Zhu Yibo, Jayagopal Jagadish K, Mehta Ranjana K, Erraguntla Madhav, Nuamah Joseph, McDonald Anthony D, Taylor Heather, Chang Shuo-Hsiu
IEEE Trans Neural Syst Rehabil Eng. 2020 Apr;28(4):961-969. doi: 10.1109/TNSRE.2020.2972270. Epub 2020 Feb 7.
Major depressive disorder (MDD) has shown to negatively impact physical recovery in a variety of medical events (e.g., stroke and spinal cord injuries). Yet depression assessments, which are typically subjective in nature, are seldom considered to develop or guide rehabilitation strategies. The present study developed a predictive depression assessment technique using functional near-infrared spectroscopy (fNIRS) that can be rapidly integrated or performed concurrently with existing physical rehabilitation tasks. Thirty-one volunteers, including 14 adults clinically diagnosed with MDD and 17 healthy adults, participated in the study. Brain oxy-hemodynamic (HbO) responses were recorded using a 16-channel wearable continuous-wave fNIRS device while the volunteers performed the Grasp and Release Test in four 16-minute blocks. Ten features, extracted from HbO signals, from each channel served as inputs to XGBoost and Random Forest algorithms developed for each block and combination of successive blocks. Top 5 common features resulted in a classification accuracy of 92.6%, sensitivity of 84.8%, and specificity of 91.7% using the XGBoost classifier. This study identified mean HbO, full width half maximum and kurtosis, as specific neuromarkers, for predicting MDD across specific depression-related regions of interests (i.e., dorsolateral and ventrolateral prefrontal cortex). Our results suggest that a wearable fNIRS head probe monitoring specific brain regions, and limiting extraction to few features, can enable quick setup and rapid assessment of depression in patients. The overarching goal is to embed predictive neurotechnology during post-stroke and post-spinal-cord-injury rehabilitation sessions to monitor patients' depression symptomology so as to actively guide decisions about motor therapies.
重度抑郁症(MDD)已被证明会对各种医疗事件(如中风和脊髓损伤)后的身体恢复产生负面影响。然而,抑郁症评估本质上通常是主观的,在制定或指导康复策略时很少被考虑。本研究开发了一种使用功能近红外光谱(fNIRS)的预测性抑郁症评估技术,该技术可以与现有的物理康复任务快速整合或同时进行。31名志愿者参与了该研究,其中包括14名临床诊断为MDD的成年人和17名健康成年人。在志愿者进行四个16分钟的抓握和释放测试块时,使用16通道可穿戴连续波fNIRS设备记录大脑氧合血红蛋白(HbO)反应。从每个通道的HbO信号中提取的10个特征作为输入,输入到为每个测试块以及连续测试块的组合开发的XGBoost和随机森林算法中。使用XGBoost分类器,前5个常见特征的分类准确率为92.6%,灵敏度为84.8%,特异性为91.7%。本研究确定平均HbO、半高全宽和峰度为特定的神经标志物,用于预测特定抑郁症相关感兴趣区域(即背外侧和腹外侧前额叶皮层)的MDD。我们的结果表明,一个可穿戴的fNIRS头部探头监测特定脑区,并将提取限制在少数特征上,可以实现对患者抑郁症的快速设置和快速评估。总体目标是在中风和脊髓损伤后的康复过程中嵌入预测性神经技术,以监测患者的抑郁症状,从而积极指导有关运动疗法的决策。