Convolutional neural networks (CNNs) have attracted a rapidly growing interest in a variety of different processing tasks in the medical ultrasound community. However, the performance of CNNs is highly reliant on both the amount and fidelity of the training data. Therefore, scarce data is almost always a concern, particularly in the medical field, where clinical data is not easily accessible. The utilization of synthetic data is a popular approach to address this challenge. However, but simulating a large number of images using packages such as Field II is time-consuming, and the distribution of simulated images is far from that of the real images. Herein, we introduce a novel ultra-fast ultrasound image simulation method based on the Fourier transform and evaluate its performance in a lesion segmentation task. We demonstrate that data augmentation using the images generated by the proposed method substantially outperforms Field II in terms of Dice similarity coefficient, while the simulation is almost 36000 times faster (both on CPU).
翻译:进化神经网络(CNNs)吸引了对医学超声波界各种不同处理任务的兴趣,但CNN的性能高度依赖培训数据的数量和真实性。因此,稀缺数据几乎总是令人关切的问题,特别是在临床数据不容易获得的医疗领域。使用合成数据是应对这一挑战的流行方法。然而,使用Field II等软件包模拟大量图像是耗时的,而模拟图像的传播远非真实图像的传播。在这里,我们采用了基于Fourier变换的新型超快超声波图像模拟方法,并评估其在损害分类任务中的性能。我们证明,使用拟议方法生成的图像增加的数据在Dice相似系数方面大大优于Field II,而模拟速度则近36 000倍(包括在CPU上)。