Automated quality assessment using appearance-based simulations and hippocampus segmentation on low-field paediatric brain MR images
Understanding the structural growth of paediatric brains is a key step in the identification of various neuro-developmental disorders. However, our knowledge is limited by many factors, including the lack of automated image analysis tools, especially in Low and Middle Income Countries from the lack...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
08.10.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Understanding the structural growth of paediatric brains is a key step in the
identification of various neuro-developmental disorders. However, our knowledge
is limited by many factors, including the lack of automated image analysis
tools, especially in Low and Middle Income Countries from the lack of high
field MR images available. Low-field systems are being increasingly explored in
these countries, and, therefore, there is a need to develop automated image
analysis tools for these images. In this work, as a preliminary step, we
consider two tasks: 1) automated quality assurance and 2) hippocampal
segmentation, where we compare multiple approaches. For the automated quality
assurance task a DenseNet combined with appearance-based transformations for
synthesising artefacts produced the best performance, with a weighted accuracy
of 82.3%. For the segmentation task, registration of an average atlas performed
the best, with a final Dice score of 0.61. Our results show that although the
images can provide understanding of large scale pathologies and gross scale
anatomical development, there still remain barriers for their use for more
granular analyses. |
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DOI: | 10.48550/arxiv.2410.06161 |