RecruitingNCT07266129

Virtual Biopsy of Prostate Cancer Using PSMA PET and AI

Prostate Cancer Malignancy Grading Using Prostate Specific Membrane Antigen (PSMA) PET and Machine Learning


Sponsor

University Hospital of North Norway

Enrollment

220 participants

Start Date

Jun 3, 2024

Study Type

OBSERVATIONAL

Conditions

Summary

Prostate cancer is the most common type of cancer in Norwegian men, but many tumors are slow-growing and do not require treatment. Today, MRI is good at detecting suspicious lesions, yet it cannot reliably distinguish aggressive tumors from low-grade ones. As a result, many men undergo repeated invasive biopsies. New PET tracers targeting PSMA improve tumor localization and may correlate with cancer aggressiveness, offering potential for better assessment. This project aims to develop a method to predict Gleason Score non-invasively by applying machine learning to PET and MRI data. The work involves early static and dynamic PSMA PET imaging, tracer kinetic modelling, deep learning, and validation of PET-based measurements of PSMA internalization using ex-vivo cellular methods. If successful, the project could reduce the number of biopsies, improve diagnostic accuracy, offer full 3D assessment of the prostate, shorten clinical workflows, and help identify patients who would benefit most from PSMA-based radioligand therapy.


Eligibility

Sex: MALE

Inclusion Criteria4

  • For patients who have undergone biopsies prior to PET:
  • Patients referred to clinical PET examination
  • For patients who have not had biopsies prior to PET:
  • Patients referred to urologist for suspected prostate cancer based on clinical symptoms or elevated PSA-levels

Exclusion Criteria3

  • Prostatektomy
  • Body weight under 100 kg
  • MRI incompatible implants or other incompatibilities

Locations(1)

Universitetssykehuset Nord Norge, Tromsø

Tromsø, Troms, Norway

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NCT07266129


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