2022
DOI: 10.1002/jrs.6486
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A new method for Raman spectral analysis: Decision fusion‐based transfer learning model

Abstract: As an emerging technology for artificial intelligence‐aided medical diagnosis, deep learning combined with Raman spectroscopy has great potential. The technology still has some problems in the actual medical diagnosis research process. The differences in spectrometers, experimental conditions, and experimental operations can result in non‐uniform and universally applicable data standards, which in turn lead to low data utilization. At the same time, it is still necessary to retrain the models when building dia… Show more

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Cited by 5 publications
(2 citation statements)
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“…This feature makes the use of RS for the detection of such biomarkers particularly challenging, due to the weakness of the Raman signal. However, several works [61], [63], [66], [67], [176] have proved that ML protocols allow to detect brain cancer from Raman spectra obtained from blood-derived liquid biopsies. For example, Tian et al [67] The DL pipeline consisted in PLS feature extraction, data augmentation, and the application of several Convolutional Neural Networks.…”
Section: Brain Cancermentioning
confidence: 99%
“…This feature makes the use of RS for the detection of such biomarkers particularly challenging, due to the weakness of the Raman signal. However, several works [61], [63], [66], [67], [176] have proved that ML protocols allow to detect brain cancer from Raman spectra obtained from blood-derived liquid biopsies. For example, Tian et al [67] The DL pipeline consisted in PLS feature extraction, data augmentation, and the application of several Convolutional Neural Networks.…”
Section: Brain Cancermentioning
confidence: 99%
“…We can hope that this short‐communication would motivate a more thorough investigation with a large‐scale open‐access database and encourage recent works 9–11 to release their data.…”
Section: Introductionmentioning
confidence: 97%