A Dual-Payload Bispecific ADC Improved Potency and Efficacy over Single-Payload Bispecific ADCs

有效载荷(计算) 体内 癌症研究 医学 计算机科学 生物 计算机网络 网络数据包 生物技术
作者
Nicole A. Wilski,Peter Haytko,Zhengxia Zha,S. Wu,Ying Jin,Peng Chen,Chao Han,Mark L. Chiu
出处
期刊:Pharmaceutics [Multidisciplinary Digital Publishing Institute]
卷期号:17 (8): 967-967 被引量:2
标识
DOI:10.3390/pharmaceutics17080967
摘要

Background/Objectives: All current FDA-approved antibody-drug conjugates (ADCs) are single-target and single-payload molecules that have limited efficacy in patients due to drug resistance. Therefore, our goal was to generate a novel ADC that was less susceptible to single points of resistance to reduce the likelihood of patient relapse. Methods: We developed a dual-targeting, dual-payload ADC by conjugating a bispecific EGFR x cMET antibody to two payloads (MMAF and SN38) that had separate mechanisms of action using a novel tri-functional linker. This dual-payload ADC was tested for potency and efficacy in dividing and nondividing in vitro cell models using multiple tumor cell types. Efficacy of the dual-payload ADC was confirmed using in vivo models. Results: Our ADC with dual MMAF and SN38 payloads was more efficacious in inhibiting cell proliferation than single-payload ADCs across multiple cancer cell lines. In addition, the dual-payload molecule inhibited nondividing cells, which were more resistant to traditional ADC payloads. The dual-payload ADC also exhibited more potent tumor growth inhibition in vivo compared to that of single-payload ADCs. Conclusions: Overall, the bispecific antibody conjugated with both the MMAF and SN38 payloads inhibited tumor growth more strongly than ADCs conjugated with MMAF or SN38 alone. Developing dual-payload ADCs could limit the impact of acquired resistance in patients as well as lower the effective dose of each payload.
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