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TractRLFusion: A GPT-Based Multi-Critic Policy Fusion Framework for Fiber Tractography

About

Tractography plays a pivotal role in the non-invasive reconstruction of white matter fiber pathways, providing vital information on brain connectivity and supporting precise neurosurgical planning. Although traditional methods relied mainly on classical deterministic and probabilistic approaches, recent progress has benefited from supervised deep learning (DL) and deep reinforcement learning (DRL) to improve tract reconstruction. A persistent challenge in tractography is accurately reconstructing white matter tracts while minimizing spurious connections. To address this, we propose TractRLFusion, a novel GPT-based policy fusion framework that integrates multiple RL policies through a data-driven fusion strategy. Our method employs a two-stage training data selection process for effective policy fusion, followed by a multi-critic fine-tuning phase to enhance robustness and generalization. Experiments on HCP, ISMRM, and TractoInferno datasets demonstrate that TractRLFusion outperforms individual RL policies as well as state-of-the-art classical and DRL methods in accuracy and anatomical reliability.

Ankita Joshi, Ashutosh Sharma, Anoushkrit Goel, Ranjeet Ranjan Jha, Chirag Ahuja, Arnav Bhavsar, Aditya Nigam• 2026

Related benchmarks

TaskDatasetResultRank
White Matter TractographyHCP (Human Connectome Project) (test)
Dice82.2
20
White Matter TractographyTractoinferno (test)
Dice74.5
16
Tractography (Arcuate Fasciculus)HCP (test)
Dice74.1
10
Tractography (Corpus Callosum)HCP (test)
Dice77.4
10
White Matter TractographyISMRM dataset subjects (test)
Dice63.9
9
White Matter TractographyISMRM (test)
Dice52.6
9
Tractography (Arcuate Fasciculus)TractoInferno subjects (test)
Dice53.2
8
Tractography (Corpus Callosum)Tractoinferno (test)
Dice56.5
8
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