Deteksi Diabetik Retinopati menggunakan Regresi Logistik


Raras Tyasnurita(1*); Adhi Yoga Muris Pamungkas(2);

(1) Institut Teknologi Sepuluh
(2) Institut Teknologi Sepuluh
(*) Corresponding Author

  

Abstract


Retinopathy diabetic is a disease caused by diabetes mellitus complications that can cause damage to the retina of the eye. It has a direct impact on the disruption of the vision of the patient. Detecting this disease is very important to prevent total blindness on diabetes mellitus patients. One method to do the detection is by using machine learning. This research uses feature extraction data from an image that contains signs of retinopathy diabetic or not. In this research, we focus on retinopathy diabetic classification. We applied logistic regression algorithm for classification. There is four training condition in a machine learning model: using the default parameter, feature standardization, feature selection, and hyper-parameter tuning. The model used a regularization control (C) value of 11.288, iterations 200, and a regularization penalty (l1). The experimental results show that this proposed model with full features produced 80,17% accuracy in data validation.

Keywords


Retinopathy diabetic; Logistic regression; Classification; Machine learning

  
  

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doi  https://doi.org/10.33096/ilkom.v12i2.578.130-135
  

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