Literature DB >> 27789564

Lifetime attributable risk of radiation-induced secondary cancer from proton beam therapy compared with that of intensity-modulated X-ray therapy in randomly sampled pediatric cancer patients.

Masaya Tamura1, Hideyuki Sakurai2, Masashi Mizumoto2, Satoshi Kamizawa2, Shigeyuki Murayama3, Haruo Yamashita3, Seishin Takao4, Ryusuke Suzuki4, Hiroki Shirato1,5, Yoichi M Ito6.   

Abstract

To investigate the amount that radiation-induced secondary cancer would be reduced by using proton beam therapy (PBT) in place of intensity-modulated X-ray therapy (IMXT) in pediatric patients, we analyzed lifetime attributable risk (LAR) as an in silico surrogate marker of the secondary cancer after these treatments. From 242 pediatric patients with cancers who were treated with PBT, 26 patients were selected by random sampling after stratification into four categories: (i) brain, head and neck, (ii) thoracic, (iii) abdominal, and (iv) whole craniospinal (WCNS) irradiation. IMXT was replanned using the same computed tomography and region of interest. Using the dose-volume histograms (DVHs) of PBT and IMXT, the LARs of Schneider et al. were calculated for the same patient. All the published dose-response models were tested for the organs at risk. Calculation of the LARs of PBT and IMXT based on the DVHs was feasible for all patients. The means ± standard deviations of the cumulative LAR difference between PBT and IMXT for the four categories were (i) 1.02 ± 0.52% (n = 7, P = 0.0021), (ii) 23.3 ± 17.2% (n = 8, P = 0.0065), (iii) 16.6 ± 19.9% (n = 8, P = 0.0497) and (iv) 50.0 ± 21.1% (n = 3, P = 0.0274), respectively (one tailed t-test). The numbers needed to treat (NNT) were (i) 98.0, (ii) 4.3, (iii) 6.0 and (iv) 2.0 for WCNS, respectively. In pediatric patients who had undergone PBT, the LAR of PBT was significantly lower than the LAR of IMXT estimated by in silico modeling. Although a validation study is required, it is suggested that the LAR would be useful as an in silico surrogate marker of secondary cancer induced by different radiotherapy techniques.
© The Author 2016. Published by Oxford University Press on behalf of The Japan Radiation Research Society and Japanese Society for Radiation Oncology.

Entities:  

Keywords:  intensity-modulated radiotherapy; lifetime attributable risk; proton beam therapy; radiation-induced; secondary cancer

Mesh:

Year:  2017        PMID: 27789564      PMCID: PMC5440886          DOI: 10.1093/jrr/rrw088

Source DB:  PubMed          Journal:  J Radiat Res        ISSN: 0449-3060            Impact factor:   2.724


INTRODUCTION

Intensity-modulated X-ray therapy (IMXT) can achieve excellent dose conformation, even to irregularly shaped target volumes, compared with 3D radiotherapy. Proton beam therapy (PBT) can achieve conformal irradiation similar to or better than IMXT. Since PBT can reduce the low dose regions outside the target volume compared with IMXT, it is generally thought that the risk of radiation-induced secondary cancer is lower for PBT than for IMXT [1]. However, it has been estimated that a period of at least 30 years would be needed to observe the difference in the incidence of radiation-induced secondary cancer between PBT and IMXT [2]. Since such a long follow-up period is not practical for a prospective clinical study, surrogate markers for the incidence of radiation-induced secondary cancer are strongly warranted. To find a cost-effective way to select patients who should be treated by PBT rather than IMXT, a model-based approach using normal tissue complication probability calculations was recently reported for adult cancers [3]. It may also be reasonable to estimate the risk of secondary cancers when selecting pediatric patients for treatment using PBT rather than IMXT. A surrogate marker for secondary cancer based on scientific models and proper parameters is required for this purpose. Schneider et al. suggested that dose distribution data from a 3D radiation treatment planning system (3DTPS) based on computed tomography (CT) images could be used to estimate the lifetime attributable risk (LAR) of secondary cancer after radiation therapy [4]. The LAR is based on a long-term observation study of the atomic bomb survivors in Hiroshima and Nagasaki [5] and of patients who have received radiotherapy for Hodgkin's disease [6]. In this study, we investigated whether the LAR could be used as an ‘in silico’ surrogate marker for any pediatric cancers, by examining the amount of difference in the LAR between the different dose distributions for PBT and IMXT in the same patient. Applying the method of Schneider et al., we examined the difference in LAR between PBT and IMXT, using the 3DTPS data for pediatric patients with tumors who had received PBT in two Japanese institutions. There have been several reports for whole craniospinal (WCNS) irradiation using the same method, where the difference would be largest. To date, there have been studies showing that the LAR obtained with PBT is lower than that obtained with IMXT using a representative scenario for optic glioma and vertebral body Ewing's sarcoma [7], or brain/head and neck tumors [8], or WCNS [1, 9–11]. However, it has not been certain whether the difference in LAR between PBT and IMXT is generally observed for pediatric patients in any treatment sites or just occurs in selected patients. To answer this question, in this study we randomly sampled patients from all pediatric patients who were treated using PBT in two representative institutions in Japan. In addition, by applying different dose–response models to individual patients, we evaluated how much the difference between PBT and IMXT would change according to the selected model.

