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  1. Research Outputs

Enhancing PFI Prediction with GDS-MIL: A Graph-based Dual Stream MIL Approach

Conference Paper
Publication Date:
2023
Short description:
Enhancing PFI Prediction with GDS-MIL: A Graph-based Dual Stream MIL Approach / Bontempo, Gianpaolo; Bartolini, Nicola; Lovino, Marta; Bolelli, Federico; Virtanen, Anni; Ficarra, Elisa. - 14233:(2023), pp. 550-562. ( 22nd International Conference on Image Analysis and Processing (ICIAP 2023) Udine, Italy SEP 11-15, 2023) [10.1007/978-3-031-43148-7_46].
abstract:
Whole-Slide Images (WSI) are emerging as a promising resource for studying biological tissues, demonstrating a great potential in aiding cancer diagnosis and improving patient treatment. However, the manual pixel-level annotation of WSIs is extremely time-consuming and practically unfeasible in real-world scenarios. Multi-Instance Learning (MIL) have gained attention as a weakly supervised approach able to address lack of annotation tasks. MIL models aggregate patches (e.g., cropping of a WSI) into bag-level representations (e.g., WSI label), but neglect spatial information of the WSIs, crucial for histological analysis. In the High-Grade Serous Ovarian Cancer (HGSOC) context, spatial information is essential to predict a prognosis indicator (the Platinum-Free Interval, PFI) from WSIs. Such a prediction would bring highly valuable insights both for patient treatment and prognosis of chemotherapy resistance. Indeed, NeoAdjuvant ChemoTherapy (NACT) induces changes in tumor tissue morphology and composition, making the prediction of PFI from WSIs extremely challenging. In this paper, we propose GDS-MIL, a method that integrates a state-of-the-art MIL model with a Graph ATtention layer (GAT in short) to inject a local context into each instance before MIL aggregation. Our approach achieves a significant improvement in accuracy on the “Ome18” PFI dataset. In summary, this paper presents a novel solution for enhancing PFI prediction in HGSOC, with the potential of significantly improving treatment decisions and patient outcomes.
Iris type:
Relazione in Atti di Convegno
List of contributors:
Bontempo, Gianpaolo; Bartolini, Nicola; Lovino, Marta; Bolelli, Federico; Virtanen, Anni; Ficarra, Elisa
Authors of the University:
BOLELLI FEDERICO
FICARRA ELISA
LOVINO MARTA
Handle:
https://iris.unimore.it/handle/11380/1310826
Full Text:
https://iris.unimore.it//retrieve/handle/11380/1310826/577244/2023ICIAP_Enhancing%20PFI%20Prediction%20with%20GDS-MIL:%20A%20Graph-based%20Dual%20Stream%20MIL%20Approach.pdf
Book title:
IMAGE ANALYSIS AND PROCESSING, ICIAP 2023, PT I
Published in:
LECTURE NOTES IN COMPUTER SCIENCE
Journal
LECTURE NOTES IN COMPUTER SCIENCE
Series
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