References
- van Ginneken B, ter Haar Romeny BM, Viergever MA. Computer-aided diagnosis in chest radiography: a survey. IEEE Traos Med Imagine 2001;20:1228-41
- Rubin GD. Data explosion: the challenge of multi-detector-row CT. Eur J Radiol 2000;36:74-80
- Kane EY. Multi-detector row CT of the central airway disease. Tuberc Respir Dis 2003;55:239-49
- Hensdike CI, McCauley DI, Yankelevitz DF, Naidich DP, McGuinness G, Miettinen OS, et al. Early Lune Cancer Action Project: overall design and findings from baseline screenine. Lancet 1999;354:99-105
- Swensen SJ, Jett JR, Sloan JA, Midthun DE, Hartman TE, Sykes AM, et al. Screening for lung cancer with low-dose spiral computed tomography. Am J Respir Crit Care Med 2002;165:508-13
- Goo JM. Screening for lung cancer with low-dose computed tomography. J Lung Cancer 2003;2:1-5
- Kakinuma R, Ohmatsu H, Kaneko M, Eguchi K, Naruke T, Nagai K, et al. Detection failures in spiral CT screening for lung cancer: analysis of CT findings. Radioloey 1999;212:61-6
- Li F, Sone S, Abe H, MacMahon H, Armato SG III, Doi K. Lung cancers missed at low-dose helical CT screening in a general population: comparison of clinical, histopathologic, and imaging findings. Radiology 2002;225:673-83
- Giger ML, Bae KT, MacMahon H. Computerized detecticn of pulmonary nodules in computed tomography imaees. Invest Radiol 1994;29:459-65
- Kanazawa, K, Kawata Y, Niki N, Satoh H, Ohmatau H, Kakinuma R, et al. Computer-aided diagnosis for pulmonary nodules based on. helical CT images. Comput Med Imaging Graph 1998;22:167-67
- Ko JP, Betke M. Chest CT: automated nodule detection and assessment of change over tmie--preliminary experience. Radiology 2001;218:267-73
- Wormanns D, Fiebich M, Saidi M, Diederich S, Heindel W. Automatic detection of pulmonary nodules at spiral CT: clinical application of a computer-aided diagnosis system. Eur Radiol 2002;12:1052-7
- Armato SG III, Li F, Giger ML, MacMahon H, Sone S, Doi K, Lung cancer: performance of automated lung nodule detection applied to cancers missed in a CT screening program. Radiology 2002;2Z5:685-92
- Goo JM, Lee JW, Lee HJ, Kim S, Kim JH, Im JG. Automated lung nodule detection at low-dose CT: preliminary experience. Korean J Radiol 2003;4:211-6
- Brown MS, Goldin JG, Suh RD, McNitt-Gray MF, Sayre JW, Aberle DR. Lung micronodules: automated method for detection at thin-section CT--initial experience. Radlology 2003;226:256-62
- Awai K, Murao K, Ozawa A, Komi M, Hayakawa H, Hori S, et al. Pulmonary nodules at chest CT: effect of computer-aided diagnosis on radiologists' detection performance. Radiology 2004;230:347-52
- Lee JW, Goo JM, Lee HJ, Kim JH, Kim S, Kim YT. The potential contribution, of a computer-aided detection system, for lung nodule detection in multi-derector row computed tomography. Invest Radiol 2004;39:649-55
- Henschke CI, Yankdevitz DF. Mirtcheya R, Mc-Guinness G, McCauley D, Miettinen OS; ELCAP Group. CT screening- for lung- cancer: frequency and significance of part-solid and nonsolid nodules. AJR Am J Roentgenol 2002;178:1053-7
- Jaog HJ, Lee KS, Kwon OJ, Rhee CH, Shim YM, Han J. Bronchioloalveolar carcinoma: focal area of ground-glass attenuation at thin-section CT as an early sign. Radiology 1996;199:485-8
- Aoki T, Nakata H, Watanabe H, Nakamura K, Kasai T, Hashimoto H, et al. Evolution of peripheral lung adenocarcinomas: CT findings correlated with histology and tumor doubling time. AJR Am- J Roentgenol 2000;174:763-8
- Kakinuma R, Ohmatsu H, Kaneko M, Kusumoto M, Yoshida J, Nagai K, et al. Progression of focal pure ground-glass opacity detected by low-dose helical computed tomography screening for lung cancer. J Comput Assist Tomogr 2004;28:17-23
- Kim KG, Goo JM, Kim JH, Lee HJ, Min BG, Bae KT, et al. Computer-aided detection of localized ground-glass opacity in. the lung on CT images. Radiology submitted
- Austin JH, Muller NL, Friedman PJ, Hanosell DM, Naidich DP, Remy-Jardin M, et al. Glossary of terms for CT of fhe lungs: recommendations of the Nomenclature Committee of the Fleischner Society. Radiology 1996; 200:327-31
- Wormanns D, Diederich S, Lentschig MG, Winter F, Heindel W. Spiral CT of pulmonary nodules: inter-observer variation. in assessment of lesion. size. Eur Radiol 2000;10:710-3
- Gur D, Zheng. B, Fuhrman CR, Hardesty L. Qn the testing and. reporting of computer-aided detection results for lung cancer detection. Radiology: 2004;232:5-6
- Goo JM, Chune MJ, Lee HJ, Im JG. Postenor subpleural nodules in patients with. underlyng malignancies: value of the prone computed tomo-graphy. J Comput Assist Tomogr 2003;27:274-8
- Erasmus JJ, Gladish GW, Broemeling L, Sabloff BS, Truong MT, Herbst BS, et d. Interobserver andintraobserver variability in measurement of non-small-cell carcinoma lung lesions: implications for assessment of tumor response. J Clin Oncol 2003;21:2574-2582
- Yankelevitz DF, Reeves AP, Kostis WJ, Zhao B, Henschke CL Small pulmonary nodules: volumetrieally determined growth rates based on CT evaluation. Radiology 2000; 217:251-6
- Do KH, Chung MJ, Goa JM, Lee KW, Im JG. Evaluation of computer aided volumetry for simulated small pulmonary nodules on computed tomography. J Korean Radiol Soc 2004;50:101-8
- Ko JP, Rusinek H, Jacobs EL, Babb JS, Betke M, McGuinness G, et al. Small pulmonary nodules: volume measurement at chest CT- phantom- study. Radioloay 2003;228:864-70
- Goo JM, Tongdee T, Tongdee R Yeo K, Hildebolt CF, Bae KT. Volumetric measurement of synthetic lung- nodules with multi-detector row CT: effect of Various image reconstruction parameters and segmentation thresholds on. measurement accuracy. Radiology in press
- Wormanns D, Kohl G, Klotz E, Marheine A, Beyer F, Heindel W, et al. Volumetric measurements of pulmonary nodules at multi-row detector CT: in vivo reproducibility. Eur Radiol 2004; 14:86-92
- Kostis WJ, Yankelevitz DF, Reeves AP, Fluture SC, Henschke CI. Small pulmonary nodules: reproducibility of three-dimensional volumetric measurement and estimation of time to follow-up CT. Radiology 2004;231:446-52