Tuncer Seda Arslan, Danacı Cagla, Bilek Furkan, Demir Caner Feyzi, Tuncer Taner
Software Engineering, Faculty of Engineering, Firat University, 23119 Elazığ, Turkey.
Department of Software Engineering, Faculty of Technology, Sivas Republic University, 58070 Sivas, Turkey.
Diagnostics (Basel). 2024 Jun 13;14(12):1249. doi: 10.3390/diagnostics14121249.
The Expanded Disability Status Scale (EDSS) is the most popular method to assess disease progression and treatment effectiveness in patients with multiple sclerosis (PwMS). One of the main problems with the EDSS method is that different results can be determined by different physicians for the same patient. In this case, it is necessary to produce autonomous solutions that will increase the reliability of the EDSS, which has a decision-making role. This study proposes a machine learning approach to predict EDSS scores using aerobic capacity data from PwMS. The primary goal is to reduce potential complications resulting from incorrect scoring procedures. Cardiovascular and aerobic capacity parameters of individuals, including aerobic capacity, ventilation, respiratory frequency, heart rate, average oxygen density, load, and energy expenditure, were evaluated. These parameters were given as input to CatBoost, gradient boosting (GBM), extreme gradient boosting (XGBoost), and decision tree (DT) machine learning methods. The most significant EDSS results were determined with the XGBoost algorithm. Mean absolute error, root mean square error, mean square error, mean absolute percent error, and R square values were obtained as 0.26, 0.4, 0.26, 16, and 0.68, respectively. The XGBoost based machine learning technique was shown to be effective in predicting EDSS based on aerobic capacity and cardiovascular data in PwMS.
扩展残疾状态量表(EDSS)是评估多发性硬化症患者(PwMS)疾病进展和治疗效果最常用的方法。EDSS方法的主要问题之一是,不同医生对同一患者可能会得出不同的结果。在这种情况下,有必要开发自主解决方案,以提高具有决策作用的EDSS的可靠性。本研究提出了一种机器学习方法,利用PwMS患者的有氧能力数据预测EDSS评分。主要目标是减少因评分程序错误导致的潜在并发症。评估了个体的心血管和有氧能力参数,包括有氧能力、通气、呼吸频率、心率、平均氧密度、负荷和能量消耗。这些参数被作为输入提供给CatBoost、梯度提升(GBM)、极端梯度提升(XGBoost)和决策树(DT)机器学习方法。使用XGBoost算法确定了最显著的EDSS结果。平均绝对误差、均方根误差、均方误差、平均绝对百分比误差和R平方值分别为0.26、0.4、0.26、16和0.68。基于XGBoost的机器学习技术被证明在基于PwMS患者的有氧能力和心血管数据预测EDSS方面是有效的。