Journal
BIOINTERFACE RESEARCH IN APPLIED CHEMISTRY
Volume 11, Issue 2, Pages 9007-9016Publisher
BIOINTERFACE RESEARCH APPLIED CHEMISTRY
DOI: 10.33263/BRIAC112.90079016
Keywords
Risk Factors; Type-1 Diabetes; Risk prediction tool; Data mining; Machine learning
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This study demonstrates a smart risk prediction tool for detecting Type-1 Diabetes using an algorithm based on machine learning and statistical approaches. By analyzing risk factors and weightage values, a common regulatory pattern was found, leading to the design of an algorithm that predicts the risk level for Type-1 Diabetes. Results of different approaches provide detailed insights into risk factors and their ranking.
In this study, a smart risk prediction tool has been demonstrated along with the algorithm, which works as a backend of the tool to detect Type-1 Diabetes. The algorithm was contrived by the weightage values that are articulated by analyzing the risk factors of Type-1 diabetes. The analysis takes place with a machine learning and statistical approach. Data were collected from a number of cases and control groups, which was preprocessed to be fit for the analysis. Risk factors were extracted by comparing two different approaches one is machine learning, and another is the statistical approach. A common regulatory pattern was found that leads to the design of an algorithm that gives a predictive result of the risk level of any user for Type-1 Diabetes. Elaborated results of different approaches have also been shown in this paper, which gives clear excogitation about risk factors and their ranking.
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