Unsupervised tumor detection in Dynamic PET/CT imaging of the prostate.

Journal: Medical image analysis
Published Date:

Abstract

Early detection and localization of prostate tumors pose a challenge to the medical community. Several imaging techniques, including PET, have shown some success. But no robust and accurate solution has yet been reached. This work aims to detect prostate cancer foci in Dynamic PET images using an unsupervised learning approach. The proposed method extracts three feature classes from 4D imaging data that include statistical, kinetic biological and deep features that are learned by a deep stacked convolutional autoencoder. Anomalies, which are classified as tumors, are detected in feature space using density estimation. The proposed algorithm generates promising results for sufficiently large cancer foci in real PET scans imaging where the foci is not viewed by the tomographic devices used for detection.

Authors

  • Eldad Rubinstein
    School of Computer Science, Tel Aviv University, Tel Aviv, Israel. Electronic address: eldada333@gmail.com.
  • Moshe Salhov
    School of Computer Science, Tel Aviv University, Tel Aviv, Israel.
  • Meital Nidam-Leshem
    Department of Nuclear Medicine, Rabin Medical Center, Petach Tikva, Israel.
  • Valerie White
    The Institute of Pathology, Ichilov Medical Center, Tel Aviv, Israel.
  • Shay Golan
    Department of Urology, Rabin Medical Center, Petach Tikva, Israel.
  • Jack Baniel
    Department of Urology, Rabin Medical Center, Petach Tikva, Israel.
  • Hanna Bernstine
    Department of Nuclear Medicine, Rabin Medical Center, Petach Tikva, Israel.
  • David Groshar
    Department of Nuclear Medicine, Rabin Medical Center, Petach Tikva, Israel.
  • Amir Averbuch
    School of Computer Science, Tel Aviv University, Tel Aviv, Israel.