• Corpus ID: 15787545

Artificial Intelligence in Medical Diagnosis

@inproceedings{Sikchi2012ArtificialII,
  title={Artificial Intelligence in Medical Diagnosis},
  author={Smita Sushil Sikchi and Sushil Sikchi and M. S. S. Ali},
  year={2012}
}
The logical thinking of medical practitioner involves a lot of subjective decision making and its complexity makes traditional quantitative approaches of analysis inappropriate. The computer based diagnostic tools and knowledge base certainly helps for early diagnosis of diseases. The intelligent decision making systems can appropriately handle both the uncertainty and imprecision. This paper discusses about the application potential of artificial intelligence in medical diagnosis. The fuzzy… 

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