MATERIALS AND METHODS

Calculation of LAR

There have been three dose–response models applied for determining the relationship between dose and the risk of radiation-induced secondary cancer: the linear model, the bell-shaped model and the plateau model (see Supplementary data). The various organs have been reported to be best fitted by one or another of these models [12-17]. Schneider et al. have proposed a ‘full model’, which integrates all three models into one equation [18]. By changing the parameters in the full model, we can estimate the effect of the different dose–response models on the LAR, which is based on dose–response models as follows: Here, D is the dose, R and are organ-specific model parameters (where R is the repopulation parameter and the cell kill parameter), D is the prescribed dose and d is the fraction dose. For sarcoma induction, the following formula was used: Computed tomography (CT) and 3DTPS are used to calculate D, the dose at a certain point in the organ at risk (OAR). The dose–volume histogram (DVH) of the OAR derived using the CT data is patient-specific and treatment-specific. Therefore, the DVH can be used to calculate the total risk of secondary cancer of the OARs in the patient by the following equation. As the total risk of secondary cancer in the OAR, the organ equivalent dose (OED) is calculated using DVH and RED as follows: where V is the total organ volume and V(D) the dose–volume histogram. Using the age at exposure to radiotherapy and the age attained, excess absolute risk (EAR) at the age attained can be obtained as follows (Eq. 4). Parameters in the equation were based on the previously published cancer risk data from A-bomb survivors [5, 19] and patients receiving radiation therapy for Hodgkin's disease [13, 15, 20]: where β is the initial slope of the A-bomb survivors, e the age at exposure, a the age attained, γe, γα the age modifying parameters, and s a gender-specific factor (0.17 and −0.17 for females and males). To calculate the risk of secondary cancer throughout the patient's life, LAR can be calculated as follows (Eq. 5): Here, (a)/(e) is the probability of surviving from age e to age a, and L is the latent period for solid cancer induction (5 years for solid cancer and 2 years for leukemia). The parameters used in the calculation were derived from the study of Schneider et al. [4]. However, since there were no data about the thyroid in this paper, data from another paper by Schneider using a bell-shaped model were used [15]. In the previous paper, the value in the EAR calculation was derived from the data transformed to be applicable for patients in UK [21]. However, since all the patients in this study were Japanese, we used the original data from Japanese atomic bomb survivors in this study. The integral area of LAR was from the attained age plus 5 to 75 years. In addition, the (a) and (e) values were taken from the 2011 Japanese life table rather than from the American data in the Schneider's paper. In the case that more than one dose–response curve was available, we calculated the LAR for each dose–response curve along with the load average of the LAR as the LAR for this patient. The parameters used in this study is listed in Table 1 for carcinoma and Table 2 for sarcoma.
Table 1.

