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A growth model of neuroendocrine tumor surrogates and the efficacy of a novel somatostatin-receptor-guided antibody-drug conjugate: Perspectives on clinical response?

Authors :
Herring B
Whitt J
Aweda T
Ou J
Guenter R
Lapi S
Berry J
Chen H
Liu X
Rose JB
Jaskula-Sztul R
Source :
Surgery [Surgery] 2020 Jan; Vol. 167 (1), pp. 197-203. Date of Electronic Publication: 2019 Sep 19.
Publication Year :
2020

Abstract

Background: As patient-derived xenografts and other preclinical models of neuroendocrine tumors for testing personalized therapeutics are lacking, we have developed a perfused, 3D bioreactor model to culture tumor surrogates from patient-derived neuroendocrine tumors. This work evaluates the duration of surrogate culture and surrogate response to a novel antibody-drug conjugate.<br />Methods: Twenty-seven patient-derived neuroendocrine tumors were cultured. Histologic sections of a pancreatic neuroendocrine tumor xenograft (BON-1) tumor were assessed for SSTR2 expression before tumor implantation into 2 bioreactors. One surrogate was treated with an antibody-drug conjugate composed of an anti-mitotic Monomethyl auristatin-E linked to a somatostatin receptor 2 antibody. Viability and therapeutic response were assessed by pre-imaging incubation with IR-783 and the RealTime-Glo AnnexinV Apoptosis and Necrosis Assay (Promega Corporation, Madison, WI) over 6 days. A primary human pancreatic neuroendocrine tumor was evaluated similarly.<br />Results: Mean surrogate growth duration was 34.8 days. Treated BON-1 surrogates exhibited less proliferation (1.2 vs 1.9-fold) and greater apoptosis (1.5 vs 1.1-fold) than controls, whereas treated patient-derived neuroendocrine tumor bioreactors exhibited greater degrees of apoptosis (13- vs 9-fold) and necrosis (2.5- vs 1.6-fold).<br />Conclusion: Patient-derived neuroendocrine tumor surrogates can be cultured reliably within the bioreactor. This model can be used to evaluate the efficacy of antibody-guided chemotherapy ex vivo and may be useful for predicting clinical responses.<br /> (Published by Elsevier Inc.)

Details

Language :
English
ISSN :
1532-7361
Volume :
167
Issue :
1
Database :
MEDLINE
Journal :
Surgery
Publication Type :
Academic Journal
Accession number :
31543319
Full Text :
https://doi.org/10.1016/j.surg.2019.04.073