Abstract
Native cell extracts hold great promise for understanding the molecular structure of ordered biological systems at high resolution. This is because higher-order biomolecular interactions, dubbed as protein communities, may be retained in their (near-)native state, in contrast to extensively purifying or artificially overexpressing the proteins of interest. The distinct machine-learning approaches are applied to discover protein–protein interactions within cell extracts, reconstruct dedicated biological networks, and report on protein community members from various organisms. Their validation is also important, e.g., by the cross-linking mass spectrometry or cell biology methods. In addition, the cell extracts are amenable to structural analysis by cryo-electron microscopy (cryo-EM), but due to their inherent complexity, sorting structural signatures of protein communities derived by cryo-EM comprises a formidable task. The application of image-processing workflows inspired by machine-learning techniques would provide improvements in distinguishing structural signatures, correlating proteomic and network data to structural signatures and subsequently reconstructed cryo-EM maps, and, ultimately, characterizing unidentified protein communities at high resolution. In this review article, we summarize recent literature in detecting protein communities from native cell extracts and identify the remaining challenges and opportunities. We argue that the progress in, and the integration of, machine learning, cryo-EM, and complementary structural proteomics approaches would provide the basis for a multi-scale molecular description of protein communities within native cell extracts.
Highlights
Since the dawn of biological research, humans are breaking-apart living systems to understand their structure and function
Probing the intrinsic structure of cell extracts is of paramount importance, so that their function is understood in detail
Machine/deep learning is applied to a multitude of optimization problems that are related with the recovery and characterization of protein communities at high resolution
Summary
Since the dawn of biological research, humans are breaking-apart living systems to understand their structure and function. This method (a) simplifies the cell extract according to an intrinsic physical property of the contained biomolecules; (b) provides per-fraction quantitative data regarding protein abundance and co-detection; and (c) offers robust per-protein elution profiles across the studied fractions, which may be used for subsequent integration into a PPI network.
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