Recent studies have demonstrated the importance of neural networks in medical image processing and analysis. However, their great efficiency in segmentation tasks is highly dependent on the amount of training data. When these networks are used on small datasets, the process of data augmentation can be very significant. We propose a convolutional neural network approach for the whole heart segmentation which is based upon the 3D U-Net architecture and incorporates principle component analysis as an additional data augmentation technique. The network is trained end-to-end i.e. no pre-trained network is required. Evaluation of the proposed approach is performed on 20 3D CT images from MICCAI 2017 Multi-Modality Whole Heart Segmentation Challenge dataset, divided into 15 training and 5 validation images. Final segmentation results show a high Dice coefficient overlap to ground truth, indicating that the proposed approach is competitive to state-of-the-art. Additionally, we provide the discussion of the influence of different learning rates on the final segmentation results.
Arnab PurkayasthaMd Nuhas MortozaAminul IslamSadia Yeasmin Saki
Zeyu LouWeiliang HuoKening LeXiaolin Tian
Alejandro S. DelgadoCarlos QuinterosFernando Villalba-MenesesAndrés Tirado-EspínCarolina Cadena-MorejónJonathan Cruz-VarelaDiego Almeida-Galárraga
Swati ShilaskarShripad BhatlawandeJanhavi KaleRajnandini KambleKaran Paigude