Abstract 1121P
Background
Improving the prognostication of melanoma is crucial for selecting patients for effective adjuvant therapies. Given that tumor tissue contains a large amount of clinically relevant hidden information that is not fully exploited, we applied a weakly-supervised deep learning approach to H&E-stained whole slide images (WSIs) to directly predict BRAF mutational status.
Methods
We designed an artificial intelligence algorithm that extracts features from no-padding patches of WSIs using a pre-trained deep neural network. These features are then fed into a classifier that assigns a BRAF mutational status probability to each WSI. The model was trained and validated using a cross-validation approach on 220 WSIs from the IHP Group (IHP-MEL-BRAF) with patients included from April 2014 to January 2023. The model was tested on the publicly available TCGA cohort. We used the area under the curve (AUC) as the metric to assess the performance of the model.
Results
The model yielded an AUC of 78.3% on the cross-validation folds and 75.7% on the testing folds. We show that the performance of the model is impacted by the amount of tumoral tissue present in the WSI, and that thin melanomas are highly subject to false predictions. In the external data, the model achieves an AUC of 68.3%. As the model learns to assign a weight to the tiles contributing to the mutational status characterization, we explore the main phenotypes that are more likely to explain the BRAF mutational status.
Conclusions
This pilot study in melanoma demonstrates that this novel deep-learning approach to H&E image analysis is capable of discovering new digital predictive and prognostic biomarkers. It has the advantage of leaving the exploration of the WSI and the selection of regions of interest entirely to the AI, thus reducing the bias introduced by annotations. Furthermore, these findings could potentially accelerate and improve the clinical decision-making process in the field of melanoma in the near future.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
1064P - Optimizing infusion rates of monoclonal antibodies to save time for oncology day care and patients
Presenter: Elisabeth Cornelia Suzanne de Boer
Session: Poster session 04
1065P - Dose dependent detrimental effect of baseline pantoprazole on clinical outcomes from first-line chemo-ICI regimens in patients with advanced stage NSCLC
Presenter: Leonardo Brunetti
Session: Poster session 04
1066P - Potential effects of olanzapine: Enhancing the immune response to PD-1/PD-L1 inhibitors
Presenter: yan ling Yi
Session: Poster session 04
Resources:
Abstract
1068P - Phase II trial of fecal microbiota transplantation (FMT) plus immune checkpoint inhibition (ICI) in advanced non-small cell lung cancer and cutaneous melanoma (FMT-LUMINate)
Presenter: Arielle Elkrief
Session: Poster session 04
1069TiP - A phase I/IIa dose escalation and expansion study of 23ME-01473, an anti-ULBP6/2/5 antibody, for patients with advanced solid malignancies
Presenter: Manish Sharma
Session: Poster session 04
1070TiP - A phase Ia/Ib dose-escalation/expansion study of NPX887 in subjects with solid tumor malignancies known to express HHLA2/B7-H7
Presenter: Haiying Cheng
Session: Poster session 04
1071TiP - Phase I study of the investigational CD228 x 4-1BB costimulatory antibody anticalin bispecific SGN-BB228 (PF-08046049) in advanced melanoma and other solid tumors
Presenter: Reinhard Dummer
Session: Poster session 04
1073TiP - A phase I/IIa first in-human phase I study of BI 1910, a monoclonal antibody agonistic to TNFR2, as a single agent and in combination with pembrolizumab in subjects with advanced solid tumors
Presenter: Tatiana Hernandez Guerrero
Session: Poster session 04