The main idea of this article is to provide a numerical diagnostic method for breast cancer diagnosis of the MRI images. To achieve this goal, we used the region's growth method to identify the target area. In the area's growth method, based on the similarity or homogeneity of the adjacent pixels, the image is subdivided into distinct areas according to the criteria used for homogeneity analysis to determine their belonging to the corresponding region. In this paper, we used manual methods and use of FCM as the function of genetic algorithm fitness. The presented algorithm is performed for 212 healthy and 110 patients. Results show that GA-FCM method have better performance than hand method to select initial points. The sensitivity of prese...
Abstract. The mammary pathology can manifest itself in multiple ways and originates spaceoccupying ...
Part 5: Computational Intelligence: BioInformaticsInternational audienceSeeded Region Growing algori...
Unsupervised segmentation techniques, which do not require labeled data for training and can be more...
Breast cancer is an important medical problem, especially for women, computer-aided medical diagnosi...
Copyright © 2003 ACPSEM. All rights reserved. The document attached has been archived with permissio...
This paper presents the novel computing algorithms to maintain the quality of mammogram images for b...
Abstract-In this paper we are comparing our proposed intelligent approach using Genetic Algorithm (G...
This chapter reviews and presents genetic algorithms and statistical methods based approach for earl...
Abstract A computer-aided detection (CAD) system is introduced in this paper for detection of breast...
Introduction This study is an effort to diagnose breast cancer by processing the quantitative and qu...
NoObjectives The presence of microcalcifications (MCs), clusters of tiny calcium deposits that appe...
OBJECTIVES: The presence of microcalcifications (MCs), clusters of tiny calcium deposits that appear...
Localization of the cancerous region as well as classification of the type of the cancer is highly i...
Abstract: As indicated by the World Health Organization (WHO), bosom malignant growth conclusion is...
Image segmentation is a critical stage in many computer vision and image process applications. Accur...
Abstract. The mammary pathology can manifest itself in multiple ways and originates spaceoccupying ...
Part 5: Computational Intelligence: BioInformaticsInternational audienceSeeded Region Growing algori...
Unsupervised segmentation techniques, which do not require labeled data for training and can be more...
Breast cancer is an important medical problem, especially for women, computer-aided medical diagnosi...
Copyright © 2003 ACPSEM. All rights reserved. The document attached has been archived with permissio...
This paper presents the novel computing algorithms to maintain the quality of mammogram images for b...
Abstract-In this paper we are comparing our proposed intelligent approach using Genetic Algorithm (G...
This chapter reviews and presents genetic algorithms and statistical methods based approach for earl...
Abstract A computer-aided detection (CAD) system is introduced in this paper for detection of breast...
Introduction This study is an effort to diagnose breast cancer by processing the quantitative and qu...
NoObjectives The presence of microcalcifications (MCs), clusters of tiny calcium deposits that appe...
OBJECTIVES: The presence of microcalcifications (MCs), clusters of tiny calcium deposits that appear...
Localization of the cancerous region as well as classification of the type of the cancer is highly i...
Abstract: As indicated by the World Health Organization (WHO), bosom malignant growth conclusion is...
Image segmentation is a critical stage in many computer vision and image process applications. Accur...
Abstract. The mammary pathology can manifest itself in multiple ways and originates spaceoccupying ...
Part 5: Computational Intelligence: BioInformaticsInternational audienceSeeded Region Growing algori...
Unsupervised segmentation techniques, which do not require labeled data for training and can be more...