Intravascular ultrasound (IVUS) offers a unique perspective in the treatment of vascular diseases by creating a sequence of ultrasound-slices acquired from within the vessel. However, unlike conventional hand-held ultrasound, the thin catheter only provides room for a small number of physical channels for signal transfer from a transducer-array at the tip. For continued improvement of image quality and frame rate, we present the use of deep reinforcement learning to deal with the current physical information bottleneck. Valuable inspiration has come from the field of magnetic resonance imaging (MRI), where learned acquisition schemes have brought significant acceleration in image acquisition at competing image quality. To efficiently accelerate IVUS imaging, we propose a framework that utilizes deep reinforcement learning for an optimal adaptive acquisition policy on a per-frame basis enabled by actor-critic methods and Gumbel top-$K$ sampling.
翻译:血管超声波(IVUS)为治疗血管疾病提供了一个独特的视角,它创造了一系列从船只内部获取的超声波切片,然而,与传统的手持超声波不同,薄导管只为从极端的传感器中接收信号的少数物理渠道提供了空间。为了继续提高图像质量和框架率,我们介绍了利用深强化学习来解决当前物理信息瓶颈问题。磁共振成像领域提供了宝贵的灵感,在磁共振成像领域,学习的获取方案大大加快了以相竞图像质量获取图像的速度。为高效加速静脉成像,我们提出了一个框架,利用深度强化学习,在演员-化学方法和Gumbel最高价值一万元取样所促成的全局性最佳适应性获取政策。