Lung disease risk stratification is important for both diagnosis and treatment planning, particularly in biopsies and radiation therapy. Manual lung disease risk stratification is challenging because of: (a) large lung data sizes, (b) inter- and intra-observer variability of the lung delineation and (c) lack of feature amalgamation during machine learning paradigm. This paper presents a two stage CADx cascaded system consisting of: (a) semi-automated lung delineation subsystem (LDS) for lung region extraction in CT slices followed by (b) morphology-based lung tissue characterization, thereby addressing the above shortcomings. LDS primarily uses entropy-based region extraction while ML-based lung characterization is mainly based on an amalga...
Abstract. Regional assessment of lung disease (such as chronic obstructive pul-monary disease) is a ...
National audienceInfiltrative lung diseases enclose a large group of rreversible lung disorders whic...
In this paper, we compare five common classifier families in their ability to categorize six lung ti...
Lung disease risk stratification is important for both diagnosis and treatment planning, particularl...
Medical diagnosis is extremely important but complicated task that should be performed accurately an...
International audienceThe infiltrative lung diseases are a class of irreversible, non-neoplastic lun...
Lung disease classification is an important stage in implementing a Computer Aided Diagnosis (CADx) ...
Lung disease classification is an important stage in implementing a Computer Aided Diagnosis (CADx) ...
Objective: This study was designed to develop an automated system for quan-tification of various reg...
INTRODUCTION: The World Health Organization estimates that by 2030 the Chronic Obstructive Pulmonary...
International audienceThe infiltrative lung diseases are a class of irreversible, non-neoplastic lun...
A novel method to detect and classify several classes of diseased and healthy lung tissue in CT (Com...
The amount of imaging information produced by today’s High-Resolution CT (HRCT) scanners is beyond t...
The general objective of the thesis is automation of the analysis of the pathological lung from CT ...
In this paper, we compare five common classifier families in their ability to categorize six lung ti...
Abstract. Regional assessment of lung disease (such as chronic obstructive pul-monary disease) is a ...
National audienceInfiltrative lung diseases enclose a large group of rreversible lung disorders whic...
In this paper, we compare five common classifier families in their ability to categorize six lung ti...
Lung disease risk stratification is important for both diagnosis and treatment planning, particularl...
Medical diagnosis is extremely important but complicated task that should be performed accurately an...
International audienceThe infiltrative lung diseases are a class of irreversible, non-neoplastic lun...
Lung disease classification is an important stage in implementing a Computer Aided Diagnosis (CADx) ...
Lung disease classification is an important stage in implementing a Computer Aided Diagnosis (CADx) ...
Objective: This study was designed to develop an automated system for quan-tification of various reg...
INTRODUCTION: The World Health Organization estimates that by 2030 the Chronic Obstructive Pulmonary...
International audienceThe infiltrative lung diseases are a class of irreversible, non-neoplastic lun...
A novel method to detect and classify several classes of diseased and healthy lung tissue in CT (Com...
The amount of imaging information produced by today’s High-Resolution CT (HRCT) scanners is beyond t...
The general objective of the thesis is automation of the analysis of the pathological lung from CT ...
In this paper, we compare five common classifier families in their ability to categorize six lung ti...
Abstract. Regional assessment of lung disease (such as chronic obstructive pul-monary disease) is a ...
National audienceInfiltrative lung diseases enclose a large group of rreversible lung disorders whic...
In this paper, we compare five common classifier families in their ability to categorize six lung ti...