Ng, C. H. et al. Definition of treatment-resistant depression—Asia Pacific perspectives. J. Affect. Disord. 245, 626–636 (2019).

Article 
CAS 
PubMed 

Google Scholar
 

Akil, H. et al. Treatment resistant depression: a multi-scale, systems biology approach. Neurosci. Biobehav. Rev. 84, 272–288 (2018).

Article 
PubMed 

Google Scholar
 

Cole, E. J. et al. Stanford accelerated intelligent neuromodulation therapy for treatment-resistant depression. Am. J. Psychiatry 177, 716–726 (2020).

Article 
PubMed 

Google Scholar
 

Rush, A. J. et al. Acute and longer-term outcomes in depressed outpatients requiring one or several treatment steps: a STAR*D report. Am. J. Psychiatry 163, 1905–1917 (2006).

Article 
PubMed 

Google Scholar
 

Zhdanava, M. et al. The prevalence and national burden of treatment-resistant depression and major depressive disorder in the United States. J. Clin. Psychiatry 82, 2 (2021).

Article 

Google Scholar
 

Global, regional, and national burden of 12 mental disorders in 204 countries and territories, 1990-2019: a systematic analysis for the Global Burden of Disease Study 2019. Lancet. Psychiatry. 9, 137–150 (2022).

Global burden of 369 diseases and injuries in 204 countries and territories, 1990-2019: a systematic analysis for the Global Burden of Disease Study 2019. Lancet. 396, 1204–1222 (2020).

Global prevalence and burden of depressive and anxiety disorders in 204 countries and territories in 2020 due to the COVID-19 pandemic. Lancet. 398, 1700–1712 (2021).

Johnston, K. M., Powell, L. C., Anderson, I. M., Szabo, S. & Cline, S. The burden of treatment-resistant depression: A systematic review of the economic and quality of life literature. J. Affect. Disord. 242, 195–210 (2019).

Article 
PubMed 

Google Scholar
 

Papp, M., Cubala, W. J., Swiecicki, L., Newman-Tancredi, A. & Willner, P. Perspectives for therapy of treatment-resistant depression. Br. J. Pharmacol. 179, 4181–4200 (2022).

Article 
CAS 
PubMed 

Google Scholar
 

Wang, H. et al. One-year incidence rate of Treatment Resistant Depression (TRD) and treatment characteristics in China. J. Affect. Disord. 305, 77–84 (2022).

Article 
PubMed 

Google Scholar
 

Runia, N. et al. The neurobiology of treatment-resistant depression: a systematic review of neuroimaging studies. Neurosci. Biobehav. Rev. 132, 433–448 (2022).

Article 
PubMed 

Google Scholar
 

Sun, J. et al. Distinct patterns of functional brain network integration between treatment-resistant depression and non treatment-resistant depression: a resting-state functional magnetic resonance imaging study. Prog. Neuro-Psychopharmacol. Biol. Psychiatry 120, 110621 (2023).

Article 

Google Scholar
 

He, Z. et al. Frequency-specific alterations in functional connectivity in treatment-resistant and -sensitive major depressive disorder. J. Psychiatr. Res. 82, 30–39 (2016).

Article 
PubMed 

Google Scholar
 

Barreiros, A. R. et al. Abnormal habenula functional connectivity characterizes treatment-resistant depression. NeuroImage. Clin. 34, 102990 (2022).

Article 
PubMed 
PubMed Central 

Google Scholar
 

de Kwaasteniet, B. P. et al. Decreased resting-state connectivity between neurocognitive networks in treatment resistant depression. Front. Psychiatry 6, 28 (2015).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Barreiros, A. R. et al. Intra- and Inter-Network connectivity of the default mode network differentiates treatment-resistant depression from treatment-sensitive depression. NeuroImage. Clin. 43, 103656 (2024).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Grehl, M. M., Hameed, S. & Murrough, J. W. Brain features of treatment-resistant depression: a review of structural and functional connectivity magnetic resonance imaging studies. Psychiatr. Clin. North Am. 46, 391–401 (2023).

Article 
PubMed 

Google Scholar
 

Abdallah, C. G. et al. Prefrontal cortical GABA abnormalities are associated with reduced hippocampal volume in major depressive disorder. Eur. Neuropsychopharmacol. J. Eur. Coll. Neuropsychopharmacol. 25, 1082–1090 (2015).

Article 
CAS 

Google Scholar
 

Sandu, A.-L. et al. Amygdala and regional volumes in treatment-resistant versus nontreatment-resistant depression patients. Depression Anxiety 34, 1065–1071 (2017).

Article 
PubMed 

Google Scholar
 

Yang, Y. et al. Enhanced brain structure-function tethering in transmodal cortex revealed by high-frequency eigenmodes. Nat. Commun. 14, 6744 (2023).

