Hierarchical Protofilament Intertwining Rules the Formation of Mixed-Curvature Amyloid Polymorphs.

Details

Serval ID
serval:BIB_5D98F1B5070B
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Hierarchical Protofilament Intertwining Rules the Formation of Mixed-Curvature Amyloid Polymorphs.
Journal
Advanced science
Author(s)
Zhou J., Assenza S., Tatli M., Tian J., Ilie I.M., Starostin E.L., Caflisch A., Knowles TPJ, Dietler G., Ruggeri F.S., Stahlberg H., Sekatskii S.K., Mezzenga R.
ISSN
2198-3844 (Electronic)
ISSN-L
2198-3844
Publication state
In Press
Peer-reviewed
Oui
Language
english
Notes
Publication types: Journal Article
Publication Status: aheadofprint
Abstract
Amyloid polymorphism is a hallmark of almost all amyloid species, yet the mechanisms underlying the formation of amyloid polymorphs and their complex architectures remain elusive. Commonly, two main mesoscopic topologies are found in amyloid polymorphs characterized by non-zero Gaussian and mean curvatures: twisted ribbons and helical fibrils, respectively. Here, a rich heterogeneity of configurations is demonstrated on insulin amyloid fibrils, where protofilament packing can occur, besides the common polymorphs, also in a combined mode forming mixed-curvature polymorphs. Through AFM statistical analysis, an extended array of heterogeneous architectures that are rationalized by mesoscopic theoretical arguments are identified. Notably, an unusual fibrillization pathway is also unraveled toward mixed-curvature polymorphs via the widespread recruitment and intertwining of protofilaments and protofibrils. The results present an original view of amyloid polymorphism and advance the fundamental understanding of the fibrillization mechanism from single protofilaments into mature amyloid fibrils.
Keywords
amyloid polymorphism, atomic force microscopy, filament intertwining mechanism, mixed‐curvature amyloid
Pubmed
Web of science
Open Access
Yes
Create date
28/06/2024 12:02
Last modification date
05/07/2024 7:01
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