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Rapid protein evolution by few-shot learning with a protein language model.
Jiang, Kaiyi; Yan, Zhaoqing; Di Bernardo, Matteo; Sgrizzi, Samantha R; Villiger, Lukas; Kayabolen, Alisan; Kim, Byungji; Carscadden, Josephine K; Hiraizumi, Masahiro; Nishimasu, Hiroshi; Gootenberg, Jonathan S; Abudayyeh, Omar O.
Afiliación
  • Jiang K; Department of Medicine Division of Engineering in Medicine Brigham and Women's Hospital Harvard Medical School Boston, 02115 MA, USA.
  • Yan Z; Gene and Cell Therapy Institute Mass General Brigham Cambridge, 02139 MA, USA.
  • Di Bernardo M; Center for Virology and Vaccine Research Beth Israel Deaconess Medical Center Harvard Medical School Boston, 02115 MA, USA.
  • Sgrizzi SR; Department of Bioengineering Massachusetts Institute of Technology Cambridge, 02139 MA, USA.
  • Villiger L; Department of Medicine Division of Engineering in Medicine Brigham and Women's Hospital Harvard Medical School Boston, 02115 MA, USA.
  • Kayabolen A; Gene and Cell Therapy Institute Mass General Brigham Cambridge, 02139 MA, USA.
  • Kim B; Center for Virology and Vaccine Research Beth Israel Deaconess Medical Center Harvard Medical School Boston, 02115 MA, USA.
  • Carscadden JK; Department of Bioengineering Massachusetts Institute of Technology Cambridge, 02139 MA, USA.
  • Hiraizumi M; Department of Medicine Division of Engineering in Medicine Brigham and Women's Hospital Harvard Medical School Boston, 02115 MA, USA.
  • Nishimasu H; Gene and Cell Therapy Institute Mass General Brigham Cambridge, 02139 MA, USA.
  • Gootenberg JS; Center for Virology and Vaccine Research Beth Israel Deaconess Medical Center Harvard Medical School Boston, 02115 MA, USA.
  • Abudayyeh OO; Department of Dermatology and Allergology Kantonspital St. Gallen St. Gallen, 9000, Switzerland.
bioRxiv ; 2024 Jul 18.
Article en En | MEDLINE | ID: mdl-39071429
ABSTRACT
Directed evolution of proteins is critical for applications in basic biological research, therapeutics, diagnostics, and sustainability. However, directed evolution methods are labor intensive, cannot efficiently optimize over multiple protein properties, and are often trapped by local maxima. In silico-directed evolution methods incorporating protein language models (PLMs) have the potential to accelerate this engineering process, but current approaches fail to generalize across diverse protein families. We introduce EVOLVEpro, a few-shot active learning framework to rapidly improve protein activity using a combination of PLMs and protein activity predictors, achieving improved activity with as few as four rounds of evolution. EVOLVEpro substantially enhances the efficiency and effectiveness of in silico protein evolution, surpassing current state-of-the-art methods and yielding proteins with up to 100-fold improvement of desired properties. We showcase EVOLVEpro for five proteins across three applications T7 RNA polymerase for RNA production, a miniature CRISPR nuclease, a prime editor, and an integrase for genome editing, and a monoclonal antibody for epitope binding. These results demonstrate the advantages of few-shot active learning with small amounts of experimental data over zero-shot predictions. EVOLVEpro paves the way for broader applications of AI-guided protein engineering in biology and medicine.

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Revista: BioRxiv Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Revista: BioRxiv Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos