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               and big data analysis. The tremendous progress of the quantities of clinical data compels analysts and
               researchers to find ingenious solutions to handle the huge quantity of data in the near future. The trend
               of acceptance of recommendation systems for healthcare from researchers, patients, doctors, and com-
               munity health workers is increasing steadily with the improvement of healthcare systems that helps
               save lives. We will try to overcome the disadvantages of the proposed HRS in future work.




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