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## About Dataset |
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This dataset contains a total of 1528 prostate MRI images in the transverse plane. The images and classification were provided by PROSTATEx Dataset and Documentation. The objective of the dataset is to train a convolutional neural network called Small VGG Net and classify new images into clinically significant and clinically non-significant for a systems engineering undergraduate thesis at the Autonomous University of Bucaramanga (UNAB). |
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### Data Selection and Manipulation |
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A total of 64 patient images were taken. These patients should have a single prostate MRI finding for more accurate training. We then converted all images from DICOM to JPEG. Finally, we separated the images into two groups following the retention method. 30% of the images were from the validation group and the rest from the training group. As a result, we have two groups (significant and non-significant) divided into training (70%) and validation (30%) groups. |
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### Thesis group |
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Director |
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Leonardo Hernán Talero Sarmiento |
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ltalero@unab.edu.co |
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### Students |
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Juan Felipe Consuegra Rodríguez |
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jconsuegra869@unab.edu.co |
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Yeison Omar Hernández Suárez |
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yhernandes557@unab.edu.co |
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### Citation of data |
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Geert Litjens, Oscar Debats, Jelle Barentsz, Nico Karssemeijer, and Henkjan Huisman. "ProstateX Challenge data," The Cancer Imaging Archive (2017). DOI: 10.7937/K9TCIA.2017.MURS5CL |