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A machine learning-based early diagnosis model for chronic kidney disease using SPegasos

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Abstract

Chronic Kidney Disease is now one of the most severe illnesses that requires an immediate diagnosis. Previous research has shown that machine-learning techniques are reliable enough for medical care. Clinicians and medical staff can detect disease on time thanks to significant results obtained from machine learning classifier algorithms. Furthermore, by utilizing unbalanced and small datasets of chronic kidney disease, this study provides medical system developers with insights to aid in the chronic kidney disease early prediction, reducing the effects of late diagnosis, particularly in low-income and difficult-to-reach areas. In this paper, a new machine learning-based early diagnosis model is presented for chronic kidney disease. Furthermore, we used the SMOTE technique to remove all noisy data from the two proposed datasets during data pre-processing. Finally, the WEKA tool is used to evaluate the performance of the proposed prediction model using machine learning algorithms.

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Notes

  1. https://www.kaggle.com/datasets/mansoordaku/ckdisease.

  2. https://www.alliancegenome.org/disease/DOID:784.

References

  • Bai Q, Su C, Tang W, Li Y (2022) Machine learning to predict end stage kidney disease in chronic kidney disease. Sci Rep 12(1):8377

    Article  Google Scholar 

  • Behera MP, Sarangi A, Mishra D, Sarangi SK (2023) A hybrid machine learning algorithm for Heart and Liver Disease Prediction using modified particle swarm optimization with support Vector Machine. Procedia Comput Sci 218:818–827

    Article  Google Scholar 

  • Cha’on U, Wongtrangan K, Thinkhamrop B, Tatiyanupanwong S, Limwattananon C, Pongskul C, Panaput T, Chalermwat C, Lert-Itthiporn W, Sharma A (2020) CKDNET, a quality improvement project for prevention and reduction of chronic kidney disease in the Northeast Thailand. BMC Public Health 20:1–11

    Article  Google Scholar 

  • Chang Y-P, Liao C-M, Wang L-H, Hu H-H, Lin C-M (2021) Static and dynamic prediction of chronic renal disease progression using longitudinal clinical data from Taiwan’s national prevention programs. J Clin Med 10(14):3085

    Article  Google Scholar 

  • Chaudhuri AK, Sinha D, Banerjee DK, Das A (2021) A novel enhanced decision tree model for detecting chronic kidney disease. Netw Model Anal Health Inf Bioinf 10:1–22

    Google Scholar 

  • Collaborators G (2018) A systematic analysis for the global burden of disease study 2017. Lancet 392(10159):1789–1858

    Article  Google Scholar 

  • Debal DA, Sitote TM (2022) Chronic kidney disease prediction using machine learning techniques. J Big Data 9(1):1–19

    Article  Google Scholar 

  • Garcia G, Harden P, Chapman J (2012) The global role of kidney transplantation kidney. Blood Press Res 35:299–304

    Article  Google Scholar 

  • Ian HW, Eibe F (2005) Data Mining: practical machine learning tools and techniques. In: Morgan Kaufmann

  • Kawakita S, Beaumont JL, Jucaud V, Everly MJ (2020) Personalized prediction of delayed graft function for recipients of deceased donor kidney transplants with machine learning. Sci Rep 10(1):18409

    Article  Google Scholar 

  • Liyanage T, Ninomiya T, Jha V, Neal B, Patrice HM, Okpechi I, Zhao M-h, Lv J, Garg AX, Knight J (2015) Worldwide access to treatment for end-stage kidney disease: a systematic review. Lancet 385(9981):1975–1982

    Article  Google Scholar 

  • Luo Y, Tang Z, Hu X, Lu S, Miao B, Hong S, Bai H, Sun C, Qiu J, Liang H (2020) Machine learning for the prediction of severe pneumonia during posttransplant hospitalization in recipients of a deceased-donor kidney transplant. Annals Translational Med, 8(4)

  • Nimmagadda SM, Agasthi SS, Shai A, Khandavalli DKR, Vatti JR (2023) Kidney Failure Detection and Predictive Analytics for ckd using machine learning procedures. Arch Comput Methods Eng 30(4):2341–2354

    Article  Google Scholar 

  • Organization WH, Canada PHA (2005) o. Preventing chronic diseases: a vital investment. World Health Organization

  • Peng B, Gong H, Tian H, Zhuang Q, Li J, Cheng K, Ming Y (2020) The study of the association between immune monitoring and pneumonia in kidney transplant recipients through machine learning models. J Translational Med 18(1):1–11

    Article  Google Scholar 

  • Rahmani AM, Babaei Z, Souri A (2021) Event-driven IoT architecture for data analysis of reliable healthcare application using complex event processing. Cluster Comput 24(2):1347–1360. https://doi.org/10.1007/s10586-020-03189-w

    Article  Google Scholar 

  • Sanmarchi F, Fanconi C, Golinelli D, Gori D, Hernandez-Boussard T, Capodici A (2023) Predict, diagnose, and treat chronic kidney disease with machine learning: a systematic literature review. J Nephrol, 1–17

  • Schroeder EB, Yang X, Thorp ML, Arnold BM, Tabano DC, Petrik AF, Smith DH, Platt RW, Johnson ES (2017) Predicting 5-year risk of RRT in stage 3 or 4 CKD: development and external validation. Clin J Am Soc Nephrology: CJASN 12(1):87

    Article  Google Scholar 

  • Shalev-Shwartz S, Singer Y, Srebro N (2007) Pegasos: Primal estimated sub-gradient solver for svm. Proceedings of the 24th international conference on Machine learning

  • Swain D, Mehta U, Bhatt A, Patel H, Patel K, Mehta D, Acharya B, Gerogiannis VC, Kanavos A, Manika S (2023) A robust chronic kidney Disease Classifier using machine learning. Electronics 12(1):212

    Article  Google Scholar 

  • Tangri N, Stevens LA, Griffith J, Tighiouart H, Djurdjev O, Naimark D, Levin A, Levey AS (2011) A predictive model for progression of chronic kidney disease to kidney failure. JAMA 305(15):1553–1559

    Article  Google Scholar 

  • Wu Y, Tang L, Li G, Zhang H, Jiang Z, Sedeh SS (2020) Self-care management importance in kidney illness: a comprehensive and systematic literature review. Netw Model Anal Health Inf Bioinf 9:1–13

    Google Scholar 

  • Yoo I, Alafaireet P, Marinov M, Pena-Hernandez K, Gopidi R, Chang J-F, Hua L (2012) Data mining in healthcare and biomedicine: a survey of the literature. J Med Syst 36:2431–2448

    Article  Google Scholar 

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Acknowledgements

This research is a revised and expanded version of a conference paper entitled “A Stochastic Gradient Support Vector Optimization Algorithm for Predicting Chronic Kidney Diseases” that presented at 2th International Conference on IoT and Health 2023 (IoTHIC-2023), Istanbul, Turkey and published in Book Series “Artificial Intelligence for Internet of Things (IoT) and Health Systems Operability” Springer.

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Correspondence to Monire Norouzi.

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Norouzi, M., Kahriman, E.A. A machine learning-based early diagnosis model for chronic kidney disease using SPegasos. Netw Model Anal Health Inform Bioinforma 13, 20 (2024). https://doi.org/10.1007/s13721-024-00457-2

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