An extended de Bruijn graph for feature engineering over biological sequential data

Mert Onur Çakıroğlu, H. Kurban, Parichit Sharma, Oguzhan Kulekci, Elham Khorasani Buxton, Maryam Raeeszadeh-Sarmazdeh, Mehmet Dalkilic
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Abstract

In this study, we introduce a novel de Bruijn graph (dBG) based framework for feature engineering in biological sequential data such as proteins. This framework simplifies feature extraction by dynamically generating high-quality, interpretable features for traditional AI (TAI) algorithms. Our framework accounts for amino acid substitutions by efficiently adjusting the edge weights in the dBG using a secondary trie structure. We extract motifs from the dBG by traversing the heavy edges, and then incorporate alignment algorithms like BLAST and Smith-Waterman to generate features for TAI algorithms. Empirical validation on TIMP (tissue inhibitors of matrix metalloproteinase) data demonstrates significant accuracy improvements over a robust baseline, state-of-the-art (SOTA) PLM models, and those from the popular GLAM2 tool. Furthermore, our framework successfully identified Glycine and Arginine-rich (GAR) motifs with high coverage, highlighting it's potential in general pattern discovery. The software code is accessible at: https://github.com/parichit/TIMP_Classification
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用于生物序列数据特征工程的扩展德布鲁因图
在本研究中,我们为蛋白质等生物序列数据的特征工程引入了一种基于德布鲁因图(dBG)的新型框架。该框架可为传统人工智能(TAI)算法动态生成高质量、可解释的特征,从而简化特征提取。我们的框架通过使用二级三角形结构有效调整 dBG 中的边缘权重来考虑氨基酸的替换。我们通过遍历重边从 dBG 中提取主题,然后结合 BLAST 和 Smith-Waterman 等比对算法为 TAI 算法生成特征。在 TIMP(基质金属蛋白酶组织抑制剂)数据上进行的经验验证表明,与稳健基线、最先进(SOTA)PLM 模型和流行的 GLAM2 工具相比,我们的准确性有了显著提高。此外,我们的框架还成功识别了富含甘氨酸和精氨酸(GAR)的图案,覆盖率很高,这凸显了它在一般模式发现方面的潜力。软件代码请访问:https://github.com/parichit/TIMP_Classification
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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