본문으로 건너뛰기
← 뒤로

Integrating traditional omics and AI-driven approaches for discovery and validation of novel MicroRNA biomarkers and therapeutic targets in thyroid cancer.

Frontiers in pharmacology 2025 Vol.16() p. 1727032

Wan Y, Xie D, Zhang M, Yang S, Zhang Z, Fu X, Wang M, Zhao Y

📝 환자 설명용 한 줄

[BACKGROUND] The discovery of reliable biomarkers and therapeutic targets remains a critical challenge in thyroid cancer management.

🔬 핵심 임상 통계 (초록에서 자동 추출 — 원문 검증 권장)
  • 연구 설계 meta-analysis

이 논문을 인용하기

BibTeX ↓ RIS ↓
APA Wan Y, Xie D, et al. (2025). Integrating traditional omics and AI-driven approaches for discovery and validation of novel MicroRNA biomarkers and therapeutic targets in thyroid cancer.. Frontiers in pharmacology, 16, 1727032. https://doi.org/10.3389/fphar.2025.1727032
MLA Wan Y, et al.. "Integrating traditional omics and AI-driven approaches for discovery and validation of novel MicroRNA biomarkers and therapeutic targets in thyroid cancer.." Frontiers in pharmacology, vol. 16, 2025, pp. 1727032.
PMID 41684520

Abstract

[BACKGROUND] The discovery of reliable biomarkers and therapeutic targets remains a critical challenge in thyroid cancer management. This study demonstrates the value of integrating traditional omics technologies with artificial intelligence approaches and single-cell validation to identify novel microRNA-based biomarkers and drug targets. We hypothesized that combining meta-analysis of bulk transcriptomics, machine learning-driven feature selection, and single-cell spatial mapping would enhance biomarker discovery and validation compared to using either approach independently.

[METHODS] We employed a hybrid strategy integrating traditional transcriptomic analysis with AI-driven methods. Meta-analysis of three bulk RNA-seq datasets (GSE65144, GSE33630, GSE50901) was performed using effect size analysis, followed by machine learning-based forward feature selection to identify optimal biomarker combinations. Single-cell RNA-seq data (GSE184362, 196,145 cells from 23 thyroid cancer samples) provided cell-type-specific validation and immune microenvironment profiling. Comprehensive experimental validation was conducted using TPC-1 and BHT101 cell lines through miR-6756-5p overexpression and CRISPRi-mediated knockdown, including functional assays and xenograft experiments to establish therapeutic potential.

[RESULTS] The AI-enhanced meta-analysis identified a four-gene diagnostic panel (BID, MIR6756, ITM2A, TGM2) achieving exceptional performance with AUC values of 1.0 and 0.99 in training sets and 0.74 in independent validation. Single-cell analysis of 50,000 cells revealed six major cell types with significant immune infiltration (61.9%), providing crucial cell-type specificity for the identified biomarkers. BID and ITM2A showed predominantly epithelial expression, while TGM2 was enriched in immune and stromal compartments, demonstrating multi-cellular biomarker patterns. Immune microenvironment analysis revealed distinct CD8+/CD4+ T cell ratios between metastatic and non-metastatic samples. hsa-miR-6756-5p, identified through this integrated approach, exhibited tumor-specific expression and demonstrated oncogenic properties by promoting proliferation, colony formation, migration, and invasion , while enhancing tumor growth , validating it as a novel therapeutic target.

[DISCUSSION] Our study exemplifies the synergistic value of integrating traditional omics approaches with AI-driven analytics for biomarker and drug target discovery. The combination of machine learning-based feature selection from bulk transcriptomics with single-cell spatial validation addresses limitations of each approach used independently. This integrated framework successfully identified has-miR-6756-5p as both a diagnostic biomarker and therapeutic target, demonstrating how traditional experimental validation coupled with computational prediction enhances translational potential. The multi-scale approach spanning bulk transcriptomics, AI-driven biomarker selection, single-cell characterization, and functional validation represents an effective paradigm for developing clinically relevant cancer biomarkers and therapeutic targets.

같은 제1저자의 인용 많은 논문 (5)