Department of Computer Science, Savitribai Phule Pune University, Pune, India.
Computer Engineering Department, Vishwakarma Institute of Information Technology, Kondhwa (Bk), Pune, India.
Behav Neurol. 2022 Apr 11;2022:7725597. doi: 10.1155/2022/7725597. eCollection 2022.
The emergence of the latest technologies gives rise to the usage of noninvasive techniques for assisting health-care systems. Amongst the four major cardiovascular diseases, stroke is one of the most dangerous and life-threatening disease, but the life of a patient can be saved if the stroke is detected during early stage. The literature reveals that the patients always experience ministrokes which are also known as transient ischemic attacks (TIA) before experiencing the actual attack of the stroke. Most of the literature work is based on the MRI and CT scan images for classifying the cardiovascular diseases including a stroke which is an expensive approach for diagnosis of early strokes. In India where cases of strokes are rising, there is a need to explore noninvasive cheap methods for the diagnosis of early strokes. Hence, this problem has motivated us to conduct the study presented in this paper. A noninvasive approach for the early diagnosis of the strokes is proposed. The cascaded prediction algorithms are time-consuming in producing the results and cannot work on the raw data and without making use of the properties of EEG. Therefore, the objective of this paper is to devise mechanisms to forecast strokes on the basis of processed EEG data. This paper is proposing time series-based approaches such as LSTM, biLSTM, GRU, and FFNN that can handle time series-based predictions to make useful decisions. The experimental research outcome reveals that all the algorithms taken up for the research study perform well on the prediction problem of early stroke detection, but GRU performs the best with 95.6% accuracy, whereas biLSTM gives 91% accuracy and LSTM gives 87% accuracy and FFNN gives 83% accuracy. The experimental outcome is able to measure the brain waves to predict the signs of strokes. The findings can certainly assist the physicians to detect the stroke at early stages to save the lives of the patients.
最新技术的出现催生了非侵入性技术在医疗保健系统中的应用。在四大心血管疾病中,中风是最危险和最致命的疾病之一,但如果在早期发现中风,患者的生命可以得到挽救。文献表明,患者在经历中风实际发作之前,总会经历小中风,也称为短暂性脑缺血发作 (TIA)。大多数文献工作都是基于 MRI 和 CT 扫描图像来对心血管疾病进行分类,包括中风,这是一种昂贵的早期中风诊断方法。在中风病例不断增加的印度,需要探索用于早期中风诊断的无创廉价方法。因此,这个问题促使我们进行了本文提出的研究。提出了一种用于中风早期诊断的无创方法。级联预测算法在产生结果时很耗时,并且不能处理原始数据,也不能利用 EEG 的特性。因此,本文的目标是设计基于处理后的 EEG 数据预测中风的机制。本文提出了基于时间序列的方法,如 LSTM、biLSTM、GRU 和 FFNN,它们可以处理基于时间序列的预测,从而做出有用的决策。实验研究结果表明,所有用于研究的算法在早期中风检测的预测问题上都表现良好,但 GRU 的表现最好,准确率为 95.6%,biLSTM 的准确率为 91%,LSTM 的准确率为 87%,FFNN 的准确率为 83%。实验结果能够测量脑电波以预测中风的迹象。这些发现肯定可以帮助医生在早期发现中风,从而拯救患者的生命。