Literature DB >> 15968143

Computer-aided detection of lung nodules on chest CT: issues to be solved before clinical use.

Jin Mo Goo.   

Abstract

Entities:  

Mesh:

Year:  2005        PMID: 15968143      PMCID: PMC2687073          DOI: 10.3348/kjr.2005.6.2.62

Source DB:  PubMed          Journal:  Korean J Radiol        ISSN: 1229-6929            Impact factor:   3.500


× No keyword cloud information.
Given the increasing resolution of modern CT scanners, and the requirements for large-scale lung-screening examinations and diagnostic studies, there is an increased need for the accurate and reproducible analysis of the large numbers of images. Nodule detection is one of the main challenges of CT imaging, as they can be missed due to their small size, low relative contrast, or because they are located in an area with complex anatomy. Recent developments in computer-aided diagnosis (CAD) schemes are expected to aid radiologists in various tasks of chest imaging. In this era of multidetector row CT, the thoracic applications of greatest interest include the detection and volume measurement of lung nodules (1-7). Technology for CAD as applied to lung nodule detection on chest CT has been approved by the Food and Drug Administration and is currently commercially available. The article by Lee et al. (5) in this issue of the Korean Journal of Radiology is one of the few studies to examine the influence of a commercially available CAD system on the detection of lung nodules. In this study, some additional nodules were detected with the help of a CAD system, but at the expense of increased false positivity. The nodule detection rate of the CAD system in this study was lower than that achieved by radiologists, and the authors insist that the CAD system should be improved further. Compared to the use of CAD on mammograms, CAD evaluations of chest CTs remain limited to the laboratory setting. In this field, apart from the issues of detection rate and false positive detections, many obstacles must be overcome before CAD can be used in a true clinical reading environment. In this editorial, I will list some of these issues, but I emphasize now that I believe these issues will be solved by improved CAD versions in the near future.

Underlying disease in the thorax other than the presence of a lung nodule or mass

In the study by Lee et al. (5), cases with consolidation, lobar or greater atelectasis, airway disease, or interstitial lung disease were excluded from the analysis. Although these underlying diseases are unusual in screening settings, radiologists should identify lung nodules in the presence of these conditions. Commercially available CAD systems can also be used for detecting lung nodules in these circumstances, but they may erroneously segment lung areas, which can affect detection performance.

Size of lung nodules

Many CAD systems are designed to detect nodules in specific diameter ranges. The CAD system used in the study by Lee et al. (5) was designed to detect nodules with a diameter range of 4-20 mm. This approach is practical in screening settings in terms of achieving a sufficiently high true-positive rate without unduly increasing the false-positive rate. In screening settings, the possibility of the malignancy of nodules of less than 5 mm in diameter is low (8), and radiologists rarely miss lung nodules of 20 mm or larger. However, the clinical significance of a 3 mm nodule in a patient with an underlying malignancy is quite different from that in a patient without malignancy. Marking nodules larger than 20 mm will reduce the burden of radiologists with respect to post-treatment comparing studies for metastatic lung nodules. Therefore, this target range should be adjusted according to the nature of the intended task.

Non-solid or partly solid nodules

On CT, lung cancer may appear as a solid nodule, a partly solid nodule, or as a non-solid nodule. Many studies have suggested that these non-solid or partly solid nodules represent precursors to or early adenocarcinoma. Despite their potential clinical significances, nodules in this category may not be detected by screening CT (9), and most CAD schemes for detecting lung nodules are designed and optimized for the detection of solid nodules. Much research is currently targeted at resolving this problem.

Detection of lung cancers

Many studies have revealed that CAD systems are effective at detecting small pulmonary nodules on CT (1-6), and the ultimate goal of CAD systems is the detection of malignant lung nodules. Although Armato et al. (1) reported that a large fraction of missed lung cancers were detected using a CAD system, no observer based study has assessed CAD schemes for lung cancer detection. It is well known that only a small number of nodules detected by screening CT scans are malignant, and thus, most nodules detected by CAD will turn out to be benign. To overcome this increase in false positive detection for lung cancer, other methods such as nodule characterization should be incorporated into current schemes.

Integration of CAD systems into picture archiving and communication systems (PACS)

Despite the current availability of CAD tools and their potential clinical utility, many researchers believe CAD should be integrated into PACS to fully realize its potential as a routine clinical tool (10, 11). CAD systems should be developed so that CAD software modules can be added to different PACS. Moreover, because CAD systems usually require huge amounts of thin-section volumetric data, an effective solution is required to allow the handling of this data without overloading PACS networks. The goals of CAD are to improve radiologic interpretation by making lesions easier to detect and classify, and to potentially identify lesions at an earlier stage, and thus increase treatment effectiveness. To achieve these goals in the interpretation of chest CT images, not only enhancing lung nodule detection but also other schemes for global approach in chest imaging and data management methods should be developed. Although many obstacles remain to be overcome, I am convinced that CAD will eventually serve as an everyday tool for the interpretation of chest CT images.
  11 in total

1.  Lung cancers missed at low-dose helical CT screening in a general population: comparison of clinical, histopathologic, and imaging findings.

