Histopathological analysis of whole-slide images is one of the most widely used techniques for diagnosis of lung cancers. In this study, a fully automated pipeline was developed to detect cancer from histopathology slides of lung tissue. We obtained 1067 histopathology images of lung adenocarcinoma and 1060 images of squamous cell carcinoma from the legacy archive of The Cancer Genome Atlas (TCGA) dataset and used them to test the proposed methodology. At preprocessing step, we trained a classi cation model to detect clinically relevant patches of images using statistical measurements. In the next step, cells and nuclei of the cells were segmented and various texture and morphology features were extracted from images and segmented objects. ...
Information technologies based on ML with quantitative imaging and texts are playing an essential ro...
Lung cancer is one of the dangerous disease which causes cancer deaths in the world. A cancer is an ...
This thesis presents computational pathology algorithms for enabling early cancer detection in Barre...
Histopathological analysis of whole-slide images is one of the most widely used techniques for diagn...
Histology is the backbone in the diagnosis and prognosis pipeline of most types of cancer, especiall...
This is the challenge design document for the "Automatic Lung Cancer Detection and Classification in...
Breast cancer is the main death rate from malignant growth worldwide and the most frequently diagnos...
Treating cancer in the early stages can provide more treatment options, less invasive surgery, and i...
In digital pathology, analysis of histopathological images is mainly time-consuming manual labor and...
Cancer is one of the leading death causes in the world, specifically, lung cancer. According to theW...
Cancer refers to a group of diseases characterized by an uncontrolled proliferation of cells with un...
In digital pathology, analysis of histopathological images is mainly time-consuming manual labor and...
AbstractThe goal of this challenge 1 was to evaluate new and existing algorithms for automated detec...
Medical image analysis in digital histopathology is a currently expanding and exciting field of scie...
Adenocarcinoma (LUAD) and squamous cell carcinoma (LUSC) are the most common forms of lung cancer. T...
Information technologies based on ML with quantitative imaging and texts are playing an essential ro...
Lung cancer is one of the dangerous disease which causes cancer deaths in the world. A cancer is an ...
This thesis presents computational pathology algorithms for enabling early cancer detection in Barre...
Histopathological analysis of whole-slide images is one of the most widely used techniques for diagn...
Histology is the backbone in the diagnosis and prognosis pipeline of most types of cancer, especiall...
This is the challenge design document for the "Automatic Lung Cancer Detection and Classification in...
Breast cancer is the main death rate from malignant growth worldwide and the most frequently diagnos...
Treating cancer in the early stages can provide more treatment options, less invasive surgery, and i...
In digital pathology, analysis of histopathological images is mainly time-consuming manual labor and...
Cancer is one of the leading death causes in the world, specifically, lung cancer. According to theW...
Cancer refers to a group of diseases characterized by an uncontrolled proliferation of cells with un...
In digital pathology, analysis of histopathological images is mainly time-consuming manual labor and...
AbstractThe goal of this challenge 1 was to evaluate new and existing algorithms for automated detec...
Medical image analysis in digital histopathology is a currently expanding and exciting field of scie...
Adenocarcinoma (LUAD) and squamous cell carcinoma (LUSC) are the most common forms of lung cancer. T...
Information technologies based on ML with quantitative imaging and texts are playing an essential ro...
Lung cancer is one of the dangerous disease which causes cancer deaths in the world. A cancer is an ...
This thesis presents computational pathology algorithms for enabling early cancer detection in Barre...