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Statistics and Deep Belief Network-Based Cardiovascular Risk Prediction / 대한의료정보학회지
Healthcare Informatics Research ; : 169-175, 2017.
Article in English | WPRIM | ID: wpr-41212
ABSTRACT

OBJECTIVES:

Cardiovascular predictions are related to patients' quality of life and health. Therefore, a risk prediction model for cardiovascular conditions is needed.

METHODS:

In this paper, we propose a cardiovascular disease prediction model using the sixth Korea National Health and Nutrition Examination Survey (KNHANES-VI) 2013 dataset to analyze cardiovascular-related health data. First, statistical analysis was performed to find variables related to cardiovascular disease using health data related to cardiovascular disease. Second, a model of cardiovascular risk prediction by learning based on the deep belief network (DBN) was developed.

RESULTS:

The proposed statistical DBN-based prediction model showed accuracy and an ROC curve of 83.9% and 0.790, respectively. Thus, the proposed statistical DBN performed better than other prediction algorithms.

CONCLUSIONS:

The DBN proposed in this study appears to be effective in predicting cardiovascular risk and, in particular, is expected to be applicable to the prediction of cardiovascular disease in Koreans.
Subject(s)

Full text: Available Index: WPRIM (Western Pacific) Main subject: Quality of Life / Cardiovascular Diseases / Nutrition Surveys / ROC Curve / Dataset / Machine Learning / Korea / Learning Type of study: Etiology study / Prognostic study Country/Region as subject: Asia Language: English Journal: Healthcare Informatics Research Year: 2017 Type: Article

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Full text: Available Index: WPRIM (Western Pacific) Main subject: Quality of Life / Cardiovascular Diseases / Nutrition Surveys / ROC Curve / Dataset / Machine Learning / Korea / Learning Type of study: Etiology study / Prognostic study Country/Region as subject: Asia Language: English Journal: Healthcare Informatics Research Year: 2017 Type: Article