基于模糊c均值算法的缺失值估算慢性阻塞性肺疾病(COPD)分类

Kiki Aristiawati, T. Siswantining, Devvi Sarwinda, S. Soemartojo
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引用次数: 10

摘要

慢性阻塞性肺疾病(COPD)是世界上最主要的死亡原因之一。世界卫生组织(世卫组织)报告称,2016年,慢性阻塞性肺病是全球第三大死因,约有300万人死亡,相当于全球死亡人数的5.2%。因此,需要对CPOD进行进一步的研究。不幸的是,在研究中收集的数据不包含所有需要的数据,被称为缺失值。缺失值是所有类型的数据分析的一个问题。可以通过过滤数据(忽略或删除数据)和输入数据来处理缺失值的几种方法。忽略或删除数据会减少数据中包含的信息量,并可能导致数据分析过程产生的低准确性。为了克服这个问题,将在预处理阶段进行数据输入,以获得完整的数据,这有望提高数据分析的准确性。可采用的归算方法有均值归算和模糊c均值(FCM)等。模糊C-Means是一种聚类方法,它允许数据的一部分根据其隶属函数属于两个或多个组。使用决策树分类器对完整数据集进行训练,观察均值和FCM方法的准确率。对所提出的分类归算方法的分析表明,与均值归算方法相比,FCM的准确率略高。慢性阻塞性肺疾病(COPD)是世界上最主要的死亡原因之一。世界卫生组织(世卫组织)报告称,2016年,慢性阻塞性肺病是全球第三大死因,约有300万人死亡,相当于全球死亡人数的5.2%。因此,需要对CPOD进行进一步的研究。不幸的是,在研究中收集的数据不包含所有需要的数据,被称为缺失值。缺失值是所有类型的数据分析的一个问题。可以通过过滤数据(忽略或删除数据)和输入数据来处理缺失值的几种方法。忽略或删除数据会减少数据中包含的信息量,并可能导致数据分析过程产生的低准确性。为了克服这个问题,将在预处理阶段进行数据输入,以获得完整的数据,这有望提高数据分析的准确性。可采用的归算方法有很多,如:均值法;
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Missing values imputation based on fuzzy C-Means algorithm for classification of chronic obstructive pulmonary disease (COPD)
Chronic Obstructive Pulmonary Disease (COPD) is one of the most causes of death in the world. World Health Organization (WHO) reported that in 2016 COPD was the third leading cause of death worldwide with around 3 million deaths, equivalent to 5.2% of deaths worldwide. For this reason, further research needs to be done on CPOD. Unfortunately, the data collected in the study does not contain all the desired data, is called as a missing value. Missing value is a problem for all types of data analysis. Several ways that can be applied to handle missing value, by filtering data (ignore or remove data) and imputing data. Ignoring or removing data can reduce the amount of information contained in the data and can cause low accuracy to generate from the data analysis process. To overcome this problem, imputation data will be carried out at the preprocessing stage to obtain complete data which is expected to increase the accuracy of the data analysis performed. Many imputations method can be used, such as mean imputation and Fuzzy C-Means (FCM). Fuzzy C-Means is a clustering method that allows one part of the data to belong to two or more groups based on their membership function. The complete dataset was trained with Decision Tree classifier to observe the performance in terms of accuracy for mean and FCM method. The analysis of proposed imputation on classification shows that FCM slightly accurate compare to mean imputation method.Chronic Obstructive Pulmonary Disease (COPD) is one of the most causes of death in the world. World Health Organization (WHO) reported that in 2016 COPD was the third leading cause of death worldwide with around 3 million deaths, equivalent to 5.2% of deaths worldwide. For this reason, further research needs to be done on CPOD. Unfortunately, the data collected in the study does not contain all the desired data, is called as a missing value. Missing value is a problem for all types of data analysis. Several ways that can be applied to handle missing value, by filtering data (ignore or remove data) and imputing data. Ignoring or removing data can reduce the amount of information contained in the data and can cause low accuracy to generate from the data analysis process. To overcome this problem, imputation data will be carried out at the preprocessing stage to obtain complete data which is expected to increase the accuracy of the data analysis performed. Many imputations method can be used, such as mean im...
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