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Three Dimensional Simulation Method in Early Process of Division and Growth for Tumour Cells 被引量:1

Three Dimensional Simulation Method in Early Process of Division and Growth for Tumour Cells
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摘要 The process of division, growth and death for tumour cell mass in the early is simulated. An integrated GUI is provided for users to set the value of each parameters, which are cell growth rates, cell mass division rates, cell mass death rates, simulate type, maximum running time, polarity and cell colour. It can display the growth process of each cell on result GUI. Also, it can display the values of each parameters for observing and analysing in current life cycle on result GUI, which are cell mass division times, cell mass death rate, cell mass division rate and cell mass growth rate. In the process of simulation, The cell growth rate is described by the approach to combine the exponential model with the linear model. In addition, a linked list data structure to store the tumour cells is used by the cellular automata for a reference to determine the position of each cell. It sets up two linked list to store the cells, one of them save the new small division cells and the other one save the big cell. That can make the painting process of cells on result GUI clearer and more organized. At last, the polarity oftumour growth is described for determining the growth direction of cells. The process of division, growth and death for tumour cell mass in the early is simulated. An integrated GUI is provided for users to set the value of each parameters, which are cell growth rates, cell mass division rates, cell mass death rates, simulate type, maximum running time, polarity and cell colour. It can display the growth process of each cell on result GUI. Also, it can display the values of each parameters for observing and analysing in current life cycle on result GUI, which are cell mass division times, cell mass death rate, cell mass division rate and cell mass growth rate. In the process of simulation, The cell growth rate is described by the approach to combine the exponential model with the linear model. In addition, a linked list data structure to store the tumour cells is used by the cellular automata for a reference to determine the position of each cell. It sets up two linked list to store the cells, one of them save the new small division cells and the other one save the big cell. That can make the painting process of cells on result GUI clearer and more organized. At last, the polarity oftumour growth is described for determining the growth direction of cells.
出处 《Computer Aided Drafting,Design and Manufacturing》 2014年第3期75-83,共9页 计算机辅助绘图设计与制造(英文版)
基金 Partially Supported by"863"High-tech Research and Development Program(No.2001AA412011) National Natural Science Foundation of China(No.60174037,No.50275013) Education Office of Liaoning Province(No.LR2013060) Natural Science Foundation of Liaoning Province(No.2013020123) Shenyang Science and Technology Plan Project(F14-231-1-20)
关键词 TUMOUR SIMULATION cell growth cell division tumour simulation cell growth cell division
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参考文献10

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