Authors:  Feng Li; Shusuke Sone; Hiroyuki Abe; Heber MacMahon; Samuel G Armato; Kunio Doi
Journal:  Radiology       Date:  2002-12       Impact factor: 11.105

2.  Lung cancer: performance of automated lung nodule detection applied to cancers missed in a CT screening program.

Authors:  Samuel G Armato; Feng Li; Maryellen L Giger; Heber MacMahon; Shusuke Sone; Kunio Doi
Journal:  Radiology       Date:  2002-12       Impact factor: 11.105

3.  Road maps for advancement of radiologic computer-aided detection in the 21st century.

Authors:  Ronald M Summers
Journal:  Radiology       Date:  2003-10       Impact factor: 11.105

4.  Pulmonary nodules at chest CT: effect of computer-aided diagnosis on radiologists' detection performance.

Authors:  Kazuo Awai; Kohei Murao; Akio Ozawa; Masanori Komi; Haruo Hayakawa; Shinichi Hori; Yasumasa Nishimura
Journal:  Radiology       Date:  2004-02       Impact factor: 11.105

Review 5.  Computer-aided diagnosis and the evaluation of lung disease.

Authors:  Jane P Ko; David P Naidich
Journal:  J Thorac Imaging       Date:  2004-07       Impact factor: 3.000

6.  Pulmonary nodules on multi-detector row CT scans: performance comparison of radiologists and computer-aided detection.

Authors:  Geoffrey D Rubin; John K Lyo; David S Paik; Anthony J Sherbondy; Lawrence C Chow; Ann N Leung; Robert Mindelzun; Pamela K Schraedley-Desmond; Steven E Zinck; David P Naidich; Sandy Napel
Journal:  Radiology       Date:  2004-11-10       Impact factor: 11.105

7.  The potential contribution of a computer-aided detection system for lung nodule detection in multidetector row computed tomography.

Authors:  Jeong Won Lee; Jin Mo Goo; Hyun Ju Lee; Jong Hyo Kim; Seunghwan Kim; Youn Tae Kim
Journal:  Invest Radiol       Date:  2004-11       Impact factor: 6.016

8.  Lung nodule detection on chest CT: evaluation of a computer-aided detection (CAD) system.

Authors:  In Jae Lee; Gordon Gamsu; Julianna Czum; Ning Wu; Rebecca Johnson; Sanjay Chakrapani
Journal:  Korean J Radiol       Date:  2005 Apr-Jun       Impact factor: 3.500

9.  CT screening for lung cancer: suspiciousness of nodules according to size on baseline scans.

Authors:  Claudia I Henschke; David F Yankelevitz; David P Naidich; Dorothy I McCauley; Georgeann McGuinness; Daniel M Libby; James P Smith; Mark W Pasmantier; Olli S Miettinen
Journal:  Radiology       Date:  2004-02-27       Impact factor: 11.105

10.  Automated lung nodule detection at low-dose CT: preliminary experience.

Authors:  Jin Mo Goo; Jeong Won Lee; Hyun Ju Lee; Seunghwan Kim; Jong Hyo Kim; Jung-Gi Im
Journal:  Korean J Radiol       Date:  2003 Oct-Dec       Impact factor: 3.500

View more
  3 in total

Review 1.  A computer-aided diagnosis for evaluating lung nodules on chest CT: the current status and perspective.

Authors:  Jin Mo Goo
Journal:  Korean J Radiol       Date:  2011-03-03       Impact factor: 3.500

Review 2.  Putting artificial intelligence (AI) on the spot: machine learning evaluation of pulmonary nodules.

Authors:  Yasmeen K Tandon; Brian J Bartholmai; Chi Wan Koo
Journal:  J Thorac Dis       Date:  2020-11       Impact factor: 2.895

Review 3.  The application of artificial intelligence in lung cancer: a narrative review.

Authors:  Huixian Zhang; Die Meng; Siqi Cai; Haoyue Guo; Peixin Chen; Zixuan Zheng; Jun Zhu; Wencheng Zhao; Hao Wang; Sha Zhao; Jia Yu; Yayi He
Journal:  Transl Cancer Res       Date:  2021-05       Impact factor: 1.241

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.