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Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling

BACKGROUND: Prediction of [(177)Lu]Lu-HA-DOTATATE kidney and tumor uptake based on diagnostic [(68)Ga]Ga-HA-DOTATATE imaging would be a crucial step for precision dosing of [(177)Lu]Lu-HA-DOTATATE. In this study, the population pharmacokinetic (PK) differences between [(177)Lu]Lu-HA-DOTATATE and [(6...

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Autores principales: Siebinga, Hinke, de Wit-van der Veen, Berlinda J., Beijnen, Jos H., Stokkel, Marcel P. M., Dorlo, Thomas P. C., Huitema, Alwin D. R., Hendrikx, Jeroen J. M. A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10449733/
https://www.ncbi.nlm.nih.gov/pubmed/37615812
http://dx.doi.org/10.1186/s40658-023-00565-4
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author Siebinga, Hinke
de Wit-van der Veen, Berlinda J.
Beijnen, Jos H.
Stokkel, Marcel P. M.
Dorlo, Thomas P. C.
Huitema, Alwin D. R.
Hendrikx, Jeroen J. M. A.
author_facet Siebinga, Hinke
de Wit-van der Veen, Berlinda J.
Beijnen, Jos H.
Stokkel, Marcel P. M.
Dorlo, Thomas P. C.
Huitema, Alwin D. R.
Hendrikx, Jeroen J. M. A.
author_sort Siebinga, Hinke
collection PubMed
description BACKGROUND: Prediction of [(177)Lu]Lu-HA-DOTATATE kidney and tumor uptake based on diagnostic [(68)Ga]Ga-HA-DOTATATE imaging would be a crucial step for precision dosing of [(177)Lu]Lu-HA-DOTATATE. In this study, the population pharmacokinetic (PK) differences between [(177)Lu]Lu-HA-DOTATATE and [(68)Ga]Ga-HA-DOTATATE were assessed and subsequently [(177)Lu]Lu-HA-DOTATATE was predicted based on [(68)Ga]Ga-HA-DOTATATE imaging. METHODS: A semi-physiological nonlinear mixed-effects model was developed for [(68)Ga]Ga-HA-DOTATATE and [(177)Lu]Lu-HA-DOTATATE, including six compartments (representing blood, spleen, kidney, tumor lesions, other somatostatin receptor expressing organs and a lumped rest compartment). Model parameters were fixed based on a previously developed physiologically based pharmacokinetic model for [(68)Ga]Ga-HA-DOTATATE. For [(177)Lu]Lu-HA-DOTATATE, PK parameters were based on literature values or estimated based on scan data (four time points post-injection) from nine patients. Finally, individual [(177)Lu]Lu-HA-DOTATATE uptake into tumors and kidneys was predicted based on individual [(68)Ga]Ga-HA-DOTATATE scan data using Bayesian estimates. Predictions were evaluated compared to observed data using a relative prediction error (RPE) for both area under the curve (AUC) and absorbed dose. Lastly, to assess the predictive value of diagnostic imaging to predict therapeutic exposure, individual prediction RPEs (using Bayesian estimation) were compared to those from population predictions (using the population model). RESULTS: Population uptake rate parameters for spleen, kidney and tumors differed by a 0.29-fold (15% relative standard error (RSE)), 0.49-fold (15% RSE) and 1.43-fold (14% RSE), respectively, for [(177)Lu]Lu-HA-DOTATATE compared to [(68)Ga]Ga-HA-DOTATATE. Model predictions adequately described observed data in kidney and tumors for both peptides (based on visual inspection of goodness-of-fit plots). Individual predictions of tumor uptake were better (RPE AUC –40 to 28%) compared to kidney predictions (RPE AUC –53 to 41%). Absorbed dose predictions were less predictive for both tumor and kidneys (RPE tumor and kidney –51 to 44% and –58 to 82%, respectively). For most patients, [(177)Lu]Lu-HA-DOTATATE tumor accumulation predictions based on individual PK parameters estimated from diagnostic imaging outperformed predictions based on population parameters. CONCLUSION: Our semi-physiological PK model indicated clear differences in PK parameters for [(68)Ga]Ga-HA-DOTATATE and [(177)Lu]Lu-HA-DOTATATE. Diagnostic images provided additional information to individually predict [(177)Lu]Lu-HA-DOTATATE tumor uptake compared to using a population approach. In addition, individual predictions indicated that many aspects, apart from PK differences, play a part in predicting [(177)Lu]Lu-HA-DOTATATE distribution. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s40658-023-00565-4.
