Automated segmentation of microtomography imaging of Egyptian mummies.
Marc TantiCamille BerruyerPaul TfforeauAdrian MuscatReuben FarrugiaKenneth ScerriGianluca ValentinoV Armando SoléJohann A BriffaPublished in: PloS one (2021)
Propagation Phase Contrast Synchrotron Microtomography (PPC-SRμCT) is the gold standard for non-invasive and non-destructive access to internal structures of archaeological remains. In this analysis, the virtual specimen needs to be segmented to separate different parts or materials, a process that normally requires considerable human effort. In the Automated SEgmentation of Microtomography Imaging (ASEMI) project, we developed a tool to automatically segment these volumetric images, using manually segmented samples to tune and train a machine learning model. For a set of four specimens of ancient Egyptian animal mummies we achieve an overall accuracy of 94-98% when compared with manually segmented slices, approaching the results of off-the-shelf commercial software using deep learning (97-99%) at much lower complexity. A qualitative analysis of the segmented output shows that our results are close in terms of usability to those from deep learning, justifying the use of these techniques.
Keyphrases
- deep learning
- machine learning
- convolutional neural network
- artificial intelligence
- high resolution
- endothelial cells
- magnetic resonance
- contrast enhanced
- quality improvement
- pluripotent stem cells
- magnetic resonance imaging
- induced pluripotent stem cells
- electronic health record
- mass spectrometry
- positron emission tomography
- data analysis
- silver nanoparticles
- pet ct