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  1. Research Outputs

Buffer-MIL: Robust Multi-instance Learning with a Buffer-Based Approach

Conference Paper
Publication Date:
2023
Short description:
Buffer-MIL: Robust Multi-instance Learning with a Buffer-Based Approach / Bontempo, G.; Lumetti, L.; Porrello, A.; Bolelli, F.; Calderara, S.; Ficarra, E.. - 14234:(2023), pp. 1-12. ( Image Analysis and Processing - ICIAP 2023 Udine, Italy Sep 11-15) [10.1007/978-3-031-43153-1_1].
abstract:
Histopathological image analysis is a critical area of research with the potential to aid pathologists in faster and more accurate diagnoses. However, Whole-Slide Images (WSIs) present challenges for deep learning frameworks due to their large size and lack of pixel-level annotations. Multi-Instance Learning (MIL) is a popular approach that can be employed for handling WSIs, treating each slide as a bag composed of multiple patches or instances. In this work we propose Buffer-MIL, which aims at tackling the covariate shift and class imbalance characterizing most of the existing histopathological datasets. With this goal, a buffer containing the most representative instances of each disease-positive slide of the training set is incorporated into our model. An attention mechanism is then used to compare all the instances against the buffer, to find the most critical ones in a given slide. We evaluate Buffer-MIL on two publicly available WSI datasets, Camelyon16 and TCGA lung cancer, outperforming current state-of-the-art models by 2.2% of accuracy on Camelyon16.
Iris type:
Relazione in Atti di Convegno
Keywords:
Multi-instance Learning; Weakly Supervised Learning; Whole Slide Images
List of contributors:
Bontempo, G.; Lumetti, L.; Porrello, A.; Bolelli, F.; Calderara, S.; Ficarra, E.
Authors of the University:
BOLELLI FEDERICO
CALDERARA Simone
FICARRA ELISA
LUMETTI LUCA
PORRELLO ANGELO
Handle:
https://iris.unimore.it/handle/11380/1328829
Full Text:
https://iris.unimore.it//retrieve/handle/11380/1328829/622338/2023ICIAP_Buffer_MIL__Robust_Multi_instance_Learning_witha_Buffer_based_Approach.pdf
Book title:
Image Analysis and Processing – ICIAP 2023
Published in:
LECTURE NOTES IN COMPUTER SCIENCE
Journal
LECTURE NOTES IN COMPUTER SCIENCE
Series
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URL

https://iciap2023.org/
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