Dulitha Lansakara, Thinusha Gunasekera, Chamara Niroshana, Imali Weerasinghe, P. Bandara, D. Wijendra
{"title":"Symptomatic Analysis Prediction of Kidney Related Diseases using Machine Learning","authors":"Dulitha Lansakara, Thinusha Gunasekera, Chamara Niroshana, Imali Weerasinghe, P. Bandara, D. Wijendra","doi":"10.1109/ICAC54203.2021.9671129","DOIUrl":null,"url":null,"abstract":"Sri Lanka has been witnessing an increase in kidney disease issues for a while. Elderly kidney patients, kidney transplant patients who passed the risk level after the surgery are not treated in the emergency clinic. These patients are handed over to their families to take care of them. In any case, it is impossible to tackle a portion of the issues that emerge regarding the patient at home. It is hoped to enter patient’s data from home every day and to develop a system that can use that entered data to predict whether a patient is in an essential circumstance or not. Additionally, individuals in high-hazard regions cannot know whether they are in danger of creating kidney disappointments or not and individuals in danger of creating kidney sickness because of Diabetes Mellitus. Thus, we desire to emphasize the framework to improve answers for this issue. The research focuses on developing a system that includes early kidney disease prediction models involving machine learning classification algorithms by considering the relevant variables. In predictive analysis, six machine learning methods are used: Support Vector Machine (SVM with kernels), Random Forest (RF), Decision Tree, Logistic Regression, and Multilayer Perceptron. These classification algorithms' performance is evaluated using statistical measures such as sensitivity (recall), precision, accuracy, and F-score. In categorizing, accuracy determines which examples are accurate. The experimental results reveal that Support Vector Machine outperforms other classification algorithms in terms of accuracy.","PeriodicalId":227059,"journal":{"name":"2021 3rd International Conference on Advancements in Computing (ICAC)","volume":"41 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-12-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2021 3rd International Conference on Advancements in Computing (ICAC)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/ICAC54203.2021.9671129","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Sri Lanka has been witnessing an increase in kidney disease issues for a while. Elderly kidney patients, kidney transplant patients who passed the risk level after the surgery are not treated in the emergency clinic. These patients are handed over to their families to take care of them. In any case, it is impossible to tackle a portion of the issues that emerge regarding the patient at home. It is hoped to enter patient’s data from home every day and to develop a system that can use that entered data to predict whether a patient is in an essential circumstance or not. Additionally, individuals in high-hazard regions cannot know whether they are in danger of creating kidney disappointments or not and individuals in danger of creating kidney sickness because of Diabetes Mellitus. Thus, we desire to emphasize the framework to improve answers for this issue. The research focuses on developing a system that includes early kidney disease prediction models involving machine learning classification algorithms by considering the relevant variables. In predictive analysis, six machine learning methods are used: Support Vector Machine (SVM with kernels), Random Forest (RF), Decision Tree, Logistic Regression, and Multilayer Perceptron. These classification algorithms' performance is evaluated using statistical measures such as sensitivity (recall), precision, accuracy, and F-score. In categorizing, accuracy determines which examples are accurate. The experimental results reveal that Support Vector Machine outperforms other classification algorithms in terms of accuracy.
一段时间以来,斯里兰卡的肾病问题一直在增加。老年肾病患者、术后通过危险等级的肾移植患者不在急诊就诊。这些病人被交给他们的家人照顾。在任何情况下,这是不可能解决的问题,出现在家里的病人的一部分。希望每天从家里输入病人的数据,并开发一个系统,可以使用输入的数据来预测病人是否处于必要的情况。此外,生活在高危险地区的人不知道他们是否有患肾衰竭的危险,也不知道患有糖尿病的人是否有患肾病的危险。因此,我们希望强调改进这一问题答案的框架。该研究的重点是开发一个系统,该系统包括涉及机器学习分类算法的早期肾脏疾病预测模型,并考虑相关变量。在预测分析中,使用了六种机器学习方法:支持向量机(SVM with kernel)、随机森林(Random Forest, RF)、决策树、逻辑回归和多层感知机。这些分类算法的性能使用诸如灵敏度(召回率)、精度、准确度和f分数等统计指标进行评估。在分类中,准确性决定了哪些例子是准确的。实验结果表明,支持向量机在准确率方面优于其他分类算法。