2019
DOI: 10.4018/ijbdah.2019070101
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A Machine Learning-Based Intelligent System for Predicting Diabetes

Abstract: In this era of technological growth, the diagnosis of diseases and finding cures, personal health parameter management and predicting the possibility of susceptibility to some diseases have become accessible and easy. Although all over the world millions of people are falling victim to diabetes, in most of the cases they are not even aware of their situation due to the silent nature of diabetes. Therefore, the objective of this research is to propose an intelligent system based on a machine learning algorithm … Show more

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Cited by 10 publications
(3 citation statements)
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“…With the massive expansion of data in healthcare sector, ML is widely employed to analyze electronic health records (EHR) or patient data and create effective clinical decision support systems for different illness diagnosis or forecasting [19] , [20] . ML techniques are applied to detect various kinds of critical diseases autonomously such as, cardiac anomalies [21] , mode of childbirth [22] , [23] , diabetes detection [24] , [25] , Alzheimer's disease diagnosis [26] etc.…”
Section: Theoretical Backgroundmentioning
confidence: 99%
“…With the massive expansion of data in healthcare sector, ML is widely employed to analyze electronic health records (EHR) or patient data and create effective clinical decision support systems for different illness diagnosis or forecasting [19] , [20] . ML techniques are applied to detect various kinds of critical diseases autonomously such as, cardiac anomalies [21] , mode of childbirth [22] , [23] , diabetes detection [24] , [25] , Alzheimer's disease diagnosis [26] etc.…”
Section: Theoretical Backgroundmentioning
confidence: 99%
“…Data mining methodologies given as application to medical research themes, for example, are gaining popularity due to their great performance in predicting performance, lowering medical expenditures, enabling immediately available judgments for saving people's lives, enhancing healthcare value and quality, and increasing patients' health [2]. However, Machine Learning (ML) techniques gather information from labeled samples and create predictions for new samples, that is widely utilized in health information analysis [11,[14][15][16], autism prediction [24], and other applications. However, ML has a significant impact in a variety of domains, including biomedical, disease prediction, disease diagnosis, and similar engineering domains [25].…”
Section: Introductionmentioning
confidence: 99%
“…The model with clustering showed a 10% increased accuracy, rise in sensitivity by 53.11% but the limitation caused here was the fall of specificity by 10.99% and also a reduced amount of dataset. [ 28 ] DTs, LR, and NB with bagging and boosting Initial datasets were collected from primary care units, which (through further changes) consisted of 11 features and a data of 30122 people. The three algorithms are used along with bagging and boosting methods, which are to decrease overfitting and increase accuracy.…”
Section: Introductionmentioning
confidence: 99%