This repository contains some works that I have done in Computation Radiology Lab UR Medical Center.
It mainly contains the following parts:
- Phase contrast X-ray computed tomography (PCI-CT) deep learning classifier.
- Vertebrae Segmentation in Pathological Spine CT via Fully Convolutional Neural Network.
- Preprocessing of Raw image data (.mhd/.raw/.dicom) of Annotated lymph node CT dataset and Microsoft's Spine Web dataset
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This project got accepted at SPIE2017 conference for oral representation. You can check out our publication here. A refined version of this paper is uploaded here.
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It makes fully use of CaffeNet and Inception-v3 Net to classify CT samples. Please check out
Deep_Transfer_Learning_PCI_CT.pdf
for full detail. -
Some result is shown below:
The classification result we got from a fine-tuned CaffeNet.
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Preprocessing raw spine dataset (About 20GB), you can check out the sample spine CT scan before and after preprocessing below.
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The preprocessing techniques we have explored include: Histogram Equalization, Adaptive Histogram Equalization and Constrast Stretching
For full detail, please refers to our report here.
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Prepared the lmdb file so that the data can be directly fed into Convolutional Neural Network.
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Used fully convolutional neural network to segment the image.