A deep-learning method using single phantom to enhance megavoltage image quality for patient positioning in chest radiotherapy: a feasibility study

被引:0
|
作者
Jeon, Hosang [1 ,2 ]
Kim, Dong Woon [1 ,2 ]
Joo, Ji Hyeon [1 ,2 ,3 ]
Ki, Yongkan [1 ,2 ,3 ]
Kim, Wontaek [3 ,4 ]
Park, Dahl [4 ]
Nam, Jiho [4 ]
Kim, Dong Hyeon [3 ,4 ]
机构
[1] Pusan Natl Univ, Dept Radiat Oncol, Yangsan Hosp, Yangsan, South Korea
[2] Pusan Natl Univ, Res Inst Convergence Biomed Sci & Technol, Yangsan Hosp, Yangsan, South Korea
[3] Pusan Natl Univ, Dept Radiat Oncol, Sch Med, Yangsan, South Korea
[4] Pusan Natl Univ Hosp, Dept Radiat Oncol, Pusan, South Korea
基金
新加坡国家研究基金会;
关键词
Deep learning; Megavoltage image; Kilovoltage image; Radiotherapy; Patient setup;
D O I
10.1007/s40042-023-00852-4
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Image-guided radiation treatment (IGRT) is essential for verifying patient positioning during modern radiotherapy. Although megavoltage digital radiographs (MV-DR) are available on most therapeutic linear accelerators and can be used for checking treatment beam shapes, they are much inferior to kilovoltage digital radiographs (KV-DR) in terms of image quality. As it is generally challenging to obtain a well-aligned MV - KV training dataset of patients in clinical scenarios, there is a lack of sufficient information on the accuracy of KV-DR synthesized using supervised training. Therefore, we aimed to synthesize pseudo KV-DR (pKV-DR) from MV-DR using a training dataset developed with a single anthropomorphic chest phantom. The phantom was adopted to obtain MV - KV image pairs at various gantry angles because these image pairs of patients are highly difficult to acquire and exactly align with each other. A deep-learning model based on U-net architecture was trained with the phantom image pairs using the mean absolute error (MAE) and structure similarity (SSIM) indices as loss functions. The mean MAEs of MV-DR and pKV-DR against KV-DR as the ground truth were 0.1152 and 0.0169, respectively, and their mean SSIM values were 0.9693 and 0.9942, respectively. Finally, pKV-DR showed a relatively high image similarity to that of KV-DR with smaller MAE (14.7%) and higher SSIM (2.5%), compared with MV-DR. The image contrast was also improved by 37.1% in clinical cases. The proposed method is expected to enable the implementation of improved IGRT with high image quality of KV-DR level, even in clinics where MV-DR is only available.
引用
收藏
页码:72 / 80
页数:9
相关论文
共 50 条
  • [21] Assessment of Image Quality in Chest CT With Precision Matrix and Increased Framing Rate Using Single Source CT: A Phantom Study
    Mavridis, Stylianos
    El-Gedaily, Mona
    Kubik-Huch, Rahel A.
    Knoth, Friedrich
    Leon, Jesus Fernandez
    Euler, Andre
    Hefermehl, Lukas
    Niemann, Tilo
    IN VIVO, 2023, 37 (01): : 99 - 105
  • [22] Assessment of Image Quality of Coronary CT Angiography Using Deep Learning-Based CT Reconstruction: Phantom and Patient Studies
    Jeon, Pil-Hyun
    Jeon, Sang-Hyun
    Ko, Donghee
    An, Giyong
    Shim, Hackjoon
    Otgonbaatar, Chuluunbaatar
    Son, Kihong
    Kim, Daehong
    Ko, Sung Min
    Chung, Myung-Ae
    DIAGNOSTICS, 2023, 13 (11)
  • [23] A phantom study to assess the feasibility of using ExacTrac for patient setup for fractionated stereotactic radiotherapy (SRT) technique
    Gete, E.
    Moiseenko, V.
    MEDICAL PHYSICS, 2007, 34 (06) : 2373 - 2374
  • [24] Using Supervised Deep-Learning to Model Edge-FBG Shape Sensors: a Feasibility Study
    Manavi, Samaneh
    Renna, Tatiana
    Horvath, Antal
    Freund, Sara
    Zam, Azhar
    Rauter, Georg
    Schade, Wolfgang
    Cattin, Philippe C.
    OPTICAL SENSORS 2021, 2021, 11772
  • [25] Preserving image texture while reducing radiation dose with a deep learning image reconstruction algorithm in chest CT: A phantom study
    Franck, Caro
    Zhang, Guozhi
    Deak, Paul
    Zanca, Federica
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2021, 81 : 86 - 93
  • [26] Deep learning image reconstruction for quality assessment of iodine concentration in computed tomography: A phantom study
    Jeon, Pil-Hyun
    Lee, Chang-Lae
    JOURNAL OF X-RAY SCIENCE AND TECHNOLOGY, 2023, 31 (02) : 409 - 422
  • [27] A deep-learning method using computed tomography scout images for estimating patient body weight
    Shota Ichikawa
    Misaki Hamada
    Hiroyuki Sugimori
    Scientific Reports, 11
  • [28] A deep-learning method using computed tomography scout images for estimating patient body weight
    Ichikawa, Shota
    Hamada, Misaki
    Sugimori, Hiroyuki
    SCIENTIFIC REPORTS, 2021, 11 (01)
  • [29] The influence of a deep learning image reconstruction algorithm on the image quality and auto-analysis of pulmonary nodules at ultra-low dose chest CT: a phantom study
    Yao, Yue
    Guo, Baobin
    Li, Jianying
    Yang, Quanxin
    Li, Xiaohui
    Deng, Lei
    QUANTITATIVE IMAGING IN MEDICINE AND SURGERY, 2022, 12 (05) : 2777 - 2791
  • [30] Comparison of two deep learning image reconstruction algorithms in chest CT images: A task-based image quality assessment on phantom data
    Greffier, Joel
    Frandon, Julien
    Si-Mohamed, Salim
    Dabli, Djamel
    Hamard, Aymeric
    Belaouni, Asmaa
    Akessoul, Philippe
    Besse, Francis
    Guiu, Boris
    Beregi, Jean-Paul
    DIAGNOSTIC AND INTERVENTIONAL IMAGING, 2022, 103 (01) : 21 - 30