Optimized Two-Stage Ensemble Model for Mammography Mass Recognition - 01/09/20
, B. Lahasan b| pagine | 10 |
| Iconografia | 11 |
| Video | 0 |
| Altro | 0 |
Graphical abstract |
Highlights |
• | To introduce a novel optimized two-stage ensemble-based model to handle the problem of mammography mass diagnosis. |
• | To optimize the model using an efficient optimizer. |
• | To evaluate the diagnosis model on DDSM database mammography images. |
Abstract |
Objectives |
Mammography mass recognition is considered as a very challenge pattern recognition problem due to the high similarity between normal and abnormal masses. Therefore, the main objective of this study is to develop an efficient and optimized two-stage recognition model to tackle this recognition task.
Material and methods |
Basically, the developed recognition model combines an ensemble of linear Support Vector Machine (SVM) classifiers with a Reinforcement Learning-based Memetic Particle Swarm Optimizer (RLMPSO) as RLMPSO-SVM recognition model. RLMPSO is used to construct a two-stage of an ensemble of linear SVM classifiers by performing simultaneous SVM parameters tuning, features selection, and training instances selection. The first stage of RLMPSO-SVM recognition model is responsible about recognizing the input ROI mammography masses as normal or abnormal mass pattern. Meanwhile, the second stage of RLMPSO-SVM model used to perform further recognition for abnormal ROIs as malignant or benign masses. In order to evaluate the effectiveness of RLMPSO-SVM, a total of 1187 normal ROIs, 111 malignant ROIs, and 135 benign ROIs were randomly selected from DDSM database images.
Results |
Reported results indicated that RLMPSO-SVM model was able to achieve performances of 97.57% sensitivity rate with 97.86% specificity rate for normal vs. abnormal recognition cases. For malignant vs. benign recognition performance it was reported of 97.81% sensitivity rate with 96.92% specificity rate.
Conclusion |
Reported results indicated that RLMPSO-SVM recognition model is an effective tool that could assist the radiologist during the diagnosis of the presented abnormalities in mammography images. The outcomes indicated that RLMPSO-SVM significantly outperformed various SVM-based models as well as other variants of computational intelligence models including multi-layer perceptron, naive Bayes classifier, and k-nearest neighbor.
Il testo completo di questo articolo è disponibile in PDF.Keywords : Mammography mass recognition, Support vector machine, Particle swarm optimizer, Ensemble model
Mappa
Vol 41 - N° 4
P. 195-204 - agosto 2020 Ritorno al numeroBenvenuto su EM|consulte, il riferimento dei professionisti della salute.
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