Abbaoui Wafae, Retal Sara, Ziti Soumia, El Bhiri Brahim
Intelligent Processing & Security of Systems (IPSS) Research Team, Faculty of Sciences, Mohammed V University in Rabat, Rabat 10000, Morocco.
SmartiLab, Moroccan School of Engineering Sciences (EMSI), Rabat 10000, Morocco.
J Clin Med. 2024 Apr 17;13(8):2323. doi: 10.3390/jcm13082323.
: This study evaluates the performance of a vision transformer (ViT) model, ViT-b16, in classifying ischemic stroke cases from Moroccan MRI scans and compares it to the Visual Geometry Group 16 (VGG-16) model used in a prior study. : A dataset of 342 MRI scans, categorized into 'Normal' and 'Stroke' classes, underwent preprocessing using TensorFlow's tf.data API. : The ViT-b16 model was trained and evaluated, yielding an impressive accuracy of 97.59%, surpassing the VGG-16 model's 90% accuracy. : This research highlights the ViT-b16 model's superior classification capabilities for ischemic stroke diagnosis, contributing to the field of medical image analysis. By showcasing the efficacy of advanced deep learning architectures, particularly in the context of Moroccan MRI scans, this study underscores the potential for real-world clinical applications. Ultimately, our findings emphasize the importance of further exploration into AI-based diagnostic tools for improving healthcare outcomes.
本研究评估了视觉Transformer(ViT)模型ViT-b16在对摩洛哥MRI扫描中的缺血性中风病例进行分类方面的性能,并将其与先前研究中使用的视觉几何组16(VGG-16)模型进行比较。一个包含342张MRI扫描图像的数据集,分为“正常”和“中风”两类,使用TensorFlow的tf.data API进行了预处理。对ViT-b16模型进行了训练和评估,其准确率高达97.59%,令人印象深刻,超过了VGG-16模型90%的准确率。这项研究突出了ViT-b16模型在缺血性中风诊断方面卓越的分类能力,为医学图像分析领域做出了贡献。通过展示先进深度学习架构的有效性,特别是在摩洛哥MRI扫描的背景下,本研究强调了其在实际临床应用中的潜力。最终,我们的研究结果强调了进一步探索基于人工智能的诊断工具以改善医疗结果的重要性。