Nisha Naima Nasrin, Podder Kanchon Kanti, Chowdhury Muhammad E H, Rabbani Mamun, Wadud Md Sharjis Ibne, Al-Maadeed Somaya, Mahmud Sakib, Khandakar Amith, Zughaier Susu M
Department of Biomedical Physics & Technology, University of Dhaka, Dhaka 1000, Bangladesh.
Department of Electrical Engineering, Qatar University, Doha 2713, Qatar.
Diagnostics (Basel). 2023 Jun 8;13(12):2000. doi: 10.3390/diagnostics13122000.
Transcranial doppler (TCD) ultrasound is a non-invasive imaging technique that can be used for continuous monitoring of blood flow in the brain through the major cerebral arteries by calculating the cerebral blood flow velocity (CBFV). Since the brain requires a consistent supply of blood to function properly and meet its metabolic demand, a change in CBVF can be an indication of neurological diseases. Depending on the severity of the disease, the symptoms may appear immediately or may appear weeks later. For the early detection of neurological diseases, a classification model is proposed in this study, with the ability to distinguish healthy subjects from critically ill subjects. The TCD ultrasound database used in this study contains signals from the middle cerebral artery (MCA) of 6 healthy subjects and 12 subjects with known neurocritical diseases. The classification model works based on the maximal blood flow velocity waveforms extracted from the TCD ultrasound. Since the signal quality of the recorded TCD ultrasound is highly dependent on the operator's skillset, a noisy and corrupted signal can exist and can add biases to the classifier. Therefore, a deep learning classifier, trained on a curated and clean biomedical signal can reliably detect neurological diseases. For signal classification, this study proposes a Self-organized Operational Neural Network (Self-ONN)-based deep learning model Self-ResAttentioNet18, which achieves classification accuracy of 96.05% with precision, recall, f1 score, and specificity of 96.06%, 96.05%, 96.06%, and 96.09%, respectively. With an area under the ROC curve of 0.99, the model proves its feasibility to confidently classify middle cerebral artery (MCA) waveforms in near real-time.
经颅多普勒(TCD)超声是一种非侵入性成像技术,可通过计算脑血流速度(CBFV),用于持续监测大脑主要动脉中的血流情况。由于大脑需要持续供血才能正常运作并满足其代谢需求,CBVF的变化可能表明存在神经疾病。根据疾病的严重程度,症状可能立即出现,也可能在数周后出现。为了早期检测神经疾病,本研究提出了一种分类模型,该模型能够区分健康受试者和重症受试者。本研究使用的TCD超声数据库包含来自6名健康受试者和12名已知神经重症疾病受试者的大脑中动脉(MCA)信号。分类模型基于从TCD超声中提取的最大血流速度波形进行工作。由于记录的TCD超声信号质量高度依赖于操作者的技能,可能会存在噪声和损坏的信号,并会给分类器带来偏差。因此,在经过整理和清理的生物医学信号上训练的深度学习分类器能够可靠地检测神经疾病。对于信号分类,本研究提出了一种基于自组织运算神经网络(Self-ONN)的深度学习模型Self-ResAttentioNet18,其分类准确率为96.05%,精确率、召回率、F1分数和特异性分别为96.06%、96.05%、96.06%和96.09%。该模型的ROC曲线下面积为0.99,证明了其在近实时情况下自信地分类大脑中动脉(MCA)波形方面的可行性。