4.8 Article

Monitoring Retinoblastoma by Machine Learning of Aqueous Humor Metabolic Fingerprinting

Journal

SMALL METHODS
Volume 6, Issue 1, Pages -

Publisher

WILEY-V C H VERLAG GMBH
DOI: 10.1002/smtd.202101220

Keywords

aqueous humor; biomarkers; mass spectrometry; metabolic fingerprinting; retinoblastoma

Funding

  1. Ministry of Science and Technology of China [2017YFE0124400, 2018YFC1312800]
  2. National Natural Science Foundation of China [81971771, 81771983, 81802702, 81570884]
  3. Shanghai Institutions of Higher Learning [2021-01-07-00-02-E00083]
  4. Shanghai Rising-Star Program [19QA1404800]
  5. Shanghai Municipal Education Commission [ZXWF082101]
  6. Innovation Group Project of Shanghai Municipal Health Commission [2019CXJQ03]
  7. National Research Center for Translational Medicine.Shanghai [TMSK-2021-124]
  8. Shanghai Municipal Science and Technology Major Project [19JC1410202]

Ask authors/readers for more resources

The development of an RB monitoring platform using machine learning of aqueous humor metabolic fingerprinting can improve survival rates of RB patients, providing highly sensitive and reproducible monitoring results.
The most common intraocular pediatric malignancy, retinoblastoma (RB), accounts for approximate to 10% of cancer in children. Efficient monitoring can enhance living quality of patients and 5-year survival ratio of RB up to 95%. However, RB monitoring is still insufficient in regions with limited resources and the mortality may even reach over 70% in such areas. Here, an RB monitoring platform by machine learning of aqueous humor metabolic fingerprinting (AH-MF) is developed, using nanoparticle enhanced laser desorption/ionization mass spectrometry (LDI MS). The direct AH-MF of RB free of sample pre-treatment is recorded, with both high reproducibility (coefficient of variation < 10%) and sensitivity (low to 0.3 pmol) at sample volume down to 40 nL only. Further, early and advanced RB patients with area-under-the-curve over 0.9 and accuracy over 80% are differentiated, through machine learning of AH-MF. Finally, a metabolic biomarker panel of 7 metabolites through accurate MS and tandem MS (MS/MS) with pathway analysis to monitor RB is identified. This work can contribute to advanced metabolic analysis of eye diseases including but not limited to RB and screening of new potential metabolic targets toward therapeutic intervention.

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