Schneider's fit parameters for the various dose–response models for carcinoma induction

Organ at riskLinear modelFull modelBell-shaped modelPlateau modelβJP[b]γeγa
β[b]α[a]Rα[a]α[a]
Brain0.440.0180.930.0090.0210.51−0.0242.38
Female breast0.0440.150.0410.1159.2−0.0371.7
Lung0.0420.830.0220.0567.50.0024.23
Colon7.20.0010.990.0010.0018.0−0.0566.9
Stomach0.460.460.1119.5−0.0021.9
Small intestine0.5910.090.488.0−0.0566.9
Liver0.220.3230.290.2430.7984.3−0.0213.6
Bladder0.2190.060.2130.6333.2−0.0242.38
Thyroid0.0330.13−0.0460.6

aIn Gy−1.

bIn (10 000 PY Gy)−1. The parameters β, α and R are listed for each organ and each model. The β is the initial slope of the A-bomb survivors for age at exposure of 30 and attained age of 70 years and age-modifying parameters and for various sites.

Table 2.

Schneider's fit parameters for the various dose–response models for sarcoma induction

Organ at riskLow repopulationIntermediate repopulationFull tissue recoveryγeγa
α[a]Rβ[b]α[a]Rβ[b]α[a]Rβ[b]
Bone0.0190.11.70.0670.50.20.0781.00.1−0.013−0.56
Soft tissue0.040.13.30.060.50.60.0931.00.1−0.013−0.56

aIn Gy−1.

bIn (10 000 PY Gy)−1. The parameters , and R are listed for each organ and for three different values for R (0.1, 0.5 and 1.0). The and are the age-modifying parameters for various sites.

Schneider's fit parameters for the various dose–response models for carcinoma induction aIn Gy−1. bIn (10 000 PY Gy)−1. The parameters β, α and R are listed for each organ and each model. The β is the initial slope of the A-bomb survivors for age at exposure of 30 and attained age of 70 years and age-modifying parameters and for various sites. Schneider's fit parameters for the various dose–response models for sarcoma induction aIn Gy−1. bIn (10 000 PY Gy)−1. The parameters , and R are listed for each organ and for three different values for R (0.1, 0.5 and 1.0). The and are the age-modifying parameters for various sites.

Sampling of the patients

Subjects consisted of 242 patients who were <20 years old and for whom 3DTPS data were available; these 242 subjects included 143 patients who had been treated using PBT at Tsukuba University Hospital between 2009 and 2014 and 99 patients at the Shizuoka Cancer Center who had been treated between 2004 and 2014 (Fig. 1). All patients were treated with PBT with passive scatter technology. Random sampling was performed by a biostatistitian (Y.I.). The patients were stratified into four categories according to whether they had cancers of (A) the brain, head and neck, (B) the chest, (C) the abdomen or (D) the whole central nervous system (WCNS). There were 157, 27, 42 and 16 patients in each category respectively. In each category, patients were again stratified according to sex (female or male), age (0–6 years old or 7–20 years old), and target volume (≤median, ≥median) to reduce the bias. After these stratifications, 8 patients were randomly selected from the patients in each of categories (A), (B) and (C). Since the number of patients in category (D) who were treated by WCNS was too small to be randomly sampled, 1 female of age 11, 1 female of age 6, and 1 male of age 3 were selected to represent category (D). In total, 27 patients were selected by the biostatistician (Table 3).
Figure 1.

Schema of stratified random sampling from patients who had been treated using proton beam therapy at the Tsukuba University Hospital or Shizuoka Cancer Center.

Table 3.