Article 
CAS 
PubMed 
PubMed Central 

Google Scholar
 

Suárez, L. E., Markello, R. D., Betzel, R. F. & Misic, B. Linking structure and function in macroscale brain networks. Trends Cogn. Sci. 24, 302–315 (2020).

Article 
PubMed 

Google Scholar
 

Liégeois, R., Santos, A., Matta, V., Van De Ville, D. & Sayed, A. H. Revisiting correlation-based functional connectivity and its relationship with structural connectivity. Netw. Neurosci. 4, 1235–1251 (2020).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Fotiadis, P. et al. Structure-function coupling in macroscale human brain networks. Nat. Rev. Neurosci. 25, 688–704 (2024).

Article 
CAS 
PubMed 

Google Scholar
 

Vázquez-Rodríguez, B. et al. Gradients of structure-function tethering across neocortex. Proc. Natl. Acad. Sci. USA 116, 21219–21227 (2019).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Klok, M. P. C., van Eijndhoven, P. F., Argyelan, M., Schene, A. H. & Tendolkar, I. Structural brain characteristics in treatment-resistant depression: review of magnetic resonance imaging studies. BJPsych Open 5, e76 (2019).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Miola, A., Meda, N., Perini, G. & Sambataro, F. Structural and functional features of treatment-resistant depression: A systematic review and exploratory coordinate-based meta-analysis of neuroimaging studies. Psychiatry Clin. Neurosci. 77, 252–263 (2023).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Zhang, Z. et al. Dynamic structure-function coupling across three major psychiatric disorders. Psychol. Med. 54, 1629–1640 (2024).

Article 
PubMed 

Google Scholar
 

Baum, G. L. et al. Development of structure-function coupling in human brain networks during youth. Proc. Natl. Acad. Sci. USA 117, 771–778 (2020).

Article 
CAS 
PubMed 

Google Scholar
 

Liao, Q.-M. et al. Changes of structural functional connectivity coupling and its correlations with cognitive function in patients with major depressive disorder. J. Affect. Disord. 351, 259–267 (2024).

Article 
PubMed 

Google Scholar
 

Wu, B. et al. Disrupted structural brain networks and structural-functional decoupling in first-episode drug-naïve adolescent major depressive disorder. J. Adolesc. Health Off. Publ. Soc. Adolesc. Med. 74, 941–949 (2024).

Article 

Google Scholar
 

Xu, M. et al. Reconfiguration of structural and functional connectivity coupling in patient subgroups with adolescent depression. JAMA Netw. Open 7, e241933 (2024).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Jiang, X. et al. Connectome analysis of functional and structural hemispheric brain networks in major depressive disorder. Transl. Psychiatry 9, 136 (2019).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Guo, X. et al. Abnormal degree centrality in first-episode medication-free adolescent depression at rest: A functional magnetic resonance imaging study and support vector machine analysis. Front. Psychiatry 13, 926292 (2022).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Wang, Y., Jin, Z., Huyang, S., Lian, Q. & Wu, D. Elevated activity in left homologous music circuits is inhibitory for music perception but mediated by structure-function coupling. CNS Neurosci. Ther. 30, e70174 (2024).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Chen, S. et al. Integrating functional neuroimaging and serum proteins improves the diagnosis of major depressive disorder. J. Affect. Disord. 325, 421–428 (2023).

Article 
CAS 
PubMed 

Google Scholar
 

Sen, B., Cullen, K. R. & Parhi, K. K. Classification of adolescent major depressive disorder via static and dynamic connectivity. IEEE J. Biomed. Health Inform. 25, 2604–2614 (2021).

Article 
PubMed 

Google Scholar
 

Lin, Z., Lawrence, W. R., Huang, Y., Lin, Q. & Gao, Y. Classifying depression using blood biomarkers: A large population study. J. Psychiatr. Res. 140, 364–372 (2021).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Chao-Gan, Y. & Yu-Feng, Z. DPARSF: A MATLAB Toolbox for “Pipeline” Data Analysis of Resting-State fMRI. Front. Syst. Neurosci. 4, 13 (2010).

PubMed 
PubMed Central 

Google Scholar
 

Lu, B. & Yan, C. G. Demonstrating quality control procedures for fMRI in DPABI. Front Neurosci. 17, 1069639 (2023).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Li, J. et al. Global signal regression strengthens association between resting-state functional connectivity and behavior. Neuroimage 196, 126–141 (2019).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Deng, S. et al. Hemodynamic and metabolic correspondence of resting-state voxel-based physiological metrics in healthy adults. Neuroimage 250, 118923 (2022).

