Indirect supervised fine-tuning of a tumor model parameter estimator neural network

Lilla Kisbenedek, Melánia Puskás, L. Kovács, D. Drexler
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引用次数: 1

Abstract

Personalized therapy based on mathematical foundations is a promising method for treating various types of cancer. By identifying the parameters of mathematical equations, we could gain more information about the patients and the tumor. In previous works, a vast number of training data of virtual scenarios has been generated, then used to train a neural network to predict parameters. Besides the fact that in silico experiments have been used, and the actual parameters can differ from them, the algorithm still can be utilized for initial estimation. The main objective of this work is to find the parameters of living mice, by taking advantage of the learning capability of neural networks. As a result, the implementation encompasses two main stages. First, we created another supervised neural network, that is able to solve the applied differential equations faster with fewer algebraic steps, than the traditionally used ODE solvers. Then, we find a better-fitting parameter set for the real measurement, while we retrain the original network with these parameters and the associated error, without forgetting the already learned weights from in silico experiments. The results indicate that the implemented model can be used in further research as an unconstrained optimization technique for parameter fitting.
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肿瘤模型参数估计神经网络的间接监督微调
基于数学基础的个性化治疗是治疗各种类型癌症的一种很有前途的方法。通过识别数学方程的参数,我们可以获得更多关于患者和肿瘤的信息。在以往的工作中,已经生成了大量的虚拟场景的训练数据,然后用来训练神经网络来预测参数。除了已经在计算机上进行了实验,并且实际参数与实验结果可能存在差异之外,该算法仍然可以用于初始估计。本工作的主要目的是利用神经网络的学习能力,找到活体小鼠的参数。因此,实现包含两个主要阶段。首先,我们创建了另一个监督神经网络,与传统的ODE求解器相比,它能够以更少的代数步骤更快地求解应用的微分方程。然后,我们为实际测量找到一个更好的拟合参数集,同时我们用这些参数和相关误差重新训练原始网络,同时不忘记已经从计算机实验中学习到的权重。结果表明,所实现的模型可以作为参数拟合的无约束优化技术用于进一步的研究。
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