Patient characteristics (category A: brain, head and neck; B: chest; C: abdomen; D: whole central nervous system), institutions, prescribed radiation dose, and fraction size

PatientPrimary pathologyInstitutionSexAge (year)Fractional dose (Gy)No. of fractionsPrescribed dose (Gy)
A-1Pontine gliomaTsukubaF111.83054
A-2Germ cell tumorTsukubaF121.81730.6
A-3EpendymomaTsukubaF21.82850.4
A-4Ewing sarcomaTsukubaF21.82850.4
A-6Germ cell tumorTsukubaM161.82850.4
A-7Atypical teratoid/rhabdoid tumorTsukubaM21.83257.6
A-8Primitive neuroectodermal tumorShizuokaM21.82850.4
B-1Ewing sarcomaTsukubaF101.81425.2
B-2Pelvic bone, malignancyShizuokaF132.51537.5
B-3RhabdomyosarcomaTsukubaF51.83155.8
B-4NeuroblastomaShizuokaF11.82036
B-5PancreatoblastomaShizuokaM112.02040
B-6Ewing sarcomaTsukubaM192.52460
B-7EpendymomaTsukubaM31.82850.4
B-8NeuroblastomaShizuokaM31.82036
C-1PancreatoblastomaTsukubaF112.52460
C-2NeuroblastomaShizuokaF81.82036
C-3RhabdomyosarcomaTsukubaF21.82545
C-4NeuroblastomaTsukubaF31.81730.6
C-5Acinar cell carcinomaTsukubaM123.32272.6
C-6EpendymomaTsukubaM101.83155.8
C-7NeuroblastomaTsukubaM61.81425.2
C-8NeuroblastomaTsukubaM41.81730.6
D-1MedulloblastomaShizuokaF111.81323.4
D-2MedulloblastomaShizuokaF61.81323.4
D-3MedulloblastomaShizuokaM31.81018
Schema of stratified random sampling from patients who had been treated using proton beam therapy at the Tsukuba University Hospital or Shizuoka Cancer Center. Patient characteristics (category A: brain, head and neck; B: chest; C: abdomen; D: whole central nervous system), institutions, prescribed radiation dose, and fraction size An external committee consisting of three pediatric radiation oncologists who are experts in photon therapy assessed the appropriateness of the treatment planning of IMXT for the 27 patients. They evaluated simple clinical data, contouring of targets and OARs, dose–volume statistics (such as maximum and mean dose for each organ), dose–volume histograms, and dose distribution on CT image slice by slice. Two patients (sampling cases C-4, C-6) were required to be re-planned for IMXT to make the dose distribution better according to the assessment by the committee. Another patient in category A (sampling case A-5) was required to be deleted from subsequent analysis because the patient had been treated for a relapsed tumor after photon radiotherapy. Compatibility between IMXT and PBT was conducted in the 26 patients.

Statistical comparison

Digital data concerning the CT image, regions of interest (ROIs), 3D dose distribution, and DVH of the 26 patients were sent to the central office from each institution using the DICOM-RT format in principle. One of the authors (M.T.), who is a medical physicist, re-planned the IMXT for each patient using the dose constraint of each institution and the reference dose constraints from a previous paper [9]. It was assumed that 6-MV X-ray irradiation was to be used in IMXT. All the treatment planning for IMXT was based on the assessment by an external committee made up of three pediatric radiation oncologists, who used photon therapy to confirm that the re-planning of IMXT was not intentionally deteriorated and that its 3D dose distribution reached a standard level of conformity and uniformity. They confirmed that dose–volume statistics for the clinical target volume were equivalent between PBT and IMXT for all patients. After the approval of the external committee, the OED for each OAR, the EAR at the age attained, and the LAR for each patient were calculated for PBT and IMXT, respectively. The mean and standard deviation among the patients in each category were calculated and compared using Student's t-test. The number needed to treat (NNT) was taken as the number of patients who required PBT instead of IMXT in order to prevent one additional incidence of radiation-induced secondary cancer. Since it is safe to assume that the LAR is smaller with PBT than IMXT for WCNS, where the irradiation volume is so different, a one tailed t-test is a reasonable assumption. For other regions, a two tailed t-test was used for comparison. P values < 0.05 were considered statistically significant. All statistical analyses were performed using JMP Pro® Version 12 (SAS Institute Inc., Cary, NC).

