Alrowais Fadwa, Alqahtani Mohammed, Khan Jahangir, Miled Achraf Ben, Albalawneh Da'ad, Alkharashi Abdulwhab, Al Zanin Samah, Marzouk Radwa
Department of Computer Sciences, College of Computer and Information Sciences, Princess Nourah Bint Abdulrahman University, P.O. Box 84428, 11671, Riyadh, Saudi Arabia.
Department of Information System and Cyber Security, College of Computing and Information Technology, University of Bisha, 61922, Bisha, Saudi Arabia.
Sci Rep. 2025 Apr 10;15(1):12334. doi: 10.1038/s41598-025-97034-y.
Stroke is a main risk to life and fitness in current society, particularly in the aging population. Also, the stroke is recognized as a cerebrovascular accident. It contains a nervous illness, which can result from haemorrhage or ischemia of the brain veins, and regular mains to assorted motor and cognitive damages that cooperate with functionality. Screening for stroke comprises physical examination, history taking, and valuation of risk features like age or certain cardiovascular illnesses. Symptoms and signs of stroke include facial weakness. Even though computed tomography (CT) and magnetic resonance imaging (MRI) are standard diagnosis techniques, artificial intelligence (AI) systems have been constructed based on these methods, which deliver fast detection. AI is gaining high attention and is being combined into numerous areas with medicine to enhance the accuracy of analysis and the quality of patient care. This paper proposes an enhancing neurological disease diagnostics fusion of transfer learning for acute brain stroke prediction using facial images (ENDDFTL-ABSPFI) method. The proposed ENDDFTL-ABSPFI method aims to enhance brain stroke detection and classification models using facial imaging. Initially, the image pre-processing stage applies the fuzzy-based median filter (FMF) model to eliminate the noise in input image data. Furthermore, fusion models such as Inception-V3 and EfficientNet-B0 perform the feature extraction. Moreover, the hybrid of convolutional neural network and bidirectional long short-term memory (CNN-BiLSTM) model is employed for the brain stroke classification process. Finally, the multi-objective sailfish optimization (MOSFO)-based hyperparameter selection process is carried out to optimize the classification outcomes of the CNN-BiLSTM model. The simulation validation of the ENDDFTL-ABSPFI technique is investigated under the Kaggle dataset concerning various measures. The comparative evaluation of the ENDDFTL-ABSPFI technique portrayed a superior accuracy value of 98.60% over existing methods.
中风是当今社会影响生命健康的主要风险因素,在老年人群体中尤为如此。此外,中风被认为是一种脑血管意外。它是一种神经疾病,可能由脑静脉出血或缺血引起,通常会导致各种运动和认知损伤,影响身体功能。中风筛查包括体格检查、病史采集以及对年龄或某些心血管疾病等风险因素的评估。中风的症状和体征包括面部无力。尽管计算机断层扫描(CT)和磁共振成像(MRI)是标准的诊断技术,但基于这些方法构建的人工智能(AI)系统能够实现快速检测。AI正受到高度关注,并被应用于医学的多个领域,以提高分析的准确性和患者护理质量。本文提出了一种用于急性脑中风预测的基于面部图像的增强神经疾病诊断转移学习融合方法(ENDDFTL - ABSPFI)。所提出的ENDDFTL - ABSPFI方法旨在利用面部成像增强脑中风检测和分类模型。首先,图像预处理阶段应用基于模糊的中值滤波(FMF)模型消除输入图像数据中的噪声。此外,诸如Inception - V3和EfficientNet - B0等融合模型进行特征提取。而且,卷积神经网络和双向长短期记忆(CNN - BiLSTM)模型的混合用于脑中风分类过程。最后,进行基于多目标旗鱼优化(MOSFO)的超参数选择过程,以优化CNN - BiLSTM模型的分类结果。在Kaggle数据集下,针对各种指标对ENDDFTL - ABSPFI技术进行了仿真验证。ENDDFTL - ABSPFI技术的对比评估表明,其准确率高达98.60%,优于现有方法。