# KDDC: a new framework that integrates kmers, dataset filtering, dimension reduction and classification algorithms to achieve immune cell heterogeneity classification

**Authors:** Nan Zhang, Shishun Zhao, Runze Wu, Xizi Luo, Ming Yang, Zecheng Chang, Jianting Xu

PMC · DOI: 10.3389/fimmu.2025.1602907 · Frontiers in Immunology · 2025-05-30

## TL;DR

This paper introduces KDDC, a new framework that combines sequencing data and machine learning to better classify immune cells and understand their roles in diseases.

## Contribution

The novel KDDC framework integrates kmer analysis, dataset filtering, dimension reduction, and classification for immune cell heterogeneity.

## Key findings

- B cell receptor-based classification outperforms T cell receptor-based classification with over 96% average AUC.
- Eleven cell subpopulations show distinct differences in proportions, inflammation, communication, and metabolic pathways.
- Variations in metabolic pathways suggest adaptive changes in immune cells across disease states.

## Abstract

Integrating immune repertoire sequencing data with single cell sequencing data offers profound insights into the diversity of immune cells and their dynamic changes across various disease states.

Here, we propose a novel KDDC framework that integrates kmers, dataset selection, dimensionality reduction and classification algorithms to facilitate the heterogeneous classification of immune cells.

By comparing various kmer length combinations across seven different classification algorithms, we found that B cell receptor-based cellsubset classification outperforms T cell receptor-based classification, achievingan average AUC of over 96%. This finding offers a new perspective on the classification of immune cells. We also observed that 11 distinct cell subpopulations exhibited differences in cell proportions, inflammatory factorexpression, cell communication, and metabolic pathways, with notable activity in metabolic pathways. These variations may reflect the adaptive changes of cellsubpopulations in response to different disease states. This study aims to uncoverthe potential biological significance of immune prediction, target antigens, andeffective evaluation by analyzing the immune characteristics of specific cellsubsets at the cellular level. These findings will not only enhance ourunderstanding of immune system functions but also offer new directions for the development and optimization of immunotherapy.

## Full text

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## Figures

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## References

27 references — full list in the complete paper: https://tomesphere.com/paper/PMC12162500/full.md

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Source: https://tomesphere.com/paper/PMC12162500