Whole Slide Imaging-Based Prediction of TP53 Mutations Identifies an Aggressive Disease Phenotype in Prostate Cancer

Author:

Pizurica Marija123ORCID,Larmuseau Maarten12ORCID,Van der Eecken Kim4ORCID,de Schaetzen van Brienen Louise12ORCID,Carrillo-Perez Francisco56ORCID,Isphording Simon12ORCID,Lumen Nicolaas4ORCID,Van Dorpe Jo4ORCID,Ost Piet7ORCID,Verbeke Sofie4ORCID,Gevaert Olivier36ORCID,Marchal Kathleen12ORCID

Affiliation:

1. 1Internet Technology and Data Science Lab (IDLab/IMEC), Ghent University, Gent, Belgium.

2. 2Department of Plant biotechnology and Bioinformatics, Ghent University, Gent, Belgium.

3. 3Department of Biomedical Data Science, Stanford University, School of Medicine, Stanford, California.

4. 4Department of Urology, Ghent University Hospital, Ghent, Belgium.

5. 5Department of Architecture and Computer Technology (ATC), University of Granada, Granada, Spain.

6. 6Stanford Center for Biomedical Informatics Research (BMIR), Stanford University, School of Medicine, Stanford, California.

7. 7Department of Radiotherapy, Ghent University Hospital, Ghent, Belgium.

Abstract

Abstract In prostate cancer, there is an urgent need for objective prognostic biomarkers that identify the metastatic potential of a tumor at an early stage. While recent analyses indicated TP53 mutations as candidate biomarkers, molecular profiling in a clinical setting is complicated by tumor heterogeneity. Deep learning models that predict the spatial presence of TP53 mutations in whole slide images (WSI) offer the potential to mitigate this issue. To assess the potential of WSIs as proxies for spatially resolved profiling and as biomarkers for aggressive disease, we developed TiDo, a deep learning model that achieves state-of-the-art performance in predicting TP53 mutations from WSIs of primary prostate tumors. In an independent multifocal cohort, the model showed successful generalization at both the patient and lesion level. Analysis of model predictions revealed that false positive (FP) predictions could at least partially be explained by TP53 deletions, suggesting that some FP carry an alteration that leads to the same histological phenotype as TP53 mutations. Comparative expression and histologic cell type analyses identified a TP53-like cellular phenotype triggered by expression of pathways affecting stromal composition. Together, these findings indicate that WSI-based models might not be able to perfectly predict the spatial presence of individual TP53 mutations but they have the potential to elucidate the prognosis of a tumor by depicting a downstream phenotype associated with aggressive disease biomarkers. Significance: Deep learning models predicting TP53 mutations from whole slide images of prostate cancer capture histologic phenotypes associated with stromal composition, lymph node metastasis, and biochemical recurrence, indicating their potential as in silico prognostic biomarkers. See related commentary by Bordeleau, p. 2809

Funder

Fulbright Association

Fonds Wetenschappelijk Onderzoek

Bijzonder Onderzoeksfonds UGent

Flanders Innovation and Entrepreneurship

National Cancer Institute

Belgian American Educational Foundation

Spanish Ministery of Sciences, Innovation and Universities

Junta de Andalucía

Publisher

American Association for Cancer Research (AACR)

Subject

Cancer Research,Oncology

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