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Deep Learning–based Unsupervised Domain Adaptation via a Unified Model for Prostate Lesion Detection Using Multisite Biparametric MRI Datasets

  • Hao Li
  • , Han Liu
  • , Heinrich von Busch
  • , Robert Grimm
  • , Henkjan Huisman
  • , Angela Tong
  • , David Winkel
  • , Tobias Penzkofer
  • , Ivan Shabunin
  • , Moon Hyung Choi
  • , Qingsong Yang
  • , Dieter Szolar
  • , Steven Shea
  • , Fergus Coakley
  • , Mukesh Harisinghani
  • , Ipek Oguz
  • , Dorin Comaniciu
  • , Ali Kamen
  • , Bin Lou
    • Siemens Healthineers
    • Vanderbilt University
    • Siemens
    • Radboud University Nijmegen
    • New York University
    • University of Basel
    • Charité – Universitätsmedizin Berlin
    • Patero Clinic
    • Changhai Hospital
    • Diagnostikum Graz Süd-West
    • Loyola University Medical Center
    • Oregon Health and Science University
    • Massachusetts General Hospital

    Research output: Contribution to journalArticlepeer-review

    4 Scopus citations

    Abstract

    Purpose: To determine whether the unsupervised domain adaptation (UDA) method with generated images improves the performance of a supervised learning (SL) model for prostate cancer (PCa) detection using multisite biparametric (bp) MRI datasets. Materials and Methods: This retrospective study included data from 5150 patients (14 191 samples) collected across nine different imaging centers. A novel UDA method using a unified generative model was developed for PCa detection using multisite bpMRI datasets. This method translates diffusion-weighted imaging (DWI) acquisitions, including apparent diffusion coefficient (ADC) and individual diffusion-weighted (DW) images acquired using various b values, to align with the style of images acquired using b values recommended by Prostate Imaging Reporting and Data System (PI-RADS) guidelines. The generated ADC and DW images replace the original images for PCa detection. An independent set of 1692 test cases (2393 samples) was used for evaluation. The area under the receiver operating characteristic curve (AUC) was used as the primary metric, and statistical analysis was performed via bootstrapping. Results: For all test cases, the AUC values for baseline SL and UDA methods were 0.73 and 0.79 (P < .001), respectively, for PCa lesions with PI-RADS score of 3 or greater and 0.77 and 0.80 (P < .001) for lesions with PI-RADS scores of 4 or greater. In the 361 test cases under the most unfavorable image acquisition setting, the AUC values for baseline SL and UDA were 0.49 and 0.76 (P < .001) for lesions with PI-RADS scores of 3 or greater and 0.50 and 0.77 (P <.001) for lesions with PI-RADS scores of 4 or greater. Conclusion: UDA with generated images improved the performance of SL methods in PCa lesion detection across multisite datasets with various b values, especially for images acquired with significant deviations from the PI-RADS-recommended DWI protocol (eg, with an extremely high b value).

    Original languageEnglish
    Article numbere230521
    JournalRadiology: Artificial Intelligence
    Volume6
    Issue number5
    DOIs
    StatePublished - Sep 2024

    Bibliographical note

    Publisher Copyright:
    © RSNA, 2024.

    UN SDGs

    This output contributes to the following UN Sustainable Development Goals (SDGs)

    1. SDG 3 - Good Health and Well-being
      SDG 3 Good Health and Well-being

    Keywords

    • Diffusion-weighted Imaging
    • Multisite
    • Prostate Cancer Detection
    • Unsupervised Domain Adaptation
    • b Value

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