Local Neuronal Activity and the Hippocampal Functional Network Can Predict the Recovery of Consciousness in Individuals With Acute Disorders of Consciousness Caused by Neurological Injury

IF 4.8 1区 医学 Q1 NEUROSCIENCES
Xi Wang, Xingdong Liu, Lin Zhao, Zhiyan Shen, Kemeng Gao, Yu Wang, Danjing Yu, Lin Yang, Ying Wang, Yongping You, Jing Ji, Jiu Chen, Wei Yan
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引用次数: 0

Abstract

Aims

There is limited research on predicting the recovery of consciousness in patients with acute disorders of consciousness (aDOC). The purpose of this study is to investigate the altered characteristics of the local neuronal activity indicated by the amplitude of low-frequency fluctuations (ALFF) and functional connectivity (FC) of the hippocampus network in patients with aDOC caused by neurological injury and to explore whether these characteristics can predict the recovery of consciousness.

Methods

Thirty-seven patients with aDOC were included, all of whom completed resting-state functional magnetic resonance imaging (rsfMRI) scans. The patients were divided into two groups based on prognosis of consciousness recovery, 24 patients were in prolonged disorders of consciousness (pDOC) and 13 in emergence from minimally conscious state (eMCS) at 3 months after neurological injury. Univariable and multivariate logistic regression analyses were used to investigate the clinical indicators affecting patients' recovery of consciousness. The ALFF values and FC of the hippocampal network were compared between patients with pDOC and those with eMCS. Additionally, we employed the support vector machine (SVM) method to construct a predictive model for prognosis of consciousness based on the ALFF and FC values of the aforementioned differential brain regions. The accuracy (ACC), area under the curve (AUC), sensitivity, and specificity were used to evaluate the efficacy of the model.

Results

The FOUR score at onset and the length of mechanical ventilation (MV) were found to be significant influential factors for patients who recovered to eMCS at 3 months after onset. Patients who improved to eMCS showed significantly increased ALFF values in the right calcarine gyrus, left lingual gyrus, right middle temporal gyrus, and right precuneus compared to patients in a state of pDOC. Furthermore, significant increases in FC values of the hippocampal network were observed in the eMCS group, primarily involving the right lingual gyrus and bilateral precuneus, compared to the pDOC group. The predictive model constructed using ALFF alone or ALFF combined with FC values from the aforementioned brain regions demonstrated high accuracies of 83.78% and 81.08%, respectively, with AUCs of 95% and 94%, sensitivities of 0.92 for both models, and specificities of 0.92 for both models in predicting the recovery of consciousness in patients with aDOC.

Conclusion

The present findings demonstrate significant differences in the local ALFF and FC values of the hippocampus network between different prognostic groups of patients with aDOC. The constructed predictive model, which incorporates ALFF and FC values, has the potential to provide valuable insights for clinical decision-making and identifying potential targets for early intervention.

Abstract Image

局部神经元活动和海马功能网络可预测神经损伤导致的急性意识障碍患者的意识恢复情况
目的:关于预测急性意识障碍(aDOC)患者意识恢复的研究十分有限。本研究旨在调查神经损伤导致的急性意识障碍患者海马网络的低频波动幅度(ALFF)和功能连接(FC)所显示的局部神经元活动的改变特征,并探讨这些特征是否能预测意识的恢复:方法:37 名 aDOC 患者均完成了静息态功能磁共振成像(rsfMRI)扫描。根据意识恢复的预后将患者分为两组,24 名患者在神经损伤后 3 个月处于意识障碍延长期(pDOC),13 名患者处于微意识状态(eMCS)。研究人员采用单变量和多变量逻辑回归分析来研究影响患者意识恢复的临床指标。我们比较了pDOC患者和eMCS患者海马网络的ALFF值和FC。此外,我们还采用支持向量机(SVM)方法,根据上述不同脑区的ALFF值和FC值构建了意识预后预测模型。准确度(ACC)、曲线下面积(AUC)、灵敏度和特异性用于评估模型的有效性:结果发现,发病时的 FOUR 评分和机械通气时间(MV)是影响患者在发病 3 个月后恢复到 eMCS 的重要因素。与处于 pDOC 状态的患者相比,好转为 eMCS 的患者右侧卡氏回、左侧舌回、右侧颞中回和右侧楔前回的 ALFF 值明显增加。此外,与 pDOC 组相比,eMCS 组海马网络的 FC 值明显增加,主要涉及右侧舌回和双侧楔前回。单独使用 ALFF 或 ALFF 结合上述脑区的 FC 值构建的预测模型在预测 aDOC 患者意识恢复方面的准确率分别为 83.78% 和 81.08%,AUC 分别为 95% 和 94%,灵敏度均为 0.92,特异度均为 0.92:本研究结果表明,不同预后组的 aDOC 患者的海马网络局部 ALFF 值和 FC 值存在明显差异。所构建的预测模型结合了 ALFF 和 FC 值,有望为临床决策和确定早期干预的潜在目标提供有价值的见解。
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来源期刊
CNS Neuroscience & Therapeutics
CNS Neuroscience & Therapeutics 医学-神经科学
CiteScore
7.30
自引率
12.70%
发文量
240
审稿时长
2 months
期刊介绍: CNS Neuroscience & Therapeutics provides a medium for rapid publication of original clinical, experimental, and translational research papers, timely reviews and reports of novel findings of therapeutic relevance to the central nervous system, as well as papers related to clinical pharmacology, drug development and novel methodologies for drug evaluation. The journal focuses on neurological and psychiatric diseases such as stroke, Parkinson’s disease, Alzheimer’s disease, depression, schizophrenia, epilepsy, and drug abuse.
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