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A Neural Network Based Classification of Human Blood Cells in a Multiphysic Framework

机译:在多物理框架下基于神经网络的人体血细胞分类

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Living cells possess properties that enable them to withstand the physiological environment as well as mechanical stimuli occurring within and outside the body. Any deviation from these properties will undermine the physical integrity of the cells as well as their biological functions. Thus, a quantitative study in single cell mechanics needs to be conducted. In this paper we will examine fluid flow and Neo-Hookean deformation. Particularly, a mechanical model to describe the cellular adhesion with detachment is proposed. Restricting the interest on the contact surface and elaborating again the computational results, it is possible to develop our idea about to reproduce the phases coexistence in the adhesion strip. Subsequently, a number of simulations have been carried out, involving a number of human cells with different mechanical properties. All the collected data have been used in order to train and test a suitable Artificial Neural Network (ANN) in order to classify the kind of cell. Obtained results assure good performances of the implemented classifier, with very interesting applications.
机译:活细胞具有使其能够承受生理环境以及发生在体内和体外的机械刺激的特性。这些特性的任何偏离都将破坏细胞的物理完整性及其生物学功能。因此,需要进行单细胞力学的定量研究。在本文中,我们将研究流体流动和新霍克变形。特别是,提出了一种描述细胞粘附脱落的力学模型。限制了接触表面上的关注并再次阐述了计算结果,有可能发展出我们的想法,以再现粘合带中的相共存。随后,进行了许多模拟,涉及许多具有不同机械特性的人体细胞。已使用所有收集的数据来训练和测试合适的人工神经网络(ANN),以便对细胞的类型进行分类。获得的结果可确保在非常有趣的应用中实现的分类器具有良好的性能。

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