An Artificial Intelligence-Driven Agent for Real-Time Head-and-Neck IMRT Plan Generation using Conditional Generative Adversarial Network (cGAN)
Xinyi Li, Yang Sheng, Jiahan Zhang, Wentao Wang, Fang-Fang Yin, Qiuwen, Wu, Yaorong Ge, Q. Jackie Wu, Chunhao Wang

TL;DR
This paper presents an AI agent using a conditional GAN architecture to rapidly generate head-and-neck IMRT plans with quality comparable to traditional methods, significantly reducing planning time.
Contribution
The study introduces a novel PyraNet generator and a customized wavelet loss within a cGAN framework for fully automated IMRT plan generation.
Findings
AI plans achieved comparable dosimetric metrics to TPS plans.
Fluence map prediction time is approximately 3 seconds per case.
AI-generated plans demonstrated similar isodose distributions to clinical plans.
Abstract
Purpose: To develop an Artificial Intelligence (AI) agent for fully-automated rapid head and neck (H&N) IMRT plan generation without time-consuming inverse planning. Methods: This AI agent was trained using a conditional Generative Adversarial Network architecture. The generator, PyraNet, is a novel Deep Learning network that implements 28 classic ResNet blocks in pyramid-like concatenations. The discriminator is a customized 4-layer DenseNet. The AI agent first generates customized 2D projections at 9 template beam angles from 3D CT volume and structures of a patient. These projections are then stacked as 4D inputs of PyraNet, from which 9 radiation fluence maps are generated simultaneously. Finally, the predicted fluence maps are imported into a commercial treatment planning system (TPS) for plan integrity checks. The AI agent was built and tested upon 231 oropharyngeal plans…
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