Quantitative Assessment of an Artificial Neural Network for the Variation in Immunity to Salmonella Infection Among Sudanese and Chinese Populations and the Relationship Between HLA-DQB1 and Antibody: A Preliminary Study
Abstract:Background: Salmonella enterica serovar typhi infection is a worldwide bacterial disease still remains a public health problem and the resistance to the infection and clearance of the bacteria may differ between Sudanese and Chinese populations. Objectives: We aimed to evaluate the difference in immunity to Salmonella infection and the relationship of HLA-DQB1 and antibody in the two populations using an artificial neural network (ANN). Methods: An ANN was constructed by data collected from resolved Salmonella… Show more
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