Submit your paper : editorIJETjournal@gmail.com Paper Title : A MACHINE LEARNING APPROCH FOR PREDICTING CHRONIC KIDNEY DISEASE ISSN : 2395-1303 Year of Publication : 2022 10.5281/zenodo.6894670 MLA Style: - C. JAYALAXMI, CHENNA, AKSHAY KUMAR, MOHAMMED MUQTAR, SANGEM SAI SOURABH, VARDHAN SOMARAM, A MACHINE LEARNING APPROCH FOR PREDICTING CHRONIC KIDNEY DISEASE , Volume 8 - Issue 4 July- August 2022 International Journal of Engineering and Techniques (IJET) ,ISSN:2395-1303 , www.ijetjournal.org APA Style: - C. JAYALAXMI, CHENNA, AKSHAY KUMAR, MOHAMMED MUQTAR, SANGEM SAI SOURABH, VARDHAN SOMARAM, A MACHINE LEARNING APPROCH FOR PREDICTING CHRONIC KIDNEY DISEASE , Volume 8 - Issue 4 July- August 2022 International Journal of Engineering and Techniques (IJET) ,ISSN:2395-1303 , www.ijetjournal.org Abstract Chronic kidney disease (CKD) is a global health problem with high morbidity and mortality rate, and it induces other diseases. Since there are no obvious symptoms during the early stages of CKD, patients often fail to notice the disease. Early detection of CKD enables patients to receive timely treatment to ameliorate the progression of this disease. Machine learning models can effectively aid clinicians achieve this goal due to their fast and accurate recognition performance. In this study, we propose a machine learning methodology for diagnosing CKD. The CKD dataset was obtained from the University of California Irvine (UCI) machine learning repository, which has a large number of missing values. KNN imputation was used to fill in the missing values, which selects several complete samples with the most similar measurements to process the missing data for each incomplete sample. Missing values are usually seen in real-life medical situations because patients may miss some measurements for various reasons. After effectively filling out the incomplete data set, six machine learning algorithms (logistic regression, random forest, support vector machine-nearest neighbor, naïve Bayes classier and feed forward neural network) were used to establish models. Among these machine learning models, random forest achieved the best performance with 99.75% diagnosis accuracy. By analyzing the misjudgments generated by the established models, we proposed an integrated model that uses random forest algorithm which could achieve an average accuracy of 99.83% after ten times of simulation. Hence, we speculated that this methodology could be applicable to more complicated clinical data for disease diagnosis. Reference 1.Z.Chenetal.,“Diagnosis of patients with chronic kidney disease by using is feasible in terms of data imputation and samples diagnosis. After unsupervised imputation of missing values in the data set by using KNN imputation, the integrated model could achieve a satisfactory accuracy. Hence, we speculate that applying this methodology to the practical diagnosis of CKD would achieve a desirable effect. In addition, this methodology might be applicable to the clinical data of the other diseases in actual medical diagnosis. twofuzzyclassifiers,”Chemometr.Intell.Lab .,vol.153,pp.140-145,Apr. 2016. 2.A. Subasi, E. Alickovic, J. Kevric, “Diagnosis of chronic kidney disease by using random forest,” in Proc. Int. Conf. Medical and Biological Engineering, Mar. 2017, pp. 589-594. 3.L. Zhang et al., “Prevalence of chronic kidney disease in china: a crosssectional survey,” Lancet, vol. 379, pp. 815-822, Aug. 2012. 4.A. Singhetal. “Incorporating temporal HER data in predictive models for risk stratification of renal function deterioration,” J. Biomed. Inform., vol. 53, pp. 220-228, Feb. 2015. 5.A. M. Cueto-Manzano et al., “Prevalence of chronic kidney disease in an adultpopulation,”Arch.Med.Res.,vol.45,no .6,pp.507-513,Aug.2014. 6.H.Polat,H.D.Mehr,A.Cetin,“Diagnosis of chronic kidney disease based on support vector machine by feature selection methods,” J. Med. Syst., vol. 41, no. 4, Apr. 2017. 7.C. Barbieri et al., “A new machine learning approach for predicting the response to anemia treatment in a large cohort of end stage renal disease patient sunder going dialysis,”Comput. Biol. Med.,vol.61,pp.56-61,Jun. 2015. 8.V. Papademetriou et al., “chronic kidney disease, basal insulin glargine, and health outcomes in people with dysglycemia: The origin study,” Am. J. Med., vol. 130, no. 12, Dec. 2017. 9.N. R. Hill et al., “Global prevalence of chronic kidney disease - A systematic review and meta-analysis,” Plos One, vol. 11, no. 7, Jul. 2016. 10. M. M. Hossainetal., “Mechanical anisotropy assessment in kidney cortex using ARFI peak displacement: Preclinical validation and pilot in vivo Keywords - A MACHINE LEARNING APPROCH FOR PREDICTING CHRONIC KIDNEY DISEASE |