The use of a binary classifier like the sigmoid function and loss functions reduces the accuracy of deep learning algorithms. This research aims to increase the accuracy of detecting and classifying oral tumours within a reduced processing time. The proposed system consists of a Convolutional neural network with a modified loss function to minimise the error in predicting and classifying oral tumours by reducing the overfitting of the data and supporting multi-class classification. The proposed solution was tested on data samples from multiple datasets with four kinds of oral tumours. The averages of the different accuracy values and processing times were calculated to derive the overall accuracy. Based on the obtained results, the proposed...
One of the most prevalent forms of cancer worldwide is oral cancer which has a high rate of mortalit...
Oral cancer is a dangerous and extensive cancer with a high death ratio. Oral cancer is the most usu...
In today's world, manually examining a large number of MRI (magnetic resonance imaging)images and de...
Background and Aim: In deep learning, the sigmoid function is unsuccessfully used for the multiclass...
Oral cancer is the eighth most common type of cancer in the world. Every year, 130,000 people in Ind...
Oral cancer is the most common type of head and neck cancer worldwide, leading to approximately 177,...
One of the ways to reduce oral cancer mortality rate is diagnosing oral lesions at initial stages to...
Cancer can now be counted in the deceases with high mortality rate. Oral cancer is the cancer origin...
Three-dimensional convolutional neural networks (3DCNNs), a rapidly evolving modality of deep learni...
Background Oral cancer is one of the most common types of cancer in men causing mortality if not dia...
Significance: Convolutional neural networks (CNNs) show the potential for automated classification o...
Discovering cancer at an early stage is an effective way to increase the chance of survival. However...
Skin cancer is one of the top three perilous types of cancer caused by damaged DNA that can cause de...
One of the main reasons for death among women is breast cancer. The traditional diagnosis process of...
Oral cancer is considered one of the most common cancer types in several counties. Earlier-stage ide...
One of the most prevalent forms of cancer worldwide is oral cancer which has a high rate of mortalit...
Oral cancer is a dangerous and extensive cancer with a high death ratio. Oral cancer is the most usu...
In today's world, manually examining a large number of MRI (magnetic resonance imaging)images and de...
Background and Aim: In deep learning, the sigmoid function is unsuccessfully used for the multiclass...
Oral cancer is the eighth most common type of cancer in the world. Every year, 130,000 people in Ind...
Oral cancer is the most common type of head and neck cancer worldwide, leading to approximately 177,...
One of the ways to reduce oral cancer mortality rate is diagnosing oral lesions at initial stages to...
Cancer can now be counted in the deceases with high mortality rate. Oral cancer is the cancer origin...
Three-dimensional convolutional neural networks (3DCNNs), a rapidly evolving modality of deep learni...
Background Oral cancer is one of the most common types of cancer in men causing mortality if not dia...
Significance: Convolutional neural networks (CNNs) show the potential for automated classification o...
Discovering cancer at an early stage is an effective way to increase the chance of survival. However...
Skin cancer is one of the top three perilous types of cancer caused by damaged DNA that can cause de...
One of the main reasons for death among women is breast cancer. The traditional diagnosis process of...
Oral cancer is considered one of the most common cancer types in several counties. Earlier-stage ide...
One of the most prevalent forms of cancer worldwide is oral cancer which has a high rate of mortalit...
Oral cancer is a dangerous and extensive cancer with a high death ratio. Oral cancer is the most usu...
In today's world, manually examining a large number of MRI (magnetic resonance imaging)images and de...