Most recent paper

The characteristics of brain function alterations in patients with chronic prostatitis/chronic pelvic pain syndrome across varying symptom severities evaluated by NIH-CPSI
Front Neurosci. 2025 Feb 26;19:1511654. doi: 10.3389/fnins.2025.1511654. eCollection 2025.
ABSTRACT
BACKGROUND: Chronic prostatitis/chronic pelvic pain syndrome (CP/CPPS) is a prevalent condition in urology characterized by chronic pain. The pathogenesis of CP/CPPS remains unclear.
METHODS: We enrolled 45 eligible CP/CPPS patients and 45 healthy volunteers. We evaluated their resting-state fMRI data using a comprehensive set of parameters, such as Regional Homogeneity (ReHo) and Degree Centrality (DC), to detect brain abnormalities and identify potential correlates with the clinical manifestations of CP/CPPS. We further categorized the patients into subgroups according to their scores of NIH-CPSI to elucidate the brain changes associated with differing symptom severities.
RESULTS: Profound alterations in brain function were observed in patients with CP/CPPS. These changes involved multiple brain regions identified by DC analysis, including the right anterior cingulate cortex (ACC), left inferior frontal opercular cortex, left amygdala, right middle frontal cortex, and bilateral insula. ReHo analysis revealed significant changes in the right thalamus, left inferior frontal triangular cortex, right superior temporal pole, left ACC, and right superior frontal cortex (cluster >20 voxels, GRF correction, p < 0.05). Analysis using ReHo and DC revealed that brain alterations associated with varying symptom severities were localized in pain perception and modulation regions. Specifically, the DC values in the right ACC showed a linear correlation with the severity of symptoms measured by the NIH-CPSI (AUC = 0.9654, p < 0.0001).
CONCLUSION: In CP/CPPS, we first discovered differences in brain function among patients with varying degrees of severity. The brain alterations of DC in the right ACC might be a potential biomarker for diagnosing and assessing disease severity.
PMID:40078709 | PMC:PMC11897570 | DOI:10.3389/fnins.2025.1511654
Multi-feature fusion RFE random forest for schizophrenia classification and treatment response prediction
Sci Rep. 2025 Mar 12;15(1):8594. doi: 10.1038/s41598-025-89359-5.
ABSTRACT
Schizophrenia(SZ) classification and treatment response prediction hold substantial clinical application value. However, only a limited number of researchers have exploited the multi-feature information derived from resting-state functional magnetic resonance imaging (rs-fMRI) to achieve short-term drug-treatment SZ classification and treatment response prediction. We developed a multi-feature fusion recursive feature elimination random forest (RFE-RF) approach for SZ classification and treatment response prediction. Initially, we computed multiple features, such as regional homogeneity, fractional amplitude of low-frequency fluctuations, and functional connectivity. Subsequently, the RFE-RF method was employed to conduct SZ classification. Moreover, we utilized the rate of score reduction (RR) of the Positive and Negative Symptom Scale (PANSS) to forecast the treatment response of individual patients. Finally, we identified the neuroimaging biomarkers for SZ classification and drug-treatment response prediction. This method achieved the classification results (accuracy = 91.7%, sensitivity = 90.9%, and specificity = 92.6%), and the abnormalities in the visual and default mode networks emerged as potential neuroimaging biomarkers for differentiating SZ from healthy controls (HC). Additionally, we predicted the drug-treatment response of SZ patients in terms of their total PANSS scores, as well as negative and positive symptom scores after eight weeks of treatment. Specifically, the abnormalities in the visual network, sensorimotor network, and right superior frontal gyrus are crucial biomarkers for the short-term drug-treatment response of negative symptoms in SZ patients. Meanwhile, the abnormalities in the visual and default mode networks serve as important biomarkers of the short-term drug-treatment response of positive symptoms. There findings offer novel insights into the neural mechanisms underlying SZ following eight weeks of short-term drug treatment. With further clinical validation in the future, this research may provide potential biomarkers and intervention targets for personalized treatment of SZ.
PMID:40075170 | DOI:10.1038/s41598-025-89359-5
Counterfactual explanations of tree based ensemble models for brain disease analysis with structure function coupling
Sci Rep. 2025 Mar 12;15(1):8524. doi: 10.1038/s41598-025-92316-x.
ABSTRACT
Convergent evidence has suggested that the disruption of either structural connectivity (SC) or functional connectivity (FC) in the brain can lead to various neuropsychiatric disorders. Since changes in SC-FC coupling may be more sensitive than a single modality to detect subtle brain connectivity abnormalities, a few learning-based methods have been proposed to explore the relationship between SC and FC. However, these existing methods still fail to explain the relationship between altered SC-FC coupling and brain disorders. Therefore, in this paper, we explore three types of tree-based ensemble models (i.e., Decision Tree, Random Forest, and Adaptive Boosting) toward counterfactual explanations for SC-FC coupling. Specifically, we first construct SC and FC matrices from preprocessed diffusion-weighted DTI and resting-state functional fMRI data. Then, we quantify the SC-FC coupling strength of each region and convert it into feature vectors. Subsequently, we select SC-FC coupling features that can reflect disease-related information and trained three tree-based models to analyze the predictive role of these coupling features for diseases. Finally, we design a tree ensemble counterfactual explanation model to generate a set of counterfactual examples for patients, thereby assisting the diagnosis of brain diseases by fine-tuning the patient's abnormal SC-FC coupling feature vector. Experimental results on two independent datasets (i.e., epilepsy and schizophrenia) validate the effectiveness of the proposed method. The identified discriminative brain regions and generated counterfactual examples provide new insights for brain disease analysis.
