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SI1/PJI/2019-00414 (AISEEME): AIding diagnosis by Self-supervised dEEp learning from unlabeled MEdical imaging (2020-2022)

Deep learning solutions based on Convolutional Neural Networks (CNNs) have changed the paradigm in
artificial vision analysis. These solutions yield close-to-human accuracy for challenging vision
tasks by leveraging on large hand-annotated datasets to train the CNNs. However, the labeling of
these datasets is a heavy burden and scarce and expensive expertise is required for high-quality
annotation of some domains as medical imaging. Self-supervised learning (SSL) has proven to be a
successful strategy to cope with this problem. In SSL a pretext task (e.g. solving jigsaw puzzles
made from the permutation of image patches, which does not require human-annotation) is used to
train high-level visual representations inside the CNN, that are useful for solving standard vision
tasks by re-training the CNN with less human-annotated data. The use of multi-task frameworks to
jointly train several pretext tasks consistently improves the performance over the use of a single
pretext task. However, the joint optimization of distinct pretext tasks usually heads to inter-task
interference: easily learned tasks may dominate the training process, hindering the learning of more
complex tasks, and hence, of the high-level features required to solve them.

This project aims at defining pretext tasks orderings or curricula, by advancing on research
results on curriculum learning and self-paced learning, two learning regimes that have proven to
improve deep learning. The main objective of this project is to advance in the state-of-the-art of
SSL schemes for vision by incorporating a precedence concept in the learning of multiple pretext
tasks, while assessing its benefits in practical applications that particularly benefit from this
approach, such as medical imaging. Specifically, we will focus on the design, development and
extensive evaluation of novel schemes for skin lesion and lung nodule malignancy assessment, to
engage potential medical partners, paving the road towards other future research projects.
Financiado por: Comunidad Autónoma de Madrid
Participantes: Universidad Autónoma de Madrid
Investigador responsable: Escudero Viñolo, Marcos
Investigadores: Bescós Cano, Jesús, Carballeira Lopez, Pablo, Garcia-Martin, Alvaro, Martinez Sanchez, Jose María, SanMiguel Avedillo, Juan Carlos
Enlace Web: SI1/PJI/2019-00414 (AISEEME)