Performance of Cancer Prediction Based on Artificial Neural Network

نویسندگان

  • Shayma Al-Ani
  • Maysam Abbod
چکیده

Cancer has been known since of human history. The earliest written record regarding cancer can be dated back to circa 1600 BC by Egyptians. Cancer is a general condition which is subdivided into a group of conditions that are concerned with an abnormal growth in the cells within an organ or a tissue with the chance of spreading and invading other parts of the body. The number of cancer patients is increasing throughout the world,and thus emerges the necessity for new techniques to accurately predict the cancer behaviour to further improve the health status, by developing a new techniques based on intelligent systems.

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تاریخ انتشار 2015