Please use this identifier to cite or link to this item: http://hdl.handle.net/2445/186077
Title: NaroNet: discovery of tumor microenvironment elements from highly multiplexed images
Author: Jiménez Sánchez, Daniel
Ariz, Mikel
Chang, Hang
Matias-Guiu, Xavier
Andrea, Carlos E. de
Ortiz de Solórzano, Carlos
Keywords: Tumors
Cèl·lules canceroses
Diagnòstic per la imatge
Pronòstic mèdic
Tumors
Cancer cells
Diagnostic imaging
Prognosis
Issue Date: 1-Feb-2022
Publisher: Elsevier BV
Abstract: Understanding the spatial interactions between the elements of the tumor microenvironment -i.e. tumor cells. fibroblasts, immune cells- and how these interactions relate to the diagnosis or prognosis of a tumor is one of the goals of computational pathology. We present NaroNet, a deep learning framework that models the multi-scale tumor microenvironment from multiplex-stained cancer tissue images and provides patient-level interpretable predictions using a seamless end-to-end learning pipeline. Trained only with multiplex-stained tissue images and their corresponding patient-level clinical labels, NaroNet unsupervisedly learns which cell phenotypes, cell neighborhoods, and neighborhood interactions have the highest influence to predict the correct label. To this end, NaroNet incorporates several novel and state-ofthe-art deep learning techniques, such as patch-level contrastive learning, multi-level graph embeddings, a novel max-sum pooling operation, or a metric that quantifies the relevance that each microenvironment element has in the individual predictions. We validate NaroNet using synthetic data simulating multipleximmunostained images where a patient label is artificially associated to the -adjustable- probabilistic incidence of different microenvironment elements. We then apply our model to two sets of images of human cancer tissues: 336 seven-color multiplex-immunostained images from 12 high-grade endometrial cancer patients; and 382 35-plex mass cytometry images from 215 breast cancer patients. In both synthetic and real datasets, NaroNet provides outstanding predictions of relevant clinical information while associating those predictions to the presence of specific microenvironment elements.
Note: Reproducció del document publicat a: https://doi.org/10.1016/j.media.2022.102384
It is part of: Medical Image Analysis, 2022, vol. 78, num. 102384
URI: http://hdl.handle.net/2445/186077
Related resource: https://doi.org/10.1016/j.media.2022.102384
Appears in Collections:Articles publicats en revistes (Institut d'lnvestigació Biomèdica de Bellvitge (IDIBELL))

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