AI-assisted Multi-Organ Image Interpretation
Tang A, Tam R, Cadrin-Chênevert A et al. (2018) Canadian Association of Radiologists White Paper on Artificial Intelligence in Radiology. Can Assoc Radiol J 69:120-135
Loria K (2018) “Putting the AI in Radiology”. Radiology Today Vol. 19 No. 1 P. 10. http://www.radiologytoday.net/archive/ rt0118p10.shtml (last accessed June 12, 2018)
Humphries SM, Lynch DA, Charbonnier J et al. (2018) Initial validation of an artificial intelligence radiology assistant for chest CT analysis. Abstract submitted to the 2018 RSNA Annual Meeting (unpublished).
Humphries SM, Yagihashi K, Huckleberry J et al. (2017) Idiopathic Pulmonary Fibrosis: Data-driven Textural Analysis of Extent of Fibrosis at Baseline and 15-Month Follow-up. Radiology 285:270-278
Dappa E, Higashigaito K, Fornaro J et al. (2016) Cinematic rendering – an alternative to volume rendering for 3D computed tomography imaging. Insights Imaging 7:849-56
Marano R, Pirro F, Silvestri V et al. (2015) Comprehensive CT cardiothoracic imaging: a new challenge for chest imaging. Chest 147:538-551
Secchi F, Di Leo G, Zanardo M et al. (2017) Detection of incidental cardiac findings in noncardiac chest computed tomography. Medicine (Baltimore) 96:e7531
Balakrishnan R, Nguyen B, Raad R et al. (2017) Coronary artery calcification is common on nongated chest computed tomography imaging. Clin Cardiol 40:498-502
Jokerst C, McFarland W, Swanson J, Mohammed TL (2016) Thoracic Bone Tumors Every Radiologist Should Know. Curr Probl Diagn Radiol 45:71-9
medcitynews.com/2018/04/how-radiologists-will-use-ai/