Deep Learning Methodologies Applied to Digital Pathology in Prostate Cancer: A Systematic Review

Author:

Rabilloud Noémie1,Allaume Pierre2,Acosta Oscar1,De Crevoisier Renaud13,Bourgade Raphael4ORCID,Loussouarn Delphine4,Rioux-Leclercq Nathalie2,Khene Zine-eddine15,Mathieu Romain5,Bensalah Karim5,Pecot Thierry6,Kammerer-Jacquet Solene-Florence12

Affiliation:

1. Impact TEAM, Laboratoire Traitement du Signal et de l’Image (LTSI) INSERM, Rennes University, 35033 Rennes, France

2. Department of Pathology, Rennes University Hospital, 2 rue Henri Le Guilloux, CEDEX 09, 35033 Rennes, France

3. Department of Radiotherapy, Centre Eugène Marquis, 35033 Rennes, France

4. Department of Pathology, Nantes University Hospital, 44000 Nantes, France

5. Department of Urology, Rennes University Hospital, 2 rue Henri Le Guilloux, CEDEX 09, 35033 Rennes, France

6. Facility for Artificial Intelligence and Image Analysis (FAIIA), Biosit UAR 3480 CNRS-US18 INSERM, Rennes University, 2 Avenue du Professeur Léon Bernard, 35042 Rennes, France

Abstract

Deep learning (DL), often called artificial intelligence (AI), has been increasingly used in Pathology thanks to the use of scanners to digitize slides which allow us to visualize them on monitors and process them with AI algorithms. Many articles have focused on DL applied to prostate cancer (PCa). This systematic review explains the DL applications and their performances for PCa in digital pathology. Article research was performed using PubMed and Embase to collect relevant articles. A Risk of Bias (RoB) was assessed with an adaptation of the QUADAS-2 tool. Out of the 77 included studies, eight focused on pre-processing tasks such as quality assessment or staining normalization. Most articles (n = 53) focused on diagnosis tasks like cancer detection or Gleason grading. Fifteen articles focused on prediction tasks, such as recurrence prediction or genomic correlations. Best performances were reached for cancer detection with an Area Under the Curve (AUC) up to 0.99 with algorithms already available for routine diagnosis. A few biases outlined by the RoB analysis are often found in these articles, such as the lack of external validation. This review was registered on PROSPERO under CRD42023418661.

Funder

ARED PERTWIN grant

Chan Zuckerberg Initiative DAF grant

Publisher

MDPI AG

Subject

Clinical Biochemistry

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