PMID:40075142 | DOI:10.1038/s41598-025-92316-x
Anatomo-functional organization of insular networks:From sensory integration to behavioral control
Prog Neurobiol. 2025 Mar 11:102748. doi: 10.1016/j.pneurobio.2025.102748. Online ahead of print.
ABSTRACT
Classically, the insula is considered an associative multisensory cortex where emotional awareness emerges through the integration of interoceptive and exteroceptive information, along with autonomic regulation. However, since early intracortical microstimulation (ICMS) studies, the insular cortex has also been conceived as a mosaic of anatomo-functional sectors processing various types of sensory information to generate specific overt behaviors. Based on this, the insula has been subdivided into distinct functional fields: an anterior field associated with oroalimentary behaviors, a middle field involved dorsally in hand movements and ventrally in emotional reactions, and a posterior field engaged in axial and proximal movements. Nevertheless, the anatomo-functional networks through which these fields produce motor behaviors remain largely unknown. To fill this gap in the present study, we investigated the connectivity of the macaque insula using a multimodal approach which combines resting-state fMRI with data from tract-tracing injections in insular functional fields defined by ICMS, as well as in brain areas known to be connected to the insula and characterized by specific somatotopic organization. The results revealed that each insular functional field takes part in distinct somatotopically organized network modulating specific motor or visceromotor behaviors, extending previous models that subdivide the insula primarily based on the types of interoceptive and exteroceptive information it receives. Our findings posit the various insular sectors as interfaces that synthesize diverse interoceptive and exteroceptive inputs into coherent subjective experiences and decision-making processes, within an embodied and enactive framework, that moves beyond the traditional dichotomy between sensory experience and motor behavior.
PMID:40074022 | DOI:10.1016/j.pneurobio.2025.102748
Abnormal resting-state neural activities of language and non-language cognitive function impairments in stroke patients with aphasia: A cross-sectional study
Clin Neurol Neurosurg. 2025 Mar 11;251:108849. doi: 10.1016/j.clineuro.2025.108849. Online ahead of print.
ABSTRACT
OBJECTIVE: Language impairments may mask non-language cognitive deficits in post-stroke aphasia (PSA) patients. Moreover, the underlying neural mechanisms of both language and non-language cognitive impairment remain unclear. This study aimed to investigate the activities and functional abnormalities of local and remote brain regions and their relationship with cognitive function in PSA patients, to provide more effective tips in future clinical therapy.
METHODS: This cross-sectional study included 46 PSA patients and 40 controls, who underwent language and non-language cognitive assessments, and resting-state functional magnetic resonance imaging (rs-fMRI). We then examined the fractional amplitude of low-frequency fluctuations (fALFF), regional homogeneity (ReHo), and functional connectivity (FC) based on a modest sample size (46 PSA patients and 40 normal controls (NCs)). Independent two-sample t-tests were used to identify differences in these measures between PSA patients and NCs. Moreover, partial correlation analyses were performed to determine the correlation between FC from the affected brain regions and language, and non-language cognitive performance in PSA patients.
RESULTS: This study revealed that both fALFF and ReHo in PSA patients presented significantly lower in the right superior cerebellum, left thalamus, and left middle frontal gyrus, along with increased values in the right superior frontal gyrus (dorsolateral part) (p < 0.05). Notably, decreased FC between the left middle frontal gyrus and orbital part of the left inferior frontal gyrus was significantly associated with both language and non-language cognitive performance (p < 0.05). In addition, PSA patients were further divided into fluent and non-fluent groups. The results revealed that non-fluent patients demonstrated worse overall cognitive functioning, accompanied by reduced FC between the left thalamus and the left supplementary motor area (p < 0.001).
CONCLUSION: This study provides new evidence that abnormal neural activities and functional connectivities within specific brain regions may play crucial roles in language and non-language cognitive function. The underlying mechanisms of non-language cognitive decline accompanied by impaired language function in PSA patients may be a partial overlap between language and cognitive networks. In the future, combining language and non-language functions and designing a comprehensive treatment plan will be the focus of rehabilitation.
PMID:40073749 | DOI:10.1016/j.clineuro.2025.108849
Cerebellocerebral connectivity predicts body mass index: a new open-source Python-based framework for connectome-based predictive modeling
Gigascience. 2025 Jan 6;14:giaf010. doi: 10.1093/gigascience/giaf010.
