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A heart failure staging model based on machine learning classification algorithms / 中国组织工程研究
Chinese Journal of Tissue Engineering Research ; (53): 7938-7942, 2014.
Article in Chinese | WPRIM | ID: wpr-458499
ABSTRACT

BACKGROUND:

Early detection and accurate staging diagnosis of heart failure are the basis of good clinical therapy efficacy. Due to lack of simple and effective staging model for the diagnosis of heart failure, it is difficult to diagnose heart failure in clinics, leading to poor control of heart failure.

OBJECTIVE:

To establish the disease staging model based on Adaboost and SVM for heart failure, and improve the accuracy of diagnosis and staging of heart failure.

METHODS:

A total of 194 cases were roled into this study, including heart failure patients and healthy physical examination persons. According to the stage standards formulated by American Colege of Cardiology and American Heart Association, specific clinical feature parameters closely related to heart failure were colected and selected. Based on clinical diagnosis results and using Adaboost model and SVM model, we trained the models for heart failure diagnosis and staging, thus obtaining diagnosis model. RESULTS AND

CONCLUSION:

The parameters included stroke volume, cardiac output, left ventricular ejection fraction, left atrial diameter, left ventricular internal diameter at end-systole, N-terminal pro-brain natriuretic peptide and heart rate variability. As for the Adaboost model, its sensitivity and specificity was 100% and 94.4%, respectively. At the same time the SVM model had good sensitivity and specificity, 86.5% and 89.4% respectively. Adaboost classification model can be accurate in the diagnosis of heart failure symptoms, the accuracy reached 89.36%. On the basis of the diagnosis of heart failure, the SVM classification model is effective in staging the severity of heart failure, staging accuracy for staging B and C was 86.49% and 81.48%, respectively. The findings indicate that, combining Adaboost and SVM machine learning models could provide an accurate diagnosis and staging model for heart failure.

Full text: Available Index: WPRIM (Western Pacific) Type of study: Practice guideline / Prognostic study / Screening study Language: Chinese Journal: Chinese Journal of Tissue Engineering Research Year: 2014 Type: Article

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Full text: Available Index: WPRIM (Western Pacific) Type of study: Practice guideline / Prognostic study / Screening study Language: Chinese Journal: Chinese Journal of Tissue Engineering Research Year: 2014 Type: Article