DEEP LEARNING ANALYSIS TECHNIQUES WITH DIFFERENT PHASES FOR CRITICAL KIDNEY DISEASE PREDICTIVE MODEL
Authors:
Dr. R. Murugadoss
Page No: 120-126
Abstract:
One of the most serious medical problems in the world, critical kidney disease (CKD) with a high incidence of death per capita. Cases sually fail to detect the complaint since there are no outward signs of ongoing kidney failure in its first stages. Pathology data vaccuity, machineliteracy usage in healthcare for bracket, and vaticination of complaint have all been more widespread. The SVM method, light GBM, and logistic retrogression are used to compare the results. cardiovascular disease (CVD) is the main cause of morbidity and death for dialysis users, hence managing this group should be a top priority. There are currently a number of therapies available to slow down the gradual loss of renal function and/or stop the onset of CVD. Low-protein diets, anaemia and calcium-phosphate problem treatment, blood pressure and proteinuria management, and quitting smoking are a few of them. Although prospective, controlled, randomised clinical studies are required to prove the clinical utility of other therapies, such as the administration of lipid-lowering medications, anti-inflammatory pharmaceuticals, and anti-oxidant agents, they are emerging as especially promising therapeutic approaches. Although early and frequent nephrology specialist treatment has been linked to lower morbidity and mortality, intervention in the conservative phase of CKD is anticipated to be more beneficial if carried out as early as possible in the course of the illness. Cases with HIV have an increased risk of developing CKD in a serious condition. Early diagnosis of CKD enables patients to get immediate treatment and prevents the problem from worsening. The employment of machine-literate methods for bracketing and vaticinating complaints in healthcare has become increasingly widespread due to the vacuity of pathology data. In this article, deep learning algorithms are used to provide the CKD bracket. The CKD stages are also computed for individuals who have been diagnosed with CKD and are based on the glomerular filtration rate. 97% of the complexity in differentiating CKD patients from HIV cases may be attributed to the DNN model
Description:
Chronic kidney disease; CKD stage recognition, Deep learning (DL), Vector Support Machine, KNN
Volume & Issue
Volume-12,ISSUE-9
Keywords
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