1), 1–17.CrossRef Mohanty, R., Sethares, W.A., Nair, V.A., & Prabhakaran, V. (2020). Rethinking measures of functional connectivity via feature extraction. Scientific Reports, 10(1), 1–17.CrossRef
Zurück zum Zitat Mwangi, B., Ebmeier, K.P., Matthews, K., & Douglas Steele, J. (2012). Multi-centre diagnostic classification of individual structural neuroimaging scans from patients with major depressive disorder. Brain: A Journal of Neurology, 135(5), 1508–1521.CrossRef Mwangi, B., Ebmeier, K.P., Matthews, K., & Douglas Steele, J. (2012). Multi-centre diagnostic classification of individual structural neuroimaging scans from patients with major depressive disorder. Brain: A Journal of Neurology, 135(5), 1508–1521.CrossRef
Zurück zum Zitat Mwangi, B., Tian, T.S., & Soares, J.C. (2014). A review of feature reduction techniques in neuroimaging. Neuroinformatics, 12(2), 229–244.CrossRef Mwangi, B., Tian, T.S., & Soares, J.C. (2014). A review of feature reduction techniques in neuroimaging. Neuroinformatics, 12(2), 229–244.CrossRef
Zurück zum Zitat O’Brien, L.M., Ziegler, D.A., Deutsch, C.K., Frazier, J.A., Herbert, M.R., & et al (2011). Statistical adjustments for brain size in volumetric neuroimaging studies: some practical implications in methods. Psychiatry Research: Neuroimaging, 193(2), 113–122.CrossRef O’Brien, L.M., Ziegler, D.A., Deutsch, C.K., Frazier, J.A., Herbert, M.R., & et al (2011). Statistical adjustments for brain size in volumetric neuroimaging studies: some practical implications in methods. Psychiatry Research: Neuroimaging, 193(2), 113–122.CrossRef
Zurück zum Zitat Patel, M.J., Khalaf, A., & Aizenstein, H.J. (2016). Studying depression using imaging and machine learning methods. NeuroImage: Clinical, 10, 115–123.CrossRef Patel, M.J., Khalaf, A., & Aizenstein, H.J. (2016). Studying depression using imaging and machine learning methods. NeuroImage: Clinical, 10, 115–123.CrossRef
Zurück zum Zitat Pominova, M., Artemov, A., Sharaev, M., Kondrateva, E., Bernstein, A., & et al (2018). Voxelwise 3d convolutional and recurrent neural networks for epilepsy and depression diagnostics from structural and functional mri data. In 2018 IEEE International Conference On Data Mining Workshops (ICDMW) (pp. 299–307). IEEE. Pominova, M., Artemov, A., Sharaev, M., Kondrateva, E., Bernstein, A., & et al (2018). Voxelwise 3d convolutional and recurrent neural networks for epilepsy and depression diagnostics from structural and functional mri data. In 2018 IEEE International Conference On Data Mining Workshops (ICDMW) (pp. 299–307). IEEE.
Zurück zum Zitat Queirós, GCdP. (2013). Computational methods for fmri image processing and analysis. Queirós, GCdP. (2013). Computational methods for fmri image processing and analysis.
Zurück zum Zitat Qureshi, M.N.I., Oh, J., & Lee, B. (2019). 3d-cnn based discrimination of schizophrenia using resting-state fmri. Artificial Intelligence in Medicine, 98, 10–17.CrossRef Qureshi, M.N.I., Oh, J., & Lee, B. (2019). 3d-cnn based discrimination of schizophrenia using resting-state fmri. Artificial Intelligence in Medicine, 98, 10–17.CrossRef
Zurück zum Zitat Ray, D., Bezmaternykh, D., Mel’nikov, M., Friston, K.J., & Das, M. (2021). Altered effective connectivity in sensorimotor cortices: a novel signature of severity and clinical course in depression. bioRxiv. Ray, D., Bezmaternykh, D., Mel’nikov, M., Friston, K.J., & Das, M. (2021). Altered effective connectivity in sensorimotor cortices: a novel signature of severity and clinical course in depression. bioRxiv.
