MIML: Multiplex Image Machine Learning for High Precision Cell Classification via Mechanical Traits within Microfluidic Systems.

ArXiv Pub Date : 2025-02-24
Khayrul Islam, Ratul Paul, Shen Wang, Yuwen Zhao, Partho Adhikary, Qiying Li, Xiaochen Qin, Yaling Liu
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Abstract

Label-free cell classification is advantageous for supplying pristine cells for further use or examination, yet existing techniques frequently fall short in terms of specificity and speed. In this study, we address these limitations through the development of a novel machine learning framework, Multiplex Image Machine Learning (MIML). This architecture uniquely combines label-free cell images with biomechanical property data, harnessing the vast, often underutilized biophysical information intrinsic to each cell. By integrating both types of data, our model offers a holistic understanding of cellular properties, utilizing cell biomechanical information typically discarded in traditional machine learning models. This approach has led to a remarkable 98.3% accuracy in cell classification, a substantial improvement over models that rely solely on image data. MIML has been proven effective in classifying white blood cells and tumor cells, with potential for broader application due to its inherent flexibility and transfer learning capability. It is particularly effective for cells with similar morphology but distinct biomechanical properties. This innovative approach has significant implications across various fields, from advancing disease diagnostics to understanding cellular behavior.

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MIML:通过微流体系统中的机械特性进行高精度细胞分类的多重图像机器学习。
无标记细胞分类有利于提供原始细胞供进一步使用或检查,但现有技术在特异性和速度方面经常不足。在这项研究中,我们通过开发一种新的机器学习框架,多路图像机器学习(MIML)来解决这些局限性。该体系结构独特地将无标签细胞图像与生物力学特性数据相结合,利用了每个细胞固有的大量、往往未充分利用的形态学信息。通过整合这两种类型的数据,我们的模型利用传统机器学习模型中通常丢弃的形态信息,对细胞特性提供了更全面的理解。这种方法在细胞分类中的准确率达到了98.3%,与只考虑单一数据类型的模型相比有了实质性的改进。MIML已被证明在对白细胞和肿瘤细胞进行分类方面是有效的,由于其固有的灵活性和迁移学习能力,具有更广泛的应用潜力。它对形态相似但生物力学特性不同的细胞特别有效。这种创新的方法对从推进疾病诊断到理解细胞行为的各个领域都有重要意义。
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