Abstract

BackgroundSelective internal radiation therapy (SIRT) is a promising treatment for unresectable hepatic malignancies. Predictive dose calculation based on a simulation using 99mTc-labeled macro-aggregated albumin (99mTc-MAA) before the treatment is considered as a potential tool for patient-specific treatment planning. Post-treatment dose measurement is mainly performed to confirm the planned absorbed dose to the tumor and non-tumor liver volumes. This study compared the predicted and measured absorbed dose distributions.MethodsThirty-one patients (67 tumors) treated by SIRT with resin microspheres were analyzed. Predicted and delivered absorbed dose was calculated using 99mTc-MAA-SPECT and 90Y-TOF-PET imaging. The voxel-level dose distribution was derived using the local deposition model. Liver perfusion territories and tumors have been delineated on contrast-enhanced CBCT images, which have been acquired during the 99mTc-MAA work-up. Several dose-volume histogram (DVH) parameters together with the mean dose for liver perfusion territories and non-tumoral and tumoral compartments were evaluated.ResultsA strong correlation between the predicted and measured mean dose for non-tumoral volume was observed (r = 0.937). The ratio of measured and predicted mean dose to this volume has a first, second, and third interquartile range of 0.83, 1.05, and 1.25. The difference between the measured and predicted mean dose did not exceed 11 Gy. The correlation between predicted and measured mean dose to the tumor was moderate (r = 0.623) with a mean difference of − 9.3 Gy. The ratio of measured and predicted tumor mean dose had a median of 1.01 with the first and third interquartile ranges of 0.58 and 1.59, respectively. Our results suggest that 99mTc-MAA-based dosimetry could predict under or over dosing of the non-tumoral liver parenchyma for almost all cases. For more than two thirds of the tumors, a predictive absorbed dose correctly indicated either good tumor dose coverage or under-dosing of the tumor.ConclusionOur results highlight the predictive value of 99mTc-MAA-based dose estimation to predict non-tumor liver irradiation, which can be applied to prescribe an optimized activity aiming at avoiding liver toxicity. Compared to non-tumoral tissue, a poorer agreement between predicted and measured absorbed dose is observed for tumors.

Highlights

  • Selective internal radiation therapy (SIRT) is an increasingly applied palliative treatment option for unresectable primary and secondary hepatic malignancies

  • Our results highlight the predictive value of 99mTc-MAA-based dose estimation to predict non-tumor liver irradiation, which can be applied to prescribe an optimized activity aiming at avoiding liver toxicity

  • Dosimetric assessment should be performed in two steps: (1) absorbed dose prediction before treatment for each liver perfusion territory (LPT) which can be applied in an individual treatment planning to prescribe a tailored injected activity using patient-specific dosimetric criteria for liver perfusion territory (LPT), tumor volume (TV), and/or non-tumoral volume (NTV) and (2) absorbed dose evaluation after treatment for each LPT to determine the actual doses that have been given

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Summary

Introduction

Selective internal radiation therapy (SIRT) is an increasingly applied palliative treatment option for unresectable primary and secondary hepatic malignancies. This treatment modality consists of infusing microspheres labeled with either yttrium-90 or holmium-166 within a selected branch of the hepatic artery. Recent studies showed a relation between tumor absorbed dose and tumor control probability, as well as non-tumoral liver absorbed dose and normal tissue complication probability. These insights serve as the basis of precision SIRT, where the prescribed injected activity is determined based on accurate knowledge of the biodistribution of the microspheres. This study compared the predicted and measured absorbed dose distributions

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