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Comparison of Machine Learning Algorithms to Increase Prediction Accuracy of COPD Domain

机译:机器学习算法的比较以提高COPD域的预测准确性

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Medicine and especially chronic diseases, like everything else on earth is filled with ambiguity. This is why, identifying patients at risk present a big challenge to human brain. Poor control and misdiagnosis of chronic diseases has a great impact quality of life of patients, the expenses and performance of health care system. The global economic cost of chronic diseases could reach $47 trillion by 2030, according to a study by the World Economic Forum (WEF). Beside this economic burden, such treatment failure increases the risk of progression of disease which inevitably leads to premature death or further illness and suffering. Today, health informatics is reshaping the research in the medical domain due to its potential to concurrently overcome the challenges encountered in the traditional healthcare systems. Uncertainty, accuracy, causal attributes and their relationship, all have their places in this new technology through contemporary machine learning algorithms. Prediction of exacerbation of Chronic Obstructive Pulmonary Disease (COPD) is considered one of the most difficult problems in the medical field. In this paper, we will leverage unused machine learning methods to increase prediction accuracy in COPD. To this end, we compared three of the most common machine learning algorithms (decision tree, naive Bayes and Bayesian network) based on ROC metric. Furthermore, we used discretization process for the first time in this context.
机译:医学,尤其是慢性病,就像地球上的其他一切一样,充满了歧义。这就是为什么识别高危患者对人脑提出了巨大挑战。慢性病的不良控制和误诊对患者的生活质量,卫生保健系统的费用和性能都有很大影响。根据世界经济论坛(WEF)的一项研究,到2030年,全球慢性病的经济成本可能达到47万亿美元。除了这种经济负担之外,这种治疗失败还增加了疾病发展的风险,这不可避免地导致过早死亡或进一步的疾病和痛苦。如今,健康信息学正在重塑医学领域的研究,因为它有潜力同时克服传统保健系统中遇到的挑战。不确定性,准确性,因果属性及其关系都通过当代机器学习算法在这项新技术中占有一席之地。慢性阻塞性肺疾病(COPD)恶化的预测被认为是医学领域最困难的问题之一。在本文中,我们将利用未使用的机器学习方法来提高COPD的预测准确性。为此,我们比较了基于ROC指标的三种最常见的机器学习算法(决策树,朴素贝叶斯和贝叶斯网络)。此外,在这种情况下,我们首次使用了离散化过程。

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