APPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS

Tuberculosis, an infectious disease that generally attacks the lungs, has a significant impact on global health as the leading cause of death in the world after COVID-19 in 2022. One of the stages of examination for the diagnosis of tuberculosis is a chest x-ray examination. Several problems, suc...

Full description

Saved in:
Bibliographic Details
Main Author: Apriliyanti, Alya
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/86184
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:86184
spelling id-itb.:861842024-09-16T14:01:31ZAPPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS Apriliyanti, Alya Indonesia Final Project Tuberculosis, X-ray, Medical Image, Object Detection, Classification INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/86184 Tuberculosis, an infectious disease that generally attacks the lungs, has a significant impact on global health as the leading cause of death in the world after COVID-19 in 2022. One of the stages of examination for the diagnosis of tuberculosis is a chest x-ray examination. Several problems, such as irregular tuberculosis images on chest X-ray medical images, misinterpretation, and limited waiting time for examination, make increasing the efficiency of chest X-ray examinations, including in cases of tuberculosis, very much needed. AI (artificial intelligence) is one of the technologies that can solve various problems and increase efficiency in the health sector. Therefore, this final project will apply a classification and object detection model to detect tuberculosis cases in chest X-ray medical images. This detection system will receive chest medical images from X-rays. It will detect whether there is a case of tuberculosis in the lungs and then display the possible location of tuberculosis. The CNN architecture model used is EfficientNetB6 for image classification with new layers and YOLOv8x for object detection using the transfer learning method. Additional datasets from one of the hospitals in Bandung are used to train and test the model. The results of testing the model on the detection system show that the classification model can distinguish between medical images of chest X-rays in tuberculosis and regular with an accuracy value of around 95.86%. Meanwhile, the object detection model can detect the location of tuberculosis in the lungs with the limitation that the model can only detect large forms of tuberculosis (such as cloudy white spots or infiltration); it cannot detect forms of tuberculosis that are only in the form of nodules (small circles). The mAP value of the object detection model is 0.768. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Tuberculosis, an infectious disease that generally attacks the lungs, has a significant impact on global health as the leading cause of death in the world after COVID-19 in 2022. One of the stages of examination for the diagnosis of tuberculosis is a chest x-ray examination. Several problems, such as irregular tuberculosis images on chest X-ray medical images, misinterpretation, and limited waiting time for examination, make increasing the efficiency of chest X-ray examinations, including in cases of tuberculosis, very much needed. AI (artificial intelligence) is one of the technologies that can solve various problems and increase efficiency in the health sector. Therefore, this final project will apply a classification and object detection model to detect tuberculosis cases in chest X-ray medical images. This detection system will receive chest medical images from X-rays. It will detect whether there is a case of tuberculosis in the lungs and then display the possible location of tuberculosis. The CNN architecture model used is EfficientNetB6 for image classification with new layers and YOLOv8x for object detection using the transfer learning method. Additional datasets from one of the hospitals in Bandung are used to train and test the model. The results of testing the model on the detection system show that the classification model can distinguish between medical images of chest X-rays in tuberculosis and regular with an accuracy value of around 95.86%. Meanwhile, the object detection model can detect the location of tuberculosis in the lungs with the limitation that the model can only detect large forms of tuberculosis (such as cloudy white spots or infiltration); it cannot detect forms of tuberculosis that are only in the form of nodules (small circles). The mAP value of the object detection model is 0.768.
format Final Project
author Apriliyanti, Alya
spellingShingle Apriliyanti, Alya
APPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS
author_facet Apriliyanti, Alya
author_sort Apriliyanti, Alya
title APPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS
title_short APPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS
title_full APPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS
title_fullStr APPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS
title_full_unstemmed APPLICATION OF CLASSIFICATION AND OBJECT DETECTION FOR TUBERCULOSIS DETECTION IN CHEST X-RAYS
title_sort application of classification and object detection for tuberculosis detection in chest x-rays
url https://digilib.itb.ac.id/gdl/view/86184
_version_ 1822999459827548160