LGMED-PHNov 4, 2025

Large-scale automatic carbon ion treatment planning for head and neck cancers via parallel multi-agent reinforcement learning

arXiv:2511.02314v11 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the problem of inefficient and labor-intensive treatment planning for head-and-neck cancer patients, offering a scalable automated solution with incremental improvements in clinical outcomes.

The paper tackled the challenge of slow and suboptimal manual tuning of treatment-planning parameters in carbon-ion therapy for head-and-neck cancers by developing a multi-agent reinforcement learning framework, which produced plans comparable to or better than expert manual ones with a relative plan score of 85.93% vs. 85.02% and significant improvements for five organs-at-risk.

Head-and-neck cancer (HNC) planning is difficult because multiple critical organs-at-risk (OARs) are close to complex targets. Intensity-modulated carbon-ion therapy (IMCT) offers superior dose conformity and OAR sparing but remains slow due to relative biological effectiveness (RBE) modeling, leading to laborious, experience-based, and often suboptimal tuning of many treatment-planning parameters (TPPs). Recent deep learning (DL) methods are limited by data bias and plan feasibility, while reinforcement learning (RL) struggles to efficiently explore the exponentially large TPP search space. We propose a scalable multi-agent RL (MARL) framework for parallel tuning of 45 TPPs in IMCT. It uses a centralized-training decentralized-execution (CTDE) QMIX backbone with Double DQN, Dueling DQN, and recurrent encoding (DRQN) for stable learning in a high-dimensional, non-stationary environment. To enhance efficiency, we (1) use compact historical DVH vectors as state inputs, (2) apply a linear action-to-value transform mapping small discrete actions to uniform parameter adjustments, and (3) design an absolute, clinically informed piecewise reward aligned with plan scores. A synchronous multi-process worker system interfaces with the PHOENIX TPS for parallel optimization and accelerated data collection. On a head-and-neck dataset (10 training, 10 testing), the method tuned 45 parameters simultaneously and produced plans comparable to or better than expert manual ones (relative plan score: RL $85.93\pm7.85%$ vs Manual $85.02\pm6.92%$), with significant (p-value $<$ 0.05) improvements for five OARs. The framework efficiently explores high-dimensional TPP spaces and generates clinically competitive IMCT plans through direct TPS interaction, notably improving OAR sparing.

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