This paper proposes a development of automatic rib sequence labeling systems on chest computed tomography (CT) images with two suggested methods and three-dimensional (3D) region growing. In clinical practice, radiologists usually define anatomical terms of location depending on the rib’s number. Thus, with the manual process of labeling 12 pairs of ribs and counting their sequence, it is necessary to refer to the annotations every time the radiologists read chest CT. However, the process is tedious, repetitive, and time-consuming as the demand for chest CT-based medical readings has increased. To handle the task efficiently, we proposed an automatic rib sequence labeling system and implemented comparison analysis on two methods. With 50 co...
Chest radiography is one of the most widely used diagnostic methods in hospitals, but it is difficul...
Background and Objectives: Bedside chest radiographs (CXRs) are challenging to interpret but impor-t...
When mining image data from PACs or clinical trials or processing large volumes of data without cura...
This paper deals with rib segmentation in thoracic CT data. For the segmentation method of rib cente...
This thesis deals with design and implementation of an algorithm for segmentation of ribs from thora...
Abstract--We describe a system of computer algorithms that finds the rib cage in chest radiographs. ...
In this paper, an automatic rib recognition method based on image processing and data mining is pres...
Manual rib inspections in computed tomography (CT) scans are clinically critical but labor-intensive...
AbstractThis paper presents an automated and comprehensive system for eliminating rib shadows in che...
This paper investigates using rib-bone atlases for automatic detection of rib-bones in chest X-rays ...
Abstract—When lung nodules overlap with ribs or clavicles in chest radiographs, it can be difficult ...
In this paper, a fully automatic method is proposed to detect the ribs in 3D MRI. The purpose of the...
Rib Fractures are one of the most common bone injuries that can occur. Over 3 million cases are diag...
We present a computer-aided diagnosis system (CADx) for the automatic categorization of solid, part-...
We describe a computational model for the ribcage anatomy seen in a posterior-anterior chest radiogr...
Chest radiography is one of the most widely used diagnostic methods in hospitals, but it is difficul...
Background and Objectives: Bedside chest radiographs (CXRs) are challenging to interpret but impor-t...
When mining image data from PACs or clinical trials or processing large volumes of data without cura...
This paper deals with rib segmentation in thoracic CT data. For the segmentation method of rib cente...
This thesis deals with design and implementation of an algorithm for segmentation of ribs from thora...
Abstract--We describe a system of computer algorithms that finds the rib cage in chest radiographs. ...
In this paper, an automatic rib recognition method based on image processing and data mining is pres...
Manual rib inspections in computed tomography (CT) scans are clinically critical but labor-intensive...
AbstractThis paper presents an automated and comprehensive system for eliminating rib shadows in che...
This paper investigates using rib-bone atlases for automatic detection of rib-bones in chest X-rays ...
Abstract—When lung nodules overlap with ribs or clavicles in chest radiographs, it can be difficult ...
In this paper, a fully automatic method is proposed to detect the ribs in 3D MRI. The purpose of the...
Rib Fractures are one of the most common bone injuries that can occur. Over 3 million cases are diag...
We present a computer-aided diagnosis system (CADx) for the automatic categorization of solid, part-...
We describe a computational model for the ribcage anatomy seen in a posterior-anterior chest radiogr...
Chest radiography is one of the most widely used diagnostic methods in hospitals, but it is difficul...
Background and Objectives: Bedside chest radiographs (CXRs) are challenging to interpret but impor-t...
When mining image data from PACs or clinical trials or processing large volumes of data without cura...