Integrating Secondary Structures Information into Triangular Spatial Relationships (TSR) for Advanced Protein Classification
Poorya Khajouie, Titli Sarkar, Krishna Rauniyar, Li Chen, Wu Xu, Vijay Raghavan

TL;DR
This paper introduces SSE-TSR, an enhanced protein classification method that integrates secondary structure information into Triangular Spatial Relationships, significantly improving accuracy especially on datasets with lower initial performance.
Contribution
The novel SSE-TSR approach incorporates secondary structure elements into TSR-based protein representations, enhancing classification accuracy over traditional methods.
Findings
Accuracy improved from 96.0% to 98.3% on Dataset 1
Minor accuracy increase from 99.4% to 99.5% on Dataset 2
SSE integration benefits datasets with lower initial accuracies
Abstract
Protein structures represent the key to deciphering biological functions. The more detailed form of similarity among these proteins is sometimes overlooked by the conventional structural comparison methods. In contrast, further advanced methods, such as Triangular Spatial Relationship (TSR), have been demonstrated to make finer differentiations. Still, the classical implementation of TSR does not provide for the integration of secondary structure information, which is important for a more detailed understanding of the folding pattern of a protein. To overcome these limitations, we developed the SSE-TSR approach. The proposed method integrates secondary structure elements (SSEs) into TSR-based protein representations. This allows an enriched representation of protein structures by considering 18 different combinations of helix, strand, and coil arrangements. Our results show that using…
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Taxonomy
MethodsStochastic Steady-state Embedding
