The radiology examination by computed tomography (CT) scan is an early detection of lung cancer to minimize the mortality rate. However, the assessment and diagnosis by an expert are subjective depending on the competence and experience of a radiologist. Hence, a digital image processing of CT scan is necessary as a tool to diagnose the lung cancer. This research proposes a morphological characteristics method for detecting lung cancer lesion density by using the histogram and GLCM (Gray Level Co-occurrence Matrices). The most well-known artificial neural network (ANN) architecture that is the multilayers perceptron (MLP), is used in classifying lung cancer lesion density of heterogeneous and homogeneous. Fifty CT scan images of lungs obtai...
The number of people with lung cancer has reached approximately 2.09 million people worldwide. Out o...
Lung Cancer is the second most serious disease in today’s world due to which the mortality rate is i...
Background Texture analysis and machine learning methods are useful in distinguishing between benign...
Medical image enhancement & classification play an important role in medical research area. To a...
Medical image enhancement & classification play an important role in medical research area. To analy...
Current development of algorithms in computer-aided diagnosis (CAD) scheme is growing rapidly to ass...
As per the technical evolution and latest trend, Image processing techniques has become a boon in me...
The precise identification and characterization of small pulmonary nodules at low-dose CT is a neces...
The research about analysis of CT Scan image of lung cancer based on texture feature Gray Level Cooc...
In current days, image processing techniques are widely used in many medical areas for improving ear...
In this paper, we present an efficient lung nodule classification system. The proposed system extrac...
In this paper, a computer-aided detection system is developed to detect lung nodules at an early st...
There is no question that lung cancer is a dangerous disease causing a significant number of deaths ...
In this study, a computer-aided detection system was developed for detection and investigation of l...
Lung cancer is one of the most common cancer types. For the survival of the patient, early detection...
The number of people with lung cancer has reached approximately 2.09 million people worldwide. Out o...
Lung Cancer is the second most serious disease in today’s world due to which the mortality rate is i...
Background Texture analysis and machine learning methods are useful in distinguishing between benign...
Medical image enhancement & classification play an important role in medical research area. To a...
Medical image enhancement & classification play an important role in medical research area. To analy...
Current development of algorithms in computer-aided diagnosis (CAD) scheme is growing rapidly to ass...
As per the technical evolution and latest trend, Image processing techniques has become a boon in me...
The precise identification and characterization of small pulmonary nodules at low-dose CT is a neces...
The research about analysis of CT Scan image of lung cancer based on texture feature Gray Level Cooc...
In current days, image processing techniques are widely used in many medical areas for improving ear...
In this paper, we present an efficient lung nodule classification system. The proposed system extrac...
In this paper, a computer-aided detection system is developed to detect lung nodules at an early st...
There is no question that lung cancer is a dangerous disease causing a significant number of deaths ...
In this study, a computer-aided detection system was developed for detection and investigation of l...
Lung cancer is one of the most common cancer types. For the survival of the patient, early detection...
The number of people with lung cancer has reached approximately 2.09 million people worldwide. Out o...
Lung Cancer is the second most serious disease in today’s world due to which the mortality rate is i...
Background Texture analysis and machine learning methods are useful in distinguishing between benign...