ABSTRACT
BACKGROUND: The cerebellum is one of the major central nervous structures consistently altered in obesity. Its role in higher cognitive function, parts of which are affected by obesity, is mediated through projections to and from the cerebral cortex. We therefore investigated the relationship between body mass index (BMI) and cerebellocerebral connectivity.
METHODS: We utilized the Human Connectome Project's Young Adults dataset, including functional magnetic resonance imaging (fMRI) and behavioral data, to perform connectome-based predictive modeling (CPM) restricted to cerebellocerebral connectivity of resting-state fMRI and task-based fMRI. We developed a Python-based open-source framework to perform CPM, a data-driven technique with built-in cross-validation to establish brain-behavior relationships. Significance was assessed with permutation analysis.
RESULTS: We found that (i) cerebellocerebral connectivity predicted BMI, (ii) task-general cerebellocerebral connectivity predicted BMI more reliably than resting-state fMRI and individual task-based fMRI separately, (iii) predictive networks derived this way overlapped with established functional brain networks (namely, frontoparietal networks, the somatomotor network, the salience network, and the default mode network), and (iv) we found there was an inverse overlap between networks predictive of BMI and networks predictive of cognitive measures adversely affected by overweight/obesity.
CONCLUSIONS: Our results suggest obesity-specific alterations in cerebellocerebral connectivity, specifically with regard to task execution. With brain areas and brain networks relevant to task performance implicated, these alterations seem to reflect a neurobiological substrate for task performance adversely affected by obesity.
PMID:40072905 | DOI:10.1093/gigascience/giaf010
Are resting-state network alterations in late-life depression related to synaptic density? Findings of a combined 11C-UCB-J PET and fMRI study
Cereb Cortex. 2025 Mar 6;35(3):bhaf028. doi: 10.1093/cercor/bhaf028.
ABSTRACT
This study investigates the relationship between resting-state functional magnetic resonance imaging (rs-fMRI) topological properties and synaptic vesicle glycoprotein 2A (SV2A) positron emission tomography (PET) synaptic density (SD) in late-life depression (LLD). 18 LLD patients and 33 healthy controls underwent rs-fMRI, 3D T1-weighted MRI, and 11C-UCB-J PET scans to assess SD. The rs-fMRI data were utilized to construct weighted networks for calculating four global topological metrics, including clustering coefficient, characteristic path length, global efficiency, and small-worldness, and six nodal metrics, including nodal clustering coefficient, nodal characteristic path length, nodal degree, nodal strength, local efficiency, and betweenness centrality. The 11C-UCB-J PET provided standardized uptake value ratios as SD measures. LLD patients exhibited preserved global topological organization, with reduced nodal properties in regions associated with LLD, such as the medial prefrontal cortex (mPFC), and increased nodal properties in the basal ganglia and cerebellar regions. Notably, a negative correlation was observed between betweenness centrality in the mPFC and depressive symptom severity. No significant alterations in SD or associations between rs-fMRI topological properties and SD were found, challenging the hypothesis that SD alterations are the molecular basis for rs-fMRI topological changes in LLD. Our findings suggest other molecular mechanisms may underlie the observed functional connectivity alterations in these patients.
PMID:40072885 | DOI:10.1093/cercor/bhaf028
The Relationship of glutamate signaling to cannabis use and schizophrenia
Curr Opin Psychiatry. 2025 Mar 10. doi: 10.1097/YCO.0000000000001003. Online ahead of print.
ABSTRACT
PURPOSE OF REVIEW: This review examines the literature associating cannabis with schizophrenia, glutamate dysregulation in schizophrenia, and cannabis involvement in glutamate pathways. Cannabis use is widespread among adolescents world-wide and is sold legally in many countries for recreational use in a variety of forms. Most people use it without lasting effects, but a portion of individuals have negative reactions that manifest in acute psychotic symptoms, and in some, symptoms continue even after the use of cannabis has ceased. To date, there is a huge gap in our understanding of why this occurs.
RECENT FINDINGS: Recent studies have focused on abnormalities in the glutamate pathway in schizophrenia, the effect of cannabis on the glutamate system, and the role of glutamate in the brain Default Mode Network.
SUMMARY: Given these observations, we hypothesize that perturbance of glutamate neuronal connectivity by cannabis in the brains of individuals genetically at high risk for psychosis will initiate a schizophrenia-like psychosis. Future studies may tie together these diverse observations by combining magnetic resonance spectroscopy (MRS) and functional magnetic resonance imaging (fMRI) of the default resting state network in patients with new onset schizophrenia who do and do not use cannabis compared with nonpsychotic individuals who do and do not use cannabis.
PMID:40071480 | DOI:10.1097/YCO.0000000000001003
Behavioral and neural effects of temporoparietal high-definition transcranial direct current stimulation in logopenic variant primary progressive aphasia: a preliminary study
Front Psychol. 2025 Feb 25;16:1492447. doi: 10.3389/fpsyg.2025.1492447. eCollection 2025.
