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Raman spectroscopy and FTIR spectroscopy fusion technology combined with deep learning: A novel cancer prediction method

Leng, Hongyong; Chen, Cheng; Chen, Chen; Chen, Fangfang; Du, Zijun; Chen, Jiajia; Yang, Bo; Zuo, Enguang; Xiao, Meng; Lv, Xiaoyi; Liu, Pei
Science Citation Index Expanded
北京理工大学; 新疆大学

摘要

According to the limited molecular information reflected by single spectroscopy, and the complementarity of FTIR spectroscopy and Raman spectroscopy, we propose a novel diagnostic technology combining multispectral fusion and deep learning. We used serum samples from 45 healthy controls, 44 non-small cell lung cancer (NSCLC), 38 glioma and 37 esophageal cancer patients, and the Raman spectra and FTIR spectra were collected respectively. Then we performed low-level fusion and feature fusion on the spectral, and used SVM, Convolu-tional Neural Network-Long-Short Term Memory (CNN-LSTM) and the multi-scale convolutional fusion neural network (MFCNN). The accuracy of low-level fusion and feature fusion models are improved by about 10% compared with single spectral models.

关键词

FTIR spectroscopy Raman Low-level fusion Feature fusion MFCNN