A concurrent, deep learning–based computer-aided detection system for prostate multiparametric MRI: a performance study involving experienced and less-experienced radiologists

  • Sandra Labus
  • , Martin M. Altmann
  • , Henkjan Huisman
  • , Angela Tong
  • , Tobias Penzkofer
  • , Moon Hyung Choi
  • , Ivan Shabunin
  • , David J. Winkel
  • , Pengyi Xing
  • , Dieter H. Szolar
  • , Steven M. Shea
  • , Robert Grimm
  • , Heinrich von Busch
  • , Ali Kamen
  • , Thomas Herold
  • , Clemens Baumann

    Research output: Contribution to journalArticlepeer-review

    36 Scopus citations

    Abstract

    Objectives: To evaluate the effect of a deep learning–based computer-aided diagnosis (DL-CAD) system on experienced and less-experienced radiologists in reading prostate mpMRI. Methods: In this retrospective, multi-reader multi-case study, a consecutive set of 184 patients examined between 01/2018 and 08/2019 were enrolled. Ground truth was combined targeted and 12-core systematic transrectal ultrasound-guided biopsy. Four radiologists, two experienced and two less-experienced, evaluated each case twice, once without (DL-CAD-) and once assisted by DL-CAD (DL-CAD+). ROC analysis, sensitivities, specificities, PPV and NPV were calculated to compare the diagnostic accuracy for the diagnosis of prostate cancer (PCa) between the two groups (DL-CAD- vs. DL-CAD+). Spearman’s correlation coefficients were evaluated to assess the relationship between PI-RADS category and Gleason score (GS). Also, the median reading times were compared for the two reading groups. Results: In total, 172 patients were included in the final analysis. With DL-CAD assistance, the overall AUC of the less-experienced radiologists increased significantly from 0.66 to 0.80 (p = 0.001; cutoff ISUP GG ≥ 1) and from 0.68 to 0.80 (p = 0.002; cutoff ISUP GG ≥ 2). Experienced radiologists showed an AUC increase from 0.81 to 0.86 (p = 0.146; cutoff ISUP GG ≥ 1) and from 0.81 to 0.84 (p = 0.433; cutoff ISUP GG ≥ 2). Furthermore, the correlation between PI-RADS category and GS improved significantly in the DL-CAD + group (0.45 vs. 0.57; p = 0.03), while the median reading time was reduced from 157 to 150 s (p = 0.023). Conclusions: DL-CAD assistance increased the mean detection performance, with the most significant benefit for the less-experienced radiologist; with the help of DL-CAD less-experienced radiologists reached performances comparable to that of experienced radiologists. Key Points: • DL-CAD used as a concurrent reading aid helps radiologists to distinguish between benign and cancerous lesions in prostate MRI. • With the help of DL-CAD, less-experienced radiologists may achieve detection performances comparable to that of experienced radiologists. • DL-CAD assistance increases the correlation between PI-RADS category and cancer grade.

    Original languageEnglish
    Pages (from-to)64-76
    Number of pages13
    JournalEuropean Radiology
    Volume33
    Issue number1
    DOIs
    StatePublished - Jan 2023

    Bibliographical note

    Publisher Copyright:
    © 2022, The Author(s), under exclusive licence to European Society of Radiology.

    Keywords

    • Deep learning
    • Multiparametric magnetic resonance imaging
    • Neoplasm grading
    • Prostatic neoplasms
    • ROC curve

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