The type‐I interferon response potentiates seeded tau aggregation and exacerbates tau pathology

Sophie Sanford(University of Cambridge), Lauren V. C. Miller(University of Cambridge), Marina Vaysburd(MRC Laboratory of Molecular Biology), Sophie Keeling(University of Cambridge), Benjamin J. Tuck(University of Cambridge), Jessica Clark(MRC Laboratory of Molecular Biology), Michal Neumann(MRC Laboratory of Molecular Biology), Victoria Syanda(MRC Laboratory of Molecular Biology), Leo C. James(MRC Laboratory of Molecular Biology), William A. McEwan(University of Cambridge)
Alzheimer s & Dementia
October 17, 2023
Cited by 28Open Access
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Abstract

INTRODUCTION: Signatures of a type-I interferon (IFN-I) response are observed in the post mortem brain in Alzheimer's disease (AD) and other tauopathies. However, the effect of the IFN-I response on pathological tau accumulation remains unclear. METHODS: We examined the effects of IFN-I signaling in primary neural culture models of seeded tau aggregation and P301S-tau transgenic mouse models in the context of genetic deletion of the IFN-I receptor (IFNAR). RESULTS: Polyinosinic:polycytidylic acid (PolyI:C), a synthetic analog of viral nucleic acids, evoked a potent cytokine response that enhanced seeded aggregation of tau in an IFN-I-dependent manner. IFN-I-induced vulnerability could be pharmacologically prevented and was intrinsic to neurons. Aged P301S-tau mice lacking Ifnar1 had significantly reduced tau pathology compared to mice with intact IFN signaling. DISCUSSION: We identify a critical role for IFN-I in potentiating tau aggregation. IFN-I is therefore identified as a potential therapeutic target in AD and other tauopathies. HIGHLIGHTS: Type-I IFN (IFN-I) promotes seeded tau aggregation in neural cultures. IFNAR inhibition prevents IFN-I driven sensitivity to tau aggregation. IFN-I driven vulnerability is intrinsic to neurons. Tau pathology is significantly reduced in aged P301S-tau mice lacking IFNAR.


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