Healthcare monitoring system for lymphatic treatment of leg pain: Finding the related evidence
List of Authors
  • Fauziah Abdul Wahid , Siti Aishah Muhammed Suzuki

Keyword
  • Healthcare system, Lymphatic treatment, computational intelligence

Abstract
  • To reviews whether healthcare-monitoring systems for lymphatic treatment of leg pain fits any requirement related on its selected classification. Some reviewed articles will be asses to provide a relatable explanation regarding computational intelligence, double-loop feedback theory, healthcare system and healthcare monitoring system. Each criteria provide a basic strength to fit in healthcare monitoring system for lymphatic treatment of leg pain issues. The article comparison will produce profound results with proper justification to be embed in healthcare monitoring system for lymphatic treatment of leg pain. If the comparisons fit certain requirement on healthcare system, it will be applied into the system in a meantime.

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