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Sarwar, F., Garrido, N., Sebastião, P. & Rehan, A. (2023). Examination of unremitting kidney illness by utilizing machine learning classifiers. In Kommers, P., Macedo, M., Peng, G. C., and Abraham, A. (Ed.), International Conferences on ICT, Society and Human Beings 2023, e-Health 2023, Connected Smart Cities 2023, and Big Data Analytics, Data Mining and Computational Intelligence 2023: Part of the Multi Conference on Computer Science and Information Systems 2023. (pp. 191-198). Porto, Portugal: IADIS Press.
F. Sarwar et al., "Examination of unremitting kidney illness by utilizing machine learning classifiers", in Int. Conf.s on ICT, Society and Human Beings 2023, e-Health 2023, Connected Smart Cities 2023, and Big Data Analytics, Data Mining and Computational Intelligence 2023: Part of the Multi Conf. on Computer Science and Information Systems 2023, Kommers, P., Macedo, M., Peng, G. C., and Abraham, A., Ed., Porto, Portugal, IADIS Press, 2023, pp. 191-198
@inproceedings{sarwar2023_1731965080646, author = "Sarwar, F. and Garrido, N. and Sebastião, P. and Rehan, A.", title = "Examination of unremitting kidney illness by utilizing machine learning classifiers", booktitle = "International Conferences on ICT, Society and Human Beings 2023, e-Health 2023, Connected Smart Cities 2023, and Big Data Analytics, Data Mining and Computational Intelligence 2023: Part of the Multi Conference on Computer Science and Information Systems 2023", year = "2023", editor = "Kommers, P., Macedo, M., Peng, G. C., and Abraham, A.", volume = "", number = "", series = "", doi = "10.33965/MCCSIS2023_202305L022", pages = "191-198", publisher = "IADIS Press", address = "Porto, Portugal", organization = "IADIS", url = "https://www.iadisportal.org/digital-library/iadis-international-conference-e-health-2023-part-of-mccsis-2023" }
TY - CPAPER TI - Examination of unremitting kidney illness by utilizing machine learning classifiers T2 - International Conferences on ICT, Society and Human Beings 2023, e-Health 2023, Connected Smart Cities 2023, and Big Data Analytics, Data Mining and Computational Intelligence 2023: Part of the Multi Conference on Computer Science and Information Systems 2023 AU - Sarwar, F. AU - Garrido, N. AU - Sebastião, P. AU - Rehan, A. PY - 2023 SP - 191-198 DO - 10.33965/MCCSIS2023_202305L022 CY - Porto, Portugal UR - https://www.iadisportal.org/digital-library/iadis-international-conference-e-health-2023-part-of-mccsis-2023 AB - Chronic kidney disease is a rising health issue that affects millions of people worldwide. Early detection and characterization of this disease is essential for effective management and control. This disease is associated with several serious health risks, such as cardiovascular disease, increased risk of stroke, and end-stage renal disease, which can be effectively prevented by early detection and treatment. Medical scientists rely on machine learning algorithms to diagnose the disease accurately at its outset. Recently, adding value to healthcare is being accomplished through the integration of machine learning algorithms into mobile health solution. Considering this, this paper proposes a predictive model of three machine learning classifiers, including Support Vector Machine, Decision Tree, and Multilayer Perceptron for chronic kidney disease prediction. The performance of the model was assessed using confusion matrix and executed in popular machine learning software tools such as WEKA and Rapid Minor. The study found that support vector machine yielded the highest accuracy rate of 98% in predicting chronic kidney disease in WEKA among other standard classifiers by using 10-fold cross validation. In addition, the proposed prediction model has been compared with existing models in terms of accuracy, sensitivity, and specificity. The experimental results indicate that the proposed predictive model shows promising results. These findings could integrate with the development of mobile health solution and other innovative approaches to prevent and treat this debilitating condition. ER -