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A multi-institutional validation study of predicting prostate cancer-specific mortality with AI-based grading

Reference number
Coordinator Uppsala universitet - Uppsala universitet Inst f informationsteknologi
Funding from Vinnova SEK 2 786 540
Project duration August 2024 - September 2027
Status Ongoing
Venture Swedish-Indian cooperation within innovation in the area of health and AI
Call Cooperation with India within Health focusing on AI-based Digitalisation, Biodesign or Circular Economy

Purpose and goal

Treatment decisions for prostate cancer, one of the world´s most common cancers, are primarily based on subjective histopathological grading according to Gleason. With a correct grading, treatment can be adapted to actual need. However, the subjective assessment is uncertain, with large variation between pathologists. We have trained an AI model on patient outcomes showing superior performance. We will now validate the model in prospective and retrospective studies to ensure its reliability.

Expected effects and result

We will create an AI-system that provides more reliable prostate cancer aggressiveness grades than the present state of the art, Gleason grades. The system will be robust and trustworthy for samples from a variety of different clinics. This will enable improved diagnosis and treatment selection for the increasing number of prostate cancer patients around the world, not the least in India. Our work will advance understanding of how AI algorithms can be made sufficiently reliable for clinical use.

Planned approach and implementation

Our method will be validated on material from the Regional Cancer Center in Kerala, India. From archived paraffin blocks of prostate cancer, H&E sections are acquired and assessed for tumor presence and our prostate aggressiveness index is computed. Treatment and follow-up details are obtained from patient case sheets. Histomorphometric algorithms for cancer aggressiveness grading will also be explored. The project results will be documented in top quality international scientific publications.

External links

The project description has been provided by the project members themselves and the text has not been looked at by our editors.

Last updated 7 November 2024

Reference number 2023-04212