ABSTRACT
BACKGROUND: High-definition-tDCS (HD-tDCS) is a recent technology that allows for localized cortical stimulation, but has not yet been investigated as an augmentative therapy while targeting the left temporoparietal cortex in logopenic variant PPA (lvPPA). The changes in neuronal oscillatory patterns and resting-state functional connectivity in response to HD-tDCS also remains poorly understood.
OBJECTIVE: We sought to investigate the effects of HD-tDCS with phonologic-based language training on language, cognition, and resting-state functional connectivity in lvPPA.
METHODS: We used a double-blind, within-subject, sham-controlled crossover design with a 4-month between-treatment period in four participants with lvPPA. Participants completed language, cognitive assessments, and imaging with magnetoencephalography (MEG) and resting-state functional MRI (fMRI) prior to treatment with either anodal HD-tDCS or sham targeting the left supramarginal gyrus over 10 sessions. Language and cognitive assessments, MEG, and fMRI were repeated after the final session and at 2 months follow-up. Preliminary data on efficacy was evaluated based on relative changes from baseline in language and cognitive scores. Language measures included metrics derived from spontaneous speech from picture description. Changes in resting-state functional connectivity within the phonological network were analyzed using fMRI. Magnitudes of source-level evoked responses and hemispheric laterality indices from language task-based MEG were used to assess changes in cortical engagement induced by HD-tDCS.
RESULTS: All four participants were retained across the 4-month between-treatment period, with satisfactory blinding of participants and investigators throughout the study. Anodal HD-tDCS was well tolerated with a side effect profile that did not extend past the immediate treatment period. No benefit of HD-tDCS over sham on language and cognitive measures was observed in this small sample. Functional imaging results using MEG and fMRI indicated an excitatory effect of anodal HD-tDCS compared to sham and suggested that greater temporoparietal activation and connectivity was positively associated with language outcomes.
CONCLUSION: Anodal HD-tDCS to the inferior parietal cortex combined with language training appears feasible and well tolerated in participants with lvPPA. Language outcomes may be explained by regression to the mean, and to a lesser degree, by ceiling effects and differences in baseline disease severity. The intervention has apparent temporoparietal correlates, and its clinical efficacy should be further studied in larger trials.
CLINICAL TRIAL REGISTRATION: ClinicalTrials.gov, Number NCT03805659.
PMID:40070907 | PMC:PMC11893574 | DOI:10.3389/fpsyg.2025.1492447
Comprehensive evaluation of pipelines for classification of psychiatric disorders using multi-site resting-state fMRI datasets
Neural Netw. 2025 Feb 28;187:107335. doi: 10.1016/j.neunet.2025.107335. Online ahead of print.
ABSTRACT
Objective classification biomarkers that are developed using resting-state functional magnetic resonance imaging (rs-fMRI) data are expected to contribute to more effective treatment for psychiatric disorders. Unfortunately, no widely accepted biomarkers are available at present, partially because of the large variety of analysis pipelines for their development. In this study, we comprehensively evaluated analysis pipelines using a large-scale, multi-site fMRI dataset for major depressive disorder (MDD). We explored combinations of options in four sub-processes of the analysis pipelines: six types of brain parcellation, four types of functional connectivity (FC) estimations, three types of site-difference harmonization, and five types of machine-learning methods. A total of 360 different MDD classification biomarkers were constructed using the SRPBS dataset acquired with unified protocols (713 participants from four sites) as the discovery dataset, and datasets from other projects acquired with heterogeneous protocols (449 participants from four sites) were used for independent validation. We repeated the procedure after swapping the roles of the two datasets to identify superior pipelines, regardless of the discovery dataset. The classification results of the top 10 biomarkers showed high similarity, and weight similarity was observed between eight of the biomarkers, except for two that used both data-driven parcellation and FC computation. We applied the top 10 pipelines to the datasets of other psychiatric disorders (autism spectrum disorder and schizophrenia), and eight of the biomarkers exhibited sufficient classification performance for both disorders. Our results will be useful for establishing a standardized pipeline for classification biomarkers.
PMID:40068496 | DOI:10.1016/j.neunet.2025.107335
Topologically Optimized Intrinsic Brain Networks
bioRxiv [Preprint]. 2025 Feb 24:2025.02.19.639110. doi: 10.1101/2025.02.19.639110.
ABSTRACT
The estimation of brain networks is instrumental in quantifying and evaluating brain function. Nevertheless, achieving precise estimations of subject-level networks has proven to be a formidable task. In response to this challenge, researchers have developed group-inference frameworks that leverage robust group-level estimations as a common reference point to infer corresponding subject-level networks. Generally, existing approaches either leverage the common reference as a strict, voxel-wise spatial constraint (i.e., strong constraints at the voxel level) or impose no constraints. Here, we propose a targeted approach that harnesses the topological information of group-level networks to encode a high-level representation of spatial properties to be used as constraints, which we refer to as Topologically Optimized Intrinsic Brain Networks (TOIBN). Consequently, our method inherits the significant advantages of constraint-based approaches, such as enhancing estimation efficacy in noisy data or small sample sizes. On the other hand, our method provides a softer constraint than voxel-wise penalties, which can result in the loss of individual variation, increased susceptibility to model biases, and potentially missing important subject-specific information. Our analyses show that the subject maps from our method are less noisy and true to the group networks while promoting subject variability that can be lost from strict constraints. We also find that the topological properties resulting from the TOIBN maps are more expressive of differences between individuals with schizophrenia and controls in the default mode, subcortical, and visual networks.
