Identifying neurobiological markers as predictors of antidepressant treatment using diffusion tensor imaging: A tract-based spatial statistical analysis of cingulate bundle.

IF 4.1 3区 医学 Q2 CLINICAL NEUROLOGY
Chunxia Yang, Jiaxin Han, Ning Sun, Penghong Liu, Kerang Zhang, Aixia Zhang, Zhifen Liu
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引用次数: 0

Abstract

It was found that a significant number of patients with major depressive disorder (MDD) did not respond to the treatment, leading to high ongoing costs and disease burden. The main objective of this study was to find neurobiological indicators that can predict the effectiveness of antidepressant treatment using diffusion tensor imaging (DTI). A group of 103 patients who were experiencing their first episode of MDD were included in the study. After 2 weeks of SSRI treatment, the group of patients was split into two categories: ineffectiveand effective. The FMRIB Software Library (FSL) was used for diffusion data preprocessing to obtain tensor-based parameters such as FA, MD, AD, and RD. Tract-Based Spatial Statistical (TBSS) voxel-wise statistical analysis of the tensor-based parameters was carried out using the TBSS procedure in FSL. We conducted an investigation to determine if there were notable variations in neuroimaging attributes among the three groups. Compared to HC, the effective group showed significantly higher AD and MD values in the left CgH. Correlating neuroimaging characteristics and clinical manifestations revealed a significant positive correlation between CgH-l FA and clinical 2-week HAMD-17 total scores and a significant positive correlation between CgH-r FA and clinical 2-week HAMD-17 total scores. Functional damage to the cingulum bundle in the hippocampal region may predispose patients to MDD and predict antidepressant treatment outcomes. More extensive multicenter investigations are necessary to validate these MRI findings that indicate treatment effectiveness and assess their potential significance in practical therapeutic decision-making.

利用弥散张量成像识别作为抗抑郁治疗预测因子的神经生物学标志物:基于束束的空间统计分析。
研究发现,大量重度抑郁症(MDD)患者对治疗没有反应,导致持续的高成本和疾病负担。本研究的主要目的是利用弥散张量成像(DTI)找到可以预测抗抑郁药物治疗有效性的神经生物学指标。103名首次经历重度抑郁症发作的患者被纳入研究。经2周SSRI治疗后,将患者组分为无效组和有效组。利用FMRIB软件库(FSL)对扩散数据进行预处理,获得基于张量的参数,如FA、MD、AD和RD,并在FSL中使用TBSS程序对基于张量的参数进行体素统计分析。我们进行了一项调查,以确定三组患者在神经影像学属性方面是否存在显著差异。与HC相比,有效组左侧CgH的AD和MD值显著升高。神经影像学特征与临床表现的相关性显示,cgh -1 FA与临床2周HAMD-17总分显著正相关,CgH-r FA与临床2周HAMD-17总分显著正相关。海马区扣带束的功能损伤可能使患者易患重度抑郁症,并预测抗抑郁治疗的结果。需要更广泛的多中心研究来验证这些表明治疗有效性的MRI结果,并评估其在实际治疗决策中的潜在意义。
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来源期刊
CNS Spectrums
CNS Spectrums 医学-精神病学
CiteScore
6.20
自引率
6.10%
发文量
239
审稿时长
>12 weeks
期刊介绍: CNS Spectrums covers all aspects of the clinical neurosciences, neurotherapeutics, and neuropsychopharmacology, particularly those pertinent to the clinician and clinical investigator. The journal features focused, in-depth reviews, perspectives, and original research articles. New therapeutics of all types in psychiatry, mental health, and neurology are emphasized, especially first in man studies, proof of concept studies, and translational basic neuroscience studies. Subject coverage spans the full spectrum of neuropsychiatry, focusing on those crossing traditional boundaries between neurology and psychiatry.
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