Synaptic vesicle mimics affect the aggregation of wild-type and A53T α-synuclein variants differently albeit similar membrane affinity.

Sandra Rocha, Ranjeet Kumar, Istvan Horvath, Pernilla Wittung-Stafshede
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Abstract

α-Synuclein misfolding results in the accumulation of amyloid fibrils in Parkinson's disease. Missense protein mutations (e.g. A53T) have been linked to early onset disease. Although α-synuclein interacts with synaptic vesicles in the brain, it is not clear what role they play in the protein aggregation process. Here, we compare the effect of small unilamellar vesicles (lipid composition similar to synaptic vesicles) on wild-type (WT) and A53T α-synuclein aggregation. Using biophysical techniques, we reveal that binding affinity to the vesicles is similar for the two proteins, and both interact with the helix long axis parallel to the membrane surface. Still, the vesicles affect the aggregation of the variants differently: effects on secondary processes such as fragmentation dominate for WT, whereas for A53T, fibril elongation is mostly affected. We speculate that vesicle interactions with aggregate intermediate species, in addition to monomer binding, vary between WT and A53T, resulting in different consequences for amyloid formation.

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突触小泡模拟物对野生型和 A53T α-突触核蛋白变体的聚集有不同的影响,尽管它们的膜亲和力相似。
在帕金森病中,α-突触核蛋白的错误折叠会导致淀粉样纤维的堆积。蛋白质的错义突变(如 A53T)与早发疾病有关。虽然α-突触核蛋白与大脑中的突触小泡相互作用,但目前还不清楚它们在蛋白质聚集过程中发挥了什么作用。在这里,我们比较了小的单拉米尔囊泡(脂质成分类似于突触囊泡)对野生型(WT)和 A53T α-突触核蛋白聚集的影响。通过生物物理技术,我们发现这两种蛋白质与囊泡的结合亲和力相似,并且都与平行于膜表面的螺旋长轴相互作用。不过,囊泡对变体聚集的影响不同:WT 主要影响碎裂等次生过程,而 A53T 则主要影响纤维的伸长。我们推测,除了单体结合外,囊泡与聚集体中间物质的相互作用在 WT 和 A53T 之间也存在差异,从而导致淀粉样蛋白形成的后果不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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