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SPRNet: Automatic Fetal Standard Plane Recognition Network for Ultrasound Images

机译:SPRNet:超声图像的胎儿标准平面自动识别网络

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摘要

Fetal standard plane recognition is a crucial clinical part of prenatal diagnosis. However, it is also a sophisticated, subjective, and highly empirical process. Thus, there is a huge demand for proposing an effective and precise automatic method to help experienced as well as inexperienced doctors to complete this process, efficiently. In order to satisfy this clinical need, we propose an automatic fetal standard plane recognition network called SPRNet. Specifically, we adopt DenseNet as the basic network of SPRNet and implement data-based partial transfer learning on it by weight-sharing strategy. We then train our network with a task dataset (fetal ultrasound images) and a transferring dataset (placenta ultrasound images) so that our network can discover and learn the potential relationship between these two datasets to improve the performance and avoid overfitting. Finally, we achieve automatic fetal standard plane recognition by utilizing the feature extracted from SPRNet. The experimental results indicate that our network can attain an accuracy of 99.00% and perform better than conventional networks.
机译:胎儿标准平面识别是产前诊断的关键临床部分。但是,它也是一个复杂,主观和高度经验化的过程。因此,迫切需要提出一种有效且精确的自动方法来帮助有经验的和无经验的医生有效地完成该过程。为了满足这种临床需求,我们提出了一种自动胎儿标准平面识别网络,称为SPRNet。具体来说,我们采用DenseNet作为SPRNet的基本网络,并通过权重共享策略在其上实现基于数据的部分转移学习。然后,我们使用任务数据集(胎儿超声图像)和转移数据集(胎盘超声图像)训练网络,以便我们的网络可以发现和学习这两个数据集之间的潜在关系,以提高性能并避免过度拟合。最后,我们利用从SPRNet提取的特征实现了自动胎儿标准平面识别。实验结果表明,我们的网络可以达到99.00%的精度,并且性能优于传统网络。

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