PMID:40060448 | PMC:PMC11888185 | DOI:10.1101/2025.02.19.639110
Functional connectivity of the precuneus and posterior cingulate cortex moderates the relationship between tic symptoms and premonitory urge in tourette syndrome
Eur Child Adolesc Psychiatry. 2025 Mar 10. doi: 10.1007/s00787-025-02685-x. Online ahead of print.
ABSTRACT
This study explores the roles of the precuneus and posterior cingulate cortex (pCunPCC) in the relationship between premonitory urge (PU) and tic severity in Tourette syndrome (TS). We recruited 58 children diagnosed with TS (age mean ± SD = 11.12 ± 2.56, F/M = 11/47). Tic and PU severity were measured using the Yale Global Tic Severity Scale (YGTSS) and the Premonitory Urge for Tics Scale (PUTS), respectively. We constructed brain functional networks for each subject based on resting-state fMRI and further calculated the degree centrality (DC), global efficiency (GE), and local efficiency (LE) of each pCunPCC region. A significant positive correlation was found between PUTS and YGTSS scores (t = 4.75, p < 0.001). The DC and GE of the right pCunPCC ROI 3 (Schaefer Atlas) showed significant negative correlations with YGTSS (t = -2.63, FDR-corrected p = 0.03 for DC; t = -2.85, FDR-corrected p = 0.04 for GE) and PUTS scores (t = -3.35, FDR-corrected p = 0.01 for DC; t = -2.95, FDR-corrected p = 0.03 for GE). Moderation analysis indicated that higher DC in the right pCunPCC ROI 3 reduced the effect of PU on tic severity. These moderation effects were also observed with PU and vocal tics, but not motor tics. The right pCunPCC serves as critical moderator in the relationship between PU and tic severity. This study highlighted the potential neural mechanisms underlying the relationship between PU and tic severity, providing potential targets for future intervention and treatment of TS.
PMID:40063278 | DOI:10.1007/s00787-025-02685-x
Connectome-Based Predictive Modeling of PTSD Development Among Recent Trauma Survivors
JAMA Netw Open. 2025 Mar 3;8(3):e250331. doi: 10.1001/jamanetworkopen.2025.0331.
ABSTRACT
IMPORTANCE: The weak link between subjective symptom-based diagnostics for posttraumatic psychopathology and objective neurobiological indices hinders the development of effective personalized treatments.
OBJECTIVE: To identify early neural networks associated with posttraumatic stress disorder (PTSD) development among recent trauma survivors.
DESIGN, SETTING, AND PARTICIPANTS: This prognostic study used data from the Neurobehavioral Moderators of Posttraumatic Disease Trajectories (NMPTDT) large-scale longitudinal neuroimaging dataset of recent trauma survivors. The NMPTDT study was conducted from January 20, 2015, to March 11, 2020, and included adult civilians who were admitted to a general hospital emergency department in Israel and screened for early PTSD symptoms indicative of chronic PTSD risk. Enrolled participants completed comprehensive clinical assessments and functional magnetic resonance imaging (fMRI) scans at 1, 6, and 14 months post trauma. Data were analyzed from September 2023 to March 2024.
EXPOSURE: Traumatic events included motor vehicle incidents, physical assaults, robberies, hostilities, electric shocks, fires, drownings, work accidents, terror attacks, or large-scale disasters.
MAIN OUTCOMES AND MEASURES: Connectome-based predictive modeling (CPM), a whole-brain machine learning approach, was applied to resting-state and task-based fMRI data collected at 1 month post trauma. The primary outcome measure was PTSD symptom severity across the 3 time points, assessed with the Clinician-Administered PTSD Scale for DSM-5 (CAPS-5). Secondary outcomes included Diagnostic and Statistical Manual of Mental Disorders (Fifth Edition) (DSM-5) PTSD symptom clusters (intrusion, avoidance, negative alterations in mood and cognition, hyperarousal).
RESULTS: A total of 162 recent trauma survivors (mean [SD] age, 33.9 [11.5] years; 80 women [49.4%] and 82 men [50.6%]) were included at 1 month post trauma. Follow-up assessments were completed by 136 survivors (84.0%) at 6 months and by 133 survivors (82.1%) at 14 months post trauma. Among the 162 recent trauma survivors, CPM significantly predicted PTSD severity at 1 month (ρ = 0.18, P < .001) and 14 months (ρ = 0.24, P < .001) post trauma, but not at 6 months post trauma (ρ = 0.03, P = .39). The most predictive edges at 1 month included connections within and between the anterior default mode, motor sensory, and salience networks. These networks, with the additional contribution of the central executive and visual networks, were predictive of symptoms at 14 months. CPM predicted avoidance and negative alterations in mood and cognition at 1 month, but it predicted intrusion and hyperarousal symptoms at 14 months.