RESULTS

Calculation of the LARs of PBT and IMXT based on DVH was feasible for all patients. The brain, thyroid, bone and soft tissue were selected as the OARs for PBT and IMXT for the seven patients with tumors of the brain, head and neck region. For bone and soft tissue, the parameters for sarcoma were used. If parameters for pleural models had been reported, parameters for each model were used to calculate the LAR, and the load average value of LAR derived from both models was used. The difference in LAR between PBT and IMXT, or the LAR of IMXT minus that of PBT, was calculated for each OAR (Table 4). If we assume that the LAR of each organ is independent of the LAR of other organs, the cumulative risk of radiation-induced secondary cancer, or cumulative LAR, is calculated as the sum of the LAR of all organs in the same patient. We then assume that the LAR of other organs not in the planning CT scan was zero. The mean of the cumulative LAR of IMXT was significantly higher than that of PBT for the brain, bone and soft tissue (Table 4). The mean ± standard deviation was 1.02 ± 0.52%, and there was a statistical difference (P = 0.0021). The NNT was 98.0, suggesting that 1 out of 98 patients will not experience radiation-induced secondary cancer if we use PBT instead of IMXT.
Table 4.

LAR differences between PBT and IMXT and the number needed to treat (NNT) for each organ at risk (Category A: brain, head and neck; B: chest; C: abdomen; D: whole central nervous system)

Organ at riskA. Brain, H&NB. ChestC. AbdomenD. Whole CNS
LAR diff. (%)NNTP valueLAR diff. (%)NNTP valueLAR diff. (%)NNTP valueLAR diff. (%)NNTP value
Brain0.77 ± 0.441310.0036**0.00 ± 0.01−2.00 × 1040.230
Female breast7.46 ± 13.3413.40.1580.59 ± 1.191710.20715.9 ± 14.26.30.0960
Lung3.23 ± 1.4131.00.0003**3.76 ± 2.5926.60.0642
Colon9.22 ± 14.9610.80.12512.5 ± 19.78.00.11522.19 ± 6.944.50.0156*
Stomach2.02 ± 1.9549.60.0220*1.89 ± 1.5853.00.0118*3.45 ± 2.4429.00.0671
Small intestine0.63 ± 0.781600.05890.72 ± 0.801390.0384*2.30 ± 2.7943.40.145
Liver0.60 ± 0.421660.0046**0.49 ± 0.252040.0009**1.10 ± 0.1490.60.0026**
Bladder0.17 ± 0.325840.1710.14 ± 0.256980.211
Thyroid0.01 ± 0.011.89 × 1040.356−0.03 ± 0.13−3.59 × 1030.5651.09 ± 0.1891.80.0046**
Bone0.08 ± 0.051.21 × 1030.0043**0.03 ± 0.042.95 × 1030.0455*0.08 ± 0.071.31 × 1030.0183*0.03 ± 0.023.23 × 1030.0608
Soft tissue0.17 ± 0.165960.0335*0.10 ± 0.091.03 × 1030.0231*0.20 ± 0.175060.0121*
Cumulative1.02 ± 0.5298.00.0021**23.3 ± 17.24.30.0065**16.6 ± 19.96.00.0497*50.0 ± 21.12.00.0274*

A two-tailed t-test was used for Category A, B and C regions, and a one-tailed t-test was used for Category D. *P-value < 0.05 and >0.01, and **P-value <0.01.

