Background: Lung disease quantification via medical image analysis is classically difficult. We propose a method based on normalized nearest neighborhood distance classifications for comparing individual CT scan air-trapping distributions (representing 3D segmented parenchyma). Previously, between-image comparisons were precluded by the variation inherent to parenchyma segmentations, the dimensions of which are patient- and image-specific by nature.Method: Nearest neighbor distance estimations are normalized by a theoretical distance according to the uniform distribution of air trapping. This normalization renders images (of different sizes, shapes, and/or densities) comparable. The estimated distances for the k-nearest neighbor describe th...
Lung cancer (LC) is leading in the number of deaths among the other types of cancer. According to th...
Objective: This study was designed to develop an automated system for quantification of various regi...
In clinical lung radiology, primary cancer, metastatic disease, and parenchymal diseases such as emp...
Background: Lung disease quantification via medical image analysis is classically difficult. We prop...
A good problem representation is important for a pattern re ognition system to be su essful. The tr...
Detailed pulmonary airway segmentation is a clinically important task for endobronchial intervention...
Parametric response mapping (PRM) of paired CT lung images has been shown to improve the phenotyping...
Accurate lung tumor segmentation is problematic when the tumor boundary or edge, which reflects the ...
Analysis of cancer and other pathological diseases, like the interstitial lung diseases (ILDs), is u...
Asthma is a complex respiratory disease characterised by spatial ventilation heterogeneity (VH) in t...
Copyright © 2013 B. Liu and A. Raj. This is an open access article distributed under the Creative Co...
L'analyse quantitative des lésions pulmonaires en imagerie thoracique tomodensitométrique est désorm...
There is a significant demand in matching CT datasets of the lung. The increasing number of CT slice...
PURPOSE: Computed tomography (CT) is an effective method for detecting and characterizing lung nodul...
Abstract. This paper proposes an inference method well-suited to large sets of medical images. The m...
Lung cancer (LC) is leading in the number of deaths among the other types of cancer. According to th...
Objective: This study was designed to develop an automated system for quantification of various regi...
In clinical lung radiology, primary cancer, metastatic disease, and parenchymal diseases such as emp...
Background: Lung disease quantification via medical image analysis is classically difficult. We prop...
A good problem representation is important for a pattern re ognition system to be su essful. The tr...
Detailed pulmonary airway segmentation is a clinically important task for endobronchial intervention...
Parametric response mapping (PRM) of paired CT lung images has been shown to improve the phenotyping...
Accurate lung tumor segmentation is problematic when the tumor boundary or edge, which reflects the ...
Analysis of cancer and other pathological diseases, like the interstitial lung diseases (ILDs), is u...
Asthma is a complex respiratory disease characterised by spatial ventilation heterogeneity (VH) in t...
Copyright © 2013 B. Liu and A. Raj. This is an open access article distributed under the Creative Co...
L'analyse quantitative des lésions pulmonaires en imagerie thoracique tomodensitométrique est désorm...
There is a significant demand in matching CT datasets of the lung. The increasing number of CT slice...
PURPOSE: Computed tomography (CT) is an effective method for detecting and characterizing lung nodul...
Abstract. This paper proposes an inference method well-suited to large sets of medical images. The m...
Lung cancer (LC) is leading in the number of deaths among the other types of cancer. According to th...
Objective: This study was designed to develop an automated system for quantification of various regi...
In clinical lung radiology, primary cancer, metastatic disease, and parenchymal diseases such as emp...