Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

What Matters in Reinforcement Learning for Tractography

About

Recently, deep reinforcement learning (RL) has been proposed to learn the tractography procedure and train agents to reconstruct the structure of the white matter without manually curated reference streamlines. While the performances reported were competitive, the proposed framework is complex, and little is still known about the role and impact of its multiple parts. In this work, we thoroughly explore the different components of the proposed framework, such as the choice of the RL algorithm, seeding strategy, the input signal and reward function, and shed light on their impact. Approximately 7,400 models were trained for this work, totalling nearly 41,000 hours of GPU time. Our goal is to guide researchers eager to explore the possibilities of deep RL for tractography by exposing what works and what does not work with the category of approach. As such, we ultimately propose a series of recommendations concerning the choice of RL algorithm, the input to the agents, the reward function and more to help future work using reinforcement learning for tractography. We also release the open source codebase, trained models, and datasets for users and researchers wanting to explore reinforcement learning for tractography.

Antoine Th\'eberge, Christian Desrosiers, Maxime Descoteaux, Pierre-Marc Jodoin• 2023

Related benchmarks

TaskDatasetResultRank
White Matter TractographyHCP (Human Connectome Project) (test)
Dice67.7
20
White Matter TractographyTractoinferno (test)
Dice73
16
Tractography (Arcuate Fasciculus)HCP (test)
Dice54.6
10
Tractography (Corpus Callosum)HCP (test)
Dice70.4
10
White Matter TractographyISMRM dataset subjects (test)
Dice62.7
9
White Matter TractographyISMRM (test)
Dice49.7
9
Tractography (Corpus Callosum)Tractoinferno (test)
Dice54.6
8
Tractography (Arcuate Fasciculus)TractoInferno subjects (test)
Dice52.3
8
Streamline RecoveryTractoinferno (test)
Recobundles9.31e+6
4
TractographyISMRM 2015 (test)
VC (%)66.13
4
Showing 10 of 10 rows

Other info

Follow for update