International Journal of Molecular Sciences (May 2024)

High-Yield α-Synuclein Purification and Ionic Strength Modification Pivotal to Seed Amplification Assay Performance and Reproducibility

  • Chelva Janarthanam,
  • Griffin Clabaugh,
  • Zerui Wang,
  • Bradley R. Melvin,
  • Ileia Scheibe,
  • Huajun Jin,
  • Vellareddy Anantharam,
  • Ramona J. B. Urbauer,
  • Jeffrey L. Urbauer,
  • Jiyan Ma,
  • Arthi Kanthasamy,
  • Xuemei Huang,
  • Vincenzo Donadio,
  • Wenquan Zou,
  • Anumantha G. Kanthasamy

DOI
https://doi.org/10.3390/ijms25115988
Journal volume & issue
Vol. 25, no. 11
p. 5988

Abstract

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Alpha-synuclein seed amplification assays (αSyn-SAAs) have emerged as promising diagnostic tools for Parkinson’s disease (PD) by detecting misfolded αSyn and amplifying the signal through cyclic shaking and resting in vitro. Recently, our group and others have shown that multiple biospecimens, including CSF, skin, and submandibular glands (SMGs), can be used to seed the aggregation reaction and robustly distinguish between patients with PD and non-disease controls. The ultrasensitivity of the assay affords the ability to detect minute quantities of αSyn in peripheral tissues, but it also produces various technical challenges of variability. To address the problem of variability, we present a high-yield αSyn protein purification protocol for the efficient production of monomers with a low propensity for self-aggregation. We expressed wild-type αSyn in BL21 Escherichia coli, lysed the cells using osmotic shock, and isolated αSyn using acid precipitation and fast protein liquid chromatography (FPLC). Following purification, we optimized the ionic strength of the reaction buffer to distinguish the fluorescence maximum (Fmax) separation between disease and healthy control tissues for enhanced assay performance. Our protein purification protocol yielded high quantities of αSyn (average: 68.7 mg/mL per 1 L of culture) and showed highly precise and robust αSyn-SAA results using brain, skin, and SMGs with inter-lab validation.

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