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This paper considers automatic clinical workflow description of full-length routine fetal anomaly ultrasound scans using deep learning approaches for spatio-temporal video analysis. Multiple architectures consisting of 2D and 2D + t CNN, LSTM, and convolutional LSTM are investigated and compared. The contributions of short-term and long-term temporal changes are studied, and a multi-stream framework analysis is found to achieve the best top-1 accuracy=0.77 and top-3 accuracy=0.94. Automated partitioning and characterisation on unlabelled full-length video scans show high correlation (ρ=0.95, p=0.0004) with workflow statistics of manually labelled videos, suggesting practicality of proposed methods.

More information Original publication

DOI

10.1109/ISBI.2019.8759149

Type

Conference paper

Publication Date

2019-01-01T00:00:00+00:00

Volume

16

Pages

987 - 990

Total pages

3

Keywords

Fetal anomaly scan, clinical workflow, spatio-temporal analysis, ultrasound, video classification