info:eu-repo/semantics/article
Develop a Model for Assessing the Most Efficient Diseases Diagnosis using Machine Learning
Fecha
2022-01-01Registro en:
10.1109/ICACITE53722.2022.9823933
2022 2nd International Conference on Advance Computing and Innovative Technologies in Engineering, ICACITE 2022
2-s2.0-85135472454
SCOPUS_ID:85135472454
0000 0001 2196 144X
Autor
Vives, Luis
Basha, N. Khadar
Poonam
Gehlot, Anita
Chole, Vikrant
Pant, Kumud
Institución
Resumen
so, machine learning techniques are being developed to improve performance and maintenance prediction. Increasing our knowledge of the relationship between humans and algorithms, Because data is so valuable, improving strategies for intelligently having to manage the now-ubiquitous content infrastructures is a necessary part of the process toward completely autonomous agents. Numerous researchers recently developed numerous computer-aided diagnostic algorithms employing various supervised learning approaches. Early identification of sickness may help to reduce the number of people who die as a result of these illnesses. Using machine learning techniques, this research creates an efficient automated illness diagnostic algorithm. We chose three key disorders in this paper: coronavirus, cardiovascular diseases, and diabetes. The data are inputted into a mobile application in the suggested model, the investigation is then done in a real-time dataset that used a pre-trained model machine learning technique trained within the same dataset then implemented in firebase, and lastly, the illness identification result can be seen in the mobile application. Logistic regression is a method of prediction calculation