LAR differences between PBT and IMXT and the number needed to treat (NNT) for each organ at risk (Category A: brain, head and neck; B: chest; C: abdomen; D: whole central nervous system) A two-tailed t-test was used for Category A, B and C regions, and a one-tailed t-test was used for Category D. *P-value < 0.05 and >0.01, and **P-value <0.01. The female breast, lung, colon, stomach, small intestine, liver, thyroid, bone and soft tissue were selected as the OARs for 8 patients with tumors of the thoracic region. The mean LAR of IMXT was significantly higher than that of PBT for the lung, stomach, liver, bone and soft tissue (Table 4). The mean ± standard deviation of the difference in cumulative LAR was 23.3 ± 17.2%, and the difference was statistically significant (P = 0.0065). The NNT was 4.3, suggesting that 1 out of 4.3 patients will not experience radiation-induced secondary cancer if we use PBT instead of IMXT. The female breast, colon, stomach, small intestine, liver, bladder, bone and soft tissue were selected as the OARs for the 8 patients with cancers of the abdominal region. The mean LAR of IMXT was significantly higher than that of PBT for the stomach, small intestine, liver, bone and soft tissue. The mean ± standard deviation of the difference in cumulative LAR was 16.6 ± 19.9%, and there was a statistical difference (P = 0.0497). The NNT was 6.0. For the 3 patients who were treated with WCNS, the brain, female breast, lung, colon, stomach, small intestine, liver, bladder, thyroid and bone were used as the OARs. The mean LAR of IMXT in the 3 patients was significantly higher than that of PBT for the colon, liver, and thyroid. The mean ± standard deviation of the cumulative LAR was 50.0 ± 21.1%, and the difference became statistically significant by one tailed t-test (P = 0.0274). The NNT was 2.0.

