Computational Intelligence for Medical Imaging Simulations

@article{Chang2017ComputationalIF,
  title={Computational Intelligence for Medical Imaging Simulations},
  author={Victor I. C. Chang},
  journal={Journal of Medical Systems},
  year={2017},
  volume={42},
  pages={1-12}
}
This paper describes how to simulate medical imaging by computational intelligence to explore areas that cannot be easily achieved by traditional ways, including genes and proteins simulations related to cancer development and immunity. This paper has presented simulations and virtual inspections of BIRC3, BIRC6, CCL4, KLKB1 and CYP2A6 with their outputs and explanations, as well as brain segment intensity due to dancing. Our proposed MapReduce framework with the fusion algorithm can simulate… Expand
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