Keywords:
Metastases, Atelectasis, Screening, Computer Applications-Detection, diagnosis, Neural networks, Conventional radiography, CAD, Thorax, Lung, Cardiac
Authors:
N. Ramanauskas, J. Dementaviciene, J. Bialopetravičius, D. Barušauskas, J. Armaitis, J. Stankeviciene, G. Danys, R. Puronaite, R. Kizlaitis; Vilnius/LT
DOI:
10.1594/ecr2018/C-1896
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