# Systematic Mining of Bioactive Compounds for Wound Healing From Cayratia Japonica Exosome-Like Nanovesicles: A Workflow Combining LC-MS and DeepSeek Models

**Authors:** Qiang Fu, Wei Ji, Yu-Ping Fan, Jian Yao, Ming-Xia Song, Qiao-Jing Yan

PMC · DOI: 10.2196/80539 · JMIR Bioinformatics and Biotechnology · 2026-01-08

## TL;DR

The paper introduces a new method combining LC-MS and AI to identify wound-healing compounds in plant-derived nanovesicles.

## Contribution

A novel multimodal framework using LC-MS and DeepSeek models to mine bioactive compounds from plant exosome-like nanovesicles.

## Key findings

- LC-MS identified 46 naturally active compounds in Cayratia japonica exosome-like nanovesicles.
- The DeepSeek model filtered compounds with wound-healing and anti-inflammatory functions.
- The framework integrates traditional analytical methods with AI for efficient data mining.

## Abstract

Plant-derived exosome-like nanovesicles (P-ELNs) effectively deliver bioactive compounds due to their high biocompatibility and low immunogenicity. While liquid chromatography-mass spectrometry (LC-MS) profiles compounds in complex samples, its analysis of large datasets remains limited by traditional methods. Recent advances in large language models (LLMs) and domain-specific systems have enhanced Chinese biomedical data processing and cross-modal pharmaceutical research.

This study aimed to create a multimodal framework of LC-MS combined with DeepSeek models for data mining of compounds with wound-healing properties from exosome-like nanovesicles derived from Cayratia japonica (CJ-ELNs).

LC-MS identified compounds enriched in CJ (n=3) and CJ-ELNs (n=3), and then compounds specifically enriched in CJ-ELNs were filtered via a four-step filtering workflow. The CJ-ELNs-specific compounds were processed by DeepSeek models for screening naturally active compounds with targeted functions of antioxidation, anti-inflammation, anticellular damage, antiapoptosis, wound healing and tissue regeneration, and cell proliferation.

A multimodal framework of LC-MS combined with the DeepSeek-DF model was created. With the assistance of artificial intelligence (AI), a total of 46 naturally active compounds derived from CJ-ELNs with targeted functions were identified.

A self-designed multimodal framework of LC-MS, combined with DeepSeek models, rapidly and accurately identifies naturally active compounds from CJ-ELNs. This AI-powered system innovatively integrates the traditional analytical technique with modern LLMs, thus greatly favoring data mining of active ingredients in traditional Chinese medicine herbs.

## Full-text entities

- **Diseases:** inflammation (MESH:D007249)
- **Chemicals:** CJ (-)
- **Species:** Causonis japonica (yabu garashi, species) [taxon 149353]

## Full text

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## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12784863/full.md

## References

32 references — full list in the complete paper: https://tomesphere.com/paper/PMC12784863/full.md

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Source: https://tomesphere.com/paper/PMC12784863