CONCLUSIONS AND RELEVANCE: In this prognostic study of recent trauma survivors, individual differences in large-scale neural networks shortly after trauma were associated with variability in PTSD symptom trajectories over the first year following trauma exposure. These findings suggest that CPM may identify potential targets for interventions.
PMID:40063028 | DOI:10.1001/jamanetworkopen.2025.0331
Alteration of Whole Brain Amplitude of Low-Frequency Fluctuations and Fractional Amplitude of Low-Frequency Fluctuations in Patients With Depression After Acceptance and Commitment Therapy: A Resting-State Functional Magnetic Resonance Imaging Study
Clin Neuropharmacol. 2025 Mar 10. doi: 10.1097/WNF.0000000000000630. Online ahead of print.
ABSTRACT
OBJECTIVE: This study aimed to explore the changes in brain functional activity before and after acceptance and commitment therapy (ACT) treatment in patients with major depressive disorder (MDD) and the correlation between brain functional changes and clinical symptoms.
METHODS: We recruited 12 patients who met the Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition, criteria for MDD. Patients underwent clinical assessments and resting-state functional magnetic resonance imaging (rs-fMRI) scans before and after ACT intervention. The amplitude of low-frequency fluctuations (ALFF) and fractional ALFF (fALFF) maps were obtained after data preprocessing, and the ALFF/fALFF values of patients were extracted and compared. Pearson correlation analysis was used to analyze the correlation between fALFF/ALFF values and clinical symptoms.
RESULTS: A total of nine MDD patients completed the study. The results showed that, following treatment, there was an improvement in psychological flexibility, along with a reduction in depressive symptoms. Additionally, MDD patients exhibited increased ALFF in the left inferior frontal gyrus and triangle, as well as increased fALFF in the left medial superior frontal gyrus following symptom remission. Pearson correlation analysis showed that fALFF of the left medial superior frontal gyrus at baseline was negatively correlated with the rate of Acceptance and Action Questionnaire, Second Edition (AAQ-II), change (r = -0.76, P < 0.05).
CONCLUSIONS: We observed alterations in spontaneous activity in regions of the prefrontal cortex in MDD patients following ACT, providing preliminary relevant insights into understanding the neural mechanisms underlying the treatment of MDD by ACT.
PMID:40062938 | DOI:10.1097/WNF.0000000000000630
Socioeconomic Status, Trauma, Cognitive Function, Impulsivity, Reward Salience, and Future Substance Use: Role of Left Caudate Connectivity with the Cingulo-Opercular Network
J Cell Neurosci. 2025;1(1):46-61. Epub 2025 Feb 24.
ABSTRACT
BACKGROUND: While understanding how corticostriatal connectivity is associated with socioeconomic status (SES), trauma exposure, cognitive function, reward salience, impulsivity, and future substance use is essential to identifying neurobiological pathways that contribute to health disparities and behavioral outcomes, very few studies have tested the role of left caudate resting-state functional connectivity (rsFC) with the cingulo-opercular network as a proxy of corticostriatal connectivity in social, cognitive, and behavioral processes.
OBJECTIVE: This study investigates the associations between left caudate-cingulo-opercular connectivity and multiple biopsychosocial domains, including low SES, high trauma exposure (financial and life events), cognitive function, reward salience, impulsivity, depression, and future substance use (tobacco and marijuana use).
METHODS: Resting-state functional magnetic resonance imaging (rs-fMRI) data were analyzed to assess connectivity between the left caudate and the cingulo-opercular network. Data on socioeconomic status, trauma exposure, cognitive performance, and mental health were collected from participants. Future substance use behaviors were evaluated through longitudinal follow-ups. Correlation and regression analyses were conducted to examine relationships between corticostriatal connectivity and the targeted domains.
RESULTS: Corticostriatal hypoconnectivity was associated with lower SES, higher trauma exposure, poorer cognitive function, heightened reward salience, higher impulsivity, and history of depression. Additionally, corticostriatal hypoconnectivity at baseline predicted future tobacco and marijuana use during follow-up years.
CONCLUSION: Corticostriatal hypoconnectivity, particularly the rsFC between the left caudate and the cingulo-opercular network, may represent a potential mechanism linking a wide range of social, emotional, and behavioral problems in youth. These findings suggest that corticostriatal hypoconnectivity could serve as a neurobiological marker for identifying individuals at risk for depression, low cognitive function, high reward salience, impulsivity, and substance use, emphasizing the interplay between socioeconomic and neurocognitive factors in shaping behavioral health trajectories.
PMID:40060936 | PMC:PMC11887648
Resting-State Functional Connectivity Between the Cingulo-Opercular and Default Mode Networks May Explain Socioeconomic Inequalities in Cognitive Development
J Cell Neurosci. 2025;2(1):1-11. doi: 10.31586/jcn.2025.1241. Epub 2025 Feb 25.
