Automated Lesion Detection Methods for 2D and 3D Chest X-Ray Images

نویسندگان

  • Takeshi Hara
  • Hiroshi Fujita
  • Yongbum Lee
  • Hitoshi Yoshimura
  • Shoji Kido
چکیده

The purpose of this work is to present some technical approaches of our computer-aided detection (CAD) system for chest radiograms and helical CT scans, and also evaluate that by using three databases. The CAD includes some methods to detect lesions and to eliminate false-positive findings. The detective methods consist of template matching and artificial neural network approaches. Genetic Algorithm (GA) was employed in template matching to select a matched image from various reference patterns. Artificial Neural Networks (ANN) were also applied to eliminate the false-positive candidates. The sensitivity and the number of falsepositives were 73% and 11FPs per image on chest radiogram CAD and 77% with 2.6 FPs per image on helical CT scan CAD. These preliminary results imply that the GA and ANN based detective methods may be effective to indicate lesions on chest radiograms and

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تاریخ انتشار 1999