Evaluation of deep learning-based deliverable VMAT plan generated by prototype software for automated planning for prostate cancer patients

被引:5
作者
Kadoya, Noriyuki [1 ,5 ]
Kimura, Yuto [2 ]
Tozuka, Ryota [1 ]
Tanaka, Shohei [1 ]
Arai, Kazuhiro [1 ]
Katsuta, Yoshiyuki [1 ]
Shimizu, Hidetoshi [3 ]
Sugai, Yuto [4 ]
Yamamoto, Takaya [1 ]
Umezawa, Rei [1 ]
Jingu, Keiichi [1 ]
机构
[1] Tohoku Univ, Grad Sch Med, Dept Radiat Oncol, 1-1 Seiryo Machi,Aoba Ku, Sendai, Miyagi 9808574, Japan
[2] Ofuna Chuo Hosp, Radiat Oncol Ctr, Ofuna 6-2-24, Kamakura, Kanagawa 2470056, Japan
[3] Aichi Canc Ctr Hosp, Dept Radiat Oncol, Kanokoden 1-1,Chikusa Ku, Nagoya, Aichi 4648681, Japan
[4] Keio Univ, Dept Radiol Technol, Shinanomachi 35,Shinjuku Ku, Tokyo 1608582, Japan
[5] Tohoku Univ, Grad Sch Med, Dept Radiat Oncol, 11 Seiryo Machi,Aoba Ku, Sendai 9808574, Japan
关键词
radiotherapy; deep learning; auto planning; artificial intelligence; prostate cancer; MODULATED ARC THERAPY; DOSE DISTRIBUTION; QUALITY; OPTIMIZATION; CONFORMITY; MODEL; IMRT; HEAD;
D O I
10.1093/jrr/rrad058
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
This study aims to evaluate the dosimetric accuracy of a deep learning (DL)-based deliverable volumetric arc radiation therapy (VMAT) plan generated using DL-based automated planning assistant system (AIVOT, prototype version) for patients with prostate cancer. The VMAT data (cliDose) of 68 patients with prostate cancer treated with VMAT treatment (70-74 Gy/28-37 fr) at our hospital were used (n = 55 for training and n = 13 for testing). First, a HD-U-net-based 3D dose prediction model implemented in AIVOT was customized using the VMAT data. Thus, a predictive VMAT plan (preDose) comprising AIVOT that predicted the 3D doses was generated. Second, deliverable VMAT plans (deliDose) were created using AIVOT, the radiation treatment planning system Eclipse (version 15.6) and its vender-supplied objective functions. Finally, we compared these two estimated DL-based VMAT treatment plans-i.e. preDose and deliDose-with cliDose. The average absolute dose difference of all DVH parameters for the target tissue between cliDose and deliDose across all patients was 1.32 & PLUSMN; 1.35% (range: 0.04-6.21%), while that for all the organs at risks was 2.08 & PLUSMN; 2.79% (range: 0.00-15.4%). The deliDose was superior to the cliDose in all DVH parameters for bladder and rectum. The blinded plan scoring of deliDose and cliDose was 4.54 & PLUSMN; 0.50 and 5.0 & PLUSMN; 0.0, respectively (All plans scored & GE;4 points, P = 0.03.) This study demonstrated that DL-based deliverable plan for prostate cancer achieved the clinically acceptable level. Thus, the AIVOT software exhibited a potential for automated planning with no intervention for patients with prostate cancer.
引用
收藏
页码:842 / 849
页数:8
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