Adnexal Mass Segmentation with Ultrasound Data Synthesis
- URL: http://arxiv.org/abs/2209.12305v1
- Date: Sun, 25 Sep 2022 19:24:02 GMT
- Title: Adnexal Mass Segmentation with Ultrasound Data Synthesis
- Authors: Clara Lebbos, Jen Barcroft, Jeremy Tan, Johanna P. Muller, Matthew
Baugh, Athanasios Vlontzos, Srdjan Saso, Bernhard Kainz
- Abstract summary: Using supervised learning, we have demonstrated that segmentation of adnexal masses is possible.
We apply a novel pathology-specific data synthesiser to create synthetic medical images with their corresponding ground truth segmentations.
Our approach achieves the best performance across all classes, including an improvement of up to 8% when compared with nnU-Net baseline approaches.
- Score: 3.614586930645965
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Ovarian cancer is the most lethal gynaecological malignancy. The disease is
most commonly asymptomatic at its early stages and its diagnosis relies on
expert evaluation of transvaginal ultrasound images. Ultrasound is the
first-line imaging modality for characterising adnexal masses, it requires
significant expertise and its analysis is subjective and labour-intensive,
therefore open to error. Hence, automating processes to facilitate and
standardise the evaluation of scans is desired in clinical practice. Using
supervised learning, we have demonstrated that segmentation of adnexal masses
is possible, however, prevalence and label imbalance restricts the performance
on under-represented classes. To mitigate this we apply a novel
pathology-specific data synthesiser. We create synthetic medical images with
their corresponding ground truth segmentations by using Poisson image editing
to integrate less common masses into other samples. Our approach achieves the
best performance across all classes, including an improvement of up to 8% when
compared with nnU-Net baseline approaches.
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