Abstract
The most common disorder affecting millions of population worldwide due to insufficient release of insulin by pancreas is diabetes. Early detection or precaution of diabetes is necessary, otherwise leads to many complicated problems. Predicting diabetes at early stages with appropriate treatment, individuals can maintain a happy life. If the conventional diabetes detection method is tedious, the identification of diabetes from clinical and physical data requires an automated system. This paper proposes an approach to enhance diabetes prediction using deep learning techniques. Based on the Convolutional Long Short-term Memory (CLSTM), we developed a diabetes classification model and compared with the existing methods on the Pima Indians Diabetes Database (PIDD). We assessed the findings of various classification approaches in this study. The proposed approach is further improved by an efficient pre-processing mechanism called multivariate imputation by chained equations. The outcomes are promising compared to existing machine learning approaches and other research models.
Highlights
Diabetes is affecting the world's elderly population in a very drastic way [1]
By 2019, 463 million individuals around the globe had diabetes. It is expected by the International Diabetes Federation (IDF) that the number of patients rises to 700 million individuals in near future
We have found from our observation that five features (Glucose, Age, body mass index (BMI), BP, Insulin) as important
Summary
By 2019, 463 million individuals around the globe had diabetes. It is expected by the International Diabetes Federation (IDF) that the number of patients rises to 700 million individuals in near future. Diabetes occurs due to the inconsistency of glucose levels in the blood. Type 1 diabetes is due to little insulin production and type 2 occurs due to blood cells becoming insulin resistant. The fundamental cause of diabetes remains unclear, but scientists agree that diabetes plays a significant role in both genetic factors and environmental lifestyles. Though it is incurable, therapy and medicine can handle it by maintaining the levels in check
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More From: International Journal of Advanced Computer Science and Applications
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