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Recurrent U-net for automatic pelvic floor muscle segmentation on 3D ultrasound

Authors :
Noort, Frieda van den
Sirmacek, Beril
Slump, Cornelis H.
Publication Year :
2021

Abstract

The prevalance of pelvic floor problems is high within the female population. Transperineal ultrasound (TPUS) is the main imaging modality used to investigate these problems. Automating the analysis of TPUS data will help in growing our understanding of pelvic floor related problems. In this study we present a U-net like neural network with some convolutional long short term memory (CLSTM) layers to automate the 3D segmentation of the levator ani muscle (LAM) in TPUS volumes. The CLSTM layers are added to preserve the inter-slice 3D information. We reach human level performance on this segmentation task. Therefore, we conclude that we successfully automated the segmentation of the LAM on 3D TPUS data. This paves the way towards automatic in-vivo analysis of the LAM mechanics in the context of large study populations.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2107.13833
Document Type :
Working Paper