Early and Accurate Model of Malignant Lung Nodule Detection System with Less False Positives

ABSTRACT The objective of this work is to identify the malignant lung nodules accurately and early with less false positives. ‘Nodule’ is the 3mm to 30mm diameter size tissue clusters present inside the lung parenchyma region. Segmenting such a small nodules from consecutive CT scan slices are a cha...

Full description

Bibliographic Details
Main Authors: Senthilkumar Krishnamurthy, Ganesh Narasimhan, Umamaheswari Rengasamy
Format: Article
Language:English
Published: Instituto de Tecnologia do Paraná (Tecpar) 2018-10-01
Series:Brazilian Archives of Biology and Technology
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1516-89132018000100308&lng=en&tlng=en
id doaj-cdd1068dcf5e406f98ba4ec6c840e291
record_format Article
spelling doaj-cdd1068dcf5e406f98ba4ec6c840e2912020-11-25T01:06:24ZengInstituto de Tecnologia do Paraná (Tecpar)Brazilian Archives of Biology and Technology1678-43242018-10-0161010.1590/1678-4324-2018160536S1516-89132018000100308Early and Accurate Model of Malignant Lung Nodule Detection System with Less False PositivesSenthilkumar KrishnamurthyGanesh NarasimhanUmamaheswari RengasamyABSTRACT The objective of this work is to identify the malignant lung nodules accurately and early with less false positives. ‘Nodule’ is the 3mm to 30mm diameter size tissue clusters present inside the lung parenchyma region. Segmenting such a small nodules from consecutive CT scan slices are a challenging task. In our work Auto-seed clustering based segmentation technique is used to segment all the possible nodule candidates. Efficient shape and texture features (2D and 3D) were computed to eliminate the false nodule candidates. The change in centroid position of nodule candidates from consecutive slices was used as a measure to remove the vessels. The two-stage classifier is used in this work to classify the malignant and benign nodules. First stage rule-based classifier producing 100 % sensitivity, but with high false positive of 12.5 per patient scan. The BPN based ANN classifier is used as the second-stage classifier which reduces a false positive to 2.26 per patient scan with a reasonable sensitivity of 88.8%. The Rate of Nodule Growth (RNG) was computed in our work to measure the nodules growth between the two scans of the same patient taken at different time interval. Finally, the nodule growth predictive measure was modeled through the features such as compactness (CO), mass deficit (MD), mass excess (ME) and isotropic factor(IF). The developed model results show that the nodules which have low CO, low IF, high MD and high ME values might have the potential to grow in future.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1516-89132018000100308&lng=en&tlng=enLung cancer3-D Image Segmentation3-D image featuresVolume growthLung nodule classifier
collection DOAJ
language English
format Article
sources DOAJ
author Senthilkumar Krishnamurthy
Ganesh Narasimhan
Umamaheswari Rengasamy
spellingShingle Senthilkumar Krishnamurthy
Ganesh Narasimhan
Umamaheswari Rengasamy
Early and Accurate Model of Malignant Lung Nodule Detection System with Less False Positives
Brazilian Archives of Biology and Technology
Lung cancer
3-D Image Segmentation
3-D image features
Volume growth
Lung nodule classifier
author_facet Senthilkumar Krishnamurthy
Ganesh Narasimhan
Umamaheswari Rengasamy
author_sort Senthilkumar Krishnamurthy
title Early and Accurate Model of Malignant Lung Nodule Detection System with Less False Positives
title_short Early and Accurate Model of Malignant Lung Nodule Detection System with Less False Positives
title_full Early and Accurate Model of Malignant Lung Nodule Detection System with Less False Positives
title_fullStr Early and Accurate Model of Malignant Lung Nodule Detection System with Less False Positives
title_full_unstemmed Early and Accurate Model of Malignant Lung Nodule Detection System with Less False Positives
title_sort early and accurate model of malignant lung nodule detection system with less false positives
publisher Instituto de Tecnologia do Paraná (Tecpar)
series Brazilian Archives of Biology and Technology
issn 1678-4324
publishDate 2018-10-01
description ABSTRACT The objective of this work is to identify the malignant lung nodules accurately and early with less false positives. ‘Nodule’ is the 3mm to 30mm diameter size tissue clusters present inside the lung parenchyma region. Segmenting such a small nodules from consecutive CT scan slices are a challenging task. In our work Auto-seed clustering based segmentation technique is used to segment all the possible nodule candidates. Efficient shape and texture features (2D and 3D) were computed to eliminate the false nodule candidates. The change in centroid position of nodule candidates from consecutive slices was used as a measure to remove the vessels. The two-stage classifier is used in this work to classify the malignant and benign nodules. First stage rule-based classifier producing 100 % sensitivity, but with high false positive of 12.5 per patient scan. The BPN based ANN classifier is used as the second-stage classifier which reduces a false positive to 2.26 per patient scan with a reasonable sensitivity of 88.8%. The Rate of Nodule Growth (RNG) was computed in our work to measure the nodules growth between the two scans of the same patient taken at different time interval. Finally, the nodule growth predictive measure was modeled through the features such as compactness (CO), mass deficit (MD), mass excess (ME) and isotropic factor(IF). The developed model results show that the nodules which have low CO, low IF, high MD and high ME values might have the potential to grow in future.
topic Lung cancer
3-D Image Segmentation
3-D image features
Volume growth
Lung nodule classifier
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1516-89132018000100308&lng=en&tlng=en
work_keys_str_mv AT senthilkumarkrishnamurthy earlyandaccuratemodelofmalignantlungnoduledetectionsystemwithlessfalsepositives
AT ganeshnarasimhan earlyandaccuratemodelofmalignantlungnoduledetectionsystemwithlessfalsepositives
AT umamaheswarirengasamy earlyandaccuratemodelofmalignantlungnoduledetectionsystemwithlessfalsepositives
_version_ 1725190378821255168