Interpretable feature extraction and dimensionality reduction in ESM2 for protein localization prediction

Author:

Luo Zeyu12ORCID,Wang Rui12ORCID,Sun Yawen12ORCID,Liu Junhao12ORCID,Chen Zongqing3ORCID,Zhang Yu-Juan12ORCID

Affiliation:

1. Chongqing Key Laboratory of Vector Insects , Chongqing Key Laboratory of Animal Biology, College of Life Science, , Chongqing 401331 , China

2. Chongqing Normal University , Chongqing Key Laboratory of Animal Biology, College of Life Science, , Chongqing 401331 , China

3. School of Mathematical Sciences, Chongqing Normal University , Chongqing 400047 , China

Abstract

Abstract As the application of large language models (LLMs) has broadened into the realm of biological predictions, leveraging their capacity for self-supervised learning to create feature representations of amino acid sequences, these models have set a new benchmark in tackling downstream challenges, such as subcellular localization. However, previous studies have primarily focused on either the structural design of models or differing strategies for fine-tuning, largely overlooking investigations into the nature of the features derived from LLMs. In this research, we propose different ESM2 representation extraction strategies, considering both the character type and position within the ESM2 input sequence. Using model dimensionality reduction, predictive analysis and interpretability techniques, we have illuminated potential associations between diverse feature types and specific subcellular localizations. Particularly, the prediction of Mitochondrion and Golgi apparatus prefer segments feature closer to the N-terminal, and phosphorylation site-based features could mirror phosphorylation properties. We also evaluate the prediction performance and interpretability robustness of Random Forest and Deep Neural Networks with varied feature inputs. This work offers novel insights into maximizing LLMs’ utility, understanding their mechanisms, and extracting biological domain knowledge. Furthermore, we have made the code, feature extraction API, and all relevant materials available at https://github.com/yujuan-zhang/feature-representation-for-LLMs.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Chongqing

Science and Technology Research Program of Chongqing Municipal Education Commission

Chongqing Natural Science Foundation

Chongqing Technological Innovation and Applications Development Special Program

Team Project of Innovation Leading Talent in Chongqing

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

Reference42 articles.

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