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M-Ionic: Prediction of metal ion binding sites from sequence using residue embeddings
Stockholms universitet, Naturvetenskapliga fakulteten, Institutionen för biokemi och biofysik. Stockholms universitet, Science for Life Laboratory (SciLifeLab).ORCID-id: 0000-0001-7748-2501
Department of Biochemical Engineering & Biotechnology, Indian Institute of Technology (IIT) Delhi, New Delhi 110016, India.
Department of Biochemical Engineering & Biotechnology, Indian Institute of Technology (IIT) Delhi, New Delhi 110016, India.
Stockholms universitet, Naturvetenskapliga fakulteten, Institutionen för biokemi och biofysik. Stockholms universitet, Science for Life Laboratory (SciLifeLab).ORCID-id: 0000-0002-7115-9751
(Engelska)Manuskript (preprint) (Övrigt vetenskapligt)
Abstract [en]

Motivation: Understanding metal-protein interaction can provide structural and functional insights into cellular processes. As the number of protein sequences increases, developing fast yet precise computational approaches to predict and annotate metal binding sites becomes imperative. Quick and resource-efficient pre-trained protein language model (PLM) embeddings have successfully predicted binding sites from protein sequences despite not using structural or evolutionary features (multiple sequence alignments). Using residue-level embeddings from the PLMs, we have developed a sequence-based method (M-Ionic) to identify metal-binding proteins and predict residues involved in metal-binding.Results: On independent validation of recent proteins, M-Ionic reports an area under the curve (AUROC) of 0.83 (recall=84.6%) in distinguishing metal-binding from non-binding proteins compared to AUROC of 0.74 (recall =61.8%) of the next best method. In addition to comparable performance to the state-of-the-art method for identifying metal-binding residues (Ca2+, Mg2+, Mn2+, Zn2+), M-Ionic provides binding probabilities for six additional ions (i.e., Cu2+, Po43-, So42-, Fe2+, Fe3+, Co2+). We show that the PLM embedding of a single residue contains sufficient information about its neighbours to predict its binding properties. Availability and Implementation: M-Ionic can be used on your protein of interest using a Google Colab Notebook (https://bit.ly/40FrRbK). The GitHub repository (https://github.com/TeamSundar/m-ionic) contains all code and data.

Nyckelord [en]
Metal-binding, Protein, Protein Language Models
Nationell ämneskategori
Bioinformatik (beräkningsbiologi)
Identifikatorer
URN: urn:nbn:se:su:diva-224342DOI: 10.1101/2023.04.06.535847OAI: oai:DiVA.org:su-224342DiVA, id: diva2:1817735
Forskningsfinansiär
Knut och Alice Wallenbergs StiftelseTillgänglig från: 2023-12-07 Skapad: 2023-12-07 Senast uppdaterad: 2023-12-07
Ingår i avhandling
1. Unlocking protein sequences: Advances in protein structure and ligand-binding site prediction
Öppna denna publikation i ny flik eller fönster >>Unlocking protein sequences: Advances in protein structure and ligand-binding site prediction
2024 (Engelska)Doktorsavhandling, sammanläggning (Övrigt vetenskapligt)
Abstract [en]

The protein sequence determines how it will fold into its unique three-dimensional structure. Once folded, proteins perform their functions by interacting with other proteins or molecules called ligands within the cell. Experimental determination of protein structure and function is tedious. Computational approaches aim to accurately predict the properties of proteins to complement experimental efforts of understanding biochemical mechanisms within the cell. This thesis introduces computational techniques that predict the structure of protein complexes and identify protein residues involved in interactions with common biomolecules, such as metal ions and nucleic acids, based on sequence information. 

AlphaFold, a method that predicted protein structure using sequence information with almost experimental accuracy, was a critical breakthrough that shaped the field of protein structure prediction. Subsequently, approaches such as FoldDock adapted the AlphaFold pipeline for dimer complexes. Paper I applies the FoldDock protocol to understand toxin-antitoxin systems. These protein complexes are highly evolutionary conserved, and high-confidence dimer predictions were generated. Paper II applies the FoldDock protocol to study protein-protein interactions in the human proteome. To verify the reliability of machine-learning-based computational methods, they must be tested on independent data different from the data used to train the method. Paper III involves generating and using a homology-reduced independent test set to benchmark the performance of protein complex structure predictors, including the recent AlphaFold release adapted for multi-chain proteins – AlphaFold-Multimer. A confidence score (pDockQ2) was proposed to estimate the quality of the interfaces within multimers. Paper I, Paper II and Paper III are associated with predicting and evaluating protein-protein interactions. 

Representation learning involves finding effective representations of input data to maximise available information, making it easier to understand and process them for downstream prediction tasks. A recent advance in protein representation learning is Protein Language models (pLMs), where large language models are trained on a massive corpus of protein sequences. Highly contextualised and informative vector representations contained in the last hidden layer of the model have been used to predict numerous properties, such as ligand binding sites, subcellular localisation, and post-translational modifications, among others. Paper IV uses residue-level embeddings to predict whether a protein binds to one or more of the ten most common ions. It also predicts residue-level binding probabilities for multiple ions simultaneously. Paper V expands this approach beyond metals. It explores the impact of structure-informed features alongside sequence embeddings to predict whether a residue binds to nucleic acids, small molecules or metals.  Paper IV and Paper V are associated with developing machine learning methods to predict and evaluate protein-ligand interactions. 

In summary, the research conducted within this thesis offers valuable insights into three crucial levers to systematically harness the potential of machine learning for protein bioinformatics. These are (1) construction of homology-reduced non-redundant datasets, (2) finding optimal protein representations, and (3) rigorous evaluation and inference. 

Ort, förlag, år, upplaga, sidor
Stockholm: Department of Biochemistry and Biophysics, Stockholm University, 2024. s. 55
Nationell ämneskategori
Bioinformatik (beräkningsbiologi)
Forskningsämne
biokemi med inriktning mot bioinformatik
Identifikatorer
urn:nbn:se:su:diva-224344 (URN)978-91-8014-613-5 (ISBN)978-91-8014-614-2 (ISBN)
Disputation
2024-01-26, Air & Fire, SciLifeLab, Tomtebodavägen 23A, Solna, 09:00 (Engelska)
Opponent
Handledare
Tillgänglig från: 2024-01-02 Skapad: 2023-12-07 Senast uppdaterad: 2023-12-20Bibliografiskt granskad

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Shenoy, AditiElofsson, Arne

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Shenoy, AditiElofsson, Arne
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Institutionen för biokemi och biofysikScience for Life Laboratory (SciLifeLab)
Bioinformatik (beräkningsbiologi)

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