Clinical suitability of deep learning based synthetic CTs for adaptive proton therapy of lung cancer

被引:26
|
作者
Thummerer, Adrian [1 ]
Oria, Carmen Seller [1 ]
Zaffino, Paolo [2 ]
Meijers, Arturs [1 ]
Marmitt, Gabriel Guterres [1 ]
Wijsman, Robin [1 ]
Seco, Joao [3 ,4 ]
Langendijk, Johannes Albertus [1 ]
Knopf, Antje-Christin [1 ,5 ]
Spadea, Maria Francesca [2 ]
Both, Stefan [1 ]
机构
[1] Univ Groningen, Univ Med Ctr Groningen, Dept Radiat Oncol, Groningen, Netherlands
[2] Magna Graecia Univ Catanzaro, Dept Expt & Clin Med, Catanzaro, Italy
[3] Deutsch Krebsfosch Zentrum DKFZ, Dept Biomed Phys Radiat Oncol, Heidelberg, Germany
[4] Heidelberg Univ, Dept Phys & Astron, Heidelberg, Germany
[5] Univ Hosp Cologne, Ctr Integrated Oncol Cologne, Dept Internal Med 1, Cologne, Germany
关键词
adaptive proton therapy; cone-beam computed tomography; deep learning; lung cancer; synthetic CT; CONE-BEAM CT; HEAD-AND-NECK; DOSE CALCULATION; COMPUTED-TOMOGRAPHY; TECHNICAL NOTE; IMAGE; RADIOTHERAPY; REGISTRATION; FEASIBILITY; RADIOGRAPHY;
D O I
10.1002/mp.15333
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose Adaptive proton therapy (APT) of lung cancer patients requires frequent volumetric imaging of diagnostic quality. Cone-beam CT (CBCT) can provide these daily images, but x-ray scattering limits CBCT-image quality and hampers dose calculation accuracy. The purpose of this study was to generate CBCT-based synthetic CTs using a deep convolutional neural network (DCNN) and investigate image quality and clinical suitability for proton dose calculations in lung cancer patients. Methods A dataset of 33 thoracic cancer patients, containing CBCTs, same-day repeat CTs (rCT), planning-CTs (pCTs), and clinical proton treatment plans, was used to train and evaluate a DCNN with and without a pCT-based correction method. Mean absolute error (MAE), mean error (ME), peak signal-to-noise ratio, and structural similarity were used to quantify image quality. The evaluation of clinical suitability was based on recalculation of clinical proton treatment plans. Gamma pass ratios, mean dose to target volumes and organs at risk, and normal tissue complication probabilities (NTCP) were calculated. Furthermore, proton radiography simulations were performed to assess the HU-accuracy of sCTs in terms of range errors. Results On average, sCTs without correction resulted in a MAE of 34 +/- 6 HU and ME of 4 +/- 8 HU. The correction reduced the MAE to 31 +/- 4HU (ME to 2 +/- 4HU). Average 3%/3 mm gamma pass ratios increased from 93.7% to 96.8%, when the correction was applied. The patient specific correction reduced mean proton range errors from 1.5 to 1.1 mm. Relative mean target dose differences between sCTs and rCT were below +/- 0.5% for all patients and both synthetic CTs (with/without correction). NTCP values showed high agreement between sCTs and rCT (<2%). Conclusion CBCT-based sCTs can enable accurate proton dose calculations for APT of lung cancer patients. The patient specific correction method increased the image quality and dosimetric accuracy but had only a limited influence on clinically relevant parameters.
引用
收藏
页码:7673 / 7684
页数:12
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