Issue 15, 2021

Machine learning-aided protein identification from multidimensional signatures

Abstract

The ability to determine the identity of specific proteins is a critical challenge in many areas of cellular and molecular biology, and in medical diagnostics. Here, we present a macine learning aided microfluidic protein characterisation strategy that within a few minutes generates a three-dimensional fingerprint of a protein sample indicative of its amino acid composition and size and, thereby, creates a unique signature for the protein. By acquiring such multidimensional fingerprints for a set of ten proteins and using machine learning approaches to classify the fingerprints, we demonstrate that this strategy allows proteins to be classified at a high accuracy, even though classification using a single dimension is not possible. Moreover, we show that the acquired fingerprints correlate with the amino acid content of the samples, which makes it is possible to identify proteins directly from their sequence without requiring any prior knowledge about the fingerprints. These findings suggest that such a multidimensional profiling strategy can lead to the development of a novel method for protein identification in a microfluidic format.

Graphical abstract: Machine learning-aided protein identification from multidimensional signatures

Supplementary files

Article information

Article type
Paper
Submitted
13 Nov 2020
Accepted
16 Mar 2021
First published
22 Mar 2021
This article is Open Access
Creative Commons BY-NC license

Lab Chip, 2021,21, 2922-2931

Machine learning-aided protein identification from multidimensional signatures

Y. Zhang, M. A. Wright, K. L. Saar, P. Challa, A. S. Morgunov, Q. A. E. Peter, S. Devenish, C. M. Dobson and T. P. J. Knowles, Lab Chip, 2021, 21, 2922 DOI: 10.1039/D0LC01148G

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