Predicting treatment outcomes in patients with panic disorder: Cross-sectional and two-year longitudinal structural connectome analysis using machine learning methods

IF 4.8 2区 医学 Q1 PSYCHIATRY
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Abstract

Purpose

This study examined the relationship between structural brain networks and long-term treatment outcomes in patients with panic disorder (PD) using machine learning methods.

Method

The study involved 80 participants (53 PD patients and 27 healthy controls) and included clinical assessments and MRI scans at baseline and after two years (160 MRIs). Patients were categorized based on their response to two-year pharmacotherapy. Brain networks were analyzed using white matter tractography and network-based statistics.

Results

Results showed structural network changes in PD patients, particularly in the extended fear network, including frontal regions, thalamus, and cingulate gyrus. Longitudinal analysis revealed that increased connections to the amygdala, hippocampus, and insula were associated with better treatment response. Conversely, overconnectivity in the amygdala and insula at baseline was associated with poor response, and similar patterns were found in the insula and parieto-occipital cortex related to non-remission. This study found that SVM and CPM could effectively predict treatment outcomes based on network pattern changes in PD.

Conclusions

These findings suggest that monitoring structural connectome changes in limbic and paralimbic regions is critical for understanding PD and tailoring treatment. The study highlights the potential of using personalized biomarkers to develop individualized treatment strategies for PD.

预测惊恐障碍患者的治疗效果:使用机器学习方法进行横截面和两年纵向结构连接组分析
方法该研究涉及80名参与者(53名惊恐障碍患者和27名健康对照者),包括基线和两年后(160次核磁共振成像)的临床评估和核磁共振成像扫描。根据患者对两年药物治疗的反应对其进行分类。结果显示,帕金森病患者的结构网络发生了变化,尤其是在扩展的恐惧网络中,包括额叶区、丘脑和扣带回。纵向分析表明,与杏仁核、海马和岛叶的连接增加与更好的治疗反应有关。相反,基线时杏仁核和岛叶的过度连接与反应不佳有关,岛叶和顶枕皮层的类似模式也与不缓解有关。本研究发现,SVM 和 CPM 可以根据脊髓灰质炎的网络模式变化有效预测治疗结果。该研究强调了使用个性化生物标记物来开发针对帕金森病的个体化治疗策略的潜力。
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来源期刊
CiteScore
16.60
自引率
2.90%
发文量
95
期刊介绍: The Journal of Anxiety Disorders is an interdisciplinary journal that publishes research papers on all aspects of anxiety disorders for individuals of all age groups, including children, adolescents, adults, and the elderly. Manuscripts that focus on disorders previously classified as anxiety disorders such as obsessive-compulsive disorder and posttraumatic stress disorder, as well as the new category of illness anxiety disorder, are also within the scope of the journal. The research areas of focus include traditional, behavioral, cognitive, and biological assessment; diagnosis and classification; psychosocial and psychopharmacological treatment; genetics; epidemiology; and prevention. The journal welcomes theoretical and review articles that significantly contribute to current knowledge in the field. It is abstracted and indexed in various databases such as Elsevier, BIOBASE, PubMed/Medline, PsycINFO, BIOSIS Citation Index, BRS Data, Current Contents - Social & Behavioral Sciences, Pascal Francis, Scopus, and Google Scholar.
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