European Journal of Radiology
Volume 72, Issue 2 , Pages 226-230 , November 2009

Computer-aided diagnosis in chest radiography: Beyond nodules

Received 7 May 2009 ,Accepted 7 May 2009.

References 

  1. Lodwick GS. Computer-aided diagnosis in radiology. A research plan. Investigative Radiology. 1966;1(1):72–80
  2. Lodwick GS, Keats TE, Dorst JP. The coding of Roentgen images for computer analysis as applied to lung cancer. Radiology. 1963;81(2):185–200
  3. van Ginneken B, ter Haar Romeny BM, Viergever MA. Computer-aided diagnosis in chest radiography: a survey. IEEE Transactions on Medical Imaging. 2001;20(12):1228–1241
  4. Conners RW, Harlow CA, Dwyer SJ. Radiographic image analysis: past and present. In: Proceedings of the 6th international conference on pattern recognition. Munich, Germany. 1982;p. 1152–1168
  5. McLean TR. Why do physicians who treat lung cancer get sued?. Chest. 2004;126(5):1672–1679
  6. Murray CJ, Lopez AD. Alternative projections of mortality and disability by cause 1990–2020: global burden of disease study. Lancet. 1997;349:1498–1504
  7. Mathers CD, Loncar D. Projections of global mortality and burden of disease from 2002 to 2030.. PLoS Medicine. 2006;3(11):e442
  8. Black RE, Morris SS, Bryce J. Where and why are 10 million children dying every year?. Lancet. 2003;361(June 9376):2226–2234
  9. Galdino Oliveira LL, Silva SAE, Vilela Ribeiro LH, Maurício de Oliveira R, Coelho CJ, Andrade ALSS. Computer-aided diagnosis in chest radiography for detection of childhood pneumonia. International Journal of Medical Informatics. 2008;77(8):555–564PMID: 18068427
  10. World Health Organization. Improving the diagnosis and treatment of smear-negative pulmonary and extrapulmonary tuberculosis among adults and adolescents: recommendations for HIV-prevalent and resource-constrained settings; 2007.
  11. MacMahon H, Doi K, Giger ML, Katsuragawa S, Nakamori N. Computer-aided diagnosis in chest radiology. Journal of Thoracic Imaging. 1990;5:67–76
  12. Miller WT. Chest radiographic evaluation of diffuse infiltrative lung disease: review of a dying art. European Journal of Radiology. 2002;44(3):182–197
  13. Abe H, Ashizawa K, Li F, Matsuyama N, et al. Artificial neural networks (ANNs) for differential diagnosis of interstitial lung disease: results of a simulation test with actual clinical cases. Academic Radiology. 2004;11(1):29–37
  14. Asada N, Doi K, MacMahon H, et al. Potential usefulness of an artificial neural network for differential diagnosis of interstitial lung diseases: pilot study. Radiology. 1990;177(13):857–860
  15. Doi K. Computer-aided diagnosis in medical imaging: historical review, current status and future potential. Computerized Medical Imaging and Graphics: The Official Journal of the Computerized Medical Imaging Society. 2007;31(4–5):198–211PMID: 17349778
  16. McAdams HP, Samei E, Dobbins J, Tourassi GD, Ravin CE. Recent advances in chest radiography. Radiology. 2006;241(3):663–683
  17. Ishida T, Katsuragawa S, Kobeyashi T, MacMahon H, Doi K. Computerized analysis of interstitial disease in chest radiographs: improvement of geometric-pattern feature analysis. Medical Physics. 1997;24(6):915–924
  18. Loog M, van Ginneken B. Segmentation of the posterior ribs in chest radiographs using iterated contextual pixel classification. IEEE Transactions on Medical Imaging. 2006;25:602–611
  19. Loog M, van Ginneken B, Schilham AMR. Filter learning: application to suppression of bony structures from chest radiographs. Medical Image Analysis. 2006;10:826–840
  20. Arzhaeva Y, Tax DMJ, van Ginneken B. Dissimilarity-based classification in the absence of local ground truth: application to the diagnostic interpretation of chest radiographs. Pattern Recognition. 2009;42:1768–1776
  21. Arzhaeva Y, Prokop M, Tax DMJ, de Jong PA, Schaefer-Prokop CM, van Ginneken B. Computer-aided detection of interstitial abnormalities in chest radiographs using a reference standard based on computed tomography. Medical Physics. 2007;34(12):4798–4809
  22. van Ginneken B, Katsuragawa S, ter Haar Romeny BM, Doi K, Viergever MA. Automatic detection of abnormalities in chest radiographs using local texture analysis. IEEE Transactions on Medical Imaging. 2002;21(2):139–149
  23. Kao EF, Lee C, Hsu J-S, Jaw T-S, Liu G-C. Projection profile analysis for automated detection of abnormalities in chest radiographs. Medical Physics. 2006;33(1):118–123
