4.8 Article

Integrative Serum Metabolic Fingerprints Based Multi-Modal Platforms for Lung Adenocarcinoma Early Detection and Pulmonary Nodule Classification

Journal

ADVANCED SCIENCE
Volume 9, Issue 34, Pages -

Publisher

WILEY
DOI: 10.1002/advs.202203786

Keywords

deep learning; lung adenocarcinoma; metabolomics; multi-modal; pulmonary nodule

Funding

  1. National Natural Science Foundation of China [81802938, 82071990, 82001985, 81971771]
  2. National Key R&D Program of China [2022YFE0103500, 2021YFF0703500, 2021YFA0910100]
  3. Shanghai Institutions of Higher Learning [2021-01-07-00-02-E00083]
  4. Shanghai Rising-Star Program [19QA1404800]
  5. National Research Center for Translational Medicine Shanghai [TMSK-2021-124, NRCTM(SH)-2021-06]
  6. Innovative Research Team of High-Level Local Universities in Shanghai [SHSMU-ZDCX20210700]
  7. Medical-Engineering Joint Funds of Shanghai Jiao Tong University [YG2019QNA44, YG2021ZD09, YG2022QN107]
  8. Innovation Group Project of Shanghai Municipal Health Commission [2019CXJQ03]
  9. Shanghai Rising Stars of Medical Talents Youth Development Program [SHWRS2020-087]
  10. Clinical Research Innovation Plan of Shanghai General Hospital [CTCCR-2021B06]
  11. Shanghai General Hospital Characteristic Talent Plan [0206012157, 0206012110]
  12. Shanghai Science and Technology Commission [19411965200, 22Y11902800, 22ZR1450200, 20ZR1440000]
  13. Shanghai Sailing Program [20YF1434400]

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A multiplexed assay is developed on a nanoparticle-based laser desorption/ionization mass spectrometry platform for the detection of serum metabolic fingerprints (SMFs) in lung adenocarcinoma (LUAD). A dual modal model, MP-NN, integrating SMFs with protein tumor marker CEA via deep learning, shows superior performance compared to a single modal model. The tri modal model, MPI-RF, integrating SMFs, tumor marker CEA, and image features, demonstrates significantly higher performance in pulmonary nodule classification.
Identification of novel non-invasive biomarkers is critical for the early diagnosis of lung adenocarcinoma (LUAD), especially for the accurate classification of pulmonary nodule. Here, a multiplexed assay is developed on an optimized nanoparticle-based laser desorption/ionization mass spectrometry platform for the sensitive and selective detection of serum metabolic fingerprints (SMFs). Integrative SMFs based multi-modal platforms are constructed for the early detection of LUAD and the classification of pulmonary nodule. The dual modal model, metabolic fingerprints with protein tumor marker neural network (MP-NN), integrating SMFs with protein tumor marker carcinoembryonic antigen (CEA) via deep learning, shows superior performance compared with the single modal model Met-NN (p < 0.001). Based on MP-NN, the tri modal model MPI-RF integrating SMFs, tumor marker CEA, and image features via random forest demonstrates significantly higher performance than the clinical models (Mayo Clinic and Veterans Affairs) and the image artificial intelligence in pulmonary nodule classification (p < 0.001). The developed platforms would be promising tools for LUAD screening and pulmonary nodule management, paving the conceptual and practical foundation for the clinical application of omics tools.

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