Publication | Open Access
Intelligent Hybrid Deep Learning Model for Breast Cancer Detection
134
Citations
53
References
2022
Year
Convolutional Neural NetworkEngineeringMachine LearningBreast IdcDigital PathologyPathologyHybrid ModelBreast Cancer DetectionImage ClassificationImage AnalysisFusion LearningBreast ImagingPredictive BiomarkersRadiologyComputational PathologyMedical Image ComputingDeep LearningRadiomicsDeep Neural NetworksBreast CancerComputer-aided DiagnosisMedicine
Breast cancer (BC) is a type of tumor that develops in the breast cells and is one of the most common cancers in women. Women are also at risk from BC, the second most life-threatening disease after lung cancer. The early diagnosis and classification of BC are very important. Furthermore, manual detection is time-consuming, laborious work, and, possibility of pathologist errors, and incorrect classification. To address the above highlighted issues, this paper presents a hybrid deep learning (CNN-GRU) model for the automatic detection of BC-IDC (+,−) using whole slide images (WSIs) of the well-known PCam Kaggle dataset. In this research, the proposed model used different layers of architectures of CNNs and GRU to detect breast IDC (+,−) cancer. The validation tests for quantitative results were carried out using each performance measure (accuracy (Acc), precision (Prec), sensitivity (Sens), specificity (Spec), AUC and F1-Score. The proposed model shows the best performance measures (accuracy 86.21%, precision 85.50%, sensitivity 85.60%, specificity 84.71%, F1-score 88%, while AUC 0.89 which overcomes the pathologist’s error and miss classification problem. Additionally, the efficiency of the proposed hybrid model was tested and compared with CNN-BiLSTM, CNN-LSTM, and current machine learning and deep learning (ML/DL) models, which indicated that the proposed hybrid model is more robust than recent ML/DL approaches.
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