Title of article :
Artificial intelligence in automatic classification of invasive ductal carcinoma breast cancer in digital pathology images
Author/Authors :
Abdolahi, Mohammad Department of Radiation Technology - School of Medicine - Bushehr University of Medical Sciences, Bushehr, Iran , Salehi, Mohammad Department of Medical Physics - School of Medicine - Iran University of Medical Sciences, Tehran, Iran , Shokatian, Iman Department of Medical Physics - School of Medicine - Iran University of Medical Sciences, Tehran, Iran , Reiazi, Reza Department of Medical Physics - School of Medicine - Iran University of Medical Sciences, Tehran, Iran
Abstract :
Background: Breast cancer is one of the most causes of death in women. Early diagnosis and detection of Invasive Ductal Carcinoma
(IDC) is an important key for the treatment of IDC. Computer-aided approaches have great potential to improve diagnosis accuracy. In
this paper, we proposed a deep learning-based method for the automatic classification of IDC in whole slide images (WSI) of breast
cancer. Furthermore, different types of deep neural networks training such as training from scratch and transfer learning to classify IDC
were evaluated.
Methods: In total, 277524 image patches with 50×50-pixel size form original images were used for model training. In the first method,
we train a simple convolutional neural network (named it baseline model) on these images. In the second approach, we used the pretrained VGG-16 CNN model via feature extraction and fine-tuning for the classification of breast pathology images.
Results: Our baseline model achieved a better result for the automatic classification of IDC in terms of F-measure and accuracy (83%,
85%) in comparison with original paper on this data set and achieved a comparable result with a new study that introduced acceptedrejected pooling layer. Also, transfer learning via feature extraction yielded better results (81%, 81%) in comparison with handcrafted
features. Furthermore, transfer learning via feature extraction yielded better classification results in comparison with the baseline model.
Conclusion: The experimental results demonstrate that using deep learning approaches yielded better results in comparison with
handcrafted features. Also, using transfer learning in histopathology image analysis yielded significant results in comparison with
training from scratch in much less time.
Keywords :
Invasive ductal carcinoma , Breast cancer , Artificial intelligence , Convolutional neural networks , Deep learning , Digital pathology
Journal title :
Medical Journal of the Islamic Republic of Iran