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Actor Critic with Experience Replay-based automatic treatment planning for prostate cancer intensity modulated radiotherapy

Abstract

Background: Real-time treatment planning in IMRT is challenging due to complex beam interactions. AI has improved automation, but existing models require large, high-quality datasets and lack universal applicability. Deep reinforcement learning (DRL) offers a promising alternative by mimicking human trial-and-error planning.Purpose: Develop a stochastic policy-based DRL agent for automatic treatment planning with efficient training, broad applicability, and robustness against adversarial attacks using Fast Gradient Sign Method (FGSM).Methods: Using the Actor-Critic with Experience Replay (ACER) architecture, the agent tunes treatment planning parameters (TPPs) in inverse planning. Training is based on prostate cancer IMRT cases, using dose-volume histograms (DVHs) as input. The model is trained on a single patient case, validated on two independent cases, and tested on 300+ plans across three datasets. Plan quality is assessed using ProKnow scores, and robustness is tested against adversarial attacks.Results: Despite training on a single case, the model generalizes well. Before ACER-based planning, the mean plan score was 6.20±\pm1.84; after, 93.09% of cases achieved a perfect score of 9, with a mean of 8.93±\pm0.27. The agent effectively prioritizes optimal TPP tuning and remains robust against adversarial attacks.Conclusions: The ACER-based DRL agent enables efficient, high-quality treatment planning in prostate cancer IMRT, demonstrating strong generalizability and robustness.

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@article{abrar2025_2502.00346,
  title={ Actor Critic with Experience Replay-based automatic treatment planning for prostate cancer intensity modulated radiotherapy },
  author={ Md Mainul Abrar and Parvat Sapkota and Damon Sprouts and Xun Jia and Yujie Chi },
  journal={arXiv preprint arXiv:2502.00346},
  year={ 2025 }
}
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