Author/Authors :
Wang, Wendong Yan’an University - College of Mathematics and Computer Science - Yan’an Shaanxi, China
Abstract :
In recent years, with the acceleration of the aging process and the aggravation of life pressure, the proportion of chronic epidemics
has gradually increased. A large amount of medical data will be generated during the hospitalization of diabetics. It will have
important practical significance and social value to discover potential medical laws and valuable information among medical
data. In view of this, an improved deep convolutional neural network (“CNN+” for short) algorithm was proposed to predict
the changes of diabetes. Firstly, the bagging integrated classification algorithm was used instead of the output layer function of
the deep CNN, which can help the improved deep CNN algorithm constructed for the data set of diabetic patients and improve
the accuracy of classification. In this way, the “CNN+” algorithm can take the advantages of both the deep CNN and the
bagging algorithm. On the one hand, it can extract the potential features of the data set by using the powerful feature extraction
ability of deep CNN. On the other hand, the bagging integrated classification algorithm can be used for feature classification, so
as to improve the classification accuracy and obtain better disease prediction effect to assist doctors in diagnosis and treatment.
Experimental results show that compared with the traditional convolutional neural network and other classification algorithm,
the “CNN+” model can get more reliable prediction results.