» Articles » PMID: 33375508

AF-SENet: Classification of Cancer in Cervical Tissue Pathological Images Based on Fusing Deep Convolution Features

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2020 Dec 30
PMID 33375508
Citations 11
Authors
Affiliations
Soon will be listed here.
Abstract

Cervical cancer is the fourth most common cancer in the world. Whole-slide images (WSIs) are an important standard for the diagnosis of cervical cancer. Missed diagnoses and misdiagnoses often occur due to the high similarity in pathological cervical images, the large number of readings, the long reading time, and the insufficient experience levels of pathologists. Existing models have insufficient feature extraction and representation capabilities, and they suffer from insufficient pathological classification. Therefore, this work first designs an image processing algorithm for data augmentation. Second, the deep convolutional features are extracted by fine-tuning pre-trained deep network models, including ResNet50 v2, DenseNet121, Inception v3, VGGNet19, and Inception-ResNet, and then local binary patterns and a histogram of the oriented gradient to extract traditional image features are used. Third, the features extracted by the fine-tuned models are serially fused according to the feature representation ability parameters and the accuracy of multiple experiments proposed in this paper, and spectral embedding is used for dimension reduction. Finally, the fused features are inputted into the Analysis of Variance-F value-Spectral Embedding Net (AF-SENet) for classification. There are four different pathological images of the dataset: normal, low-grade squamous intraepithelial lesion (LSIL), high-grade squamous intraepithelial lesion (HSIL), and cancer. The dataset is divided into a training set (90%) and a test set (10%). The serial fusion effect of the deep features extracted by Resnet50v2 and DenseNet121 () is the best, with average classification accuracy reaching 95.33%, which is 1.07% higher than ResNet50 v2 and 1.05% higher than DenseNet121. The recognition ability is significantly improved, especially in LSIL, reaching 90.89%, which is 2.88% higher than ResNet50 v2 and 2.1% higher than DenseNet121. Thus, this method significantly improves the accuracy and generalization ability of pathological cervical WSI recognition by fusing deep features.

Citing Articles

Synchronous multiple primary cancers involving cervical cancer and follicular lymphoma: A case report.

Liu S, Yu H, Li H, Dong Y, Zhang D Oncol Lett. 2025; 29(4):183.

PMID: 40007622 PMC: 11851056. DOI: 10.3892/ol.2025.14930.


RL-Cervix.Net: A Hybrid Lightweight Model Integrating Reinforcement Learning for Cervical Cell Classification.

Muksimova S, Umirzakova S, Baltayev J, Cho Y Diagnostics (Basel). 2025; 15(3).

PMID: 39941293 PMC: 11816595. DOI: 10.3390/diagnostics15030364.


CytoNet: an efficient dual attention based automatic prediction of cancer sub types in cytology studies.

Ilyas N, Naseer F, Khan A, Raja A, Lee Y, Park J Sci Rep. 2024; 14(1):25809.

PMID: 39468153 PMC: 11519499. DOI: 10.1038/s41598-024-76512-9.


Efficacy and Safety of Atezolizumab as a PD-L1 Inhibitor in the Treatment of Cervical Cancer: A Systematic Review.

Velimirovici M, Feier C, Vonica R, Faur A, Muntean C Biomedicines. 2024; 12(6).

PMID: 38927498 PMC: 11200956. DOI: 10.3390/biomedicines12061291.


A Prospective Study on the Progression, Recurrence, and Regression of Cervical Lesions: Assessing Various Screening Approaches.

Gisca T, Munteanu I, Vasilache I, Melinte-Popescu A, Volovat S, Scripcariu I J Clin Med. 2024; 13(5).

PMID: 38592206 PMC: 10931951. DOI: 10.3390/jcm13051368.


References
1.
Gurcan M, Boucheron L, Can A, Madabhushi A, Rajpoot N, Yener B . Histopathological image analysis: a review. IEEE Rev Biomed Eng. 2010; 2:147-71. PMC: 2910932. DOI: 10.1109/RBME.2009.2034865. View

2.
Mazo C, Alegre E, Trujillo M . Classification of cardiovascular tissues using LBP based descriptors and a cascade SVM. Comput Methods Programs Biomed. 2017; 147:1-10. DOI: 10.1016/j.cmpb.2017.06.003. View

3.
Xu T, Feng Z, Wu X, Kittler J . Learning Adaptive Discriminative Correlation Filters via Temporal Consistency Preserving Spatial Feature Selection for Robust Visual Object Tracking. IEEE Trans Image Process. 2019; 28(11):5596-5609. DOI: 10.1109/TIP.2019.2919201. View

4.
Sun C, Zhang Y, Chang Q, Liu T, Zhang S, Wang X . Evaluation of a deep learning-based computer-aided diagnosis system for distinguishing benign from malignant thyroid nodules in ultrasound images. Med Phys. 2020; 47(9):3952-3960. DOI: 10.1002/mp.14301. View

5.
Deng S, Zhang X, Yan W, Chang E, Fan Y, Lai M . Deep learning in digital pathology image analysis: a survey. Front Med. 2020; 14(4):470-487. DOI: 10.1007/s11684-020-0782-9. View