Mining of ADR And Symptoms for Immediate Patient Treatment
DOI:
https://doi.org/10.32628/IJSRSET196252Keywords:
ADR, Classification, Clustering, Query Planning, Association Rule MiningAbstract
Adverse Drug Reaction is the most critical issue in the medical field. The importance of chemical drug reaction is severe and spreading easily. It causes severe major problem in hospitalization. Here it gives you a detailed view of ADR effects and it mines the data to get instantaneous treatment for the patients. Adverse drug reaction is an cause of harm which affects the patient by taking a medicine. When a person intake a capsule without prescribed by a doctor then it has a high probability of ADR in it. So, it is the important issue in the drug safety. Many ADR are found after post-marketing clinical trials so identifying ADR in pre-marketing trial is more important rather than post trials. Statistical data is the main key factor in mining concept to detect the ADR as early as possible in the drug safety.
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