Zurück zum Zitat Rubin-Falcone, H., Zanderigo, F., Thapa-Chhetry, B., Lan, M., Miller, J.M., & et al (2018). Pattern recognition of magnetic resonance imaging-based gray matter volume measurements classifies bipolar disorder and major depressive disorder. Journal of Affective Disorders, 227, 498–505.CrossRef Rubin-Falcone, H., Zanderigo, F., Thapa-Chhetry, B., Lan, M., Miller, J.M., & et al (2018). Pattern recognition of magnetic resonance imaging-based gray matter volume measurements classifies bipolar disorder and major depressive disorder. Journal of Affective Disorders, 227, 498–505.CrossRef
Zurück zum Zitat Sacchet, M.D., Prasad, G., Foland-Ross, L.C., Thompson, P.M., & Gotlib, I.H. (2015). Support vector machine classification of major depressive disorder using diffusion-weighted neuroimaging and graph theory. Frontiers in Psychiatry, 6, 21.CrossRef Sacchet, M.D., Prasad, G., Foland-Ross, L.C., Thompson, P.M., & Gotlib, I.H. (2015). Support vector machine classification of major depressive disorder using diffusion-weighted neuroimaging and graph theory. Frontiers in Psychiatry, 6, 21.CrossRef
Zurück zum Zitat Sankar, A., Zhang, T., Gaonkar, B., Doshi, J., Erus, G., Costafreda, S.G., Marangell, L., Davatzikos, C., & Fu, C.H. (2016). Diagnostic potential of structural neuroimaging for depression from a multi-ethnic community sample. BJPsych Open, 2(4), 247–254.CrossRef Sankar, A., Zhang, T., Gaonkar, B., Doshi, J., Erus, G., Costafreda, S.G., Marangell, L., Davatzikos, C., & Fu, C.H. (2016). Diagnostic potential of structural neuroimaging for depression from a multi-ethnic community sample. BJPsych Open, 2(4), 247–254.CrossRef
Zurück zum Zitat Sato, J.R., Hoexter, M.Q., Castellanos, X.F., & Rohde, L.A. (2012). Abnormal brain connectivity patterns in adults with adhd: a coherence study. PloS ONE, 7(9), e45671.CrossRef Sato, J.R., Hoexter, M.Q., Castellanos, X.F., & Rohde, L.A. (2012). Abnormal brain connectivity patterns in adults with adhd: a coherence study. PloS ONE, 7(9), e45671.CrossRef
Zurück zum Zitat Sheline, Y.I., Barch, D.M., Price, J.L., Rundle, M.M., Vaishnavi, S.N., & et al (2009). The default mode network and self-referential processes in depression. Proceedings of the National Academy of Sciences, 106(6), 1942–1947.CrossRef Sheline, Y.I., Barch, D.M., Price, J.L., Rundle, M.M., Vaishnavi, S.N., & et al (2009). The default mode network and self-referential processes in depression. Proceedings of the National Academy of Sciences, 106(6), 1942–1947.CrossRef
Zurück zum Zitat Siegle, G.J., Steinhauer, S.R., Thase, M.E., Stenger, V.A., & Carter, C.S. (2002). Can’t shake that feeling: event-related fmri assessment of sustained amygdala activity in response to emotional information in depressed individuals. Biological Psychiatry, 51(9), 693–707.CrossRef Siegle, G.J., Steinhauer, S.R., Thase, M.E., Stenger, V.A., & Carter, C.S. (2002). Can’t shake that feeling: event-related fmri assessment of sustained amygdala activity in response to emotional information in depressed individuals. Biological Psychiatry, 51(9), 693–707.CrossRef
Zurück zum Zitat Smith, S.M., Fox, P.T., Miller, K.L., Glahn, D.C., Fox, P.M., & et al (2009). Correspondence of the brain’s functional architecture during activation and rest. Proceedings of the National Academy of Sciences, 106(31), 13040–13045.CrossRef Smith, S.M., Fox, P.T., Miller, K.L., Glahn, D.C., Fox, P.M., & et al (2009). Correspondence of the brain’s functional architecture during activation and rest. Proceedings of the National Academy of Sciences, 106(31), 13040–13045.CrossRef
