利用功能性近红外光谱连接评估意识障碍患者的残余意识:一项试点研究。

IF 4.8 2区 医学 Q1 NEUROSCIENCES Neurophotonics Pub Date : 2024-10-01 Epub Date: 2024-12-12 DOI:10.1117/1.NPh.11.4.045013
Yifang He, Nan Wang, Dongsheng Liu, Hao Peng, Shaoya Yin, Xiaosong Wang, Yong Wang, Yi Yang, Juanning Si
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引用次数: 0

摘要

意义重大:残余意识的准确评估和分类对于优化意识障碍(DOC)患者的治疗干预至关重要。目的:主要目的是研究利用静息态功能性近红外光谱(rs-fNIRS)评估残余意识的可行性。次要目标是探索更有效区分无反应清醒综合征(UWS)和微意识状态(MCS)的特征,并确定分类准确性更高的机器学习模型:方法:我们利用 rs-fNIRS 评估 DOC 患者的残余意识。具体来说,我们利用rs-fNIRS构建了大脑功能网络,并通过图论分析量化了这些大脑网络在MCS和UWS之间的拓扑差异。之后,两个分类器被用来区分 MCS 和 UWS:图论结果显示,MCS 组(n = 8)的全局效率(E g)明显高于 UWS 组(n = 10),特征路径长度(L p)也小于 UWS 组。功能连接结果显示,多发性硬化症组左枕叶皮层内的相关性(L_OC)明显低于多发性硬化症组。将差异显著的指标作为进一步分类的特征,K-近邻和线性判别分析分类器的准确率分别提高了0.89和0.83:基于 fNIRS 的静息状态功能连接和图论分析有望提高分类的准确性,为 DOC 患者的诊断提供有价值的见解。
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Assessment of residual awareness in patients with disorders of consciousness using functional near-infrared spectroscopy-based connectivity: a pilot study.

Significance: The accurate assessment and classification of residual consciousness are crucial for optimizing therapeutic interventions in patients with disorders of consciousness (DOCs). However, there remains an absence of effective and definitive diagnostic methods for DOC in clinical practice.

Aim: The primary objective was to investigate the feasibility of utilizing resting state functional near-infrared spectroscopy (rs-fNIRS) for evaluating residual consciousness. The secondary objective was to explore the distinguishing characteristics that are more effective in differentiating between the unresponsive wakefulness syndrome (UWS) and the minimally conscious state (MCS) and to identify the machine learning model that offers superior classification accuracy.

Approach: We utilized rs-fNIRS to evaluate the residual consciousness in patients with DOC. Specifically, rs-fNIRS was used to construct functional brain networks, and graph theory analysis was conducted to quantify the topological differences within these brain networks between MCS and UWS. After that, two classifiers were used to distinguish MCS from UWS.

Results: The graph theory results showed that the MCS group ( n = 8 ) exhibited significantly higher global efficiency ( E g ) and smaller characteristic path length ( L p ) than the UWS group ( n = 10 ). The functional connectivity results showed that the correlation within the left occipital cortex (L_OC) was significantly lower in the MCS group than in the UWS group. By using the indicators with significant differences as features for further classification, the accuracy for K -nearest neighbors and linear discriminant analysis classifiers was improved by 0.89 and 0.83, respectively.

Conclusions: The resting state functional connectivity and graph theory analysis based on fNIRS has the potential to enhance the classification accuracy, providing valuable insights into the diagnosis of patients with DOC.

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来源期刊
Neurophotonics
Neurophotonics Neuroscience-Neuroscience (miscellaneous)
CiteScore
7.20
自引率
11.30%
发文量
114
审稿时长
21 weeks
期刊介绍: At the interface of optics and neuroscience, Neurophotonics is a peer-reviewed journal that covers advances in optical technology applicable to study of the brain and their impact on the basic and clinical neuroscience applications.
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