基于脑电图的疼痛生物标志物分类在预测亚急性脊髓损伤中枢性神经性疼痛中的推广。

IF 3.9 3区 工程技术 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY Biomedicines Pub Date : 2025-01-16 DOI:10.3390/biomedicines13010213
Keri Anderson, Sebastian Stein, Ho Suen, Mariel Purcell, Maurizio Belci, Euan McCaughey, Ronali McLean, Aye Khine, Aleksandra Vuckovic
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引用次数: 0

摘要

背景:目的是使用两个独立的数据集来测试未来疼痛的脑电图(EEG)标记的普遍性。方法:数据集A [N = 20]和B [N = 35]来自记录时没有神经性疼痛的亚急性脊髓损伤参与者。在两个数据集中,一些参与者在六个月内出现疼痛(PDP),而另一些没有(PNP)。基于频带功率或Higuchi分形维数(HFD)提取EEG特征。测试了三个级别的通用性:(1)分别在数据集A和B中分类PDP与PNP;(2)将数据集A和B中的组进行分类;(3)分类,其中一个数据集(A或B)用于训练和测试,另一个用于验证。提出了一种新的HFD特征归一化方法。结果:单个数据集的训练和测试在任意一种特征集上的分类准确率都达到了80 - 80%,联合数据集(A和B)的分类准确率最高达到了86.4% (HFD,支持向量机(SVM))。通过归一化和特征约简(主成分),验证准确率为66.6%。结论:具有HFD特征的SVM分类器表现出最佳的鲁棒性,归一化提高了预测未来神经性疼痛的准确性,远高于机会水平。
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Generalisation of EEG-Based Pain Biomarker Classification for Predicting Central Neuropathic Pain in Subacute Spinal Cord Injury.

Background: The objective was to test the generalisability of electroencephalography (EEG) markers of future pain using two independent datasets. Methods: Datasets, A [N = 20] and B [N = 35], were collected from participants with subacute spinal cord injury who did not have neuropathic pain at the time of recording. In both datasets, some participants developed pain within six months, (PDP) will others did not (PNP). EEG features were extracted based on either band power or Higuchi fractal dimension (HFD). Three levels of generalisability were tested: (1) classification PDP vs. PNP in datasets A and B separately; (2) classification between groups in datasets A and B together; and (3) classification where one dataset (A or B) was used for training and testing, and the other for validation. A novel normalisation method was applied to HFD features. Results: Training and testing of individual datasets achieved classification accuracies of >80% using either feature set, and classification of joint datasets (A and B) achieved a maximum accuracy of 86.4% (HFD, support vector machine (SVM)). With normalisation and feature reduction (principal components), the validation accuracy was 66.6%. Conclusions: An SVM classifier with HFD features showed the best robustness, and normalisation improved the accuracy of predicting future neuropathic pain well above the chance level.

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来源期刊
Biomedicines
Biomedicines Biochemistry, Genetics and Molecular Biology-General Biochemistry,Genetics and Molecular Biology
CiteScore
5.20
自引率
8.50%
发文量
2823
审稿时长
8 weeks
期刊介绍: Biomedicines (ISSN 2227-9059; CODEN: BIOMID) is an international, scientific, open access journal on biomedicines published quarterly online by MDPI.
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