Zurück zum Zitat Smith, S.E., Jakobsen, I., Grønlund, M, & Smith, F.A. (2011). Roles of arbuscular mycorrhizas in plant phosphorus nutrition: interactions between pathways of phosphorus uptake in arbuscular mycorrhizal roots have important implications for understanding and manipulating plant phosphorus acquisition. Plant Physiology, 156(3), 1050–1057.CrossRef Smith, S.E., Jakobsen, I., Grønlund, M, & Smith, F.A. (2011). Roles of arbuscular mycorrhizas in plant phosphorus nutrition: interactions between pathways of phosphorus uptake in arbuscular mycorrhizal roots have important implications for understanding and manipulating plant phosphorus acquisition. Plant Physiology, 156(3), 1050–1057.CrossRef
Zurück zum Zitat Smith, S.M., Jenkinson, M., Woolrich, M.W., Beckmann, C.F., Behrens, T.E., & et al (2004). Advances in functional and structural mr image analysis and implementation as fsl. NeuroImage, 23, S208–S219.CrossRef Smith, S.M., Jenkinson, M., Woolrich, M.W., Beckmann, C.F., Behrens, T.E., & et al (2004). Advances in functional and structural mr image analysis and implementation as fsl. NeuroImage, 23, S208–S219.CrossRef
Zurück zum Zitat Tai, L.K., Setyonugroho, W., & Chen, A.L. (2020). Finding discriminatory features from electronic health records for depression prediction. Journal of Intelligent Information Systems, 55(2), 371–396.CrossRef Tai, L.K., Setyonugroho, W., & Chen, A.L. (2020). Finding discriminatory features from electronic health records for depression prediction. Journal of Intelligent Information Systems, 55(2), 371–396.CrossRef
Zurück zum Zitat Van Den Heuvel, M.P., & Pol, H.E.H. (2010). Exploring the brain network: a review on resting-state fmri functional connectivity. European Neuropsychopharmacology, 20(8), 519–534.CrossRef Van Den Heuvel, M.P., & Pol, H.E.H. (2010). Exploring the brain network: a review on resting-state fmri functional connectivity. European Neuropsychopharmacology, 20(8), 519–534.CrossRef
Zurück zum Zitat Varoquaux, G., & Craddock, R.C. (2013). Learning and comparing functional connectomes across subjects. NeuroImage, 80, 405–415.CrossRef Varoquaux, G., & Craddock, R.C. (2013). Learning and comparing functional connectomes across subjects. NeuroImage, 80, 405–415.CrossRef
Zurück zum Zitat Varoquaux, G., Sadaghiani, S., Pinel, P., Kleinschmidt, A., Poline, J.B., & et al (2010). A group model for stable multi-subject ica on fmri datasets. NeuroImage, 51(1), 288–299.CrossRef Varoquaux, G., Sadaghiani, S., Pinel, P., Kleinschmidt, A., Poline, J.B., & et al (2010). A group model for stable multi-subject ica on fmri datasets. NeuroImage, 51(1), 288–299.CrossRef
Zurück zum Zitat Varshney, A., Prakash, C., Mittal, N., & Singh, P. (2016). A multimodel approach for schizophrenia diagnosis using fmri and smri dataset. In JM Corchado Rodriguez, S Mitra, SM Thampi, & ES El-Alfy (Eds.) Intelligent systems technologies and applications 2016 (pp. 869–877). Cham: Springer International Publishing. Varshney, A., Prakash, C., Mittal, N., & Singh, P. (2016). A multimodel approach for schizophrenia diagnosis using fmri and smri dataset. In JM Corchado Rodriguez, S Mitra, SM Thampi, & ES El-Alfy (Eds.) Intelligent systems technologies and applications 2016 (pp. 869–877). Cham: Springer International Publishing.
Zurück zum Zitat Wang, Y.P., & Gorenstein, C. (2013). Assessment of depression in medical patients: a systematic review of the utility of the beck depression inventory-ii. Clinics, 68(9), 1274–1287.CrossRef Wang, Y.P., & Gorenstein, C. (2013). Assessment of depression in medical patients: a systematic review of the utility of the beck depression inventory-ii. Clinics, 68(9), 1274–1287.CrossRef
Zurück zum Zitat Wang, X., Ren, Y., & Zhang, W. (2017). Depression disorder classification of fmri data using sparse low-rank functional brain network and graph-based features. Computational and Mathematical Methods in Medicine, pp 2017. Wang, X., Ren, Y., & Zhang, W. (2017). Depression disorder classification of fmri data using sparse low-rank functional brain network and graph-based features. Computational and Mathematical Methods in Medicine, pp 2017.
