Radiopharmacologic screening of antibodies to the unshed ectodomain of MUC16 in ovarian cancer identifies a lead candidate for clinical translation

对卵巢癌中未脱落的 MUC16 胞外域抗体进行放射药理学筛选,确定了临床转化的主要候选药物

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作者:Brandon Nemieboka, Sai Kiran Sharma, Thapi Dharma Rao, Kimberly J Edwards, Su Yan, Pei Wang, Ashwin Ragupathi, Alessandra Piersigilli, David R Spriggs, Jason S Lewis

Conclusion

Radiopharmacologic screening of antibodies early during their development can provide crucial information pertinent to the in vitro characterization and in vivo pharmacokinetics. The favorable in vivo profile demonstrated by humanized 4H11 combined with the use of its murine predecessor for immunohistochemical staining of biopsied tumor tissues from HGSOC patients makes a unique pair of antibodies that is poised for clinical translation.

Methods

Six monoclonal antibodies raised against the 58 amino acid sequence between the extracellular cleavage site and the transmembrane region of MUC16 were radiolabeled with [89Zr]Zr4+. The radioimmunoconjugates were evaluated in vitro for molar activities, target binding affinity, cellular internalization and serum stability. In vivo characterization was performed via longitudinal positron emission tomography (PET) imaging and ex vivo biodistribution studies in mice bearing subcutaneous xenografts of SKOV3 cells transfected with the proximal 114 amino-acids of MUC16 carboxy-terminus (SKOV3+).

Results

In vitro screening identified 9C9 and 4H11 as the lead antibody candidates based on their comparable binding affinities, serum stability and cellular internalization profiles. Despite an identical molecular footprint for binding to MUC16, [89Zr]Zr-DFO-4H11 yielded a more favorable in vivo radiopharmacologic profile. Furthermore, a humanized variant of 4H11 capable of binding MUC16 in vitro also yielded excellent in vivo profile in subcutaneous xenograft models of SKOV3+, OVCAR3 tumors and a patient-derived xenograft model representative of HGSOC.

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