Detection of Pulmonary Nodule using Shape-Based Feature Descriptor and Neural Network
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Date
2019Author
Nurfarhana Hazwani, Jusoh
Haniza, Yazid
Shafriza Nisha, Basah
Saufiah, Abdul Rahim
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Show full item recordAbstract
This research aims to detect the pulmonary nodule presented in lung Computed Tomography (CT) scan images. Generally, a Computer-Aided Diagnostic (CAD) system was designed and developed to aid the radiologists in medical imaging department to reduce the time and to obtain faster and better results for lung nodules diagnosis of a patient. Four major stages
involve in this paper which are pre-processing, segmentation, features extraction and classification. The images that were utilized were acquired from LIDC-IDRI database that available publicly for CT scan lung images. Initially, the median filter was employed in preprocessing to filter and remove the noises, unwanted distortions and artifacts presented in the
images during scanning process. For the second stage, the implementation of Otsu thresholding
(thresholding-based method) and watershed algorithm (region-based method) were used to
segment the nodules (Region of Interest (ROI)). Manual cropping method was implemented to
segment the nodule for further process. The main contribution of this paper is the extraction of
the features based on shape descriptor. 10 features were extracted from the segmented nodules.
Finally, all extracted features from the segmented nodules were classified into nodule candidates
and non-nodule candidates using Back Propagation Neural Network (BPNN). Based on the
experiment, it can be observed that the proposed approach works well with CT scan images and
segmented the interested nodules with the accuracy of 94%. This semi-automated approach is
fast compared with the conventional approach used by the radiologists in current time being.