ABSTRACT
Numerous neuroimaging studies of resting-state functional imaging and voxel-based morphometry (VBM) have revealed abnormalities in specific brain regions in obsessive-compulsive disorder (OCD), but results have been inconsistent. We conducted a whole-brain voxel-wise meta-analysis on resting-state functional imaging and VBM studies that investigated differences of functional activity and gray matter volume (GMV) between patients with OCD and healthy controls (HCs) using seed-based d mapping (SDM) software. A total of 41 independent studies (51 datasets) for resting-state functional imaging and 42 studies (46 datasets) for VBM were included by a systematic literature search. Overall, patients with OCD displayed increased spontaneous functional activity in the bilateral inferior frontal gyrus (IFG) (extending to the bilateral insula) and bilateral medial prefrontal cortex/anterior cingulate cortex (mPFC/ACC), as well as decreased spontaneous functional activity in the bilateral paracentral lobule, bilateral cerebellum, left caudate nucleus, left inferior parietal gyri, and right precuneus cortex. For the VBM meta-analysis, patients with OCD displayed increased GMV in the bilateral thalamus (extending to the bilateral cerebellum), right striatum, and decreased GMV in the bilateral mPFC/ACC and left IFG (extending to the left insula). The conjunction analyses found that the bilateral mPFC/ACC, left IFG (extending to the left insula) showed decreased GMV with increased intrinsic function in OCD patients compared to HCs. This meta-analysis demonstrated that OCD exhibits abnormalities in both function and structure in the bilateral mPFC/ACC, insula, and IFG. A few regions exhibited only functional or only structural abnormalities in OCD, such as the default mode network, striatum, sensorimotor areas, and cerebellum. It may provide useful insights for understanding the underlying pathophysiology of OCD and developing more targeted and efficacious treatment and intervention strategies.
Subject(s)
Brain , Obsessive-Compulsive Disorder , Humans , Brain/diagnostic imaging , Cerebral Cortex , Gray Matter , Magnetic Resonance Imaging , Obsessive-Compulsive Disorder/diagnostic imagingABSTRACT
PURPOSE: To predict prognosis in HIV-negative cryptococcal meningitis (CM) patients by developing and validating a machine learning (ML) model. METHODS: This study involved 523 HIV-negative CM patients diagnosed between January 1, 1998, and August 31, 2022, by neurologists from 3 tertiary Chinese centers. Prognosis was evaluated at 10 weeks after the initiation of antifungal therapy. RESULTS: The final prediction model for HIV-negative CM patients comprised 8 variables: Cerebrospinal fluid (CSF) cryptococcal count, CSF white blood cell (WBC), altered mental status, hearing impairment, CSF chloride levels, CSF opening pressure (OP), aspartate aminotransferase levels at admission, and decreased rate of CSF cryptococcal count within 2 weeks after admission. The areas under the curve (AUCs) in the internal, temporal, and external validation sets were 0.87 (95% CI 0.794-0.944), 0.92 (95% CI 0.795-1.000), and 0.86 (95% CI 0.744-0.975), respectively. An artificial intelligence (AI) model was trained to detect and count cryptococci, and the mean average precision (mAP) was 0.993. CONCLUSION: A ML model for predicting prognosis in HIV-negative CM patients was built and validated, and the model might provide a reference for personalized treatment of HIV-negative CM patients. The change in the CSF cryptococcal count in the early phase of HIV-negative CM treatment can reflect the prognosis of the disease. In addition, utilizing AI to detect and count CSF cryptococci in HIV-negative CM patients can eliminate the interference of human factors in detecting cryptococci in CSF samples and reduce the workload of the examiner.
Subject(s)
Cryptococcus , HIV Infections , Meningitis, Cryptococcal , Humans , Meningitis, Cryptococcal/diagnosis , Meningitis, Cryptococcal/drug therapy , Artificial Intelligence , Prognosis , Machine Learning , HIV Infections/complications , HIV Infections/drug therapyABSTRACT
Objective: Epilepsy is a common neurological disorder characterized by recurrent epilepsy episodes. As a non-pharmacological treatment, the ketogenic diet has been widely applied in treating epilepsy. However, the exact therapeutic mechanism of the ketogenic diet for epilepsy remains unclear. This study investigates the molecular mechanisms of the ketogenic diet in regulating fatty acid metabolism and activating the ADCY3-initiated cAMP signaling pathway to enhance neuronal inhibition and thereby treat epilepsy. Methods and results: Meta-analysis reveals that the ketogenic diet is superior to the conventional diet in treating epilepsy. Animal experiments demonstrate that the ketogenic diet is more effective than the conventional diet in treating epilepsy, with the best results achieved using the classic ketogenic diet. Transcriptome sequencing analysis identifies six essential genes, among which ADCY3 shows increased expression in the ketogenic diet. In vivo experiments confirm that the activation of the cAMP-PKA signaling pathway by ADCY3 enhances neuronal inhibition and improves epilepsy control. Conclusion: Clinical observations indicate that the ketogenic diet improves patient epilepsy episodes by regulating the ADCY3-initiated cAMP signaling pathway.
ABSTRACT
PURPOSE: To determine the prognostic value of diffusion-weighted magnetic resonance imaging (DW-MRI) of mucin pools (MPs) in predicting the response of patients with locally advanced rectal mucinous adenocarcinoma (RMAC) to neoadjuvant therapy (NAT). METHOD: A total of 59 patients with histologically proven RMAC received NAT before applying total mesorectal excision. MP and solid tumor (ST) components were identified using T2 weighted image (T2WI) and DW-MRI, and apparent diffusion coefficient (ADC) values were calculated prior, during and after NAT. The receiver operating characteristic (ROC) curve was used to evaluate the ability of ADC values in predicting NAT efficacy as determined by post-pathological tumor regression grade (TRG). In addition, radiologists evaluated the TNM staging of tumors, the mesorectal fascia invasion, the maximal tumor length, and the distance from the inferior part of the tumor to the anal verge. Multivariate analysis and logistic regression were used to determine the correlation of ADC values and baseline MRI parameters with NAT efficacy. RESULTS: Among the 59 patients, 44 (74.6 %) were men. The mean age of patients was 49.5 ± 11.2 years. The mean ΔADC value during NAT obtained on mucus pool was higher in the responsiveness group than that of the nonresponsiveness group (0.506 ± 0.342 vs. 0.053 ± 0.240 × 10-3 mm2/s, P < .001), with an area under the curve of receiver operating characteristic of 0.881 (95 %CI, 0.770-0.951). CONCLUSIONS: MRI can be reliably used to measure MP-ADC, which as we showed in this study, represents a biomarker to predict tumor responsiveness of NAT in RMAC patients.