Integrating optical and electrical sensing with machine learning for advanced particle characterization

Particle classification plays a crucial role in various scientific and technological applications, such as differentiating between bacteria and viruses in healthcare applications or identifying and classifying cancer cells. This technique requires accurate and efficient analysis of particle properti...

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Veröffentlicht in:Biomedical microdevices 2024-06, Vol.26 (2), p.25, Article 25
Hauptverfasser: Kokabi, Mahtab, Tayyab, Muhammad, Rather, Gulam M., Pournadali Khamseh, Arastou, Cheng, Daniel, DeMauro, Edward P., Javanmard, Mehdi
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Sprache:eng
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Zusammenfassung:Particle classification plays a crucial role in various scientific and technological applications, such as differentiating between bacteria and viruses in healthcare applications or identifying and classifying cancer cells. This technique requires accurate and efficient analysis of particle properties. In this study, we investigated the integration of electrical and optical features through a multimodal approach for particle classification. Machine learning classifier algorithms were applied to evaluate the impact of combining these measurements. Our results demonstrate the superiority of the multimodal approach over analyzing electrical or optical features independently. We achieved an average test accuracy of 94.9% by integrating both modalities, compared to 66.4% for electrical features alone and 90.7% for optical features alone. This highlights the complementary nature of electrical and optical information and its potential for enhancing classification performance. By leveraging electrical sensing and optical imaging techniques, our multimodal approach provides deeper insights into particle properties and offers a more comprehensive understanding of complex biological systems. Graphical abstract
ISSN:1387-2176
1572-8781
1572-8781
DOI:10.1007/s10544-024-00707-0