Sistem Deteksi Penyakit Pengeroposan Tulang Dengan Metode Jaringan Syaraf Tiruan Backpropagation Dan Representasi Ciri Dalam Ruang Eigen
Journal: Communication and Information Technology Journal (Vol.2, No. 1)Publication Date: 2008-05-29
Authors : Is Mardianto; Dian Pratiwi;
Page : 69-80
Keywords : osteoporosis; image processing; PCA; artificial neural networks;
Abstract
There are various ways to detect osteoporosis disease (bone loss). One of them is by observing the osteoporosis image through rontgen picture or X-ray. Then, it is analyzed manually by Rheumatology experts. Article present the creation of a system which could detect osteoporosis disease on human, by implementing the Rheumatology principles. The main areas identified were between wrist and hand fingers. The working system in this software included 3 important processing, which were process of basic image processing, pixel reduction process, pixel reduction, and artificial neural networks. Initially, the color of digital X-ray image (30 x 30 pixels) was converted from RGB to grayscale. Then, it was threshold and its gray level value was taken. These values then were normalized to an interval [0.1, 0.9], then reduced using a PCA (Principal Component Analysis) method. The results were used as input on the process of Backpropagation artificial neural networks to detect the disease analysis of X-ray being inputted. It can be concluded that from the testing result, with a learning rate of 0.7 and momentum of 0.4, this system had a success rate of 73 to 100 percent for the non-learning data testing, and 100 percent for learning data.
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