Mathematical Model of Disease Progression and Application of Machine Learning Algorithms for Predicting Disease Stages

Jaehee Kim
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Abstract

Accurately diagnosing a patient's disease stage is critical to deal with the varying symptoms and applying appropriate therapeutics at different stages.  Therefore, we used and compared machine learning algorithms on synthetic data and classified disease stages.  This study was performed on the Google Colab environment with Python's machine learning libraries (Sklearn).  The simulated data resembled one that might be reasonably seen in real patients' data since it contained both temporal variation and various noise levels.  Three types of machine learning algorithms were used: Nearest Neighbor, Decision Tree, and Neural Network.  These algorithms could classify whether the current stage of disease progression was at its early, mid, or late stages under different noise levels and other time intervals.  The neural network algorithm showed the best performance.  Although this study used a synthetic data set, it demonstrated how machine learning could be applied in the medical field to enhance patient care. 
疾病进展的数学模型和预测疾病阶段的机器学习算法的应用
准确诊断患者的疾病阶段对于处理不同的症状和在不同阶段应用适当的治疗至关重要。因此,我们在合成数据和疾病分期分类上使用并比较了机器学习算法。这项研究是在Google Colab环境中使用Python的机器学习库(Sklearn)进行的。模拟数据类似于真实患者数据中可以合理看到的数据,因为它包含了时间变化和各种噪声水平。使用了三种类型的机器学习算法:最近邻、决策树和神经网络。这些算法可以在不同的噪声水平和其他时间间隔下对疾病进展的当前阶段是否处于早期、中期或晚期进行分类。神经网络算法表现出最好的性能。尽管这项研究使用了合成数据集,但它展示了机器学习如何应用于医疗领域,以加强患者护理。
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