  24. Armato SG, Giger ML, MacMahon H. Computerized detection of abnormal asymmetry in digital chest radiographs. Medical Physics. 1994;21(11):1761–1768
  25. MacMahon H, Liu KJM, Montner SM, Doi K. The nature and subtlety of abnormal findings in chest radiographs. Medical Physics. 1991;18(2):206–210
  26. Scharitzer M, Prokop M, Weber M, Fuchsjäger M, Oschatz E, Schaefer-Prokop C. Detectability of catheters on bedside chest radiographs: comparison between liquid crystal display and high-resolution cathode-ray tube monitors. Radiology. 2005;234(2):611–616
  27. Bernhardt TM, Otto D, Reichel G, et al. Detection of simulated interstitial lung disease and catheters with selenium, storage phosphor, and film-based radiography. Radiology. 1999;213(2):445–454
  28. Galanski M, Prokop M, Thorns E, et al. The visibility of a central venous catheter using digital luminescence radiography in intensive care radiology. Rofo. 1992;156(1):68–72
  29. Keller BM, Reeves AP, Cham MD, Henschke CI, Yankelevitz DF. Semi-automated location identification of catheters in digital chest radiographs. In: Medical imaging 2007: computer-aided diagnosis, vol. 6514 of Proceedings of the SPIE; 2007, pp. 65141O-1–65141O-9.
  30. Sanada S, Doi K, MacMahon H. Image feature analysis and computer-aided diagnosis in digital radiography: automated detection of pneumothorax in chest images. Medical Physics. 1992;19(5):1153–1160
  31. Becker HC, Nettleton WJ, Meyers PH, Sweeney JW, Nice CM. Digital computer determination of a medical diagnostic index directly from chest X-ray images. IEEE Transactions on Biomedical Engineering. 1964;BME-11:67–72
  32. Nakamori N, Doi K, MacMahon H, Sasaki Y, Montner SM. Effect of heart-size parameters computed from digital chest radiographs on detection of cardiomegaly: potential usefulness for computer-aided diagnosis. Investigative Radiology. 1991;26(6):546–550
  33. van Ginneken B, Stegmann MB, Loog M. Segmentation of anatomical structures in chest radiographs using supervised methods: a comparative study on a public database. Medical Image Analysis. 2006;10(1):19–40
  34. Seghers D, Loeckx D, Maes F, Vandermeulen D, Suetens P. Minimal shape and intensity cost path segmentation. IEEE Transactions on Medical Imaging. 2007;26(8):1115–1129
  35. Shi Y, Qi F, Xue Z, et al. Segmenting lung fields in serial chest radiographs using both population-based and patient-specific shape statistics. IEEE Transactions on Medical Imaging. 2008;27(4):481–494
  36. Carreira MJ, Cabello D, Penedo MG, Mosquera A. Computer-aided diagnoses: automatic detection of lung nodules. Medical Physics. 1998;25(10):1998–2006
  37. Browne RFJ, O’Reilly G, McInerney D. Extraction of the two-dimensional cardiothoracic ratio from digital PA chest radiographs: correlation with cardiac function and the traditional cardiothoracic ratio. Journal of Digital Imaging. 2004;17(2):120–123
  38. Coppini G, Miniati M, Paterni M, Monti S, Ferdeghini EM. Computer-aided diagnosis of emphysema in COPD patients: neural-network-based analysis of lung shape in digital chest radiographs. Medical Engineering & Physics. 2007;29(1):76–86
  39. Sutinen S, Christoforidis AJ, Klugh GA, Pratt PC. Roentgenologic criteria for the recognition of nonsymptomatic pulmonary emphysema. Correlation between Roentgenologic findings and pulmonary pathology. American Review of Respiratory Disease. January 1965;91:69–76
  40. Karssemeijer N, Otten JDM, Rijken H, Holland R. Computer aided detection of masses in mammograms as decision support. British Journal of Radiology 2006;79(Spec No. 2):S123–S126.
  41. Noumeir R. Benefits of the DICOM structured report. Journal of Digital Imaging.
  42. Shiraishi J, Katsuragawa S, Ikezoe J, et al. Development of a digital image database for chest radiographs with and without a lung nodule: receiver operating characteristic analysis of radiologists’ detection of pulmonary nodules. American Journal of Roentgenology. 2000;174:71–74
  43. Armato SG, McLennan G, McNitt-Gray MF, et al. Lung image database consortium: developing a resource for the medical imaging research community. Radiology. 2004;232(3):739–748

PII: S0720-048X(09)00358-1

doi: 10.1016/j.ejrad.2009.05.061

European Journal of Radiology
Volume 72, Issue 2 , Pages 226-230 , November 2009