Metabolites (Oct 2023)

Two-Stage Deep-Learning Classifier for Diagnostics of Lung Cancer Using Metabolites

  • Ashvin Choudhary,
  • Jianpeng Yu,
  • Valentina L. Kouznetsova,
  • Santosh Kesari,
  • Igor F. Tsigelny

DOI
https://doi.org/10.3390/metabo13101055
Journal volume & issue
Vol. 13, no. 10
p. 1055

Abstract

Read online

We developed a machine-learning system for the selective diagnostics of adenocarcinoma (AD), squamous cell carcinoma (SQ), and small-cell carcinoma lung (SC) cancers based on their metabolomic profiles. The system is organized as two-stage binary classifiers. The best accuracy for classification is 92%. We used the biomarkers sets that contain mostly metabolites related to cancer development. Compared to traditional methods, which exclude hierarchical classification, our method splits a challenging multiclass task into smaller tasks. This allows a two-stage classifier, which is more accurate in the scenario of lung cancer classification. Compared to traditional methods, such a “divide and conquer strategy” gives much more accurate and explainable results. Such methods, including our algorithm, allow for the systematic tracking of each computational step.

Keywords