Article 
CAS 
PubMed 
PubMed Central 

Google Scholar
 

Zhao, R. et al. Whole-brain structure-function coupling abnormalities in mild cognitive impairment: a study combining amplitude of low-frequency fluctuations and voxel-based morphometry. Front. Neurosci. 17, 1236221 (2023).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Wang, N. et al. Brain structure-function coupling associated with cognitive impairment in cerebral small vessel disease. Front. Neurosci. 17, 1163274 (2023).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Kang, Y. F. et al. Structure-function decoupling: a novel perspective for understanding the radiation-induced brain injury in patients with nasopharyngeal carcinoma. Front. Neurosci. 16, 915164 (2022).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Zang, Y.-F. et al. Altered baseline brain activity in children with ADHD revealed by resting-state functional MRI. Brain Dev. 29, 83–91 (2007).

Article 
PubMed 

Google Scholar
 

Fan, L. et al. The Human Brainnetome Atlas: a new brain atlas based on connectional architecture. Cereb. Cortex 26, 3508–3526 (2016).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Kong, X.-Z. et al. Measuring individual morphological relationship of cortical regions. J. Neurosci. Methods 237, 103–107 (2014).

Article 
PubMed 

Google Scholar
 

Wang, H., Jin, X., Zhang, Y. & Wang, J. Single-subject morphological brain networks: connectivity mapping, topological characterization and test-retest reliability. Brain Behav. 6, e00448 (2016).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Long, J.-Y., Qin, K., Pan, N., Fan, W.-L. & Li, Y. Impaired topology and connectivity of grey matter structural networks in major depressive disorder: evidence from a multi-site neuroimaging data-set. Br. J. Psychiatry J. Ment. Sci. 224, 170–178 (2024).

Article 

Google Scholar
 

Yu, M. et al. Childhood trauma history is linked to abnormal brain connectivity in major depression. Proc. Natl. Acad. Sci. USA 116, 8582–8590 (2019).

Article 
CAS 
PubMed 
PubMed Central 

Google Scholar
 

Wagner, G. et al. Functional network alterations differently associated with suicidal ideas and acts in depressed patients: an indirect support to the transition model. Transl. Psychiatry 11, 100 (2021).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Rai, S. et al. Common and differential neural mechanisms underlying mood disorders. Bipolar Disord. 24, 795–805 (2022).

Article 
PubMed 

Google Scholar
 

Qin, J. et al. Altered anatomical patterns of depression in relation to antidepressant treatment: Evidence from a pattern recognition analysis on the topological organization of brain networks. J. Affect. Disord. 180, 129–137 (2015).

Article 
CAS 
PubMed 

Google Scholar
 

Kaiser, R. H., Andrews-Hanna, J. R., Wager, T. D. & Pizzagalli, D. A. Large-scale network dysfunction in major depressive disorder: a meta-analysis of resting-state functional connectivity. JAMA Psychiatry 72, 603–611 (2015).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Fallucca, E. et al. Distinguishing between major depressive disorder and obsessive-compulsive disorder in children by measuring regional cortical thickness. Arch. Gen. Psychiatry 68, 527–533 (2011).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Yang, X. H. et al. Increased prefrontal and parietal cortical thickness does not correlate with anhedonia in patients with untreated first-episode major depressive disorders. Psychiatry Res. 234, 144–151 (2015).

Article 
PubMed 

Google Scholar
 

Sheng, W. et al. Cortical thickness reductions associate with brain network architecture in major depressive disorder. J. Affect Disord. 347, 175–182 (2024).

Article 
PubMed 

Google Scholar
 

Scolari, M., Seidl-Rathkopf, K. N. & Kastner, S. Functions of the human frontoparietal attention network: Evidence from neuroimaging. Curr. Opin. Behav. Sci. 1, 32–39 (2015).

Article 
PubMed 

Google Scholar
 

Marek, S. & Dosenbach, N. U. F. The frontoparietal network: function, electrophysiology, and importance of individual precision mapping. Dialogues Clin. Neurosci. 20, 133–140 (2018).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Holtzheimer, P. E. & Mayberg, H. S. Stuck in a rut: rethinking depression and its treatment. Trends Neurosci. 34, 1–9 (2011).

Article 
CAS 
PubMed 

Google Scholar
 

Liu, P. et al. Brain functional alterations in MDD patients with somatic symptoms: a resting-state fMRI study. J. Affect Disord. 295, 788–796 (2021).

Article 
PubMed 

Google Scholar
 

Su, Y. A., Ye, C., Xin, Q. & Si, T. Neuroimaging studies in major depressive disorder with suicidal ideation or behaviour among Chinese patients: implications for neural mechanisms and imaging signatures. Gen. Psychiatr. 37, e101649 (2024).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Harder, A. et al. Genetics of age-at-onset in major depression. Transl. Psychiatry 12, 124 (2022).

Article 
CAS 
PubMed 
PubMed Central 

Google Scholar
 

Ma, C. et al. Resting-state functional connectivity bias of middle temporal gyrus and caudate with altered gray matter volume in major depression. PloS One 7, e45263 (2012).

