Ali Muhammad Umair, Zafar Amad, Kallu Karam Dad, Yaqub M Atif, Masood Haris, Hong Keum-Shik, Bhutta Muhammad Raheel
Department of Intelligent Mechatronics Engineering, Sejong University, Seoul 05006, Republic of Korea.
Department of Robotics and Intelligent Machine Engineering (RIME), School of Mechanical and Manufacturing Engineering (SMME), National University of Sciences and Technology (NUST), H-12, Islamabad 44000, Pakistan.
Bioengineering (Basel). 2023 Jul 5;10(7):810. doi: 10.3390/bioengineering10070810.
This work investigates the classification of finger-tapping task images constructed for the initial dip duration of hemodynamics (HR) associated with the small brain area of the left motor cortex using functional near-infrared spectroscopy (fNIRS). Different layers (i.e., 16-layers, 19-layers, 22-layers, and 25-layers) of isolated convolutional neural network (CNN) designed from scratch are tested to classify the right-hand thumb and little finger-tapping tasks. Functional -maps of finger-tapping tasks (thumb, little) were constructed for various durations (0.5 to 4 s with a uniform interval of 0.5 s) for the initial dip duration using a three gamma functions-based designed HR function. The results show that the 22-layered isolated CNN model yielded the highest classification accuracy of 89.2% with less complexity in classifying the functional -maps of thumb and little fingers associated with the same small brain area using the initial dip. The results further demonstrated that the active brain area of the two tapping tasks from the same small brain area are highly different and well classified using functional -maps of the initial dip (0.5 to 4 s) compared to functional -maps generated for delayed HR (14 s). This study shows that the images constructed for initial dip duration can be helpful in the future for fNIRS-based diagnosis or cortical analysis of abnormal cerebral oxygen exchange in patients.
这项研究使用功能近红外光谱技术(fNIRS),对与左运动皮层的小脑区域相关的血液动力学(HR)初始下降持续时间所构建的手指敲击任务图像进行分类研究。对从零开始设计的不同层数(即16层、19层、22层和25层)的孤立卷积神经网络(CNN)进行测试,以对右手拇指和小指敲击任务进行分类。使用基于三个伽马函数设计的HR函数,针对初始下降持续时间,在不同持续时间(0.5至4秒,均匀间隔为0.5秒)下构建了手指敲击任务(拇指、小指)的功能映射图。结果表明,22层孤立CNN模型在使用初始下降对与同一小脑区域相关的拇指和小指功能映射图进行分类时,产生了最高分类准确率89.2%,且复杂度较低。结果进一步表明,与为延迟HR(14秒)生成的功能映射图相比,使用初始下降(0.5至4秒)的功能映射图,来自同一小脑区域的两个敲击任务的活跃脑区差异很大且分类良好。这项研究表明,为初始下降持续时间构建的图像未来可能有助于基于fNIRS对患者异常脑氧交换进行诊断或皮层分析。