| Literature DB >> 33903613 |
Michał Burdukiewicz1,2, Malgorzata Kotulska3, Natalia Szulc4,5, Marlena Gąsior-Głogowska4, Jakub W Wojciechowski4, Jarosław Chilimoniuk6, Paweł Mackiewicz6, Tomas Šneideris7, Vytautas Smirnovas7.
Abstract
Several disorders are related to amyloid aggregation of proteins, for example Alzheimer's or Parkinson's diseases. Amyloid proteins form fibrils of aggregated beta structures. This is preceded by formation of oligomers-the most cytotoxic species. Determining amyloidogenicity is tedious and costly. The most reliable identification of amyloids is obtained with high resolution microscopies, such as electron microscopy or atomic force microscopy (AFM). More frequently, less expensive and faster methods are used, especially infrared (IR) spectroscopy or Thioflavin T staining. Different experimental methods are not always concurrent, especially when amyloid peptides do not readily form fibrils but oligomers. This may lead to peptide misclassification and mislabeling. Several bioinformatics methods have been proposed for in-silico identification of amyloids, many of them based on machine learning. The effectiveness of these methods heavily depends on accurate annotation of the reference training data obtained from in-vitro experiments. We study how robust are bioinformatics methods to weak supervision, encountering imperfect training data. AmyloGram and three other amyloid predictors were applied. The results proved that a certain degree of misannotation in the reference data can be eliminated by the bioinformatics tools, even if they belonged to their training set. The computational results are supported by new experiments with IR and AFM methods.Entities:
Year: 2021 PMID: 33903613 DOI: 10.1038/s41598-021-86530-6
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379