Optimization of machine learning classification models for tumor cells based on cell elements heterogeneity with laser‐induced breakdown spectroscopy

Author:

Wang Yimeng1,Huang Da1,Shu Kaiqiang1,Xu Yingtong1,Duan Yixiang1,Fan Qingwen1,Lin Qingyu1ORCID,Tuchin Valery V.234ORCID

Affiliation:

1. Research Center of Analytical Instrumentation, School of Mechanical Engineering Sichuan University Chengdu China

2. Institute of Physics and Science Medical Center Saratov State University Saratov Russia

3. Laboratory of Laser Diagnostics of Technical and Living Systems Institute of Precision Mechanics and Control, FRC “Saratov Scientific Centre of the Russian Academy of Sciences” Saratov Russia

4. Laboratory of Laser Molecular Imaging and Machine Learning Tomsk State University Tomsk Russia

Abstract

AbstractThe rapid and accurate diagnosis of cancer is an important topic in clinical medicine. In the present work, an innovative method based on laser‐induced breakdown spectroscopy (LIBS) combined with machine learning was developed to distinguish and classify different tumor cell lines. The LIBS spectra of cells were first acquired. Then the spectral pre‐processing was performed as well as detailed optimization to improve the classification accuracy. After that, the convolutional neural network (CNN), support vector machine (SVM), and K‐nearest neighbors were further compared for the optimized classification ability of tumor cells. Both the CNN algorithm and SVM algorithm have achieved impressive discrimination performances for tumor cells distinguishing, with an accuracy of 97.72%. The results show that the heterogeneity of elements in tumor cells plays an important role in distinguishing the cells. It also means that the LIBS technique can be used as a fast classification method for classifying tumor cells.

Publisher

Wiley

Subject

General Physics and Astronomy,General Engineering,General Biochemistry, Genetics and Molecular Biology,General Materials Science,General Chemistry

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