4.8 Article

Computational Sensing of Staphylococcus aureus on Contact Lenses Using 3D Imaging of Curved Surfaces and Machine Learning

期刊

ACS NANO
卷 12, 期 3, 页码 2554-2559

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acsnano.7b08375

关键词

computational sensing; contact-lens-based sensing; holographic sensing; lens free imaging; mobile sensing; machine learning

资金

  1. National Institutes of Health (NIH) [R21EB023115]
  2. NSF Engineering Research Center (ERC, PATHS-UP)
  3. Army Research Office (ARO) [W911NF-13-1-0419, W911NF-13-1-0197]
  4. ARO Life Sciences Division
  5. National Science Foundation (NSF) CBET Division Biophotonics Program
  6. NSF Emerging Frontiers in Research and Innovation (EFRI) Award
  7. NSF EAGER Award
  8. NSF INSPIRE Award
  9. NSF Partnerships for Innovation: Building Innovation Capacity (PFI:BIC) Program
  10. Howard Hughes Medical Institute (HHMI)
  11. Vodafone Americas Foundation
  12. Mary Kay Foundation
  13. Steven & Alexandra Cohen Foundation
  14. KAUST
  15. National Science Foundation [0963183]
  16. American Recovery and Reinvestment Act of (ARRA)
  17. Office of Naval Research (ONR)

向作者/读者索取更多资源

We present a cost-effective and portable platform based on contact lenses for noninvasively detecting Staphylococcus aureus, which is part of the human ocular microbiome and resides on the cornea and conjunctiva. Using S. aureus-specific antibodies and a surface chemistry protocol that is compatible with human tears, contact lenses are designed to specifically capture S. aureus. After the bacteria capture on the lens and right before its imaging, the captured bacteria are tagged with surface-functionalized polystyrene microparticles. These microbeads provide sufficient signal-to-noise ratio for the quantification of the captured bacteria on the contact lens, without any fluorescent labels, by 3D imaging of the curved surface of each lens using only one hologram taken with a lens-free on-chip microscope. After the 3D surface of the contact lens is computationally reconstructed using rotational field transformations and holographic digital focusing, a machine learning algorithm is employed to automatically count the number of beads on the lens surface, revealing the count of the captured bacteria. To demonstrate its proof-of-concept, we created a field-portable and cost-effective holographic microscope, which weighs 77 g, controlled by a laptop. Using daily contact lenses that are spiked with bacteria, we demonstrated that this computational sensing platform provides a detection limit of similar to 16 bacteria/mu L. This contact-lens-based wearable sensor can be broadly applicable to detect various bacteria, viruses, and analytes in tears using a cost-effective and portable computational imager that might be used even at home by consumers.

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