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spelling pubmed-104497332023-08-26 Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling Siebinga, Hinke de Wit-van der Veen, Berlinda J. Beijnen, Jos H. Stokkel, Marcel P. M. Dorlo, Thomas P. C. Huitema, Alwin D. R. Hendrikx, Jeroen J. M. A. EJNMMI Phys Original Research BACKGROUND: Prediction of [(177)Lu]Lu-HA-DOTATATE kidney and tumor uptake based on diagnostic [(68)Ga]Ga-HA-DOTATATE imaging would be a crucial step for precision dosing of [(177)Lu]Lu-HA-DOTATATE. In this study, the population pharmacokinetic (PK) differences between [(177)Lu]Lu-HA-DOTATATE and [(68)Ga]Ga-HA-DOTATATE were assessed and subsequently [(177)Lu]Lu-HA-DOTATATE was predicted based on [(68)Ga]Ga-HA-DOTATATE imaging. METHODS: A semi-physiological nonlinear mixed-effects model was developed for [(68)Ga]Ga-HA-DOTATATE and [(177)Lu]Lu-HA-DOTATATE, including six compartments (representing blood, spleen, kidney, tumor lesions, other somatostatin receptor expressing organs and a lumped rest compartment). Model parameters were fixed based on a previously developed physiologically based pharmacokinetic model for [(68)Ga]Ga-HA-DOTATATE. For [(177)Lu]Lu-HA-DOTATATE, PK parameters were based on literature values or estimated based on scan data (four time points post-injection) from nine patients. Finally, individual [(177)Lu]Lu-HA-DOTATATE uptake into tumors and kidneys was predicted based on individual [(68)Ga]Ga-HA-DOTATATE scan data using Bayesian estimates. Predictions were evaluated compared to observed data using a relative prediction error (RPE) for both area under the curve (AUC) and absorbed dose. Lastly, to assess the predictive value of diagnostic imaging to predict therapeutic exposure, individual prediction RPEs (using Bayesian estimation) were compared to those from population predictions (using the population model). RESULTS: Population uptake rate parameters for spleen, kidney and tumors differed by a 0.29-fold (15% relative standard error (RSE)), 0.49-fold (15% RSE) and 1.43-fold (14% RSE), respectively, for [(177)Lu]Lu-HA-DOTATATE compared to [(68)Ga]Ga-HA-DOTATATE. Model predictions adequately described observed data in kidney and tumors for both peptides (based on visual inspection of goodness-of-fit plots). Individual predictions of tumor uptake were better (RPE AUC –40 to 28%) compared to kidney predictions (RPE AUC –53 to 41%). Absorbed dose predictions were less predictive for both tumor and kidneys (RPE tumor and kidney –51 to 44% and –58 to 82%, respectively). For most patients, [(177)Lu]Lu-HA-DOTATATE tumor accumulation predictions based on individual PK parameters estimated from diagnostic imaging outperformed predictions based on population parameters. CONCLUSION: Our semi-physiological PK model indicated clear differences in PK parameters for [(68)Ga]Ga-HA-DOTATATE and [(177)Lu]Lu-HA-DOTATATE. Diagnostic images provided additional information to individually predict [(177)Lu]Lu-HA-DOTATATE tumor uptake compared to using a population approach. In addition, individual predictions indicated that many aspects, apart from PK differences, play a part in predicting [(177)Lu]Lu-HA-DOTATATE distribution. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s40658-023-00565-4. Springer International Publishing 2023-08-24 /pmc/articles/PMC10449733/ /pubmed/37615812 http://dx.doi.org/10.1186/s40658-023-00565-4 Text en © The Author(s) 2023 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Original Research
Siebinga, Hinke
de Wit-van der Veen, Berlinda J.
Beijnen, Jos H.
Stokkel, Marcel P. M.
Dorlo, Thomas P. C.
Huitema, Alwin D. R.
Hendrikx, Jeroen J. M. A.
Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling
title Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling
title_full Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling
title_fullStr Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling
title_full_unstemmed Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling
title_short Predicting [(177)Lu]Lu-HA-DOTATATE kidney and tumor accumulation based on [(68)Ga]Ga-HA-DOTATATE diagnostic imaging using semi-physiological population pharmacokinetic modeling
title_sort predicting [(177)lu]lu-ha-dotatate kidney and tumor accumulation based on [(68)ga]ga-ha-dotatate diagnostic imaging using semi-physiological population pharmacokinetic modeling
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10449733/
https://www.ncbi.nlm.nih.gov/pubmed/37615812
http://dx.doi.org/10.1186/s40658-023-00565-4
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