ABSTRACT
BACKGROUND: The Cingulo-Opercular Network (CON) is a crucial executive control network involved in regulating actions and facilitating higher-order cognitive processes. Resting-state functional connectivity between the CON and the Default Mode Network (DMN) plays a vital role in cognitive regulation, enabling the transition between internally focused and externally directed tasks. This study investigates whether resting-state functional connectivity between the CON and DMN mediates the effects of social determinants, such as educational opportunities and family structure, on cognitive outcomes in youth.
AIMS: This study aims to explore how CON-DMN connectivity influences the relationship between social gradients and cognition in youth. Specifically, it examines whether resting-state functional connectivity between these networks mediates the effects of educational opportunities and family structure on cognitive outcomes and seeks to uncover the neural mechanisms underlying these social gradients.
METHODS: Data were derived from the Adolescent Brain Cognitive Development (ABCD) study, a large longitudinal dataset of over 11,000 children aged 9-10 years. Cognitive outcomes were assessed using standardized NIH toolbox measures: Total Composite, Fluid Reasoning, Picture Vocabulary, Pattern Recognition, and Card Sorting. Social determinants were operationalized using indicators such as parental education, family composition, and neighborhood educational opportunities (COI). Resting-state functional connectivity (rsFC) between the CON and DMN was measured using functional magnetic resonance imaging (fMRI). Structural equation modeling (SEM) was employed to test whether CON-DMN rsFC mediated the relationship between social determinants and cognitive outcomes, adjusting for potential confounders such as age, sex, and race/ethnicity.
RESULTS: Stable family structure and greater educational opportunities were significantly associated with improved cognitive performance. These relationships were mediated by reduced functional connectivity between the CON and DMN.
CONCLUSION: Reduced functional connectivity between the CON and DMN serves as a neural mechanism linking social gradients, such as educational opportunities and family structure, to better cognitive outcomes in youth.
PMID:40060241 | PMC:PMC11887688 | DOI:10.31586/jcn.2025.1241
Altered ALFF of the Brain Regions associated with Pain Symptoms and Negative Emotion in Trigeminal Neuralgia
World Neurosurg. 2025 Mar 7:123875. doi: 10.1016/j.wneu.2025.123875. Online ahead of print.
ABSTRACT
OBJECT: Utilizing whole-brain functional magnetic resonance imaging(fMRI) to investigate abnormal spontaneous brain activity in the resting state of patients with trigeminal neuralgia (TN) and explore their relationship with pain symptoms and negative emotions.
METHODS: This study included 46 patients with TN diagnosed at our hospital from December 2022 to June 2023 and 35 healthy controls (HCs). All patients with TN completed questionnaires related to pain and emotions. The data analysis used the DPABI toolkit based on MATLAB platform and compared amplitude of low frequency fluctuation (ALFF) in brain between TN and HC groups. To delve deeper, we will utilize Pearson correlation analysis to explore the intricate relationships between pain symptoms, negative emotions, and brain functional abnormalities in patients of TN.
RESULT: Compared with HCs, patients of TN exhibited significantly reduced ALFF in the left superior frontal gyrus (SFG), bilateral middle frontal gyrus (MFG), bilateral inferior frontal gyrus (IFG), right precentral gyrus (PrG), right superior temporal gyrus (STG), bilateral middle temporal gyrus (MTG) , left inferior temporal gyrus (ITG), right cingulate gyrus (CG) (p<0.05). In correlation analysis, ALFF in the left SFG and right CG were negatively correlated with pain symptoms and negative emotions in patients of TN.
CONCLUSION: Patients of TN show functional abnormalities in several key brain regions that are involved in pain perception and emotional regulation. These abnormalities primarily manifest as a reduction in spontaneous neural activity. The ALFF in the left SFG and right CG is negatively correlated with the severity of pain and negative emotions, indicating that the more severe the pain and negative emotions in patients of TN, the more obvious the decrease in neural activity in specific brain regions. This suggests that the left SFG and right CG may be characteristic brain regions in the pathophysiological mechanism of TN.
PMID:40058640 | DOI:10.1016/j.wneu.2025.123875
Latent Profiles of Impulsivity and Emotion Regulation in Children with Externalizing Disorders are Associated with Alterations in Striatocortical Connectivity
Biol Psychiatry Cogn Neurosci Neuroimaging. 2025 Mar 7:S2451-9022(25)00070-9. doi: 10.1016/j.bpsc.2025.02.013. Online ahead of print.
ABSTRACT
INTRODUCTION: Children with externalizing disorders (EDs) often have difficulties with impulsivity and emotion regulation. These constructs have been associated with dysfunction in the recruitment of reward processing circuits and striatal connectivity with cortical networks. However, it is unclear to what extent co-presentations of impulsivity and emotion regulation are associated with differences in striatocortical connectivity.