Article 
CAS 
PubMed 
PubMed Central 

Google Scholar
 

Ge, R. et al. Functional disconnectivity of the hippocampal network and neural correlates of memory impairment in treatment-resistant depression. J. Affect. Disord. 253, 248–256 (2019).

Article 
PubMed 

Google Scholar
 

Chu, T., et al. Regional structural-functional connectivity coupling in major depressive disorder is associated with neurotransmitter and genetic profiles. Biol. Psychiatry. (2024).

Teng, X. et al. Comparison of brain network between schizophrenia and bipolar disorder: a multimodal MRI analysis of comparative studies. J. Affect. Disord. 327, 197–206 (2023).

Article 
PubMed 

Google Scholar
 

Kong, L.-Y., et al. Divergent alterations of structural-functional connectivity couplings in first-episode and chronic schizophrenia patients. Neuroscience. 460 (2021).

Skudlarski, P. et al. Brain connectivity is not only lower but different in schizophrenia: a combined anatomical and functional approach. Biol. Psychiatry 68, 61–69 (2010).

Article 
PubMed 
PubMed Central 

Google Scholar
 

van den Heuvel, M. P. et al. Abnormal rich club organization and functional brain dynamics in schizophrenia. JAMA Psychiatry 70, 783–792 (2013).

Article 
PubMed 

Google Scholar
 

Wang, Z., Dai, Z., Gong, G., Zhou, C. & He, Y. Understanding structural-functional relationships in the human brain: a large-scale network perspective. Neuroscientist Rev. J. Bringing Neurobiol. Neurol. Psychiatry 21, 290–305 (2015).


Google Scholar
 

Fabbri, C. et al. Genetic and clinical characteristics of treatment-resistant depression using primary care records in two UK cohorts. Mol. Psychiatry 26, 3363–3373 (2021).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Schosser, A. et al. European Group for the Study of Resistant Depression (GSRD)-Where have we gone so far: review of clinical and genetic findings. Eur. Neuropsychopharmacol. J. Eur. Coll. Neuropsychopharmacol. 22, 453–468 (2012).

Article 
CAS 

Google Scholar
 

López-Solà, C. et al. Is cognitive dysfunction involved in difficult-to-treat depression? Characterizing resistance from a cognitive perspective. Eur. Psychiatry J. Assoc. Eur. Psychiatrists 63, e74 (2020).

Article 

Google Scholar
 

Kautzky, A. et al. Refining prediction in treatment-resistant depression: results of machine learning analyses in the TRD III sample. J. Clin. Psychiatry 79, 1 (2018).

Article 

Google Scholar
 

Lynch, C. J. et al. Frontostriatal salience network expansion in individuals in depression. Nature 633, 624–633 (2024).

Article 
CAS 
PubMed 
PubMed Central 

Google Scholar
 

Cui, L.-B. et al. Connectome-based patterns of first-episode medication-naïve patients with schizophrenia. Schizophrenia Bull. 45, 1291–1299 (2019).

Article 

Google Scholar
 

Perlis, R. H. A clinical risk stratification tool for predicting treatment resistance in major depressive disorder. Biol. Psychiatry 74, 1 (2013).

Article 

Google Scholar
 

Kautzky, A. et al. A new prediction model for evaluating treatment-resistant depression. J. Clin. Psychiatry 78, 215–222 (2017).

Article 
PubMed 

Google Scholar
 

Cepeda, M. S. et al. Finding treatment-resistant depression in real-world data: How a data-driven approach compares with expert-based heuristics. Depress Anxiety 35, 220–228 (2018).

Article 
CAS 
PubMed 

Google Scholar
 

Johnston, B. A., Steele, J. D., Tolomeo, S., Christmas, D. & Matthews, K. Structural MRI-based predictions in patients with treatment-refractory depression (TRD). PLoS One 10, e0132958 (2015).

Article 
PubMed 
PubMed Central 

Google Scholar
 

Kautzky, A. et al. The combined effect of genetic polymorphisms and clinical parameters on treatment outcome in treatment-resistant depression. Eur. Neuropsychopharmacol. 25, 441–453 (2015).

Article 
CAS 
PubMed 

Google Scholar
 

Pigoni, A. et al. Can Machine Learning help us in dealing with treatment resistant depression? A review. J. Affect Disord. 259, 21–26 (2019).

Article 
PubMed 

Google Scholar
 

Serretti, A. et al. Clinical predictors of treatment resistant depression. Eur. Neuropsychopharmacol. 98, 26–34 (2025).

Article 
CAS 
PubMed 

Google Scholar
 

Lee, Y. et al. Applications of machine learning algorithms to predict therapeutic outcomes in depression: a meta-analysis and systematic review. J. Affect. Disord. 241, 519–532 (2018).

Article 
PubMed 

Google Scholar
 

Share.

Comments are closed.