A high hydrophobic moment arginine‐rich peptide screened by a machine learning algorithm enhanced ADC antitumor activity

Author:

Su Ruo‐Long1,Cao Xue‐Wei12,Zhao Jian12ORCID,Wang Fu‐Jun234

Affiliation:

1. Department of Applied Biology East China University of Science and Technology Shanghai People's Republic of China

2. ECUST‐FONOW Joint Research Center for Innovative Medicines East China University of Science and Technology Shanghai People's Republic of China

3. New Drug R&D Center, Zhejiang Fonow Medicine Co., Ltd. Zhejiang People's Republic of China

4. Institute of Chinese Materia Medica Shanghai University of Traditional Chinese Medicine Shanghai People's Republic of China

Abstract

Cell‐penetrating peptides (CPPs) with better biomolecule delivery properties will expand their clinical applications. Using the MLCPP2.0 machine algorithm, we screened multiple candidate sequences with potential cellular uptake ability from the nuclear localization signal/nuclear export signal database and verified them through cell‐penetrating fluorescent tracing experiments. A peptide (NCR) derived from the Rev protein of the caprine arthritis‐encephalitis virus exhibited efficient cell‐penetrating activity, delivering over four times more EGFP than the classical CPP TAT, allowing it to accumulate in lysosomes. Structural and property analysis revealed that a high hydrophobic moment and an appropriate hydrophobic region contribute to the high delivery activity of NCR. Trastuzumab emtansine (T‐DM1), a HER2‐targeted antibody‐drug conjugate, could improve its anti‐tumor activity by enhancing targeted delivery efficiency and increasing lysosomal drug delivery. This study designed a new NCR vector to non‐covalently bind T‐DM1 by fusing domain Z, which can specifically bind to the Fc region of immunoglobulin G and effectively deliver T‐DM1 to lysosomes. MTT results showed that the domain Z‐NCR vector significantly enhanced the cytotoxicity of T‐DM1 against HER2‐positive tumor cells while maintaining drug specificity. Our results make a useful attempt to explore the potential application of CPP as a lysosome‐targeted delivery tool.

Funder

National Natural Science Foundation of China

Publisher

Wiley

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