The broad, long term objective of the proposed research is to develop a fully automated, computerized system that will assist radiologists in the detection and quantitative assessment of pulmonary nodules in helical computed tomography (CT) images of the thorax. This system will potentially improve the prognosis of patients with lung cancer by contributing to earlier diagnosis. It is widely recognized that helical CT is the most sensitive imaging modality for the valuation of lung nodules. The large amount of image data acquired during a CT scan, however, makes nodule detection by human observers a difficult task. Moreover, distinguishing between nodules and normal anatomy such as pulmonary vessels typically requires visual comparison among multiple CT sections, each of which contains information that must be evaluated by a radiologist and assimilated into the larger context of the volumetric data acquired during the scan. This evaluation requires the radiologist to mentally construct a three-dimensional representation of patient anatomy based on over 50 section images acquired during a CT examination. This task, while cumbersome for radiologists, may be efficiently handled by a computerized method. The proposed research project will investigate the two-dimensional and three-dimensional structure of lung nodules in helical CT images to fully exploit the volumetric image data acquired during a CT examination. Gray-level threshold-based techniques will be used to extract three-dimensional structures from CT image data. Quantitative geometric and gray-level information computed for nodule candidates will be used as input to automated classifiers to distinguish between structures that correspond to nodules and structures that correspond to normal anatomy. This quantitative information will also allow for an evaluation of detection performance based on radiologic appearance of nodules.
The specific aims of the proposed research are: (1) to collect databases of normal and abnormal helical thoracic CT scans, (2) to develop an automated method to detect and quantitatively assess pulmonary nodules in these CT scans, (3) to investigate differences in the appearance of nodules imaged in low-dose helical thoracic CT scans obtained from a lung cancer screening program as opposed to standard helical CT and the effect of these differences on the detection scheme, and (4) to evaluate the performance of the computerized detection scheme and its effect on the performance of radiologists in the task of identifying pulmonary nodules.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
5R01CA083908-02
Application #
6377625
Study Section
Special Emphasis Panel (ZRG1-RNM (07))
Project Start
2000-09-07
Project End
2005-08-31
Budget Start
2001-09-01
Budget End
2002-08-31
Support Year
2
Fiscal Year
2001
Total Cost
$233,419
Indirect Cost
Name
University of Chicago
Department
Radiation-Diagnostic/Oncology
Type
Schools of Medicine
DUNS #
225410919
City
Chicago
State
IL
Country
United States
Zip Code
60637
Roy, Arunabha S; Armato 3rd, Samuel G; Wilson, Andrew et al. (2006) Automated detection of lung nodules in CT scans: false-positive reduction with the radial-gradient index. Med Phys 33:1133-40
Armato 3rd, Samuel G; Roy, Arunabha S; Macmahon, Heber et al. (2005) Evaluation of automated lung nodule detection on low-dose computed tomography scans from a lung cancer screening program(1). Acad Radiol 12:337-46
Armato 3rd, Samuel G; Sensakovic, William F (2004) Automated lung segmentation for thoracic CT impact on computer-aided diagnosis. Acad Radiol 11:1011-21
Armato 3rd, Samuel G (2003) Image annotation for conveying automated lung nodule detection results to radiologists. Acad Radiol 10:1000-7
Armato 3rd, Samuel G; Altman, Michael B; Wilkie, Joel et al. (2003) Automated lung nodule classification following automated nodule detection on CT: a serial approach. Med Phys 30:1188-97
Suzuki, Kenji; Armato 3rd, Samuel G; Li, Feng et al. (2003) Massive training artificial neural network (MTANN) for reduction of false positives in computerized detection of lung nodules in low-dose computed tomography. Med Phys 30:1602-17
Armato 3rd, Samuel G; Altman, Michael B; La Riviere, Patrick J (2003) Automated detection of lung nodules in CT scans: effect of image reconstruction algorithm. Med Phys 30:461-72
Armato 3rd, Samuel G; Li, Feng; Giger, Maryellen L et al. (2002) Lung cancer: performance of automated lung nodule detection applied to cancers missed in a CT screening program. Radiology 225:685-92
Armato 3rd, S G; Giger, M L; MacMahon, H (2001) Automated detection of lung nodules in CT scans: preliminary results. Med Phys 28:1552-61