卡奇霉素
奥佐美星
CD33
化学
抗体-药物偶联物
结合
连接器
抗体
单克隆抗体
癌症研究
药理学
髓系白血病
医学
免疫学
生物
操作系统
数学分析
遗传学
计算机科学
数学
干细胞
川地34
作者
Breanna S. Vollmar,Chris Frantz,Melissa M. Schutten,Fiona Zhong,Geoffrey Del Rosario,Mary Ann T. Go,Shang‐Fan Yu,Douglas D. Leipold,Amrita V. Kamath,Carl Ng,Keyang Xu,Josefa dela Cruz-Chuh,Katherine R. Kozak,Jinhua Chen,Zijin Xu,John Wai,Pragya Adhikari,Hans K. Erickson,Peter S. Dragovich,Andrew G. Polson,Thomas H. Pillow
出处
期刊:Molecular Cancer Therapeutics
[American Association for Cancer Research]
日期:2021-03-15
卷期号:20 (6): 1112-1120
被引量:15
标识
DOI:10.1158/1535-7163.mct-20-0035
摘要
Calicheamicin antibody-drug conjugates (ADCs) are effective therapeutics for leukemias with two recently approved in the United States: Mylotarg (gemtuzumab ozogamicin) targeting CD33 for acute myeloid leukemia and Besponsa (inotuzumab ozogamicin) targeting CD22 for acute lymphocytic leukemia. Both of these calicheamicin ADCs are heterogeneous, aggregation-prone, and have a shortened half-life due to the instability of the acid-sensitive hydrazone linker in circulation. We hypothesized that we could improve upon the heterogeneity, aggregation, and circulation stability of calicheamicin ADCs by directly attaching the thiol of a reduced calicheamicin to an engineered cysteine on the antibody via a disulfide bond to generate a linkerless and traceless conjugate. We report herein that the resulting homogeneous conjugates possess minimal aggregation and display high in vivo stability with 50% of the drug remaining conjugated to the antibody after 21 days. Furthermore, these calicheamicin ADCs are highly efficacious in mouse models of both solid tumor (HER2+ breast cancer) and hematologic malignancies (CD22+ non-Hodgkin lymphoma). Safety studies in rats with this novel calicheamicin ADC revealed an increased tolerability compared with that reported for Mylotarg. Overall, we demonstrate that applying novel linker chemistry with site-specific conjugation affords an improved, next-generation calicheamicin ADC.
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