Automated Rib Fracture Detection of Postmortem Computed Tomography Images Using Machine Learning Techniques
Imaging techniques is widely used for medical diagnostics. This leads in some cases to a real bottleneck when there is a lack of medical practitioners and the images have to be manually processed. In such a situation there is a need to reduce the amount of manual work by automating part of the analy...
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Zusammenfassung: | Imaging techniques is widely used for medical diagnostics. This leads in some
cases to a real bottleneck when there is a lack of medical practitioners and
the images have to be manually processed. In such a situation there is a need
to reduce the amount of manual work by automating part of the analysis. In this
article, we investigate the potential of a machine learning algorithm for
medical image processing by computing a topological invariant classifier.
First, we select retrospectively from our database of postmortem computed
tomography images of rib fractures. The images are prepared by applying a rib
unfolding tool that flattens the rib cage to form a two-dimensional projection.
We compare the results of our analysis with two independent convolutional
neural network models. In the case of the neural network model, we obtain an
$F_1$ Score of 0.73. To access the performance of our classifier, we compute
the relative proportion of images that were not shared between the two classes.
We obtain a precision of 0.60 for the images with rib fractures. |
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DOI: | 10.48550/arxiv.1908.05467 |