Tehran University of Medical Sciences

Science Communicator Platform

Stay connected! Follow us on X network (Twitter):
Share this content! By
Lung Segmentation Using Active Shape Model to Detect the Disease From Chest Radiography Publisher



Giv MD1 ; Borujeini MH2 ; Makrani DS3 ; Dastranj L4 ; Yadollahi M5 ; Semyari S6 ; Sadrnia M7 ; Ataei G8 ; Madvar HR9
Authors

Source: Journal of Biomedical Physics and Engineering Published:2021


Abstract

Background: Some parametric models are used to diagnose problems of lung segmentation more easily and effectively. Objective: The present study aims to detect lung diseases (nodules and tuberculo-sis) better using an active shape model (ASM) from chest radiographs. Material and Methods: In this analytical study, six grouping methods, including three primary methods such as physicians, Dice similarity, and correlation coefficients) and also three secondary methods using SVM (Support Vector Machine) were used to classify the chest radiographs regarding diaphragm congestion and heart reshaping. The most effective method, based on the evaluation of the results by a radi-ologist, was found and used as input data for segmenting the images by active shape model (ASM). Several segmentation parameters were evaluated to calculate the ac-curacy of segmentation. This work was conducted on JSRT (Japanese Society of Ra-diological Technology) database images and tuberculosis database images were used for validation. Results: The results indicated that the ASM can detect 94.12 ± 2.34 % and 94.38 ± 3.74 % (mean± standard deviation) of pulmonary nodules in left and right lungs, respectively, from the JRST radiology datasets. Furthermore, the ASM model detected 88.33 ± 6.72 % and 90.37 ± 5.48 % of tuberculosis in left and right lungs, respectively. Conclusion: The ASM segmentation method combined with pre-segmentation grouping can be used as a preliminary step to identify areas with tuberculosis or pulmonary nodules. In addition, this presented approach can be used to measure the size and dimensions of the heart in future studies. © 2021, Shriaz University of Medical Sciences. All rights reserved.
Other Related Docs
5. Localized-Atlas-Based Segmentation of Breast Mri in a Decision-Making Framework, Australasian Physical and Engineering Sciences in Medicine (2017)
6. Automatic Diagnosis of Disc Herniation in Two-Dimensional Mr Images With Combination of Distinct Features Using Machine Learning Methods, 2019 Scientific Meeting on Electrical-Electronics and Biomedical Engineering and Computer Science# EBBT 2019 (2019)
7. Breast-Region Segmentation in Mri Using Chest Region Atlas and Svm, Turkish Journal of Electrical Engineering and Computer Sciences (2017)
10. Lymphovascular Invasion Prediction in Lung Cancer Using Multi-Segmentation Pet Radiomics and Multi-Machine Learning Algorithms, 2021 IEEE Nuclear Science Symposium and Medical Imaging Conference Record# NSS/MIC 2021 and 28th International Symposium on Room-Temperature Semiconductor Detectors# RTSD 2022 (2021)