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使用机器学习方法从Go/NoGo任务期间的皮质血流动力学反应中识别注意力缺陷多动障碍(ADHD)的神经影像生物标志物。

Identifying neuroimaging biomarkers of attention-deficit hyperactivity disorder (ADHD) from cortical hemodynamic responses during Go/NoGo task using machine learning approaches.

作者信息

Li Xi, Liu Xiaoli, Jiang Yuqin, Cui Jingjing, Ji Yanping, Cheng Fang, Zhou Dongsheng

机构信息

Department of Psychiatry, Affiliated Kangning Hospital of Ningbo University (Ningbo Kangning Hospital), Ningbo, 315201, Zhejiang, China; School of Psychology, Shanghai University of Sport, Shanghai, 200438, China.

Department of Psychiatry, Affiliated Kangning Hospital of Ningbo University (Ningbo Kangning Hospital), Ningbo, 315201, Zhejiang, China.

出版信息

Prog Neuropsychopharmacol Biol Psychiatry. 2025 Jul 13;140:111417. doi: 10.1016/j.pnpbp.2025.111417. Epub 2025 Jun 6.

Abstract

BACKGROUND

Robust and reliable biomarkers for the objective diagnosis of attention deficit hyperactivity disorder (ADHD) are lacking. Here we aimed to detect the cortical hemodynamic properties of ADHD children during Go/NoGo task based on functional near-infrared spectroscopy (fNIRS) technology to identify neurobiological features for objective diagnosis.

METHODS

Ninety-seven children with ADHD and eighty-four children with healthy controls (HC) were recruited in this study. We calculated the difference between the peak oxyhemoglobin (oxy-Hb) concentration in Go/NoGo block and the baseline (Go block) of different regions of interest (ROI), the ROI hemodynamic responses in Go/NoGo block under general linear model, and functional connectivity (FC) between ROI. Then, we extracted important fNIRS features for distinguish ADHD and HC, and used four machine learning models combined with cross-validation to detect the effect of fNIRS on the classification and diagnosis of ADHD.

RESULTS

Children with ADHD exhibited abnormal activation in the right inferior frontal gyrus (IFG) and left precentral gyrus, along with altered connectivity patterns in frontoparietal regions (p < 0.05). Among the classifiers, the Random Forest model achieved the best performance, with an average AUC of 0. 91, accuracy of 0.892, sensitivity of 0.95, and specificity of 0.824. The NoGo error rates, FC between the right superior frontal gyrus (SFG) and left SFG contributed the most in the model.

CONCLUSION

The abnormal frontoparietal hemodynamic response in children with ADHD may serve as objective, quantifiable biomarkers for assessing executive dysfunction and facilitating early screening of ADHD.

摘要

背景

目前缺乏用于注意缺陷多动障碍(ADHD)客观诊断的强大且可靠的生物标志物。在此,我们旨在基于功能近红外光谱(fNIRS)技术检测ADHD儿童在Go/NoGo任务期间的皮质血流动力学特性,以识别用于客观诊断的神经生物学特征。

方法

本研究招募了97名ADHD儿童和84名健康对照(HC)儿童。我们计算了Go/NoGo块中氧合血红蛋白(oxy-Hb)峰值浓度与不同感兴趣区域(ROI)基线(Go块)之间的差异、一般线性模型下Go/NoGo块中ROI的血流动力学反应以及ROI之间的功能连接(FC)。然后,我们提取用于区分ADHD和HC的重要fNIRS特征,并使用四种机器学习模型结合交叉验证来检测fNIRS对ADHD分类和诊断的影响。

结果

ADHD儿童在右侧额下回(IFG)和左侧中央前回表现出异常激活,同时额顶叶区域的连接模式发生改变(p < 0.05)。在分类器中,随机森林模型表现最佳,平均AUC为0.91,准确率为0.892,灵敏度为0.95,特异性为0.824。NoGo错误率、右侧额上回(SFG)与左侧SFG之间的FC在模型中贡献最大。

结论

ADHD儿童额顶叶血流动力学反应异常可能作为评估执行功能障碍和促进ADHD早期筛查的客观、可量化生物标志物。

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