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ALA-A2 Is a Novel Anticancer Peptide Inspired by Alpha-Lactalbumin: A Discovery from a Computational Peptide Library, In Silico Anticancer Peptide Screening and In Vitro Experimental Validation.
Lerksuthirat, Tassanee; On-Yam, Pasinee; Chitphuk, Sermsiri; Stitchantrakul, Wasana; Newburg, David S; Morrow, Ardythe L; Hongeng, Suradej; Chiangjong, Wararat; Chutipongtanate, Somchai.
Afiliação
  • Lerksuthirat T; Research Center Faculty of Medicine Ramathibodi Hospital Mahidol University Bangkok 10400 Thailand.
  • On-Yam P; Pediatric Translational Research Unit Department of Pediatrics Faculty of Medicine Ramathibodi Hospital Mahidol University Bangkok 10400 Thailand.
  • Chitphuk S; Faculty of Medicine Ramathibodi Hospital Mahidol University Bangkok 10400 Thailand.
  • Stitchantrakul W; Research Center Faculty of Medicine Ramathibodi Hospital Mahidol University Bangkok 10400 Thailand.
  • Newburg DS; Research Center Faculty of Medicine Ramathibodi Hospital Mahidol University Bangkok 10400 Thailand.
  • Morrow AL; Division of Epidemiology Department of Environmental and Public Health Sciences University of Cincinnati College of Medicine Cincinnati OH 45267 USA.
  • Hongeng S; Division of Epidemiology Department of Environmental and Public Health Sciences University of Cincinnati College of Medicine Cincinnati OH 45267 USA.
  • Chiangjong W; Division of Infectious Diseases Department of Pediatrics Cincinnati Children's Hospital Medical Center University of Cincinnati College of Medicine Cincinnati OH 45267 USA.
  • Chutipongtanate S; Division of Hematology and Oncology Department of Pediatrics Faculty of Medicine Ramathibodi Hospital Mahidol University Bangkok 10400 Thailand.
Glob Chall ; 7(3): 2200213, 2023 Mar.
Article em En | MEDLINE | ID: mdl-36910465
Anticancer peptides (ACPs) are rising as a new strategy for cancer therapy. However, traditional laboratory screening to find and identify novel ACPs from hundreds to thousands of peptides is costly and time consuming. Here, a sequential procedure is applied to identify candidate ACPs from a computer-generated peptide library inspired by alpha-lactalbumin, a milk protein with known anticancer properties. A total of 2688 distinct peptides, 5-25 amino acids in length, are generated from alpha-lactalbumin. In silico ACP screening using the physicochemical and structural filters and three machine learning models lead to the top candidate peptides ALA-A1 and ALA-A2. In vitro screening against five human cancer cell lines supports ALA-A2 as the positive hit. ALA-A2 selectively kills A549 lung cancer cells in a dose-dependent manner, with no hemolytic side effects, and acts as a cell penetrating peptide without membranolytic effects. Sequential window acquisition of all theorical fragment ions-proteomics and functional validation reveal that ALA-A2 induces autophagy to mediate lung cancer cell death. This approach to identify ALA-A2 is time and cost-effective. Further investigations are warranted to elucidate the exact intracellular targets of ALA-A2. Moreover, these findings support the use of larger computational peptide libraries built upon multiple proteins to further advance ACP research and development.
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Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Prognostic_studies / Screening_studies Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Prognostic_studies / Screening_studies Idioma: En Ano de publicação: 2023 Tipo de documento: Article