Identification of Cervical Pathology using Adversarial Neural Networks
- URL: http://arxiv.org/abs/2004.13406v1
- Date: Tue, 28 Apr 2020 10:22:16 GMT
- Title: Identification of Cervical Pathology using Adversarial Neural Networks
- Authors: Abhilash Nandy, Rachana Sathish, Debdoot Sheet
- Abstract summary: Cervical cancer is the leading cause of cancer related deaths in women in India and other low and middle income countries.
We propose a convolutional autoencoder based framework, having an architecture similar to SegNet.
The proposed method outperforms the standard technique of fine-tuning convolutional neural networks pre-trained on ImageNet database with an average accuracy of 73.75%.
- Score: 8.364276127015255
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Various screening and diagnostic methods have led to a large reduction of
cervical cancer death rates in developed countries. However, cervical cancer is
the leading cause of cancer related deaths in women in India and other low and
middle income countries (LMICs) especially among the urban poor and slum
dwellers. Several sophisticated techniques such as cytology tests, HPV tests
etc. have been widely used for screening of cervical cancer. These tests are
inherently time consuming. In this paper, we propose a convolutional
autoencoder based framework, having an architecture similar to SegNet which is
trained in an adversarial fashion for classifying images of the cervix acquired
using a colposcope. We validate performance on the Intel-Mobile ODT cervical
image classification dataset. The proposed method outperforms the standard
technique of fine-tuning convolutional neural networks pre-trained on ImageNet
database with an average accuracy of 73.75%.
Related papers
- CerviXpert: A Multi-Structural Convolutional Neural Network for Predicting Cervix Type and Cervical Cell Abnormalities [0.05869347864780635]
We present CerviXpert, a multi-structural Convolutional Neural Network to identify cervix cancer.
Cervical cancer affects millions of women worldwide and has a significantly higher survival rate when diagnosed early.
arXiv Detail & Related papers (2024-09-10T05:08:26Z) - Cervical Cancer Detection Using Multi-Branch Deep Learning Model [0.6249768559720121]
This research proposes an innovative and novel approach to automate cervical cancer image classification using Multi-Head Self-Attention (MHSA) and convolutional neural networks (CNNs)
Our model achieved a remarkable accuracy of 98.522%, which holds promise for its applicability in other medical image recognition tasks.
arXiv Detail & Related papers (2024-08-20T02:44:48Z) - Cancer-Net PCa-Gen: Synthesis of Realistic Prostate Diffusion Weighted
Imaging Data via Anatomic-Conditional Controlled Latent Diffusion [68.45407109385306]
In Canada, prostate cancer is the most common form of cancer in men and accounted for 20% of new cancer cases for this demographic in 2022.
There has been significant interest in the development of deep neural networks for prostate cancer diagnosis, prognosis, and treatment planning using diffusion weighted imaging (DWI) data.
In this study, we explore the efficacy of latent diffusion for generating realistic prostate DWI data through the introduction of an anatomic-conditional controlled latent diffusion strategy.
arXiv Detail & Related papers (2023-11-30T15:11:03Z) - Recent trends and analysis of Generative Adversarial Networks in
Cervical Cancer Imaging [0.0]
Cervical cancer contributes to 6-29% of all cancers in women.
Early detection of this disease helps in better treatment and survival rate of the patient.
Generative Adversarial Networks (GANs) are catching up with speed in the screening, detection, and classification of cervical cancer.
arXiv Detail & Related papers (2022-09-23T05:45:40Z) - EMT-NET: Efficient multitask network for computer-aided diagnosis of
breast cancer [58.720142291102135]
We propose an efficient and light-weighted learning architecture to classify and segment breast tumors simultaneously.
We incorporate a segmentation task into a tumor classification network, which makes the backbone network learn representations focused on tumor regions.
The accuracy, sensitivity, and specificity of tumor classification is 88.6%, 94.1%, and 85.3%, respectively.
arXiv Detail & Related papers (2022-01-13T05:24:40Z) - Convolutional neural network based on transfer learning for breast
cancer screening [0.0]
In this paper, a deep convolutional neural network-based algorithm is proposed to aid in accurately identifying breast cancer from ultrasonic images.
Several experiments were conducted on the breast ultrasound dataset consisting of 537 Benign, 360 malignant, and 133 normal images.
Using k-fold cross-validation and a bagging ensemble, we achieved an accuracy of 99.5% and a sensitivity of 99.6%.
arXiv Detail & Related papers (2021-12-22T02:27:12Z) - COVID-Net US: A Tailored, Highly Efficient, Self-Attention Deep
Convolutional Neural Network Design for Detection of COVID-19 Patient Cases
from Point-of-care Ultrasound Imaging [101.27276001592101]
We introduce COVID-Net US, a highly efficient, self-attention deep convolutional neural network design tailored for COVID-19 screening from lung POCUS images.
Experimental results show that the proposed COVID-Net US can achieve an AUC of over 0.98 while achieving 353X lower architectural complexity, 62X lower computational complexity, and 14.3X faster inference times on a Raspberry Pi.
To advocate affordable healthcare and artificial intelligence for resource-constrained environments, we have made COVID-Net US open source and publicly available as part of the COVID-Net open source initiative.
arXiv Detail & Related papers (2021-08-05T16:47:33Z) - Wide & Deep neural network model for patch aggregation in CNN-based
prostate cancer detection systems [51.19354417900591]
Prostate cancer (PCa) is one of the leading causes of death among men, with almost 1.41 million new cases and around 375,000 deaths in 2020.
To perform an automatic diagnosis, prostate tissue samples are first digitized into gigapixel-resolution whole-slide images.
Small subimages called patches are extracted and predicted, obtaining a patch-level classification.
arXiv Detail & Related papers (2021-05-20T18:13:58Z) - Classification of COVID-19 in CT Scans using Multi-Source Transfer
Learning [91.3755431537592]
We propose the use of Multi-Source Transfer Learning to improve upon traditional Transfer Learning for the classification of COVID-19 from CT scans.
With our multi-source fine-tuning approach, our models outperformed baseline models fine-tuned with ImageNet.
Our best performing model was able to achieve an accuracy of 0.893 and a Recall score of 0.897, outperforming its baseline Recall score by 9.3%.
arXiv Detail & Related papers (2020-09-22T11:53:06Z) - Gleason Grading of Histology Prostate Images through Semantic
Segmentation via Residual U-Net [60.145440290349796]
The final diagnosis of prostate cancer is based on the visual detection of Gleason patterns in prostate biopsy by pathologists.
Computer-aided-diagnosis systems allow to delineate and classify the cancerous patterns in the tissue.
The methodological core of this work is a U-Net convolutional neural network for image segmentation modified with residual blocks able to segment cancerous tissue.
arXiv Detail & Related papers (2020-05-22T19:49:10Z) - Learning from Suspected Target: Bootstrapping Performance for Breast
Cancer Detection in Mammography [6.323318523772466]
We introduce a novel top likelihood loss together with a new sampling procedure to select and train the suspected target regions.
We firstly test our proposed method on a private dense mammogram dataset.
Results show that our proposed method greatly reduce the false positive rate and the specificity is increased by 0.25 on detecting mass type cancer.
arXiv Detail & Related papers (2020-03-01T09:04:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.