Prediction of Dynamic Medical Data Series Using Neural Networks Method
نویسنده
چکیده
The aim of the paper is to develop neural networks technique for solving some important medical problem. That problem is called ”Blood gases prognosis values”. The main question, that is considered, is how to predict some parameters that describe blood gases nature in the future for a nowborn based on a set of parameters that describe this child now, and in the past. We are expected to receive some parameter value on the proper level of probability. Copyright c ©2002 IFAC
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