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Lipidomics reveals new lipid-based lung adenocarcinoma early diagnosis model

Ting Sun, Junge Chen, Junge Chen, Fan Yang, Gang Zhang, Jiahao Chen, Jiahao Chen, Xun Wang, Jing Zhang

2024EMBO Molecular Medicine36 citationsDOIOpen Access PDF

Abstract

Lung adenocarcinoma (LUAD) continues to pose a significant mortality risk with a lack of dependable biomarkers for early noninvasive cancer detection. Here, we find that aberrant lipid metabolism is significantly enriched in lung cancer cells. Further, we identified four signature lipids highly associated with LUAD and developed a lipid signature-based scoring model (LSRscore). Evaluation of LSRscore in a discovery cohort reveals a robust predictive capability for LUAD (AUC: 0.972), a result further validated in an independent cohort (AUC: 0.92). We highlight one lipid signature biomarker, PE(18:0/18:1), consistently exhibiting altered levels both in cancer tissue and in plasma of LUAD patients, demonstrating significant predictive power for early-stage LUAD. Transcriptome analysis reveals an association between increased PE(18:0/18:1) levels and dysregulated glycerophospholipid metabolism, which consistently displays strong prognostic value across two LUAD cohorts. The combined utility of LSRscore and PE(18:0/18:1) holds promise for early-stage diagnosis and prognosis of LUAD.

Topics & Concepts

LipidomicsAdenocarcinomaLungAdenocarcinoma of the lungMedicineCancer researchComputational biologyPathologyInternal medicineBiologyBioinformaticsCancerCancer, Lipids, and MetabolismMetabolomics and Mass Spectrometry StudiesLung Cancer Treatments and Mutations
Lipidomics reveals new lipid-based lung adenocarcinoma early diagnosis model | Litcius