Dosiomic feature comparison between dose-calculation algorithms used for lung stereotactic body radiation therapy

被引:0
作者
Takanori Adachi
Mitsuhiro Nakamura
Ryo Kakino
Hideaki Hirashima
Hiraku Iramina
Yusuke Tsuruta
Tomohiro Ono
Nobutaka Mukumoto
Yuki Miyabe
Yukinori Matsuo
Takashi Mizowaki
机构
[1] Kyoto University,Division of Medical Physics, Department of Information Technology and Medical Engineering, Human Health Sciences, Graduate School of Medicine
[2] Kyoto University,Department of Radiation Oncology and Image
[3] Kyoto University Hospital,Applied Therapy, Graduate School of Medicine
来源
Radiological Physics and Technology | 2022年 / 15卷
关键词
Dosiomics; Dose-calculation algorithm; Wavelet filter; Prescribed dose; Stereotactic body radiation therapy;
D O I
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中图分类号
学科分类号
摘要
To evaluate the reproducibility of dose-based radiomic (dosiomic) features between dose-calculation algorithms for lung stereotactic body radiation therapy (SBRT). We analyzed 105 patients with early-stage non-small cell lung cancer who underwent lung SBRT between March 2011 and December 2017. Radiation doses of 48, 60, and 70 Gy were prescribed to the isocenter in 4–8 fractions. Dose calculations were performed using X-ray voxel Monte Carlo (XVMC) on the iPlan radiation treatment planning system (RTPS). Thereafter, the radiation doses were recalculated using the Acuros XB (AXB) and analytical anisotropic algorithm (AAA) on the Eclipse RTPS while maintaining the XVMC-calculated monitor units and beam arrangements. A total of 6808 dosiomic features were extracted without preprocessing (112 shape, 144 first-order, and 600 texture features) or with wavelet filters to eight decompositions (1152 first-order and 4800 texture features). Features with absolute pairwise concordance correlation coefficients—|CCcon|—values exceeding or equaling 0.85 were considered highly reproducible. Subgroup analyses were performed considering the wavelet filters and prescribed doses. The numbers of highly reproducible first-order and texture features were 34.8%, 26.9%, and 31.0% for the XVMC–AXB, XVMC–AAA, and AXB–AAA pairs, respectively. The maximum difference between the mean |CCcon| values was 0.70 and 0.11 for the subgroup analyses of wavelet filters and prescribed dose, respectively. The application of wavelet filter-based dosiomic analyses may be limited when using different types of dose-calculation algorithms for lung SBRT.
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页码:63 / 71
页数:8
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