National Natural Science Foundation of China (No.61273143, No.61472424);Fundamental Research Funds for the Central Universities (No.2013RC10, No.2013RC12, No.2014YC07);Xuzhou Science and Technology planning Project (No.KC14SM089)
GONG Ping, CHENG Yu-hu, WANG Xue-song. Benign or Malignant Classification of Lung Nodules Based on Semantic Attributes[J]. Acta Electronica Sinica, 2015, 43(12): 2476-2483.
DOI:
GONG Ping, CHENG Yu-hu, WANG Xue-song. Benign or Malignant Classification of Lung Nodules Based on Semantic Attributes[J]. Acta Electronica Sinica, 2015, 43(12): 2476-2483. DOI: 10.3969/j.issn.0372-2112.2015.12.020.
Benign or Malignant Classification of Lung Nodules Based on Semantic Attributes
The current computer aided diagnosis system classifies benign or malignant lung nodules mainly according to the low-level features of lung CT images.However
clinicians use the high-level semantic features of lung CT images.To overcome the inconsistency between the low-level features and high-level semantic features
a new approach of benign or malignant lung nodules classification based on semantic attributes is proposed.Firstly
lung nodule images are extracted using the threshold probability-map method.Secondly
on the one hand
some features including shape
gray
texture
size and position are extracted from lung nodule images to constitute the low-level feature set;on the other hand
according to the experts' annotation of lung nodules
the attributes are extracted to constitute the high-level attribute set.Thirdly
attribute prediction models are built to map the low-level features to the high-level attributes.Finally
the benign or malignant classification of lung nodules is performed using the predicted attributes.Experimental results on the LIDC dataset show that the proposed classification method possesses high classification accuracy and AUC value.