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A Computational Prototype for the Characterization of Jaundice Blood and Comparative Study on the Efficacy of Allopathy and Unani Treatments Using Spectral Data
The goal of this study is to train the prototype (Neural Network [NN]) to identify jaundice blood from the normal type. Also to make a comparative study on the efficacy of Allopathy and Unani treatments using the prototype which is already trained to identify the Jaundice blood.
Keywords
Jaundice, Blood, Neural Network
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