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A fully 3D multi-path convolutional neural network with feature fusion and feature weighting for automatic lesion identification in brain MRI images

Authors :
Xue, Yunzhe
Xie, Meiyan
Farhat, Fadi G.
Boukrina, Olga
Barrett, A. M.
Binder, Jeffrey R.
Roshan, Usman W.
Graves, William W.
Publication Year :
2019

Abstract

We propose a fully 3D multi-path convolutional network to predict stroke lesions from 3D brain MRI images. Our multi-path model has independent encoders for different modalities containing residual convolutional blocks, weighted multi-path feature fusion from different modalities, and weighted fusion modules to combine encoder and decoder features. Compared to existing 3D CNNs like DeepMedic, 3D U-Net, and AnatomyNet, our networks achieves the highest statistically significant cross-validation accuracy of 60.5% on the large ATLAS benchmark of 220 patients. We also test our model on multi-modal images from the Kessler Foundation and Medical College Wisconsin and achieve a statistically significant cross-validation accuracy of 65%, significantly outperforming the multi-modal 3D U-Net and DeepMedic. Overall our model offers a principled, extensible multi-path approach that outperforms multi-channel alternatives and achieves high Dice accuracies on existing benchmarks.<br />Comment: Machine Learning for Health (ML4H) at NeurIPS 2019 - Extended Abstract

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1907.07807
Document Type :
Working Paper