흉부 CT에 있어서 컴퓨터 보조 진단

Computer-Aided Diagnosis in Chest CT

  • 구진모 (서울대학교 의과대학 방사선과학교실)
  • Goo, Jin Mo (Department of Radiology, Seoul National University Hospital)
  • 발행 : 2004.12.30

초록

With the increasing resolution of modern CT scanners, analysis of the larger numbers of images acquired in a lung screening exam or diagnostic study is necessary, which also needs high accuracy and reproducibility. Recent developments in the computerized analysis of medical images are expected to aid radiologists and other healthcare professional in various diagnostic tasks of medical image interpretation. This article is to provide a brief overview of some of computer-aided diagnosis schemes in chest CT.

키워드

참고문헌

  1. 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
  2. Rubin GD. Data explosion: the challenge of multi-detector-row CT. Eur J Radiol 2000;36:74-80
  3. Kane EY. Multi-detector row CT of the central airway disease. Tuberc Respir Dis 2003;55:239-49
  4. 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
  5. 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
  6. Goo JM. Screening for lung cancer with low-dose computed tomography. J Lung Cancer 2003;2:1-5
  7. 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
  8. 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
  9. Giger ML, Bae KT, MacMahon H. Computerized detecticn of pulmonary nodules in computed tomography imaees. Invest Radiol 1994;29:459-65
  10. 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
  11. Ko JP, Betke M. Chest CT: automated nodule detection and assessment of change over tmie--preliminary experience. Radiology 2001;218:267-73
  12. 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
  13. 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
  14. 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
  15. 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
  16. 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
  17. 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
  18. 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
  19. 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
  20. 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
  21. 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
  22. 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
  23. 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
  24. 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
  25. 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
  26. 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
  27. 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
  28. 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
  29. 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
  30. 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
  31. 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
  32. 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
  33. 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