Network Modeling Approach for the Nonlinear Dynamics of the Osseous Bio-Physics and Bio-Mathematics

K. Al-Utaibi, M. Idrees, Sadiq M. Sait, S. Iqbal
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Abstract

Bone is termed the smart material, and its modeling is of great interest in biomechanics, biochemistry, endocrinology, and oncology. The bone health of cancer patients is directly affected by hormonal imbalances, receptor-mediated tumor-targeted processes, and disturbed bone mineral density. Researchers have used different therapeutic approaches to monitor bone health during and after cancer treatment. This paper describes a reverse process of bone rebuilding after the resorption of bone via cancer treatment. A detailed model is used for hormonal therapy, which leads to the physical changes in trabecular structure. These changes are demonstrated with the aid of artificial neural networks and Petri nets. This paper connects the structural modeling of the bone trabecula with chemical kinetics. The main goal of this study is to provide a PN model of bone metastasis and an analysis of its structural properties. These properties are very helpful in demonstrating the complex dynamics of bone metastasis. Although both ANNs and PNs are well organized in the areas of machine learning and network modeling, neither technique is without limitations. ANNs, for example, are very efficient machine-learning applications, but their utter lack of explanation capabilities classifies them as a “black-box” technique. On the other hand, PNs are an effective modeling technique, but their theory does not include machine learning. This paper provides a hybrid approach to address the two approaches in a novel manner.
骨生物物理与生物数学非线性动力学的网络建模方法
骨被称为智能材料,其建模在生物力学、生物化学、内分泌学和肿瘤学等领域都引起了极大的兴趣。癌症患者的骨骼健康直接受到激素失衡、受体介导的肿瘤靶向过程和骨矿物质密度紊乱的影响。研究人员使用不同的治疗方法来监测癌症治疗期间和之后的骨骼健康。本文描述了通过癌症治疗骨吸收后骨重建的逆向过程。一个详细的模型用于激素治疗,导致小梁结构的物理变化。这些变化是借助人工神经网络和Petri网来证明的。本文将骨小梁的结构建模与化学动力学联系起来。本研究的主要目的是提供骨转移的PN模型并分析其结构特性。这些性质对证明骨转移的复杂动力学非常有帮助。尽管ann和pn在机器学习和网络建模领域都有很好的组织,但这两种技术都没有局限性。例如,人工神经网络是非常高效的机器学习应用程序,但它们完全缺乏解释能力,因此被归类为“黑箱”技术。另一方面,粒子网络是一种有效的建模技术,但它们的理论不包括机器学习。本文以一种新颖的方式提供了一种混合方法来解决这两种方法。
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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