# Integrating metabolomics and machine learning to forecast anti-inflammatory and antioxidant activities in D. officinale leaves

**Authors:** Guoliang Zhang, Yuying Zhao, Chenlei Ru, Guangxin Luo, Zhuping Hong, Jihong Yang, Zhenhao Li

PMC · DOI: 10.1186/s13020-025-01282-z · Chinese Medicine · 2026-01-06

## TL;DR

This study uses machine learning and metabolomics to determine the best time to harvest D. officinale leaves for their anti-inflammatory and antioxidant properties.

## Contribution

A novel ML-driven metabolomic framework is introduced to evaluate seasonal bioactive compound variations and identify key contributors to anti-inflammatory and antioxidant activities.

## Key findings

- July-harvested D. officinale leaves showed maximum anti-inflammatory and antioxidant activity.
- Vanillic acid 4-β-D-glucoside, schaftoside, and rutin were identified as key bioactive compounds.
- Phenolics, flavonoids, and B-vitamins peaked in October–November, while amino acids accumulated until December.

## Abstract

Dendrobium officinale (D. officinale) leaves, rich in bioactive compounds comparable to those in stems, remain underutilized as agricultural byproducts.

This study aims to establish an ML (machine learning)-driven metabolomic framework to evaluate seasonal variations in bioactive compounds within D. officinale leaves, identify germplasm-specific pharmacological activities, and determine core components driving anti-inflammatory and antioxidant effects.

An integrated approach combining dynamic metabolomic profiling (UHPLC-QTOF-MS, RP-HPLC, and UPLC-QqQ-MS), in vitro bioassays (TNF-α/IL-6 suppression assays and ABTS radical scavenging assay), and ML modeling was employed.

Phenolics, flavonoids, terpenes, and B-vitamins peaked in October–November, while amino acids accumulated until December. Despite this, July-harvested leaves exhibited maximum anti-inflammatory and antioxidant activity. Random Forest Regression (RFR) models identified vanillic acid 4-β-D-glucoside, schaftoside, and rutin as key bioactive contributors, validated experimentally.

This ML-enhanced metabolomic strategy advances the quality assessment and germplasm optimization of D. officinale leaves by linking dynamic phytochemical profiles to bioactivity. The identification of July as the optimal harvest period and critical bioactive compounds underscores the approach’s utility in nutraceutical and pharmaceutical applications, promoting sustainable utilization of agricultural byproducts.

The online version contains supplementary material available at 10.1186/s13020-025-01282-z.

## Linked entities

- **Chemicals:** schaftoside (PubChem CID 442658), rutin (PubChem CID 5280805)
- **Species:** Dendrobium officinale (taxon 142615)

## Full-text entities

- **Diseases:** inflammatory (MESH:D007249)
- **Chemicals:** Phenolics (-), terpenes (MESH:D013729), ABTS (MESH:C002502), schaftoside (MESH:C515112), amino acids (MESH:D000596), rutin (MESH:D012431), flavonoids (MESH:D005419)
- **Species:** Dendrobium officinale (species) [taxon 142615]

## Full text

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## Figures

10 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12771946/full.md

## References

1 references — full list in the complete paper: https://tomesphere.com/paper/PMC12771946/full.md

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Source: https://tomesphere.com/paper/PMC12771946