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A predictive analysis of chronic kidney disease using machine learning

Citation

Abstract

Chronic kidney disease (CKD) is a determined disease condition having critical grimness and death rate that influences the whole grown-up populace brought about by either renal pathology or diminished renal capabilities. Early location and powerful treatments might have the option to end or diminish the growth of this constant condition to last stage, where dialysis or kidney transplantation is the main life-saving choice for patients. In this examination, we have investigated the opportunities for early chronic kidney disease expectation utilizing an assortment of machine learning algorithms. Here, a reasonable CKD dataset was taken from Tawam Clinic in AlAin city (Abu Dhabi, Joined Middle Easterner Emirates). We have proposed Support vector machine (SVM), Random forest algorithms (RF), Logistic regression (LR), Multinomial naive bayes (MNB), LSTM and contrasted their results with figure out the best exactness among the models. As a result, the models yielded outstandingly great order precision, with a LSTM exactness of 0.95 percent. The result of the review shows that improvements in machine learning (ML), with the assistance of prescient knowledge, comprise a reasonable climate for recognizing commonsense arrangements, which thus exhibit the prescient capacity in the space of renal illness and then some.

LC Subject Headings

Description

Cataloged from PDF version of thesis.
Includes bibliographical references (pages 26-28).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2022.

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Type

Thesis