Patchless Multi-Stage Transfer Learning for Improved Mammographic Breast Mass Classification.
Gelan AyanaJinhyung ParkSe-Woon ChoePublished in: Cancers (2022)
Despite great achievements in classifying mammographic breast-mass images via deep-learning (DL), obtaining large amounts of training data and ensuring generalizations across different datasets with robust and well-optimized algorithms remain a challenge. ImageNet-based transfer learning (TL) and patch classifiers have been utilized to address these challenges. However, researchers have been unable to achieve the desired performance for DL to be used as a standalone tool. In this study, we propose a novel multi-stage TL from ImageNet and cancer cell line image pre-trained models to classify mammographic breast masses as either benign or malignant. We trained our model on three public datasets: Digital Database for Screening Mammography (DDSM), INbreast, and Mammographic Image Analysis Society (MIAS). In addition, a mixed dataset of the images from these three datasets was used to train the model. We obtained an average five-fold cross validation AUC of 1, 0.9994, 0.9993, and 0.9998 for DDSM, INbreast, MIAS, and mixed datasets, respectively. Moreover, the observed performance improvement using our method against the patch-based method was statistically significant, with a p -value of 0.0029. Furthermore, our patchless approach performed better than patch- and whole image-based methods, improving test accuracy by 8% (91.41% vs. 99.34%), tested on the INbreast dataset. The proposed method is of significant importance in solving the need for a large training dataset as well as reducing the computational burden in training and implementing the mammography-based deep-learning models for early diagnosis of breast cancer.
Keyphrases
- deep learning
- breast cancer risk
- convolutional neural network
- artificial intelligence
- rna seq
- machine learning
- contrast enhanced
- virtual reality
- resistance training
- big data
- healthcare
- magnetic resonance imaging
- emergency department
- papillary thyroid
- mental health
- quality improvement
- electronic health record
- adverse drug
- squamous cell carcinoma
- squamous cell
- risk factors
- high resolution
- childhood cancer
- high intensity
- clinical evaluation