AbstractDiabetes mellitus has become a general chronic disease as a result of changes in customary diets. Impaired fasting glucose (IFG) and fasting plasma glucose (FPG) levels are two of the indices which physicians use to diagnose diabetes mellitus. Although this is a fairly accurate approach, the tests are expensive and time consuming. This study attempts to construct a prediction model for Type II diabetes using anthropometrical body surface scanning data. Four data mining approaches, including backpropagation neural network, decision tree, logistic regression, and rough set, were used to select the relevant features from the data to predict diabetes. Accuracy of classification was evaluated for these approaches. The result showed that ...
Abstract: This paper helps in predicting diabetes by applying data mining technique. The discovery o...
Diabetes mellitus is a chronic disease and a health challenge worldwide. According to the Internatio...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...
AbstractDiabetes mellitus has become a general chronic disease as a result of changes in customary d...
Background The aim of this study was to evaluate the anthropometric measurements most associated wi...
Background: Diabetes mellitus (DM) is one of the most common diseases in the world. Complications of...
Abstract Diabetes is a chronic (long-lasting) health condition that affects how your body turns foo...
Diabetes is one of the most common non-communicable diseases in the world. Diabetes affects the abil...
Diabetes is a chronic disease that occurs when blood glucose becomes very high. It is responsible fo...
Data mining techniques explore critical information in various domains (for example in CRM (customer...
Diabetes is among the major public health problem especially in developing countries which cause by ...
Background: Diabetes mellitus has several complications. The Late diagnosis of diabetes in people le...
Introduction: Nowadays, diabetic disease is one of the most common, dangerous and costly diseases in...
One of the most powerful technologies which are of high interest in the computer world is data minin...
Diabetes is a disease where the predominant finding is high blood sugar. The high blood sugar may ei...
Abstract: This paper helps in predicting diabetes by applying data mining technique. The discovery o...
Diabetes mellitus is a chronic disease and a health challenge worldwide. According to the Internatio...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...
AbstractDiabetes mellitus has become a general chronic disease as a result of changes in customary d...
Background The aim of this study was to evaluate the anthropometric measurements most associated wi...
Background: Diabetes mellitus (DM) is one of the most common diseases in the world. Complications of...
Abstract Diabetes is a chronic (long-lasting) health condition that affects how your body turns foo...
Diabetes is one of the most common non-communicable diseases in the world. Diabetes affects the abil...
Diabetes is a chronic disease that occurs when blood glucose becomes very high. It is responsible fo...
Data mining techniques explore critical information in various domains (for example in CRM (customer...
Diabetes is among the major public health problem especially in developing countries which cause by ...
Background: Diabetes mellitus has several complications. The Late diagnosis of diabetes in people le...
Introduction: Nowadays, diabetic disease is one of the most common, dangerous and costly diseases in...
One of the most powerful technologies which are of high interest in the computer world is data minin...
Diabetes is a disease where the predominant finding is high blood sugar. The high blood sugar may ei...
Abstract: This paper helps in predicting diabetes by applying data mining technique. The discovery o...
Diabetes mellitus is a chronic disease and a health challenge worldwide. According to the Internatio...
Data mining plays an important part in the healthcare sector disease prediction. Techniques of data ...