DISCUSSION

The relationship between exposure dose and radiation-induced secondary cancer has not been totally understood. However, the estimations derived from data on Japanese atomic bomb survivors are among the most reliable sources for understanding this relationship. Preston et al. analyzed the incidence of solid cancers among ~105 427 members of the Life Span Study (LSS) cohort of Hiroshima and Nagasaki atomic bomb survivors [5]. They found that 17 448 first primary cancers were diagnosed from 1958 through 1998. It was estimated that, at age 70 after an exposure at age 30, the solid cancer rates increased by ~35% per Gy [90% confidence interval (CI) 28%; 43%] for men and 58% per Gy (90% CI 43%; 69%) for women. For all solid cancers as a group, the excess relative risk (ERR per Gy) decreases by 17% per decade of increase in age at exposure (90% CI 7%; 25%) after allowing for attained-age effects, while the ERR decreased in proportion to the attained age to the power 1.65 (90% CI 2.1; 1.2) after allowing for age at exposure. The data were consistent with a linear dose response over the 0–2 Gy range, while there was some flattening of the dose response at higher doses. On the other hand, Dores et al. have examined secondary cancer incidence among long-term survivors of Hodgkin's disease, who were treated with a local dose of up to 40 Gy with mantle fields, by a population-based evaluation over 25 years [6]. Among 32 591 patients, there were 2153 secondary cancers reported, including 1726 solid tumors. The observed-to-expected ratio was 2.3 (95% CI 2.2; 2.4) for whole secondary cancers and 2.0 (95% CI 1.9; 2.0) for solid tumors. Schneider et al. have extensively examined the published data on A-bomb survivors in the low dose range, as well as the cancer risk data of Hodgkin's disease survivors in the high dose range. They also reconstructed the dose distribution of radiotherapy for Hodgkin's disease and estimated the most appropriate parameters to describe the relationship between the absorbed dose and the risk of secondary cancer in the dose range used in fractionated radiotherapy. Although there are still many uncertainties in the assumption of radiation-induced cancer in the radiotherapy dose range, their approach can be regarded as the most reasonable prediction model at present. There is a possibility that the superiority of one technique relative to the others can not be predicted correctly by means of complex equations. For example, if the dose–response curve is not linear but bell-shaped, the higher dose around the target volume may not be associated with the increase in the risk of secondary cancer. In fact, the data are too sparse to select one dose–response model in many organs. Therefore, it is very important to use the LAR value with great caution. We think that (i) the LAR value will only be useful for comparing differences in the dose distribution in the same patient, (ii) all the dose–response models should be tested if there is no agreement in the selection of the dose–response models, (iii) faint differences in the LAR between different treatment techniques should not be regarded as solid differences, and (iv) statistical analysis should be carefully carried out with the help of biostatistics. In the future, if we can update the dose–response curve of the risk of secondary cancer, it may be possible to improve the use of the LAR derived from different dose–response models. As long as we restrict ourselves to the policy above, the present study suggested that the LAR is useful for quantifying the difference in the risk of radiation-induced secondary cancer between two treatment techniques in the same patient. For 26 randomly selected pediatric patients who were treated with PBT, the risk of secondary cancer was suggested to be statistically lower than it would have been by treatment with IMXT. As far as we are aware, the number of patients in our study is the largest to date among studies that have estimated the risk of radiation-induced secondary cancer. The number of patients in the previous studies was 2, 2, 6, 10, 6 and 10 patients in Mirabell et al., Paganetti et al., Moteabbed et al., Brodin et al., Stokkevag et al. and Yoon et al. [1, 7–11], respectively. In this study, the difference was apparent for the thoracic and abdominal regions, but not for the brain and head and neck regions in general. These findings are consistent with the difference in the ratio of target volume to total irradiated volume to the patient between PBT and IMXT. Since the ratio of target volume to irradiated volume is large in patients who have received PBT for the brain and head and neck regions, the volume outside of the target volume was so small that no apparent difference was seen in the risk of secondary cancers. This relationship may not have been observed if PBT was used for the much smaller target volumes for the brain and head and neck regions. For the thoracic and abdominal regions, the volume outside the target volume was large enough to see the difference between PBT and IMXT. Again, this relationship may not have been observed if PBT was used for much larger target volume for the thoracic and abdominal regions. For WCNS irradiation, the difference was quite large. One shortcoming of this study was that we did not include the effect of contaminated neutrons in PBT and in high-energy X-ray therapy. Both treatments are known to increase the contaminated neutrons compared with conventional conformal radiotherapy [22, 23]. The effect of neutron contamination should be investigated further because of the higher risk of secondary cancer of the neutrons. Newhauser et al. have reported that the effect of neutrons was small in spot-scanning PBT, although the effect was not negligible in passive-scattering PBT [24]. Considering that spot-scanning PBT is becoming more common than passive-scattering PBT, neutrons are expected to have an increasingly diminished effect in PBT in clinical practice. It is also true that as volumetric multiple arc therapy (VMAT) becomes more popular in IMXT, the treatment time of IMXT and thus the contamination of neutrons will also be lowered in IMXT as well. Another limitation of this study is that we did not completely validate the model used for the LAR calculation. We should follow up the patients very carefully for years after PBT and IMXT to confirm whether the differences predicted in this study are realized. From the viewpoint of ALARA, the difference in the predicted risk of secondary cancer between the two treatments was so large that it is difficult to conduct a comparative study between PBT and IMXT for some areas. The difference was apparent for the patients who received WCNS, thoracic and abdominal irradiation. As long as the goal is to reduce the risk of secondary cancer after treatment for pediatric cancer, the present study suggested that PBT has been selected properly for these areas. For the treatment of the brain and head and neck regions, the difference in the risk of secondary cancer may not be as large as for the other regions. Difference in other late adverse reaction rates, such as vascular damage for pediatric patients between PBT and IMXT, should be investigated carefully. The total benefit of PBT should be determined by the total balance between the benefit and risk of various adverse reactions. In conclusion, the LAR of radiation-induced secondary cancer was significantly lower when using PBT than when using IMXT for pediatric patients. The difference was apparent for the thoracic region, abdominal region and WCNS irradiation. The results suggested that it would be reasonable to use the cumulative LAR difference when we need to select between PBT and IMXT, not only for pediatric patients but also for other young adult patients. Even when other in silico surrogate markers, such as normal tissue complication probability and tumor control probability, do not differ between the two techniques, PBT would be the right choice for the treatment of pediatric patients in terms of LAR. However, more work is required for the precise estimation and long-term validation and updating of the models behind LAR estimation.

SUPPLEMENTARY DATA

Supplementary data are available at the . Click here for additional data file.
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Authors:  Dale L Preston; Donald A Pierce; Yukiko Shimizu; Harry M Cullings; Shoichiro Fujita; Sachiyo Funamoto; Kazunori Kodama
Journal:  Radiat Res       Date:  2004-10       Impact factor: 2.841

7.  Solid cancer incidence in atomic bomb survivors: 1958-1998.

Authors:  D L Preston; E Ron; S Tokuoka; S Funamoto; N Nishi; M Soda; K Mabuchi; K Kodama
Journal:  Radiat Res       Date:  2007-07       Impact factor: 2.841

8.  Mechanistic model of radiation-induced cancer after fractionated radiotherapy using the linear-quadratic formula.

Authors:  Uwe Schneider
Journal:  Med Phys       Date:  2009-04       Impact factor: 4.071

9.  The risk of radiation-induced second cancers in the high to medium dose region: a comparison between passive and scanned proton therapy, IMRT and VMAT for pediatric patients with brain tumors.

