Breast Cancer Detection Based on Simplified Deep Learning Technique With Histopathological Image Using BreaKHis Database

Presented here are the results of an investigation conducted to determine the effectiveness of deep learning (DL)‐based systems utilizing the power of transfer learning for detecting breast cancer in histopathological images. It is shown that DL models that are not specifically developed for breast...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Radio science 2023-11, Vol.58 (11), p.n/a
Hauptverfasser: Toma, Tania Afroz, Biswas, Shivazi, Miah, Md Sipon, Alibakhshikenari, Mohammad, Virdee, Bal S., Fernando, Sandra, Rahman, Md Habibur, Ali, Syed Mansoor, Arpanaei, Farhad, Hossain, Mohammad Amzad, Rahman, Md Mahbubur, Niu, Ming‐bo, Parchin, Naser Ojaroudi, Livreri, Patrizia
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:Presented here are the results of an investigation conducted to determine the effectiveness of deep learning (DL)‐based systems utilizing the power of transfer learning for detecting breast cancer in histopathological images. It is shown that DL models that are not specifically developed for breast cancer detection can be trained using transfer learning to effectively detect breast cancer in histopathological images. The outcome of the analysis enables the selection of the best DL architecture for detecting cancer with high accuracy. This should facilitate pathologists to achieve early diagnoses of breast cancer and administer appropriate treatment to the patient. The experimental work here used the BreaKHis database consisting of 7909 histopathological pictures from 82 clinical breast cancer patients. The strategy presented for DL training uses various image processing techniques for extracting various feature patterns. This is followed by applying transfer learning techniques in the deep convolutional networks like ResNet, ResNeXt, SENet, Dual Path Net, DenseNet, NASNet, and Wide ResNet. Comparison with recent literature shows that ResNext‐50, ResNext‐101, DPN131, DenseNet‐169 and NASNet‐A provide an accuracy of 99.8%, 99.5%, 99.675%, 99.725%, and 99.4%, respectively, and outperform previous studies. Key Points The results of an investigation to determine effectiveness of deep learning (DL)‐based systems for detecting breast cancer is presented The strategy here for DL training uses various image processing techniques for extracting different feature patterns It is shown that the convolutional neural network models provide different results for different degrees of image resolution
ISSN:0048-6604
1944-799X
DOI:10.1029/2023RS007761