Mobile application of Medical diagnosis with the Implementation of Artificial Intelligence in Metropolitan Lima
How to Cite?
Carlos Caceres-Gonzales, Jose Delgado-Gomez, Alexi Delgado, Enrique Lee Huamaní, "Mobile application of Medical diagnosis with the Implementation of Artificial Intelligence in Metropolitan Lima," International Journal of Engineering Trends and Technology, vol. 69, no. 6, pp. 199-205, 2021. Crossref, https://doi.org/10.14445/22315381/IJETT-V69I6P229
Abstract
The objective is to avoid a greater number of infections, diagnosing patients through a mobile application that will solve and avoid the crowds of people outside the medical centers, The operation used was XP since we have the established weeks and processes to follow stages, which There are 4, planning, design, coding and testing, balsamiq was used for the prototypes, with the help of AI and “Android” mobile application; The statistical data obtained comes from the Peruvian medical college, which provides us with exact data on how the situation is in our society and we can apply it to solve the problem.
Keywords
Artificial intelligence, Component: mobile app, Medical diagnosis.
Reference
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