Removing confounding information from fetal ultrasound images
- URL: http://arxiv.org/abs/2303.13918v1
- Date: Fri, 24 Mar 2023 11:13:33 GMT
- Title: Removing confounding information from fetal ultrasound images
- Authors: Kamil Mikolaj, Manxi Lin, Zahra Bashir, Morten Bo S{\o}ndergaard
Svendsen, Martin Tolsgaard, Anders Nymark and Aasa Feragen
- Abstract summary: Confounding information in the form of text or markings embedded in medical images can severely affect the training of diagnostic deep learning algorithms.
In dermatology, known examples include drawings or rulers that are overrepresented in images of malignant lesions.
In this paper, we encounter text and calipers placed on the images found in national databases containing fetal screening ultrasound scans.
- Score: 1.6624933615451838
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Confounding information in the form of text or markings embedded in medical
images can severely affect the training of diagnostic deep learning algorithms.
However, data collected for clinical purposes often have such markings embedded
in them. In dermatology, known examples include drawings or rulers that are
overrepresented in images of malignant lesions. In this paper, we encounter
text and calipers placed on the images found in national databases containing
fetal screening ultrasound scans, which correlate with standard planes to be
predicted. In order to utilize the vast amounts of data available in these
databases, we develop and validate a series of methods for minimizing the
confounding effects of embedded text and calipers on deep learning algorithms
designed for ultrasound, using standard plane classification as a test case.
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