Title
A novel assessment of whole-mount Gleason grading in prostate cancer to identify candidates for radical prostatectomy: a machine learning-based multiomics study
Language
English
Description (en)
Purpose: This study aims to assess whole-mount Gleason grading (GG) in prostate cancer (PCa) accurately using a multiomics machine learning (ML) model and to compare its performance with biopsy-proven GG (bxGG) assessment. Materials and Methods: A total of 146 patients with PCa recruited in a pilot study of a prospective clinical trial (NCT02659527) were retrospectively included in the side study, all of whom underwent 68Ga-PSMA-11 integrated positron emission tomography (PET) / magnetic resonance (MR) before radical prostatectomy (RP) between May 2014 and April 2020. To establish a multiomics ML model, we quantified PET radiomics features, pathway-level genomics features from whole exome sequencing, and pathomics features derived from immunohistochemical staining of 11 biomarkers. Based on the multiomics dataset, five ML models were established and validated using 100-fold Monte Carlo cross-validation. Results: Among five ML models, the random forest (RF) model performed best in terms of the area under the curve (AUC). Compared to bxGG assessment alone, the RF model was superior in terms of AUC (0.87 vs 0.75), specificity (0.72 vs 0.61), positive predictive value (0.79 vs 0.75), and accuracy (0.78 vs 0.77) and showed slightly decreased sensitivity (0.83 vs 0.89) and negative predictive value (0.80 vs 0.81). Among the feature categories, bxGG was identified as the most important feature, followed by pathomics, clinical, radiomics and genomics features. The three important individual features were bxGG, PSA staining and one intensity-related radiomics feature. Conclusion: The findings demonstrate a superior assessment of the developed multiomics-based ML model in whole-mount GG compared to the current clinical baseline of bxGG. This enables personalized patient management by identifying high-risk PCa patients for RP.
Keywords (en)
Prostate Cancer; PSMA; Gleason Grading; Machine Learning; Multiomics
DOI
10.7150/thno.96921
Author of the digital object
Jing  Ning  (Christian Doppler Laboratory for Applied Metabolomics / Medical University of Vienna)
Lukas  Kenner  (University of Veterinary Medicine Vienna / Medical University of Vienna / Christian Doppler Laboratory for Applied Metabolomics / Center for Biomarker Research in Medicine)
Alexander  Haug  (Christian Doppler Laboratory for Applied Metabolomics / Medical University of Vienna)
Marcus  Hacker  (Medical University of Vienna)
Shahrokh F.  Shariat  (Medical University of Vienna / Karl Landsteiner Institute of Urology and Andrology / University of Texas Southwestern / Weill Medical College of Cornell University / Charles University / Sechenov University)
Bernhard  Grubmüller  (Medical University of Vienna / Austrian Society of Urology)
Markus  Hartenbach  (Medical University of Vienna)
Thomas  Helbich  (Medical University of Vienna)
Helga  Schachner  (Medical University of Vienna)
Laszlo  Papp  (Centre for Biomedical Engineering and Physics)
Michaela  Schlederer  (Medical University of Vienna)
Gerald  Timelthaler  (Medical University of Vienna)
Elisabeth  Gurnhofer  (Medical University of Vienna)
Pascal  Baltzer  (Medical University of Vienna)
Gabriel  Wasinger  (Medical University of Vienna)
Vojtech  Bystry  (Masaryk University)
Sazan  Rasul  (Medical University of Vienna)
Stefan  Stoiber  (Christian Doppler Laboratory for Applied Metabolomics / Medical University of Vienna)
Karolina  Trachtova  (Christian Doppler Laboratory for Applied Metabolomics / Medical University of Vienna)
Clemens P.  Spielvogel  (Christian Doppler Laboratory for Applied Metabolomics / Medical University of Vienna)
David  Haberl  (Christian Doppler Laboratory for Applied Metabolomics / Medical University of Vienna)
Format
application/pdf
Size
7.1 MB
Licence Selected
CC BY 4.0 International
Type of publication
Article
Name of Publication (en)
Theranostics
Pages or Volume
12
Volume
14
Number
12
From Page
4570
To Page
4581
Publisher
Ivyspring International Publisher
Publication Date
2024
Content
Details
Object type
PDFDocument
Format
application/pdf
Created
06.11.2024 01:15:54
Metadata
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