Saini Sourav, Wei Yawen, Rong Jingzhao, Liu Xiaofeng
Dept. of Radiology and Biomedical Imaging, Yale School of Medicine, Yale University, New Haven, CT 06519, USA.
Dept. of Biostatistics (Health Informatics and Data Science), Yale School of Public Health, Yale University, New Haven, CT 06519, USA.
Proc SPIE Int Soc Opt Eng. 2025 Feb;13408. doi: 10.1117/12.3046746. Epub 2025 Apr 7.
Treatment of cervical cancer commonly involves high-dose-rate brachytherapy (HDR-BT), a procedure that requires precise and efficient planning to achieve the best patient outcomes. Historically, the HDR-BT planning process has been labor-intensive and largely dependent on the expertise of the clinician, resulting in potential inconsistencies in the quality of treatment. To overcome this issue, we propose an innovative method that employs advanced deep-learning models to improve HDR-BT planning. This paper presents the , which features a sophisticated dendritic structure comprising a primary branch for stacked inputs and three auxiliary branches dedicated to the segmentation of the clinical target volume (CTV), bladder, and rectum. This architecture enhances the model's understanding of organ-at-risk (OAR) areas, thereby improving dose prediction accuracy. Extensive evaluations reveal that DCA-UNet significantly enhances the precision of HDR-BT dose predictions across different applicator types. Our findings indicate that DCA-UNet consistently outperforms both traditional UNet and the more recent SwimUNetr models. By advancing the use of cross-attention mechanisms in deep learning frameworks, this research aids in the standardization of HDR-BT planning and opens up promising possibilities for future advancements in cervical cancer care.
宫颈癌的治疗通常涉及高剂量率近距离放射治疗(HDR-BT),该过程需要精确且高效的规划以实现最佳的患者治疗效果。从历史上看,HDR-BT规划过程一直劳动强度大,并且在很大程度上依赖临床医生的专业知识,这导致治疗质量可能存在不一致性。为了克服这个问题,我们提出了一种创新方法,该方法采用先进的深度学习模型来改进HDR-BT规划。本文介绍了一种[模型名称未给出],其具有复杂的树突状结构,包括一个用于堆叠输入的主分支和三个分别用于临床靶区(CTV)、膀胱和直肠分割的辅助分支。这种架构增强了模型对危及器官(OAR)区域的理解,从而提高了剂量预测的准确性。广泛的评估表明,DCA-UNet显著提高了不同施源器类型下HDR-BT剂量预测的精度。我们的研究结果表明,DCA-UNet始终优于传统的UNet和更新的SwimUNetr模型。通过在深度学习框架中推进交叉注意力机制的应用,这项研究有助于HDR-BT规划的标准化,并为宫颈癌治疗的未来进展开辟了广阔前景。