2021
DOI: 10.1101/2021.11.16.468545
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Characterizing Protein Conformational Spaces using Dimensionality Reduction and Algebraic Topology

Abstract: Datasets representing the conformational landscapes of protein structures are high dimensional and hence present computational challenges. Efficient and effective dimensionality reduction of these datasets is therefore paramount to our ability to analyze the conformational landscapes of proteins and extract important information regarding protein folding, conformational changes and binding. Representing the structures with fewer attributes that capture the most variance of the data, makes for quicker and preci… Show more

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