Zurück zum Zitat Woolrich, M.W., Jbabdi, S., Patenaude, B., Chappell, M., Makni, S., & et al (2009). Bayesian analysis of neuroimaging data in fsl. NeuroImage, 45(1), S173–S186.CrossRef Woolrich, M.W., Jbabdi, S., Patenaude, B., Chappell, M., Makni, S., & et al (2009). Bayesian analysis of neuroimaging data in fsl. NeuroImage, 45(1), S173–S186.CrossRef
Zurück zum Zitat Woolrich, M.W., Ripley, B.D., Brady, M., & Smith, S.M. (2001). Temporal autocorrelation in univariate linear modeling of fmri data. NeuroImage, 14(6), 1370–1386.CrossRef Woolrich, M.W., Ripley, B.D., Brady, M., & Smith, S.M. (2001). Temporal autocorrelation in univariate linear modeling of fmri data. NeuroImage, 14(6), 1370–1386.CrossRef
Zurück zum Zitat Wu, M.Y., Shen, C.Y., Wang, E.T., & Chen, A.L. (2020). A deep architecture for depression detection using posting, behavior, and living environment data. Journal of Intelligent Information Systems, 54(2), 225–244.CrossRef Wu, M.Y., Shen, C.Y., Wang, E.T., & Chen, A.L. (2020). A deep architecture for depression detection using posting, behavior, and living environment data. Journal of Intelligent Information Systems, 54(2), 225–244.CrossRef
Zurück zum Zitat Xiao, Y., Fonov, V., Chakravarty, M.M., Beriault, S., Al Subaie, F., & et al (2017). A dataset of multi-contrast population-averaged brain mri atlases of a parkinson’s disease cohort. Data in brief, 12, 370–379.CrossRef Xiao, Y., Fonov, V., Chakravarty, M.M., Beriault, S., Al Subaie, F., & et al (2017). A dataset of multi-contrast population-averaged brain mri atlases of a parkinson’s disease cohort. Data in brief, 12, 370–379.CrossRef
Zurück zum Zitat Yao, Z., Hu, B., Xie, Y., Moore, P., & Zheng, J. (2015). A review of structural and functional brain networks: small world and atlas. Brain Informatics, 2(1), 45–52.CrossRef Yao, Z., Hu, B., Xie, Y., Moore, P., & Zheng, J. (2015). A review of structural and functional brain networks: small world and atlas. Brain Informatics, 2(1), 45–52.CrossRef
Zurück zum Zitat Ye, M., Yang, T., Qing, P., Lei, X., Qiu, J., & et al (2015). Changes of functional brain networks in major depressive disorder: a graph theoretical analysis of resting-state fmri. PloS ONE, 10(9), e0133775.CrossRef Ye, M., Yang, T., Qing, P., Lei, X., Qiu, J., & et al (2015). Changes of functional brain networks in major depressive disorder: a graph theoretical analysis of resting-state fmri. PloS ONE, 10(9), e0133775.CrossRef
Zurück zum Zitat Zang, Y.F., Zuo, X.N., Milham, M, & Hallett, M. (2015). Toward a meta-analytic synthesis of the resting-state fmri literature for clinical populations. Zang, Y.F., Zuo, X.N., Milham, M, & Hallett, M. (2015). Toward a meta-analytic synthesis of the resting-state fmri literature for clinical populations.
Zurück zum Zitat Zhao, Y., Niu, R., Lei, D., Shah, C., Xiao, Y., & et al. (2020). Aberrant gray matter networks in non-comorbid medication-naive patients with major depressive disorder and those with social anxiety disorder. Frontiers in Human Neuroscience. Zhao, Y., Niu, R., Lei, D., Shah, C., Xiao, Y., & et al. (2020). Aberrant gray matter networks in non-comorbid medication-naive patients with major depressive disorder and those with social anxiety disorder. Frontiers in Human Neuroscience.
Zurück zum Zitat Zhong, X., Shi, H., Ming, Q., Dong, D., Zhang, X., & et al (2017). Whole-brain resting-state functional connectivity identified major depressive disorder: a multivariate pattern analysis in two independent samples. Journal of Affective Disorders, 218, 346–352.CrossRef Zhong, X., Shi, H., Ming, Q., Dong, D., Zhang, X., & et al (2017). Whole-brain resting-state functional connectivity identified major depressive disorder: a multivariate pattern analysis in two independent samples. Journal of Affective Disorders, 218, 346–352.CrossRef
Zurück zum Zitat Zhuo, C., Li, G., Lin, X., Jiang, D., Xu, Y., & et al (2019). The rise and fall of MRI studies in major depressive disorder. Translational Psychiatry, 9(1), 1–14.CrossRef Zhuo, C., Li, G., Lin, X., Jiang, D., Xu, Y., & et al (2019). The rise and fall of MRI studies in major depressive disorder. Translational Psychiatry, 9(1), 1–14.CrossRef
Zurück zum Zitat Zisook, S., Lesser, I., Stewart, J.W., Wisniewski, S.R., Balasubramani, G., & et al (2007). Effect of age at onset on the course of major depressive disorder. American Journal of Psychiatry, 164(10), 1539–1546.CrossRef Zisook, S., Lesser, I., Stewart, J.W., Wisniewski, S.R., Balasubramani, G., & et al (2007). Effect of age at onset on the course of major depressive disorder. American Journal of Psychiatry, 164(10), 1539–1546.CrossRef
Metadaten
Titel
Depression detection from sMRI and rs-fMRI images using machine learning
verfasst von
Marzieh Mousavian
Jianhua Chen
Zachary Traylor
Steven Greening
Publikationsdatum
02.08.2021
Verlag
Springer US
Erschienen in
Journal of Intelligent Information Systems / Ausgabe 2/2021
Print ISSN: 0925-9902
Elektronische ISSN: 1573-7675
DOI
https://doi.org/10.1007/s10844-021-00653-w

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