Deep learning-based inverse mapping for fluence map prediction

被引:15
|
作者
Ma, Lin [1 ]
Chen, Mingli [1 ]
Gu, Xuejun [1 ]
Lu, Weiguo [1 ]
机构
[1] Univ Texas Southwestern Med Ctr Dallas, Med Artificial Intelligence & Automat Lab, Dept Radiat Oncol, 2280 Inwood Rd, Dallas, TX 75390 USA
来源
PHYSICS IN MEDICINE AND BIOLOGY | 2020年 / 65卷 / 23期
关键词
deep learning; inverse planning; fluence map optimization; AT-RISK;
D O I
10.1088/1361-6560/abc12c
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
We developed a fluence map prediction method that directly generates fluence maps for a given desired dose distribution without optimization for volumetric modulated arc therapy (VMAT) planning. The prediction consists of two steps. First, projections of the desired dose are calculated and then inversely mapped to fluence maps in the phantom geometry by a deep neural network. Second, a plan scaling technique is applied to scale fluence maps from phantom to patient geometry. We evaluated the performance of the proposed fluence map prediction method for 102 head and neck (H&N) and 14 prostate cancer VMAT plans by comparing the patient doses calculated from the predicted fluence maps with the given desired dose distributions. The mean dose differences were 1.42% +/- 0.37%, 1.53% +/- 0.44% and 1.25% +/- 0.44% for the planning target volume (PTV), the region from the PTV boundary to the 50% isodose line, and the region from the 50% to the 20% isodose line, respectively. The gamma passing rate was 98.06% +/- 2.64% with the 3 mm/3% criterion. The prediction time for a single VMAT plan was less than one second. In conclusion, we developed an inverse mapping-based method that predicts fluence maps for desired dose distributions with high accuracy. Our method is effectively an optimization-free inverse planning approach, which was orders of magnitude faster than fluence map optimization. Combining the proposed method with leaf sequencing has the potential to dramatically speed up VMAT treatment planning.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Deep Learning-Based Advances in Protein Structure Prediction
    Pakhrin, Subash C.
    Shrestha, Bikash
    Adhikari, Badri
    KC, Dukka B.
    [J]. INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2021, 22 (11)
  • [32] Deep learning-based prediction of ship transit time
    Yoo, Sang-Lok
    Kim, Kwang-Il
    [J]. OCEAN ENGINEERING, 2023, 280
  • [33] A Deep Learning-Based Approach for Foot Placement Prediction
    Lee, Sung-Wook
    Asbeck, Alan
    [J]. IEEE ROBOTICS AND AUTOMATION LETTERS, 2023, 8 (08) : 4959 - 4966
  • [34] Research on Deep Learning-Based Financial Risk Prediction
    Huang, Boning
    Wei, Junkang
    [J]. SCIENTIFIC PROGRAMMING, 2021, 2021
  • [35] Deep Learning-Based Defect Prediction for Mobile Applications
    Jorayeva, Manzura
    Akbulut, Akhan
    Catal, Cagatay
    Mishra, Alok
    [J]. SENSORS, 2022, 22 (13)
  • [36] A deep learning-based framework for road traffic prediction
    Redouane Benabdallah Benarmas
    Kadda Beghdad Bey
    [J]. The Journal of Supercomputing, 2024, 80 : 6891 - 6916
  • [37] Deep Learning-Based Destination Prediction Scheme by Trajectory Prediction Framework
    Yang, Jingkang
    Cao, Jianyu
    Liu, Yining
    [J]. SECURITY AND COMMUNICATION NETWORKS, 2022, 2022
  • [38] Optimized deep learning-based prediction model for chiller performance prediction
    Sathesh, Tamilarasan
    Shih, Yang-Cheng
    [J]. DATA & KNOWLEDGE ENGINEERING, 2023, 144
  • [39] Study on the prediction and inverse prediction of detonation properties based on deep learning
    Yang, Zi-hang
    Rong, Ji-li
    Zhao, Zi-tong
    [J]. DEFENCE TECHNOLOGY, 2023, 24 : 18 - 30
  • [40] Study on the prediction and inverse prediction of detonation properties based on deep learning
    Zi-hang Yang
    Ji-li Rong
    Zi-tong Zhao
    [J]. Defence Technology, 2023, (06) : 18 - 30