Papers

Peer-reviewed International journal
Jan, 2020

Using probe electrospray ionization mass spectrometry and machine learning for detecting pancreatic cancer with high performance.

American journal of translational research
  • Wen Y Chung
  • ,
  • Elon Correa
  • ,
  • Kentaro Yoshimura
  • ,
  • Ming-Chu Chang
  • ,
  • Ashley Dennison
  • ,
  • Sen Takeda
  • ,
  • Yu-Ting Chang

Volume
12
Number
1
First page
171
Last page
179
Language
English
Publishing type
Research paper (scientific journal)

A rapid blood-based diagnostic modality to detect pancreatic ductal adenocarcinoma (PDAC) with high accuracy is an unmet medical need. The study aimed to validate a unique diagnosis system using Probe Electrospray Ionization Mass Spectrometry (PESI-MS) and Machine Learning to the diagnosis of PDAC. Peripheral blood samples were collected from a total of 322 consecutive PDAC patients and 265 controls with a family history of PDAC. Five µl of serum samples were analyzed using PESI-MS system. The mass spectra from each specimen were then fed into machine learning algorithms to discriminate between control and cancer cases. A total of 587 serum samples were analyzed. The sensitivity of the machine learning algorithm using PESI-MS profiles to identify PDAC is 90.8% with specificity of 91.7% (95% CI 83.9%-97.4% and 82.8%-97.7% respectively). Combined PESI-MS profiles with age and CA19-9 as predictors, the accuracy for stage 1 or 2 of PDAC is 92.9% and for stage 3 or 4 is 93% (95% CI 86.3-98.2; 87.9-97.4 respectively). The accuracy and simplicity of the PESI-MS profiles combined with machine learning provide an opportunity to detect PDAC at an early stage and must be applicable to the examination of at-risk populations.

Link information
PubMed
https://www.ncbi.nlm.nih.gov/pubmed/32051746
PubMed Central
https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7013221
ID information
  • ISSN : 1943-8141
  • Pubmed ID : 32051746
  • Pubmed Central ID : PMC7013221

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