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An AI Platform Integrating Imaging Data and Models, Supporting Precision Care Through Prostate Cancer's Continuum

F

Fondazione del Piemonte per l'Oncologia

Status

Completed

Conditions

Prostate Cancer Recurrent
Prostate Cancer Aggressiveness
Prostate Cancer Metastatic
Prostate Cancer

Treatments

Diagnostic Test: Magnetic Resonance Imaging

Study type

Observational

Funder types

Other
NIH

Identifiers

NCT05384002
ProCAncer-I

Details and patient eligibility

About

In Europe, prostate cancer (PCa) is the second most frequent type of cancer in men and the third most lethal. Current clinical practices, often leading to overdiagnosis and overtreatment of indolent tumors, suffer from lack of precision calling for advanced AI models to go beyond SoA by deciphering non-intuitive, high-level medical image patterns and increase performance in discriminating indolent from aggressive disease, early predicting recurrence and detecting metastases or predicting effectiveness of therapies. To date efforts are fragmented, based on single-institution, size-limited and vendorspecific datasets while available PCa public datasets (e.g. US TCIA) are only few hundred cases making model generalizability impossible.

The ProCAncer-I project brings together 20 partners, including PCa centers of reference, world leaders in AI and innovative SMEs, with recognized expertise in their respective domains, with the objective to design, develop and sustain a cloud based, secure European Image Infrastructure with tools and services for data handling. The platform hosts the largest collection of PCa multi-parametric (mp)MRI, anonymized image data worldwide (>17,000 cases), based on data donorship, in line with EU legislation (GDPR). Robust AI models are developed, based on novel ensemble learning methodologies, leading to vendor-specific and -neutral AI models for addressing 8 PCa clinical scenarios.

To accelerate clinical translation of PCa AI models, we focus on improving the trust of the solutions with respect to fairness, safety, explainability and reproducibility. Metrics to monitor model performance and a causal explainability functionality are developed to further increase clinical trust and inform on possible failures and errors. A roadmap for AI models certification is defined, interacting with regulatory authorities, thus contributing to a European regulatory roadmap for validating the effectiveness of AI-based models for clinical decision making.

Enrollment

14,000 patients

Sex

Male

Ages

18 to 85 years old

Volunteers

Accepts Healthy Volunteers

Inclusion and exclusion criteria

Inclusion Criteria:

  1. histological confirmed PCa or suspicion of PCa (abnormal PSA values and/or positive DRE);
  2. magnetic resonance imaging examination, including at least a high-resolution axial T2-weighted imaging and axila diffusion-weighted imaging (dynamic contrast-enhanced imaging is recommended, but not mandatory);
  3. age ≥ 18 years at the time of diagnosis
  4. signed written informed consent form (only for prospective enrollement).

Trial design

14,000 participants in 2 patient groups

Retrospective (training model)
Treatment:
Diagnostic Test: Magnetic Resonance Imaging
Prospective (validation model)
Treatment:
Diagnostic Test: Magnetic Resonance Imaging

Trial contacts and locations

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Central trial contact

Simone Mazzetti, PhD; Daniele Regge, MD

Data sourced from clinicaltrials.gov

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