Published March 14, 2024 | Version v1
Dataset Open

Structural modeling of ion channels using AlphaFold2, RoseTTAFold2, and ESMFold

Description

Ion channels play key roles in human physiology and are important targets in drug discovery. The atomic-scale structures of ion channels provide invaluable insights into a fundamental understanding of the molecular mechanisms of channel gating and modulation. Recent breakthroughs in deep learning-based computational methods, such as AlphaFold, RoseTTAFold, and ESMFold have transformed research in protein structure prediction and design. We review the application of AlphaFold, RoseTTAFold, and ESMFold to structural modeling of ion channels using representative voltage-gated ion channels, including human voltage-gated sodium (NaV) channel - NaV1.8, human voltage-gated calcium (CaV) channel – CaV1.1, and human voltage-gated potassium (KV) channel – KV1.3. We compared AlphaFold, RoseTTAFold, and ESMFold structural models of NaV1.8, CaV1.1, and KV1.3 with corresponding cryo-EM structures to assess details of their similarities and differences. Our findings shed light on the strengths and limitations of the current state-of-the-art deep learning-based computational methods for modeling ion channel structures, offering valuable insights to guide their future applications for ion channel research.

Notes

Funding provided by: National Institute of Neurological Disorders and Stroke
Crossref Funder Registry ID: https://ror.org/01s5ya894
Award Number: 1R61NS127285-01

Funding provided by: National Heart, Lung, and Blood Institute
Crossref Funder Registry ID: https://ror.org/012pb6c26
Award Number: 1R01HL159304-01

Funding provided by: National Heart, Lung, and Blood Institute Division of Intramural Research
Crossref Funder Registry ID: https://ror.org/023ny1p48
Award Number: R01HL128537

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