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Prediction of diabetic retinopathy using health records with machine learning classifiers and data Science

Sumathy, B. and Chakrabarty, Arindam and Gupta, Sandeep and Hishan, Sanil S. and Raj, Bhavana and Gulati, Kamal and Dhiman, Gaurav (2022) Prediction of diabetic retinopathy using health records with machine learning classifiers and data Science. International Journal of Reliable and Quality E-Healthcare, 11 (2). n/a. ISSN 2160-9551

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Official URL: http://dx.doi.org/10.4018/IJRQEH.299959

Abstract

Diabetes is a rapidly spreading disease. It occurs when the pancreas produces insufficient insulin or the body cannot utilise it effectively. Diabetic retinopathy (DR) and blindness are two major issues for diabetics. Diabetes patients increase the amount of data collected about DR. To extract important information and undiscovered knowledge from data, data mining techniques are required. DM is necessary in DR to improve society's health. The study focuses on the early detection of diabetic retinopathy using patient information. DM approaches are used to extract information from these numeric records. The dataset was used to forecast DR using logistic regression, KNN, SVM, bagged tree, and boosted tree classifiers. Two cross-validations are used to find the best features and avoid overfitting. The dataset includes 900 diabetes patients. The boosted tree produced the best classification accuracy (90.1%) with 10% hold-out validation. KNN also achieved 88.9% accuracy, which is impressive. As a result, the research suggests that bagged trees and KNN are good classifiers for DR.

Item Type:Article
Uncontrolled Keywords:bagged tree, boosted tree, cross validation
Subjects:H Social Sciences > HB Economic Theory > HB615-715 Entrepreneurship. Risk and uncertainty. Property
Divisions:International Business School
ID Code:101400
Deposited By: Narimah Nawil
Deposited On:14 Jun 2023 10:02
Last Modified:14 Jun 2023 10:02

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