ESE and Transfer Learning for Breast Tumor Classification.
In this study, we proposed a lightweight neural network architecture based on inverted residual network, efficient squeeze excitation (ESE) module, and double transfer learning, called TLese-ResNet, f
APA
He Y, Batumalay M, Thinakaran R (2026). ESE and Transfer Learning for Breast Tumor Classification.. Journal of imaging informatics in medicine, 39(2), 1383-1393. https://doi.org/10.1007/s10278-025-01608-1
MLA
He Y, et al.. "ESE and Transfer Learning for Breast Tumor Classification.." Journal of imaging informatics in medicine, vol. 39, no. 2, 2026, pp. 1383-1393.
PMID
40659967
Abstract
In this study, we proposed a lightweight neural network architecture based on inverted residual network, efficient squeeze excitation (ESE) module, and double transfer learning, called TLese-ResNet, for breast cancer molecular subtype recognition. The inverted ResNet reduces the number of network parameters while enhancing the cross-layer gradient propagation and feature expression capabilities. The introduction of the ESE module reduces the network complexity while maintaining the channel relationship collection. The dataset of this study comes from the mammography images of patients diagnosed with invasive breast cancer in a hospital in Jiangxi. The dataset comprises preoperative mammography images with CC and MLO views. Given that the dataset is somewhat small, in addition to the commonly used data augmentation methods, double transfer learning is also used. Double transfer learning includes the first transfer, in which the source domain is ImageNet and the target domain is the COVID-19 chest X-ray image dataset, and the second transfer, in which the source domain is the target domain of the first transfer, and the target domain is the mammography dataset we collected. By using five-fold cross-validation, the mean accuracy and area under received surgery feature on mammographic images of CC and MLO views were 0.818 and 0.883, respectively, outperforming other state-of-the-art deep learning-based models such as ResNet-50 and DenseNet-121. Therefore, the proposed model can provide clinicians with an effective and non-invasive auxiliary tool for molecular subtype identification of breast cancer.
MeSH Terms
Humans; Breast Neoplasms; Female; Mammography; Neural Networks, Computer; COVID-19; Radiographic Image Interpretation, Computer-Assisted
같은 제1저자의 인용 많은 논문 (5)
- In situ laser fenestration of Metallic covered stent for the treatment of malignant Central Airway Stenosis: A case report.
- Home-based multimodal prehabilitation before colorectal cancer surgery: a systematic review and meta-analysis.
- Advances and challenges of ZIF-based nanocomposites in immunotherapy and anti-inflammatory therapy.
- Intravascular Large B-Cell Lymphoma Presenting With Urinary and Fecal Incontinence: A Case Report.
- Tanshinone IIA targets RNF123 to inhibit non-small cell lung cancer cell proliferation, migration and invasion via KAT2B-mediated H3K18ac modification.