Prostate lesion detection and localization based on locality alignment discriminant analysis

نویسندگان

  • Mingquan Lin
  • Weifu Chen
  • Mingbo Zhao
  • Eli Gibson
  • Matthew Bastian-Jordan
  • Derek W. Cool
  • Zahra Kassam
  • Tommy W. S. Chow
  • Aaron D. Ward
  • Bernard Chiu
چکیده

Prostatic adenocarcinoma is one of the most commonly occurring cancers among men in the world, and it also the most curable cancer when it is detected early. Multiparametric MRI (mpMRI) combines anatomic and functional prostate imaging techniques, which have been shown to produce high sensitivity and specificity in cancer localization, which is important in planning biopsies and focal therapies. However, in previous investigations, lesion localization was achieved mainly by manual segmentation, which is time-consuming and prone to observer variability. Here, we developed an algorithm based on locality alignment discriminant analysis (LADA) technique, which can be considered as a version of linear discriminant analysis (LDA) localized to patches in the feature space. Sensitivity, specificity and accuracy generated by the proposed algorithm in five prostates by LADA were 52.2%, 89.1% and 85.1% respectively, compared to 31.3%, 85.3% and 80.9% generated by LDA. The delineation accuracy attainable by this tool has a potential in increasing the cancer detection rate in biopsies and in minimizing collateral damage of surrounding tissues in focal therapies.

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تاریخ انتشار 2017