School of Electronics and Information Engineering, Harbin Institute of Technology (Shenzhen), Shenzhen, Guangdong, China; The Peng Cheng Laboratory, Shenzhen, Guangdong, China.
The Peng Cheng Laboratory, Shenzhen, Guangdong, China.
Comput Biol Med. 2024 Sep;180:108933. doi: 10.1016/j.compbiomed.2024.108933. Epub 2024 Aug 2.
Medical image segmentation demands precise accuracy and the capability to assess segmentation uncertainty for informed clinical decision-making. Denoising Diffusion Probability Models (DDPMs), with their advancements in image generation, can treat segmentation as a conditional generation task, providing accurate segmentation and uncertainty estimation. However, current DDPMs used in medical image segmentation suffer from low inference efficiency and prediction errors caused by excessive noise at the end of the forward process. To address this issue, we propose an accelerated denoising diffusion probabilistic model via truncated inverse processes (ADDPM) that is specifically designed for medical image segmentation. The inverse process of ADDPM starts from a non-Gaussian distribution and terminates early once a prediction with relatively low noise is obtained after multiple iterations of denoising. We employ a separate powerful segmentation network to obtain pre-segmentation and construct the non-Gaussian distribution of the segmentation based on the forward diffusion rule. By further adopting a separate denoising network, the final segmentation can be obtained with just one denoising step from the predictions with low noise. ADDPM greatly reduces the number of denoising steps to approximately one-tenth of that in vanilla DDPMs. Our experiments on four segmentation tasks demonstrate that ADDPM outperforms both vanilla DDPMs and existing representative accelerating DDPMs methods. Moreover, ADDPM can be easily integrated with existing advanced segmentation models to improve segmentation performance and provide uncertainty estimation. Implementation code: https://github.com/Guoxt/ADDPM.
医学图像分割需要精确的准确性,并能够评估分割不确定性,以做出明智的临床决策。去噪扩散概率模型(DDPM)在图像生成方面的进步,可以将分割视为条件生成任务,提供准确的分割和不确定性估计。然而,目前用于医学图像分割的 DDPM 存在推理效率低和预测误差的问题,这是由于正向过程结束时存在过多的噪声。为了解决这个问题,我们提出了一种加速的去噪扩散概率模型通过截断逆过程(ADDPM),专门用于医学图像分割。ADDPM 的逆过程从非高斯分布开始,并且在多次去噪后获得具有相对低噪声的预测后,提前终止。我们使用一个单独的强大分割网络来获得预分割,并根据正向扩散规则构建分割的非高斯分布。通过进一步采用单独的去噪网络,可以仅通过一个去噪步骤从低噪声预测中获得最终分割。ADDPM 将去噪步骤的数量大大减少到 vanilla DDPM 的大约十分之一。我们在四个分割任务上的实验表明,ADDPM 优于 vanilla DDPM 和现有的代表性加速 DDPM 方法。此外,ADDPM 可以很容易地与现有的先进分割模型集成,以提高分割性能并提供不确定性估计。实现代码:https://github.com/Guoxt/ADDPM。