Abstract

Protein binding-site similarity detection methods can be used to predict protein function and understand molecular recognition, as a tool in drug design for drug repurposing and polypharmacology, and for the prediction of the molecular determinants of drug toxicity. Here, we present IsoMIF, a method able to identify binding site molecular interaction field similarities across protein families. IsoMIF utilizes six chemical probes and the detection of subgraph isomorphisms to identify geometrically and chemically equivalent sections of protein cavity pairs. The method is validated using six distinct data sets, four of those previously used in the validation of other methods. The mean area under the receiver operator curve (AUC) obtained across data sets for IsoMIF is higher than those of other methods. Furthermore, while IsoMIF obtains consistently high AUC values across data sets, other methods perform more erratically across data sets. IsoMIF can be used to predict function from structure, to detect potential cross-reactivity or polypharmacology targets, and to help suggest bioisosteric replacements to known binding molecules. Given that IsoMIF detects spatial patterns of molecular interaction field similarities, its predictions are directly related to pharmacophores and may be readily translated into modeling decisions in structure-based drug design. IsoMIF may in principle detect similar binding sites with distinct amino acid arrangements that lead to equivalent interactions within the cavity. The source code to calculate and visualize MIFs and MIF similarities are freely available.

Highlights

  • The identification of similarities between proteins has many practical applications

  • We evaluated the performance of IsoMIF with and without PO4 entries using the nonhomologous subset of Kahraman

  • We present IsoMIF, a tool to detect molecular interaction field similarities in protein binding sites

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Summary

Introduction

The identification of similarities between proteins has many practical applications. Sequence similarity algorithms like BLAST1 allow one to quickly retrieve homologous proteins and transfer potential functional annotations from the target to the query protein. A number of well-established methods such as DALI5 measure global structural similarities, which coupled with databases like SCOP6 or CATH7 can be used to understand the cellular (biological processes) or molecular (molecular interactions) functions of a protein. Metaservers such as ProFunc[8] combine a number of sequence- and structure-based methods to predict protein function from structure

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