Extracting functional connectivity signatures in substance use disorder using energy landscape analysis

Sravani Varanasi, Tianye Zhai, Hong Gu, Yihong Yang, Fow-Sen Choa
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Abstract

Substance Use Disorder (SUD) is a complex condition with profound effects on brain function. Understanding the altered functional connectivity patterns in the brains of SUD patients is crucial for unraveling the neurological underpinnings of this disorder. This study employs Energy Landscape Analysis, an energy-based machine learning technique, to investigate whole brain Regions of Interest (ROI) functional connectivity differences between SUD patients and healthy controls. The challenge with Energy Landscape Analysis lies in selecting the appropriate ROI from the extensive brain atlas. In this study, seed-based connectivity was utilized to identify relevant ROIs, overcoming the limitation of analyzing only a limited number of ROIs. The dataset comprised 53 cocaine users and 52 age- and sex-matched healthy controls, with fMRI data preprocessed using the CONN toolbox. ROI-ROI seed-based pair connectivity was derived through first and second level analyses. The identified sub-ROIs were categorized into default CONN network affiliations and bundled into Superior Temporal Gyrus (STG), Inferior Temporal Gyrus, temporooccipital part (toITG), Visual Primary (VIS-P), Auditory (AUD), Cerebellum, Basal Ganglia (BSL), and Thalamus (THL). Significance testing revealed eight connectivity states among all above regions with p-values that satisfy Bonferroni correction between controls and patients. Notably, the connectivity states with the lowest p-values revealed a distinctive pattern: STG (auditory attention) toITG were disconnected from the rest of the networks. This finding underscores the importance of investigating specific network disruptions in SUD, shedding light on potential neural mechanisms underlying the disorder. In summary, our study utilizes Energy Landscape Analysis to explore whole brain ROI functional connectivity in SUD, revealing disrupted connectivity patterns that may have implications for understanding the neural basis of this disorder. These findings may ultimately inform targeted interventions and treatment strategies for individuals with SUD.
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利用能量景观分析提取药物使用障碍的功能连接特征
药物使用障碍(SUD)是一种对大脑功能有深远影响的复杂疾病。了解 SUD 患者大脑功能连接模式的改变对于揭示这种疾病的神经学基础至关重要。本研究采用能量景观分析(一种基于能量的机器学习技术)来研究 SUD 患者与健康对照组之间的全脑兴趣区(ROI)功能连接差异。能量景观分析的难点在于从广泛的脑图谱中选择合适的 ROI。在这项研究中,利用基于种子的连通性来识别相关的 ROI,克服了只能分析有限数量 ROI 的局限性。数据集包括 53 名可卡因使用者和 52 名年龄和性别匹配的健康对照者,并使用 CONN 工具箱对 fMRI 数据进行了预处理。通过一级和二级分析,得出了基于 ROI-ROI 种子对的连接性。确定的子 ROI 被归类为默认的 CONN 网络从属关系,并捆绑为颞上回(STG)、颞下回、颞枕部(toITG)、视觉初级(VIS-P)、听觉(AUD)、小脑、基底节(BSL)和丘脑(THL)。显著性检验显示,上述所有区域中存在八种连接状态,对照组和患者之间的 p 值符合 Bonferroni 校正。值得注意的是,p 值最低的连接状态显示了一种独特的模式:STG(听觉注意)到 ITG 与其他网络断开。这一发现强调了研究 SUD 中特定网络中断的重要性,从而揭示了该疾病的潜在神经机制。总之,我们的研究利用 "能量景观分析"(Energy Landscape Analysis)来探索 SUD 的全脑 ROI 功能连通性,揭示了连通性中断的模式,这可能对理解这种障碍的神经基础有影响。这些发现最终可能为针对 SUD 患者的针对性干预和治疗策略提供依据。
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