4.4 Article

Rapid identification of cervical adenocarcinoma and cervical squamous cell carcinoma tissue based on Raman spectroscopy combined with multiple machine learning algorithms

Journal

PHOTODIAGNOSIS AND PHOTODYNAMIC THERAPY
Volume 33, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.pdpdt.2020.102104

Keywords

Cervical adenocarcinoma; Cervical squamous cell carcinoma; Raman spectroscopy; Feature extraction; Classification

Categories

Funding

  1. Graduate Student Innovation Project of Xinjiang Uygur Autonomous Region [XJ2020G061]
  2. Urumqi Science and Technology Project [P161310002]

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This study collected tissue data of cervical adenocarcinoma and cervical squamous cell carcinoma through Raman spectroscopy, established 30 classification models using different feature extraction algorithms, and identified 8 models with good diagnostic accuracy. The model developed in this research is simple to operate, highly accurate, and has significant reference value for the rapid screening of cervical cancer.
Cervical cancer has a long latency, and early screening greatly reduces mortality. In this study, cervical adenocarcinoma and cervical squamous cell carcinoma tissue data were collected by Raman spectroscopy, and then, the adaptive iteratively reweighted penalized least squares (airPLS) algorithm and Vancouver Raman algorithm (VRA) were used to subtract the background of the collected data. The following five feature extraction algorithms were applied: partial least squares (PLS), principal component analysis (PCA), kernel principal component analysis (KPCA), isometric feature mapping (isomap) and locally linear embedding (LLE). The k nearest neighbour (KNN), extreme learning machine (ELM), decision tree (DT), backpropagation neural network (BP), genetic optimization backpropagation neural network (GA-BP) and linear discriminant analysis (LDA) classification models were then established through the features extracted by different feature extraction algorithms. In total, 30 types of classification models were established in this experiment. This research includes eight good models, airPLS-PLS-KNN, airPLS-PLS-ELM, airPLS-PLS-GA-BP, airPLS-PLS-BP, airPLS-PLS-LDA, airPLS-PCAKNN, airPLS-PCA-LDA, and VRA-PLS-KNN, whose diagnostic accuracy was 96.3 %, 95.56 %, 95.06 %, 94.07 %, 92.59 %, 85.19 %, 85.19 % and 85.19 %, respectively. The experimental results showed that the model established in this article is simple to operate and highly accurate and has a good reference value for the rapid screening of cervical cancer.

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