METHODS: In Study 1, a latent profile analysis (LPA) was conducted in a sample of 198 youths with EDs (Oppositional Defiant Disorder and/or Conduct Disorder) to investigate co-presentation of impulsivity and emotion regulation symptoms. Participants completed the UPPS Impulsivity Scale (UPPS) and the Emotion Regulation Checklist (ERC). LPA was applied to the subscales of the UPPS and ERC. In Study 2, we examined 169 participants who completed a resting state fMRI scan to examine differences in striatocortical connectivity between profiles.
RESULTS: The LPA identified three profiles: Moderate Impulsivity (IMP)/Moderate Emotion Regulation, High IMP/Low Emotion Regulation (ER), and High IMP/Moderate Emotion Regulation. The two High IMP profiles were associated with greater connectivity between the posterior caudate nucleus and parietal cortex. The High IMP/Low ER profile was associated with increased connectivity between the anterior caudate and anterior insula.
DISCUSSION: The current data indicate that the profiles associated with high impulsivity are associated with greater caudate-parietal cortex connectivity while the profile associated with high impulsivity and impaired emotion regulation showed increased anterior caudate-AIC connectivity. The current work contributes to the literature by examining the relationship between heterogeneity of externalizing symptoms and functional connectivity.
PMID:40058459 | DOI:10.1016/j.bpsc.2025.02.013
Predictive value of resting-state fMRI graph measures in hypoxic encephalopathy after cardiac arrest
Neuroimage Clin. 2025 Mar 5;46:103763. doi: 10.1016/j.nicl.2025.103763. Online ahead of print.
ABSTRACT
INTRODUCTION: Current multimodal prediction models can determine the prognosis of about half of comatose cardiac arrest patients. We investigated whether whole-brain graph-theoretical measures from early resting-state functional magnetic resonance imaging (fMRI) three days after cardiac arrest discriminate between good and poor outcome and improve outcome prediction.
METHODS: We conducted a prospective cohort study on comatose cardiac arrest patients on intensive care units. Resting-state fMRI three days after cardiac arrest was used to quantify whole-brain functional connectivity, global efficiency, clustering coefficient, and modularity. Neurological outcome at six months was classified as good or poor (Cerebral Performance Category 1-2 vs 3-5). Logistic regression models were used to examine between-group differences and study the additional value of graph-theoretical measures to clinical and EEG-based prediction.
RESULTS: In seventy included patients (good outcome n = 44, poor n = 26), whole-brain functional connectivity and clustering coefficient (but not global efficiency and modularity) were significantly lower in patients with poor outcome. Connectivity of nodes in posterior brain areas most prominently correlated with outcome. Clustering coefficient showed strong correlation with whole-brain functional connectivity. Patients with continuous EEG patterns differed in whole-brain functional connectivity levels from those with suppressed or epileptiform patterns. Combining functional connectivity or graph measures with clinical and EEG-based predictors slightly improved outcome prediction.
CONCLUSION: fMRI-based whole-brain functional connectivity is a sensitive measure for encephalopathy severity after cardiac arrest, according to relations with established EEG categories and discrimination between good and poor outcome. Additional predictive values for outcome seem small. Graph measures do not provide complementary information.
PMID:40056784 | DOI:10.1016/j.nicl.2025.103763
Functional reorganization of white matter supporting the transhemispheric mechanism of mirror therapy after stroke: a multimodal MRI study
IEEE Trans Neural Syst Rehabil Eng. 2025 Mar 7;PP. doi: 10.1109/TNSRE.2025.3549380. Online ahead of print.
ABSTRACT
Mirror therapy (MT) is an effective approach in stroke recovery, but its impact on subcortical neural reorganization remains unclear. Thus, we aimed to investigate the neuroplastic effects on white matter due to MT. In this study, thirty-three participants with stroke were recruited and randomly assigned into the MT group (n=16) or the control group (n=17) for a 4-week intervention. Before and after the intervention, motor recovery was evaluated using the Fugl-Meyer Assessment upper limb subscale (FMA-UL), and the white matter structure and function were investigated using DTI and resting-state fMRI, focusing on the corticospinal tract and the corpus callosum. Significant correlations between the improvements of the FMA-UL and the baseline fractional anisotropy of ipsilesional corticospinal tract (p < 0.001) and corpus callosum (p = 0.009) were observed only in the MT group. Additionally, no significant structural alterations were found between the two groups after the intervention. The fractional amplitude of low-frequency fluctuation of ipsilesional corticospinal tract (p = 0.003) and corpus callosum (p = 0.005) were significantly enhanced only in the MT group, which were correlated with the improvements of the FMA-UL (p < 0.001). Furthermore, partial correlation analysis and subsequent mediation model analysis suggested that the changes of fractional amplitude of low-frequency fluctuation in corpus callosum partially mediated the effect of the baseline fractional anisotropy of ipsilesional corticospinal tract on the FMA-UL improvements in the MT group. This study provided neuroimaging evidence on white matter reorganization after MT, specifically the corpus callosum, suggesting a potential interhemispheric transcallosal neuroplastic mechanism of MT.
PMID:40053618 | DOI:10.1109/TNSRE.2025.3549380