College of Computer Science and Information Technology, Imam Abdulrahman Bin Faisal University, P.O. Box 1982, Dammam 31441, Saudi Arabia.
Department of Computer Science, Kettering University, Flint, MI 48504, USA.
Int J Environ Res Public Health. 2023 Feb 27;20(5):4261. doi: 10.3390/ijerph20054261.
Multiple Sclerosis (MS) is characterized by chronic deterioration of the nervous system, mainly the brain and the spinal cord. An individual with MS develops the condition when the immune system begins attacking nerve fibers and the myelin sheathing that covers them, affecting the communication between the brain and the rest of the body and eventually causing permanent damage to the nerve. Patients with MS (pwMS) might experience different symptoms depending on which nerve was damaged and how much damage it has sustained. Currently, there is no cure for MS; however, there are clinical guidelines that help control the disease and its accompanying symptoms. Additionally, no specific laboratory biomarker can precisely identify the presence of MS, leaving specialists with a differential diagnosis that relies on ruling out other possible diseases with similar symptoms. Since the emergence of Machine Learning (ML) in the healthcare industry, it has become an effective tool for uncovering hidden patterns that aid in diagnosing several ailments. Several studies have been conducted to diagnose MS using ML and Deep Learning (DL) models trained using MRI images, achieving promising results. However, complex and expensive diagnostic tools are needed to collect and examine imaging data. Thus, the intention of this study is to implement a cost-effective, clinical data-driven model that is capable of diagnosing pwMS. The dataset was obtained from King Fahad Specialty Hospital (KFSH) in Dammam, Saudi Arabia. Several ML algorithms were compared, namely Support Vector Machine (SVM), Decision Tree (DT), Logistic Regression (LR), Random Forest (RF), Extreme Gradient Boosting (XGBoost), Adaptive Boosting (AdaBoost), and Extra Trees (ET). The results indicated that the ET model outpaced the rest with an accuracy of 94.74%, recall of 97.26%, and precision of 94.67%.
多发性硬化症(MS)的特征是神经系统的慢性恶化,主要是大脑和脊髓。当免疫系统开始攻击神经纤维和覆盖它们的髓鞘时,个体就会患上 MS,这会影响大脑和身体其他部位之间的通讯,并最终对神经造成永久性损伤。多发性硬化症患者(pwMS)可能会根据受损的神经以及受损的程度而出现不同的症状。目前,多发性硬化症尚无治愈方法;但是,有临床指南可以帮助控制疾病及其伴随的症状。此外,没有特定的实验室生物标志物可以准确识别多发性硬化症的存在,这使得专家们需要进行鉴别诊断,排除具有相似症状的其他可能疾病。自机器学习(ML)在医疗保健行业中的出现以来,它已成为揭示有助于诊断多种疾病的隐藏模式的有效工具。已经进行了多项使用 ML 和使用 MRI 图像训练的深度学习(DL)模型来诊断多发性硬化症的研究,取得了有希望的结果。但是,需要复杂且昂贵的诊断工具来收集和检查成像数据。因此,本研究的目的是实施一种具有成本效益的、基于临床数据的模型,该模型能够诊断 pwMS。该数据集是从沙特阿拉伯达曼的法赫德国王专科医院(KFSH)获得的。比较了几种 ML 算法,即支持向量机(SVM)、决策树(DT)、逻辑回归(LR)、随机森林(RF)、极端梯度提升(XGBoost)、自适应提升(AdaBoost)和 Extra Trees(ET)。结果表明,ET 模型的准确率为 94.74%、召回率为 97.26%和精度为 94.67%,优于其他模型。