Reading screening mammograms with the help of neural networks

With digital mammography it is possible to assist radiologists in breast cancer screening with computers to improve their reading performance. The need for this has been demonstrated by studies showing a large variability in skill of radiologists reading mammograms. Moreover, retrospective studies s...

Full description

Saved in:
Bibliographic Details
Published inNederlands tijdschrift voor geneeskunde Vol. 143; no. 45; p. 2232
Main Authors Karssemeijer, N, Veldkamp, W J, te Brake, G M, Hendriks, J H
Format Journal Article
LanguageDutch
Published Netherlands 06.11.1999
Subjects
Online AccessGet more information
ISSN0028-2162

Cover

More Information
Summary:With digital mammography it is possible to assist radiologists in breast cancer screening with computers to improve their reading performance. The need for this has been demonstrated by studies showing a large variability in skill of radiologists reading mammograms. Moreover, retrospective studies show that a significant number of cancers are clearly visible on earlier screening mammograms, even for 'trained' computers. Methods for automated detection of breast cancer in mammograms often use artificial neural networks. These are 'trained' to recognize abnormal mammographic areas using a large database of known cases. For detection of microcalcification clusters very reliable algorithms exist, with such high sensitivity that radiologists can limit their search to areas that have been marked 'suspect' by the computer. The development of methods to recognize malignant masses is much more difficult, but ample progress has been achieved in recent years.
ISSN:0028-2162