A deep neural network for operator learning enhanced by attention and gating mechanisms for long-time forecasting of tumor growth

IF 8.7 2区 工程技术 Q1 Mathematics Engineering with Computers Pub Date : 2024-07-10 DOI:10.1007/s00366-024-02003-0
Qijing Chen, He Li, Xiaoning Zheng
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Abstract

Forecasting tumor progression and assessing the uncertainty of predictions play a crucial role in clinical settings, especially for determining disease outlook and making informed decisions about treatment approaches. In this work, we propose TGM-ONets, a deep neural operator learning (PI-DeepONet) based computational framework, which combines bioimaging and tumor growth modeling (TGM) for enhanced prediction of tumor growth. Deep neural operators have recently emerged as a powerful tool for learning the solution maps between the function spaces, and they have demonstrated their generalization capability in making predictions based on unseen input instances once trained. Incorporating the physics laws into the loss function of the deep neural operator can significantly reduce the amount of the training data. The novelties of the design of TGM-ONets include the employment of a convolutional block attention module (CBAM) and a gating mechanism (i.e., mixture of experts (MoE)) to extract the features of the input images. Our results show that the TGM-ONets not only can capture the detailed morphological characteristics of the mild and aggressive tumors within and outside the training domain but also can be used to predict the long-term dynamics of both mild and aggressive tumor growth for up to 6 months with a maximum error of less than 6.7 \(\times 10^{-2}\) for unseen input instances with two or three snapshots added. We also systematically study the effects of the number of training snapshots and noisy data on the performance of TGM-ONets as well as quantify the uncertainty of the model predictions. We demonstrate the efficiency and accuracy by comparing the performance of TGM-ONets with three state-of-the-art (SOTA) baseline models. In summary, we propose a new deep learning model capable of integrating the TGM and sequential observations of tumor morphology to improve the current approaches for predicting tumor growth and thus provide an advanced computational tool for patient-specific tumor prognosis.

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利用注意力和门控机制增强运算器学习的深度神经网络,用于肿瘤生长的长期预测
预测肿瘤进展和评估预测的不确定性在临床环境中发挥着至关重要的作用,尤其是在确定疾病前景和就治疗方法做出明智决策方面。在这项工作中,我们提出了一种基于深度神经算子学习(PI-DeepONet)的计算框架--TGM-ONets,它结合了生物成像和肿瘤生长建模(TGM),用于增强肿瘤生长预测。最近,深度神经算子已成为学习函数空间之间解映射的强大工具,它们在训练后根据未见输入实例进行预测方面已证明了自己的泛化能力。将物理定律纳入深度神经算子的损失函数可以大大减少训练数据量。TGM-ONets 的设计新颖之处在于采用了卷积块注意模块(CBAM)和门控机制(即专家混合物(MoE))来提取输入图像的特征。我们的研究结果表明,TGM-ONets不仅能捕捉到训练域内外轻度和侵袭性肿瘤的详细形态特征,还能用于预测轻度和侵袭性肿瘤长达6个月的长期生长动态,对于添加了两到三个快照的未见输入实例,最大误差小于6.7(\times 10^{-2}\)。我们还系统地研究了训练快照数量和噪声数据对 TGM-ONets 性能的影响,并量化了模型预测的不确定性。我们将 TGM-ONets 的性能与三个最先进的(SOTA)基线模型进行了比较,从而证明了其效率和准确性。总之,我们提出了一种新的深度学习模型,该模型能够整合 TGM 和肿瘤形态学的连续观察结果,从而改进当前预测肿瘤生长的方法,为患者特异性肿瘤预后提供先进的计算工具。
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来源期刊
Engineering with Computers
Engineering with Computers 工程技术-工程:机械
CiteScore
16.50
自引率
2.30%
发文量
203
审稿时长
9 months
期刊介绍: Engineering with Computers is an international journal dedicated to simulation-based engineering. It features original papers and comprehensive reviews on technologies supporting simulation-based engineering, along with demonstrations of operational simulation-based engineering systems. The journal covers various technical areas such as adaptive simulation techniques, engineering databases, CAD geometry integration, mesh generation, parallel simulation methods, simulation frameworks, user interface technologies, and visualization techniques. It also encompasses a wide range of application areas where engineering technologies are applied, spanning from automotive industry applications to medical device design.
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