array(2) { ["lab"]=> string(4) "1409" ["publication"]=> string(5) "12526" } Application of L 1/2 regularization logistic method in heart disease diagnosis - Liang Yong | LabXing

Application of L 1/2 regularization logistic method in heart disease diagnosis

2014
期刊 Bio-medical materials and engineering
Heart disease has become the number one killer of human health, and its diagnosis depends on many features, such as age, blood pressure, heart rate and other dozens of physiological indicators. Although there are so many risk factors, doctors usually diagnose the disease depending on their intuition and experience, which requires a lot of knowledge and experience for correct determination. To find the hidden medical information in the existing clinical data is a noticeable and powerful approach in the study of heart disease diagnosis. In this paper, sparse logistic regression method is introduced to detect the key risk factors using L 1/2 regularization on the real heart disease data. Experimental results show that the sparse logistic L 1/2 regularization method achieves fewer but informative key features than Lasso, SCAD, MCP and Elastic net regularization approaches. Simultaneously, the proposed method can …

  • 卷 24
  • 期 6
  • 页码 3447-3454
  • IOS Press