Limits...
Potential lung nodules identification for characterization by variable multistep threshold and shape indices from CT images.

Iqbal S, Iqbal K, Arif F, Shaukat A, Khanum A - Comput Math Methods Med (2014)

Bottom Line: Contribution of the work is the detection and segmentation of small sized nodules, low and high contrast nodules, nodules attached with vasculature, nodules attached to pleura membrane, and nodules in close vicinity of the diaphragm and lung wall in one-go.The particular techniques of the method are multistep threshold for the nodule detection and shape index threshold for false positive reduction.The results are reproducible.

View Article: PubMed Central - PubMed

Affiliation: CEME, National University of Science and Technology, Islamabad 46000, Pakistan.

ABSTRACT
Computed tomography (CT) is an important imaging modality. Physicians, surgeons, and oncologists prefer CT scan for diagnosis of lung cancer. However, some nodules are missed in CT scan. Computer aided diagnosis methods are useful for radiologists for detection of these nodules and early diagnosis of lung cancer. Early detection of malignant nodule is helpful for treatment. Computer aided diagnosis of lung cancer involves lung segmentation, potential nodules identification, features extraction from the potential nodules, and classification of the nodules. In this paper, we are presenting an automatic method for detection and segmentation of lung nodules from CT scan for subsequent features extraction and classification. Contribution of the work is the detection and segmentation of small sized nodules, low and high contrast nodules, nodules attached with vasculature, nodules attached to pleura membrane, and nodules in close vicinity of the diaphragm and lung wall in one-go. The particular techniques of the method are multistep threshold for the nodule detection and shape index threshold for false positive reduction. We used 60 CT scans of "Lung Image Database Consortium-Image Database Resource Initiative" taken by GE medical systems LightSpeed16 scanner as dataset and correctly detected 92% nodules. The results are reproducible.

Show MeSH

Related in: MedlinePlus

© Copyright Policy - open-access
Related In: Results  -  Collection


getmorefigures.php?uid=PMC4260430&req=5

Mentions: We calculated density threshold value for lung segmentation and nodules identification process by Algorithm 1.


Potential lung nodules identification for characterization by variable multistep threshold and shape indices from CT images.

Iqbal S, Iqbal K, Arif F, Shaukat A, Khanum A - Comput Math Methods Med (2014)

© Copyright Policy - open-access
Related In: Results  -  Collection

Show All Figures
getmorefigures.php?uid=PMC4260430&req=5

Mentions: We calculated density threshold value for lung segmentation and nodules identification process by Algorithm 1.

Bottom Line: Contribution of the work is the detection and segmentation of small sized nodules, low and high contrast nodules, nodules attached with vasculature, nodules attached to pleura membrane, and nodules in close vicinity of the diaphragm and lung wall in one-go.The particular techniques of the method are multistep threshold for the nodule detection and shape index threshold for false positive reduction.The results are reproducible.

View Article: PubMed Central - PubMed

Affiliation: CEME, National University of Science and Technology, Islamabad 46000, Pakistan.

ABSTRACT
Computed tomography (CT) is an important imaging modality. Physicians, surgeons, and oncologists prefer CT scan for diagnosis of lung cancer. However, some nodules are missed in CT scan. Computer aided diagnosis methods are useful for radiologists for detection of these nodules and early diagnosis of lung cancer. Early detection of malignant nodule is helpful for treatment. Computer aided diagnosis of lung cancer involves lung segmentation, potential nodules identification, features extraction from the potential nodules, and classification of the nodules. In this paper, we are presenting an automatic method for detection and segmentation of lung nodules from CT scan for subsequent features extraction and classification. Contribution of the work is the detection and segmentation of small sized nodules, low and high contrast nodules, nodules attached with vasculature, nodules attached to pleura membrane, and nodules in close vicinity of the diaphragm and lung wall in one-go. The particular techniques of the method are multistep threshold for the nodule detection and shape index threshold for false positive reduction. We used 60 CT scans of "Lung Image Database Consortium-Image Database Resource Initiative" taken by GE medical systems LightSpeed16 scanner as dataset and correctly detected 92% nodules. The results are reproducible.

Show MeSH
Related in: MedlinePlus