Application of multiple empirical kernel mapping ensemble classifier based on self-paced learning in ultrasound-based computer-aided diagnosis for breast cancer / 生物医学工程学杂志
J. biomed. eng
; Sheng wu yi xue gong cheng xue za zhi;(6): 30-38, 2021.
Article
de Zh
| WPRIM
| ID: wpr-879246
Bibliothèque responsable:
WPRO
ABSTRACT
Both feature representation and classifier performance are important factors that determine the performance of computer-aided diagnosis (CAD) systems. In order to improve the performance of ultrasound-based CAD for breast cancers, a novel multiple empirical kernel mapping (MEKM) exclusivity regularized machine (ERM) ensemble classifier algorithm based on self-paced learning (SPL) is proposed, which simultaneously promotes the performance of both feature representation and the classifier. The proposed algorithm first generates multiple groups of features by MEKM to enhance the ability of feature representation, which also work as the kernel transform in multiple support vector machines embedded in ERM. The SPL strategy is then adopted to adaptively select samples from easy to hard so as to gradually train the ERM classifier model with improved performance. This algorithm is verified on a B-mode ultrasound dataset and an elastography ultrasound dataset, respectively. The results show that the classification accuracy, sensitivity and specificity on B-mode ultrasound are (86.36±6.45)%, (88.15±7.12)%, and (84.52±9.38)%, respectively, and the classification accuracy, sensitivity and specificity on elastography ultrasound are (85.97±3.75)%, (85.93±6.09)%, and (86.03±5.88)%, respectively. It indicates that the proposed algorithm can effectively improve the performance of ultrasound-based CAD for breast cancers with the potential for application.
Mots clés
Texte intégral:
1
Indice:
WPRIM
Sujet Principal:
Algorithmes
/
Tumeurs du sein
/
Ordinateurs
/
Diagnostic assisté par ordinateur
/
Échographie
/
Machine à vecteur de support
Type d'étude:
Diagnostic_studies
/
Prognostic_studies
Limites du sujet:
Humans
langue:
Zh
Texte intégral:
J. biomed. eng
/
Sheng wu yi xue gong cheng xue za zhi
Année:
2021
Type:
Article