Understanding antibody binding sites

<p>Antibodies are soluble proteins produced by the adaptive immune system to bind and counteract invading pathogens. The binding properties of a typical human antibody are determined by the structure of its variable domain, composed of two chains – heavy and light and by the conformation of si...

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Bibliographic Details
Main Author: Nowak, J
Other Authors: Deane, C
Format: Thesis
Language:English
Published: 2017
Subjects:
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author Nowak, J
author2 Deane, C
author_facet Deane, C
Nowak, J
author_sort Nowak, J
collection OXFORD
description <p>Antibodies are soluble proteins produced by the adaptive immune system to bind and counteract invading pathogens. The binding properties of a typical human antibody are determined by the structure of its variable domain, composed of two chains – heavy and light and by the conformation of six loops located on the surface of the variable domain, known as Complementarity Determining Regions (CDRs).</p> <p>In the first chapter, we describe our analysis of the conformational space occupied by five out of six antibody CDRs (L1, L2, L3, H1 and H2) and the development of a novel, length-independent method for grouping these CDRs into structural clusters (canonical forms). We show that using our method we can increase coverage and precision of assigning CDR sequences into clusters.</p> <p>In the next chapter, we describe a method for ranking structural decoys of the CDR-H3 loop. We show that by computationally perturbing CDR-H3 decoys we can improve the performance of existing ranking methods. In the same chapter, we discuss the development of a method for high-throughput assignment of heavy-light chain orientation. The power of the method was demonstrated by assigning orientation to billions of potential Fv sequences.</p> <p>The third Chapter describes the analysis of a large dataset of CDR sequences with the aim of identifying sequence patterns responsible for the loops’ structure. Using a neural network methodology, we found several groups of CDR sequences which might be indicative of previously-unseen conformations.</p> <p>In the final results Chapter, we describe how we used the structural knowledge developed throughout the rest of the thesis to create a novel pipeline for computational antibody design. We show that the binders developed using our methodology had similar features to available antibody therapeutics and low predicted propensity to cause an immunogenic response. These results demonstrate the potential for using computational methods for designing high affinity therapeutics with human properties.</p>
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spelling oxford-uuid:5558a55e-bb47-4b29-a681-1e58771abd1d2024-12-08T13:35:02ZUnderstanding antibody binding sitesThesishttp://purl.org/coar/resource_type/c_db06uuid:5558a55e-bb47-4b29-a681-1e58771abd1dStatisticsMachine learningBiologyEnglishORA Deposit2017Nowak, JDeane, C<p>Antibodies are soluble proteins produced by the adaptive immune system to bind and counteract invading pathogens. The binding properties of a typical human antibody are determined by the structure of its variable domain, composed of two chains – heavy and light and by the conformation of six loops located on the surface of the variable domain, known as Complementarity Determining Regions (CDRs).</p> <p>In the first chapter, we describe our analysis of the conformational space occupied by five out of six antibody CDRs (L1, L2, L3, H1 and H2) and the development of a novel, length-independent method for grouping these CDRs into structural clusters (canonical forms). We show that using our method we can increase coverage and precision of assigning CDR sequences into clusters.</p> <p>In the next chapter, we describe a method for ranking structural decoys of the CDR-H3 loop. We show that by computationally perturbing CDR-H3 decoys we can improve the performance of existing ranking methods. In the same chapter, we discuss the development of a method for high-throughput assignment of heavy-light chain orientation. The power of the method was demonstrated by assigning orientation to billions of potential Fv sequences.</p> <p>The third Chapter describes the analysis of a large dataset of CDR sequences with the aim of identifying sequence patterns responsible for the loops’ structure. Using a neural network methodology, we found several groups of CDR sequences which might be indicative of previously-unseen conformations.</p> <p>In the final results Chapter, we describe how we used the structural knowledge developed throughout the rest of the thesis to create a novel pipeline for computational antibody design. We show that the binders developed using our methodology had similar features to available antibody therapeutics and low predicted propensity to cause an immunogenic response. These results demonstrate the potential for using computational methods for designing high affinity therapeutics with human properties.</p>
spellingShingle Statistics
Machine learning
Biology
Nowak, J
Understanding antibody binding sites
title Understanding antibody binding sites
title_full Understanding antibody binding sites
title_fullStr Understanding antibody binding sites
title_full_unstemmed Understanding antibody binding sites
title_short Understanding antibody binding sites
title_sort understanding antibody binding sites
topic Statistics
Machine learning
Biology
work_keys_str_mv AT nowakj understandingantibodybindingsites