Cell recognition based on atomic force microscopy and modified residual neural network

J Struct Biol. 2023 Sep;215(3):107991. doi: 10.1016/j.jsb.2023.107991. Epub 2023 Jul 13.

Abstract

Cell recognition methods are in high demand in cell biology and medicine, and the method based on atomic force microscopy (AFM) shows a great value in application. The difference in mechanical properties or morphology of cells has been frequently used to detect whether cells are cancerous, but this detection method cannot be a general means for cancer cell detection, and the traditional artificial feature extraction method also has its limitations. In this work, we proposed an analytic method based on the physical properties of cells and deep learning method for recognizing cell types. The residual neural network used for recognition was modified by multi-scale convolutional fusion, attention mechanism and depthwise separable convolution, so as to optimize feature extraction and reduce operation costs. In the method, the collected cells were imaged by AFM, and the processed images were analyzed by the optimized convolutional neural network. The recognition results of two groups of cells (HL-7702 and SMMC-7721, SGC-7901 and GES-1) by this method show that the recognition rate of dataset with the combination of cell surface morphology, adhesion and Young's modulus is higher, and the recognition rate of the dataset with optimal resolution is higher. Our study indicated that the recognition of physical properties of cells using deep learning technology can serve as a universal and effective method for the automated analysis of cell information.

Keywords: Atomic force microscopy; Cell mechanical property; Cell recognition; Cell surface morphology; Deep learning technology.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Cell Communication*
  • Elastic Modulus
  • Microscopy, Atomic Force / methods
  • Neural Networks, Computer*