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  Published Paper Details:

  Paper Title

MACHINE LEARNING BASED EARLY DETECTION OF KIDNEY DISEASE USING ECG SIGNALS

  Authors

  Grandhi Lakshmi Prasanna,  Thyagarajan Prasad

  Keywords

Machine learning, Kidney disease, ECG signals, CRS, CKD

  Abstract


This research article introduces the idea of detecting the presence of kidney disease through machine learning based classification modelling, by processing the patient�s ECG signal. Recent studies and on-going researches have showed that patients undergoing kidney problems start developing cardiac problems-known as the Cardio Renal Syndrome (CRS) which can lead to a sudden cardiac arrest in the last stages of their disease. Since cardio-vascular diseases and the chronic kidney disease is inter- related, this model can be used for patients undergoing cardio-vascular problems to determine whether their kidneys have been effected or not. If the Chronic Kidney Disease (CKD) can be diagnosed at an earlier stage, it may give the patient some time to help reverse the disease or at least slow its progression by taking necessary medical steps. For this model, digitized ECG data was collected from open access databases such as PTB (kidney patients) and Fantasia ( healthy people) from Physionet Database (www.physionet.org) and model was later validated using different data from the same online database.The validation process gave satisfactory results, as the model could successfully classify the users from being healthy or a kidney patient. In our study, we found an accuracy level of 97.6% which was the highest using both features QT and RR interval, in comparison to the accuracy that was found when either one of the features was used.

  IJCRT's Publication Details

  Unique Identification Number - IJCRT2011081

  Paper ID - 200676

  Page Number(s) - 747-754

  Pubished in - Volume 8 | Issue 11 | November 2020

  DOI (Digital Object Identifier) -   

  Publisher Name - IJCRT | www.ijcrt.org | ISSN : 2320-2882

  E-ISSN Number - 2320-2882

  Cite this article

  Grandhi Lakshmi Prasanna,  Thyagarajan Prasad,   "MACHINE LEARNING BASED EARLY DETECTION OF KIDNEY DISEASE USING ECG SIGNALS ", International Journal of Creative Research Thoughts (IJCRT), ISSN:2320-2882, Volume.8, Issue 11, pp.747-754, November 2020, Available at :http://www.ijcrt.org/papers/IJCRT2011081.pdf

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ISSN: 2320-2882
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Journal Starting Year (ESTD) : 2013
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ISSN and 7.97 Impact Factor Details


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ISSN: 2320-2882
Impact Factor: 7.97 and ISSN APPROVED
Journal Starting Year (ESTD) : 2013
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