Optimal Integration of Machine Learning for Distinct Classification and Activity State Determination in Multiple Sclerosis and Neuromyelitis Optica

Maha Gharaibeh, Wlla Abedalaziz, Noor Aldeen Alawad, Hasan Gharaibeh, Ahmad Nasayreh, Mwaffaq El-Heis, Maryam Altalhi, Agostino Forestiero, Laith Abualigah
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Abstract

The intricate neuroinflammatory diseases multiple sclerosis (MS) and neuromyelitis optica (NMO) often present similar clinical symptoms, creating challenges in their precise detection via magnetic resonance imaging (MRI). This challenge is further compounded when detecting the active and inactive states of MS. To address this diagnostic problem, we introduce an innovative framework that incorporates state-of-the-art machine learning algorithms applied to features culled from MRI scans by pre-trained deep learning models, VGG-NET and InceptionV3. To develop and test this methodology, we utilized a robust dataset obtained from the King Abdullah University Hospital in Jordan, encompassing cases diagnosed with both MS and NMO. We benchmarked thirteen distinct machine learning algorithms and discovered that support vector machine (SVM) and K-nearest neighbor (KNN) algorithms performed superiorly in our context. Our results demonstrated KNN’s exceptional performance in differentiating between MS and NMO, with precision, recall, F1-score, and accuracy values of 0.98, 0.99, 0.99, and 0.99, respectively, using leveraging features extracted from VGG16. In contrast, SVM excelled in classifying active versus inactive states of MS, achieving precision, recall, F1-score, and accuracy values of 0.99, 0.97, 0.98, and 0.98, respectively, using leveraging features extracted from VGG16 and VGG19. Our advanced methodology outshines previous studies, providing clinicians with a highly accurate, efficient tool for diagnosing these diseases. The immediate implication of our research is the potential to streamline treatment processes, thereby delivering timely, appropriate care to patients suffering from these complex diseases.
机器学习在多发性硬化症和视神经脊髓炎中不同分类和活动状态确定的最佳集成
复杂的神经炎性疾病多发性硬化症(MS)和视神经脊髓炎(NMO)经常表现出相似的临床症状,这给磁共振成像(MRI)的精确检测带来了挑战。为了解决这个诊断问题,我们引入了一个创新的框架,该框架结合了最先进的机器学习算法,应用于通过预训练的深度学习模型VGG-NET和InceptionV3从MRI扫描中剔除的特征。为了开发和测试这一方法,我们利用了从约旦阿卜杜拉国王大学医院获得的强大数据集,包括诊断为多发性硬化症和NMO的病例。我们对13种不同的机器学习算法进行了基准测试,发现支持向量机(SVM)和k近邻(KNN)算法在我们的环境中表现得更好。我们的结果表明,利用从VGG16中提取的特征,KNN在区分MS和NMO方面表现出色,精度、召回率、f1得分和准确率分别为0.98、0.99、0.99和0.99。相比之下,SVM在MS的激活状态和非激活状态分类方面表现出色,利用VGG16和VGG19提取的特征,其精度、召回率、f1得分和准确率分别达到0.99、0.97、0.98和0.98。我们先进的方法超越了以前的研究,为临床医生提供了一个高度准确,有效的诊断这些疾病的工具。我们研究的直接意义是简化治疗过程的潜力,从而为患有这些复杂疾病的患者提供及时、适当的护理。
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