Identification of Retinoblastoma Using Backpropagation Neural Network
Date
2019Author
Andayani1, U
Siregar1, B
Sandri1, Widya Eka
Muchtar1, M A
Syahputra1, M F
Fahmi
Nasution, T H
Metadata
Show full item recordAbstract
Retinoblastoma (eye cancer) is an eye disease that is usually suffered by children that
attack the thin nerve tissue behind the eyes (the part which is sensitive to light). Retinoblastoma
can attack one or both eyes and it is a type of disease that can be caused by a genetic mutation
called Retinoblastoma1 (RB1). On manual physical examination using ophthalmoscopy by a
doctor or an expert there is a yellowish white / white cancer on the fundus that is often caused
by the vascularization. That is why it needs a method that can be done to identify retinoblastoma
disease through retinal fundus images automatically. In this research the method used is
Backpropagation Neural Network using input of retinal fundus image. The stages which is done
to identify retinoblastoma disease are image processing (resize, grey scaling, morphological
close operation, and optic disk elimination), feature extraction using Grey Level Co-occurrence
Matrix method and then classification using backpropagation neural network. After testing on
the system in this research, it was concluded that the method used is able to identify
retinoblastoma disease with accuracy 90%.