Enhancing Robustness of Medical Image Segmentation Model with Neural Memory Ordinary Differential Equation.

International journal of neural systems Pub Date : 2023-12-01 Epub Date: 2023-09-23 DOI:10.1142/S0129065723500600
Junjie Hu, Chengrong Yu, Zhang Yi, Haixian Zhang
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Abstract

Deep neural networks (DNNs) have emerged as a prominent model in medical image segmentation, achieving remarkable advancements in clinical practice. Despite the promising results reported in the literature, the effectiveness of DNNs necessitates substantial quantities of high-quality annotated training data. During experiments, we observe a significant decline in the performance of DNNs on the test set when there exists disruption in the labels of the training dataset, revealing inherent limitations in the robustness of DNNs. In this paper, we find that the neural memory ordinary differential equation (nmODE), a recently proposed model based on ordinary differential equations (ODEs), not only addresses the robustness limitation but also enhances performance when trained by the clean training dataset. However, it is acknowledged that the ODE-based model tends to be less computationally efficient compared to the conventional discrete models due to the multiple function evaluations required by the ODE solver. Recognizing the efficiency limitation of the ODE-based model, we propose a novel approach called the nmODE-based knowledge distillation (nmODE-KD). The proposed method aims to transfer knowledge from the continuous nmODE to a discrete layer, simultaneously enhancing the model's robustness and efficiency. The core concept of nmODE-KD revolves around enforcing the discrete layer to mimic the continuous nmODE by minimizing the KL divergence between them. Experimental results on 18 organs-at-risk segmentation tasks demonstrate that nmODE-KD exhibits improved robustness compared to ODE-based models while also mitigating the efficiency limitation.

用神经记忆常微分方程增强医学图像分割模型的鲁棒性。
深度神经网络(DNN)已成为医学图像分割中的一个突出模型,在临床实践中取得了显著进展。尽管文献中报道了有希望的结果,但DNN的有效性需要大量高质量的注释训练数据。在实验过程中,当训练数据集的标签存在中断时,我们观察到DNN在测试集上的性能显著下降,这揭示了DNN鲁棒性的内在局限性。在本文中,我们发现神经记忆常微分方程(nmODE)是最近提出的一种基于常微分方程的模型,当使用干净的训练数据集进行训练时,它不仅解决了鲁棒性的限制,而且提高了性能。然而,众所周知,与传统离散模型相比,基于ODE的模型往往计算效率较低,这是因为ODE求解器需要进行多个函数评估。认识到基于ODE的模型的效率限制,我们提出了一种新的方法,称为基于nmODE的知识提取(nmODE-KD)。该方法旨在将知识从连续nmODE转移到离散层,同时提高模型的鲁棒性和效率。nmODE-KD的核心概念围绕着通过最小化离散层之间的KL发散来强制离散层模拟连续nmODE。在18个有风险的器官分割任务上的实验结果表明,与基于ODE的模型相比,nmODE-KD表现出更好的鲁棒性,同时也减轻了效率限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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