Abstract

Single-beam acoustic tweezers (SBAT) is a widely used trapping technique to manipulate microscopic particles or cells. Recently, the characterization of a single cancer cell using high-frequency (>30 MHz) SBAT has been reported to determine its invasiveness and metastatic potential. Investigation of cell elasticity and invasiveness is based on the deformability of cells under SBAT’s radiation forces, and in general, more physically deformed cells exhibit higher levels of invasiveness and therefore higher metastatic potential. However, previous imaging analysis to determine substantial differences in cell deformation, where the SBAT is turned ON or OFF, relies on the subjective observation that may vary and requires follow-up evaluations from experts. In this study, we propose an automatic and reliable cancer cell classification method based on SBAT and a convolutional neural network (CNN), which provides objective and accurate quantitative measurement results. We used a custom-designed 50 MHz SBAT transducer to obtain a series of images of deformed human breast cancer cells. CNN-based classification methods with data augmentation applied to collected images determined and validated the metastatic potential of cancer cells. As a result, with the selected optimizers, precision, and recall of the model were found to be greater than 0.95, which highly validates the classification performance of our integrated method. CNN-guided cancer cell deformation analysis using SBAT may be a promising alternative to current histological image analysis, and this pretrained model will significantly reduce the evaluation time for a larger population of cells.

Highlights

  • Image analysis of cancer cells is an emerging technique with growing applications in cancer research and plays a vital role in accurate diagnoses of cancer [1,2,3,4]

  • Invasive and weakly invasive cancer cells have been implicated in different forms of metastatic potential, so numerous in-depth studies have investigated the invasiveness properties of cancer cells using various tools

  • (b) The single-beam acoustic tweezers (SBAT) was driven at 50 MHz by sinusoidal bursts from a function generator amplified with a 50 dB amplifier

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Summary

Introduction

Image analysis of cancer cells is an emerging technique with growing applications in cancer research and plays a vital role in accurate diagnoses of cancer [1,2,3,4]. Histological image analysis has been extensively studied as a clinical diagnostic method of primary cancer cell classification after biopsy. Cancers 2020, 12, 1212 among histopathologists and clinicians Another critical limitation is non-automatic complex analysis protocols that increase evaluation times without increasing reliability. To overcome those major hurdles, an accurate and reliable quantitative analysis method that directly measures the physical properties of cells is gaining attention rapidly

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