Purpose: Tumour heterogeneity is an important prognostic factor, as high intra-tumour heterogeneity showed to be associated with higher tumour grades. However, its assessment is still mostly accomplished subjectively through visual procedure. This work presents an automatic approach to classify the heterogeneity levels in lung tumour as performed through visual analysis. Methods and Materials: 40 datasets referring to 13 patients (age range 36-81 years) with NSCLC, who underwent axial DCE-CT, were considered. Two 25-year experienced Readers chose the most representative slices in the DCE-CT sequences, outlined each lesion and its most significant regions. Then, each slice was assigned a class, according to a proper taxonomy for heterogeneit...
Objectives: Malignant tumours consist of biologically heterogeneous components; identifying and stra...
[[abstract]]RATIONALE AND OBJECTIVES: Using low-dose computed tomography (LDCT), small and heterogen...
PURPOSE: To assess the clinical relevance of a semiautomatic CT-based ensemble segmentation method, ...
Purpose: Tumour heterogeneity is an important prognostic factor, as high intra-tumour heterogeneity ...
Visual analysis still represents the gold-standard for CT image interpretation, conveying crucial in...
none2noComputed Tomography (CT) technologies have been considered for a long time one of the most ef...
We propose an approach for characterizing structural heterogeneity of lung cancer nodules using Comp...
Lung cancer (LC) is leading in the number of deaths among the other types of cancer. According to th...
Purpose: In clinical routine the effectiveness of therapy in treatment of lung tumours mainly relies...
Lung tumors are heterogeneous entities consisting of distinct intra-tumor regions with different bio...
Histology is the backbone in the diagnosis and prognosis pipeline of most types of cancer, especiall...
In clinical lung radiology, primary cancer, metastatic disease, and parenchymal diseases such as emp...
Objective: This study was designed to develop an automated system for quan-tification of various reg...
Background: To develop and validate a contrast-enhanced CT based classification tree model for class...
The presence of tumour heterogeneity makes the clinical oncological practice very challenging, since...
Objectives: Malignant tumours consist of biologically heterogeneous components; identifying and stra...
[[abstract]]RATIONALE AND OBJECTIVES: Using low-dose computed tomography (LDCT), small and heterogen...
PURPOSE: To assess the clinical relevance of a semiautomatic CT-based ensemble segmentation method, ...
Purpose: Tumour heterogeneity is an important prognostic factor, as high intra-tumour heterogeneity ...
Visual analysis still represents the gold-standard for CT image interpretation, conveying crucial in...
none2noComputed Tomography (CT) technologies have been considered for a long time one of the most ef...
We propose an approach for characterizing structural heterogeneity of lung cancer nodules using Comp...
Lung cancer (LC) is leading in the number of deaths among the other types of cancer. According to th...
Purpose: In clinical routine the effectiveness of therapy in treatment of lung tumours mainly relies...
Lung tumors are heterogeneous entities consisting of distinct intra-tumor regions with different bio...
Histology is the backbone in the diagnosis and prognosis pipeline of most types of cancer, especiall...
In clinical lung radiology, primary cancer, metastatic disease, and parenchymal diseases such as emp...
Objective: This study was designed to develop an automated system for quan-tification of various reg...
Background: To develop and validate a contrast-enhanced CT based classification tree model for class...
The presence of tumour heterogeneity makes the clinical oncological practice very challenging, since...
Objectives: Malignant tumours consist of biologically heterogeneous components; identifying and stra...
[[abstract]]RATIONALE AND OBJECTIVES: Using low-dose computed tomography (LDCT), small and heterogen...
PURPOSE: To assess the clinical relevance of a semiautomatic CT-based ensemble segmentation method, ...