| Literature DB >> 35070225 |
Raja Krishnamoorthi1, Shubham Joshi2, Hatim Z Almarzouki3, Piyush Kumar Shukla4, Ali Rizwan5, C Kalpana6, Basant Tiwari7.
Abstract
Diabetes is a chronic disease that continues to be a significant and global concern since it affects the entire population's health. It is a metabolic disorder that leads to high blood sugar levels and many other problems such as stroke, kidney failure, and heart and nerve problems. Several researchers have attempted to construct an accurate diabetes prediction model over the years. However, this subject still faces significant open research issues due to a lack of appropriate data sets and prediction approaches, which pushes researchers to use big data analytics and machine learning (ML)-based methods. Applying four different machine learning methods, the research tries to overcome the problems and investigate healthcare predictive analytics. The study's primary goal was to see how big data analytics and machine learning-based techniques may be used in diabetes. The examination of the results shows that the suggested ML-based framework may achieve a score of 86. Health experts and other stakeholders are working to develop categorization models that will aid in the prediction of diabetes and the formulation of preventative initiatives. The authors perform a review of the literature on machine models and suggest an intelligent framework for diabetes prediction based on their findings. Machine learning models are critically examined, and an intelligent machine learning-based architecture for diabetes prediction is proposed and evaluated by the authors. In this study, the authors utilize our framework to develop and assess decision tree (DT)-based random forest (RF) and support vector machine (SVM) learning models for diabetes prediction, which are the most widely used techniques in the literature at the time of writing. It is proposed in this study that a unique intelligent diabetes mellitus prediction framework (IDMPF) is developed using machine learning. According to the framework, it was developed after conducting a rigorous review of existing prediction models in the literature and examining their applicability to diabetes. Using the framework, the authors describe the training procedures, model assessment strategies, and issues associated with diabetes prediction, as well as solutions they provide. The findings of this study may be utilized by health professionals, stakeholders, students, and researchers who are involved in diabetes prediction research and development. The proposed work gives 83% accuracy with the minimum error rate.Entities:
Mesh:
Year: 2022 PMID: 35070225 PMCID: PMC8767376 DOI: 10.1155/2022/1684017
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Framework of ML techniques.
Figure 2SVM classification. (a) SVM hyperplane classification. (b) SVM identification of the right hyperplane. (c) Identification of the right hyperplane. (d) SVM classification of two classes.
Figure 3Representation of the bar chart of this data set.
Figure 4Analysis of correlation between variables.
Figure 5Analysis between BMI vs pregnancy vs diabetes variables.
Figure 6Existing association between the test result and the pedigree function.
Figure 7BMI had a close association with the occurrence of diabetes.
Figure 8Confusion matrix of ML algorithms.
Figure 9ROC of logistic regression.