In this study, an automatic diagnosis analysis of the results of pap smear image extraction using neural network algorithms, the analysis included a review of the results of Herlev pap smear extraction level 7 grade, 2 normal and abnormal classes, 3 classes of normal level dysplasia and 4 classes of abnormal dysplasia levels. The problem is that neural networks are very difficult to designate optimal features in diagnosing and difficult to handle class imbalances. This study proposes a combination of particle swarm optimization (PSO) to optimize the features and bagging methods to deal with class imbalances, with the aim that the results of diagnosis using a neural network can increase its accuracy. The results show that using PSO and baggi...
Abstract Background Automating cytology-based cervical cancer screening could alleviate the shortage...
Cervical cancer is one of the diseases in women that is malignant and even deadly. The biggest facto...
In recent years, deep learning methods have outperformed previous state-of-the-art machine learning ...
Summarization: The term pap-smear refers to samples of human cells stained by the so-called Papanico...
The single image classification of Pap smears is an important part of the early detection of cervica...
The classification of cell types plays an essential role in monitoring the growth of cancer cells. O...
Large-scale screening programmes are operating to reduce the incidence and mortality rate of cervica...
Summarization: The classification problem consists of using some known objects, usually described by...
Currently, Pap test is the most popular and effective test for cervical cancer. However, Pap test do...
Cervical cancer is one of the most common types of cancer among women, which has higher death-rate t...
The paper discusses the use of neural network to classify the types of cervical cells based on Bethe...
Human papillomaviruses (HPVs) merupakan virus yang menimbulkan infeksi pada permukaan kulit dan dapt...
AbstractCervical cancer has caused many deaths each year. Screening tests, such as Pap smear test us...
A realistic approach for decreasing the number of erroneous diagnoses plaguing cervical cytology scr...
Currently, Pap test is the most popular and effective test for cervical cancer. However, Pap test do...
Abstract Background Automating cytology-based cervical cancer screening could alleviate the shortage...
Cervical cancer is one of the diseases in women that is malignant and even deadly. The biggest facto...
In recent years, deep learning methods have outperformed previous state-of-the-art machine learning ...
Summarization: The term pap-smear refers to samples of human cells stained by the so-called Papanico...
The single image classification of Pap smears is an important part of the early detection of cervica...
The classification of cell types plays an essential role in monitoring the growth of cancer cells. O...
Large-scale screening programmes are operating to reduce the incidence and mortality rate of cervica...
Summarization: The classification problem consists of using some known objects, usually described by...
Currently, Pap test is the most popular and effective test for cervical cancer. However, Pap test do...
Cervical cancer is one of the most common types of cancer among women, which has higher death-rate t...
The paper discusses the use of neural network to classify the types of cervical cells based on Bethe...
Human papillomaviruses (HPVs) merupakan virus yang menimbulkan infeksi pada permukaan kulit dan dapt...
AbstractCervical cancer has caused many deaths each year. Screening tests, such as Pap smear test us...
A realistic approach for decreasing the number of erroneous diagnoses plaguing cervical cytology scr...
Currently, Pap test is the most popular and effective test for cervical cancer. However, Pap test do...
Abstract Background Automating cytology-based cervical cancer screening could alleviate the shortage...
Cervical cancer is one of the diseases in women that is malignant and even deadly. The biggest facto...
In recent years, deep learning methods have outperformed previous state-of-the-art machine learning ...