BJC Reports (Jul 2024)

System transferability of Raman-based oesophageal tissue classification using modern machine learning to support multi-centre clinical diagnostics

  • Nathan Blake,
  • Riana Gaifulina,
  • Martin Isabelle,
  • Jennifer Dorney,
  • Manuel Rodriguez-Justo,
  • Katherine Lau,
  • Stéphanie Ohrel,
  • Gavin Lloyd,
  • Neil Shepherd,
  • Aaran Lewis,
  • Catherine A. Kendall,
  • Nick Stone,
  • Ian Bell,
  • Geraint Thomas

DOI
https://doi.org/10.1038/s44276-024-00080-8
Journal volume & issue
Vol. 2, no. 1
pp. 1 – 8

Abstract

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Abstract Background The clinical potential of Raman spectroscopy is well established but has yet to become established in routine oncology workflows. One barrier slowing clinical adoption is a lack of evidence demonstrating that data taken on one spectrometer transfers across to data taken on another spectrometer to provide consistent diagnoses. Methods We investigated multi-centre transferability using human oesophageal tissue. Raman spectra were taken across three different centres with different spectrometers of the same make and model. By using a common protocol, we aimed to minimise the difference in machine learning performance between centres. Results 61 oesophageal samples from 51 patients were interrogated by Raman spectroscopy at each centre and classified into one of five pathologies. The overall accuracy and log-loss did not significantly vary when a model trained upon data from any one centre was applied to data taken at the other centres. Computational methods to correct for the data during pre-processing were not needed. Conclusion We have found that when using the same make and model of spectrometer, together with a common protocol, across different centres it is possible to achieve system transferability without the need for additional computational instrument correction.