Automatic detection of pulmonary nodules in CT images by incorporating 3D tensor filtering with local image feature analysis
•3D tensor filtering and local image features help detect lung nodule.•Image features contributes to improve the performance of CAD scheme.•False-positive nodules are reduced by using random forest classifier. Computer-aided detection (CAD) technology has been developed and demonstrated its potentia...
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Veröffentlicht in: | Physica medica 2018-02, Vol.46, p.124-133 |
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Sprache: | eng |
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Zusammenfassung: | •3D tensor filtering and local image features help detect lung nodule.•Image features contributes to improve the performance of CAD scheme.•False-positive nodules are reduced by using random forest classifier.
Computer-aided detection (CAD) technology has been developed and demonstrated its potential to assist radiologists in detecting pulmonary nodules especially at an early stage. In this paper, we present a novel scheme for automatic detection of pulmonary nodules in CT images based on a 3D tensor filtering algorithm and local image feature analysis. We first apply a series of preprocessing steps to segment the lung volume and generate the isotropic volumetric CT data. Next, a unique 3D tensor filtering approach and local image feature analysis are used to detect nodule candidates. A 3D level set segmentation method is used to correct and refine the boundaries of nodule candidates subsequently. Then, we extract the features of the detected candidates and select the optimal features by using a CFS (Correlation Feature Selection) subset evaluator attribute selection method. Finally, a random forest classifier is trained to classify the detected candidates. The performance of this CAD scheme is validated using two datasets namely, the LUNA16 (Lung Nodule Analysis 2016) database and the ANODE09 (Automatic Nodule Detection 2009) database. By applying a 10-fold cross-validation method, the CAD scheme yielded a sensitivity of 79.3% at an average of 4 false positive detections per scan (FP/Scan) for the former dataset, and a sensitivity of 84.62% and 2.8 FP/Scan for the latter dataset, respectively. Our detection results show that the use of 3D tensor filtering algorithm combined with local image feature analysis constitutes an effective approach to detect pulmonary nodules. |
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ISSN: | 1120-1797 1724-191X |
DOI: | 10.1016/j.ejmp.2018.01.019 |