AI Article Synopsis

  • Surface-enhanced Raman spectroscopy (SERS) is being utilized for diagnosing diseases by analyzing body fluids, particularly in understanding choledocholithiasis, a common digestive condition.
  • This research evaluated bile samples from 46 patients to extract multi-component SERS spectral information, using techniques like Principal Component Analysis (PCA) to identify variations linked to different types of choledocholithiasis and their recurrence rates.
  • By combining SERS with machine learning methods like Support Vector Machines (SVM), the study achieved high classification and prediction accuracy (99.2% for stone types and 95.2% for recurrence rates), highlighting the potential of this approach for enhancing disease diagnostics and understanding underlying mechanisms.

Article Abstract

Surface-enhanced Raman spectroscopy (SERS) analysis based on body fluids has been widely applied in disease diagnose. Choledocholithiasis is a widespread and often recurrent digestive system disease, with limited data on factors predicting its formation and reappearance. Bile contains many components that could provide valuable diagnostic information; however, the current diagnosis of biliary disease by SERS focuses on detecting specific component in the bile, overlooking the complex interplay and correlations among multiple factors that could be crucial for accurate diagnosis. This work directly obtained multi-component SERS spectral information of raw bile from 46 patients. Characteristic information was extracted from bile SERS spectra using Principal Component Analysis (PCA), revealing variations in the content of characteristic components associated with different choledocholithiasis types and their recurrence frequency. Pearson correlation analysis was also introduced to reveal the interactions of primary active substances pertinent to choledocholithiasis diagnosis. The efficacy of PCA and Support Vector Machine (SVM) models in classifying stone types, presented an accuracy of 99.2 %. Furthermore, the interaction patterns among SERS characteristic components in choledocholithiasis recurrence frequency were revealed, and with the support of SVM, the prediction for different recurrence rates reached an accuracy of 95.2 %. Overall, this work demonstrates that integrating SERS with machine learning can support disease diagnosis and the interpretation of correlations among multiple components, facilitating elucidating the disease mechanisms.

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Source
http://dx.doi.org/10.1016/j.talanta.2024.126979DOI Listing

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