Authors:  Maryam Moteabbed; Torunn I Yock; Harald Paganetti
Journal:  Phys Med Biol       Date:  2014-05-15       Impact factor: 3.609

10.  Site-specific dose-response relationships for cancer induction from the combined Japanese A-bomb and Hodgkin cohorts for doses relevant to radiotherapy.

Authors:  Uwe Schneider; Marcin Sumila; Judith Robotka
Journal:  Theor Biol Med Model       Date:  2011-07-26       Impact factor: 2.432

View more
  7 in total

1.  Impact of lifetime attributable risk of radiation-induced secondary cancer in proton craniospinal irradiation with vertebral-body-sparing for young pediatric patients with medulloblastoma.

Authors:  Shunsuke Suzuki; Takahiro Kato; Masao Murakami
Journal:  J Radiat Res       Date:  2021-03-10       Impact factor: 2.724

Review 2.  Proton therapy for brain tumours in the area of evidence-based medicine.

Authors:  Damien C Weber; Pei S Lim; Sebastien Tran; Marc Walser; Alessandra Bolsi; Ulrike Kliebsch; Jürgen Beer; Barbara Bachtiary; Tony Lomax; Alessia Pica
Journal:  Br J Radiol       Date:  2019-05-20       Impact factor: 3.039

3.  Risk of radiation-induced second malignant neoplasms from photon and proton radiotherapy in paediatric abdominal neuroblastoma.

Authors:  Sophie Taylor; Pei Lim; Reem Ahmad; Ammar Alhadi; William Harris; Vasilis Rompokos; Derek D'Souza; Mark Gaze; Jennifer Gains; Catarina Veiga
Journal:  Phys Imaging Radiat Oncol       Date:  2021-07-09

4.  Proton beam therapy for a giant hepatic hemangioma: A case report and literature review.

Authors:  Shosei Shimizu; Masashi Mizumoto; Toshiyuki Okumura; Yinuo Li; Keiichirou Baba; Motohiro Murakami; Toshiki Ishida; Masatoshi Nakamura; Yuichi Hiroshima; Takashi Iizumi; Takashi Saito; Haruko Numajiri; Kei Nakai; Masaharu Hata; Hideyuki Sakurai
Journal:  Clin Transl Radiat Oncol       Date:  2021-02-03

5.  Selection of external beam radiotherapy approaches for precise and accurate cancer treatment.

Authors:  Hiroki Shirato; Quynh-Thu Le; Keiji Kobashi; Anussara Prayongrat; Seishin Takao; Shinichi Shimizu; Amato Giaccia; Lei Xing; Kikuo Umegaki
Journal:  J Radiat Res       Date:  2018-03-01       Impact factor: 2.724

6.  Imaging dose and secondary cancer risk in image-guided radiotherapy of pediatric patients.

Authors:  Yvonne Dzierma; Katharina Mikulla; Patrick Richter; Katharina Bell; Patrick Melchior; Frank Nuesken; Christian Rübe
Journal:  Radiat Oncol       Date:  2018-09-05       Impact factor: 3.481

7.  Influence of Target Location, Size, and Patient Age on Normal Tissue Sparing- Proton and Photon Therapy in Paediatric Brain Tumour Patient-Specific Approach.

Authors:  Mikaela Dell'Oro; Michala Short; Puthenparampil Wilson; Chia-Ho Hua; Melissa Gargone; Thomas E Merchant; Eva Bezak
Journal:  Cancers (Basel)       Date:  2020-09-10       Impact factor: 6.639

  7 in total

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