Mohammad Yazid Bastomi (2020) Deteksi Tuberkulosis Menggunakan Citra X-Ray Berbasis Gray Level Cooccurance Matrices (GLCM) Dan K-Nearest Neighbor (KNN). Skripsi thesis, UNIVERSITAS AIRLANGGA.
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Abstract
Tuberculosis is an infectious disease caused by a bacterium called bacillus mycobacterium tuberculosis. Tuberculosis is spread through coughing and sneezing which affects the lungs of people infected with pulmonary tuberculosis. One of the method is using the thorax image. However, the accuracy without standard is the problem in this topic. It’s caused by the analysis result depen on the ability of the medical experts only. In this study, a Tuberculosis detection program was designed using the k-nearest neighbor classification method and GLCM features as classification input. So that the detection program was expected to be a tool for medical experts who had standardized accuracy. The GLCM features were to input the k-nearest neighbor classification those are contrast, correlation, energy, entropy, and homogeneity. The program output was divided into 2 classes namely abnormal (tuberculosis) and normal. The combination of entropy-correlation and entropy-energy-correlation features by optimal level of accuracy, sensitivity and specificity showed a value of k=1 that is 92%, 92%, 92%.
Item Type: | Thesis (Skripsi) | |||||||||
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Additional Information: | KKC KK MPF.26-20 Bas d | |||||||||
Uncontrolled Keywords: | tuberculosis, GLCM, k-nearest neighbour (KNN) | |||||||||
Subjects: | Q Science > QD Chemistry > QD450-801 Physical and theoretical chemistry R Medicine > RC Internal medicine > RC306-320.5 Tuberculosis |
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Divisions: | 08. Fakultas Sains dan Teknologi > Fisika | |||||||||
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Depositing User: | Tatik Poedjijarti | |||||||||
Date Deposited: | 07 Jan 2021 00:00 | |||||||||
Last Modified: | 07 Jan 2021 00:00 | |||||||||
URI: | http://repository.unair.ac.id/id/eprint/102648 | |||||||||
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