publications by Joseph Lo.
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Papers Published
- CE Floyd, AH Baydush, JY Lo, JE Bowsher, CE Ravin, Scatter compensation for digital chest radiography using maximum likelihood expectation maximization.,
Investigative radiology, UNITED STATES, vol. 28 no. 5
(May, 1993),
pp. 427-33 .
(last updated on 2006/02/06)Abstract:
RATIONALE AND OBJECTIVES. An iterative maximum likelihood expectation maximization algorithm (MLEM) has been developed for scatter compensation in chest radiography. METHODS. The MLEM technique produces a scatter-reduced image which maximizes the probability of observing the measured image. We examined the scatter content and the low-contrast signal-to-noise ratio (SNR) in digital radiographs of anatomical phantoms before and after compensation. RESULTS. MLEM converged to an accurate (6.4% RMS residual scatter error) estimate within 12 iterations. Both contrast and noise were increased in the processed images as iteration progressed. In the lung, contrast was increased 108% and SNR was improved by 10%. In the retrocardiac region, contrast was increased 180% while SNR decreased by 6%. CONCLUSIONS. This is the first report of a post-acquisition scatter compensation technique which can increase SNR. These results suggest that statistical estimation techniques can enhance image quality and quantitative accuracy for digital chest radiography.Keywords:
Algorithms* • Humans • Lung • Models, Structural • Radiographic Image Enhancement • Radiography, Thoracic • Scattering, Radiation • methods* • radiography