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Molecular Pathological Diagnosis of Thyroid Tumors Using Spatially Resolved Metabolomics.

Luojiao HuangXinxin MaoChenglong SunTiegang LiXiaowei SongJiangshuo LiShanshan GaoRuiping ZhangJie ChenJiuming HeZeper Abliz
Published in: Molecules (Basel, Switzerland) (2022)
The pathological diagnosis of benign and malignant follicular thyroid tumors remains a major challenge using the current histopathological technique. To improve diagnosis accuracy, spatially resolved metabolomics analysis based on air flow-assisted desorption electrospray ionization mass spectrometry imaging (AFADESI-MSI) technique was used to establish a molecular diagnostic strategy for discriminating four pathological types of thyroid tumor. Without any specific labels, numerous metabolite features with their spatial distribution information can be acquired by AFADESI-MSI. The underlying metabolic heterogeneity can be visualized in line with the cellular heterogeneity in native tumor tissue. Through micro-regional feature extraction and in situ metabolomics analysis, three sets of metabolic biomarkers for the visual discrimination of benign follicular adenoma and differentiated thyroid carcinomas were discovered. Additionally, the automated prediction of tumor foci was supported by a diagnostic model based on the metabolic profile of 65 thyroid nodules. The model prediction accuracy was 83.3% when a test set of 12 independent samples was used. This diagnostic strategy presents a new way of performing in situ pathological examinations using small molecular biomarkers and provides a model diagnosis for clinically indeterminate thyroid tumor cases.
Keyphrases
  • mass spectrometry
  • high resolution
  • machine learning
  • single cell
  • liquid chromatography
  • deep learning
  • high throughput
  • social media
  • photodynamic therapy
  • simultaneous determination