A Computationally Assisted Approach for Designing Wearable Biosensors toward Non‐Invasive Personalized Molecular Analysis
Creators
Abstract
Wearable sweat sensors have the potential to revolutionize precision medicine as they can non-invasively collect molecular information closely associated with an individual's health status. However, the majority of clinically relevant biomarkers cannot be continuously detected in situ using existing wearable approaches. Molecularly imprinted polymers (MIPs) are a promising candidate to address this challenge but haven't yet gained widespread use due to their complex design and optimization process yielding variable selectivity. Here, QuantumDock is introduced, an automated computational framework for universal MIP development toward wearable applications. QuantumDock utilizes density functional theory to probe molecular interactions between monomers and the target/interferent molecules to optimize selectivity, a fundamentally limiting factor for MIP development toward wearable sensing. A molecular docking approach is employed to explore a wide range of known and unknown monomers, and to identify the optimal monomer/cross-linker choice for subsequent MIP fabrication. Using an essential amino acid phenylalanine as the exemplar, experimental validation of QuantumDock is performed successfully using solution-synthesized MIP nanoparticles coupled with ultraviolet–visible spectroscopy. Moreover, a QuantumDock-optimized graphene-based wearable device is designed that can perform autonomous sweat induction, sampling, and sensing. For the first time, wearable non-invasive phenylalanine monitoring is demonstrated in human subjects toward personalized healthcare applications.
Additional Information
© 2023 Wiley-VCH GmbH. D.M. and M.W. contributed equally to this work. This work was funded by the National Science Foundation grant 2145802, National Institutes of Health grants R01HL155815 and R21DK13266, Office of Naval Research grants N00014-21-1-2483 and N00014-21-1-2845, and Heritage Medical Research Institute. The authors gratefully acknowledge critical support and infrastructure provided for this work by the Kavli Nanoscience Institute at Caltech and thank Dr. Matthew Hunt for the help. The computations presented here were conducted in the Resnick High Performance Computing Center, a facility supported by Resnick Sustainability Institute at the California Institute of Technology. The authors are also thankful for the support from Prof. William A. Goddard in the theoretical and computational implementation of QuantumDock, along with providing access to extra computing resources. The authors declare no conflict of interest. Data Availability Statement: The data that support the findings of this study are available in the Supporting Information of this article.Attached Files
Supplemental Material - adma202212161-sup-0001-suppmat.pdf
Supplemental Material - adma202212161-sup-0002-datasets1.xlsx
Supplemental Material - adma202212161-sup-0003-videos1.mp4
Supplemental Material - adma202212161-sup-0004-videos2.mp4
Supplemental Material - adma202212161-sup-0005-videos3.mp4
Files
adma202212161-sup-0001-suppmat.pdf
Files
(51.5 MB)
| Name | Size | Download all |
|---|---|---|
|
md5:a855ebde99379ea1c05b58ae5d7be544
|
2.4 MB | Preview Download |
|
md5:304f925a5f2c9d24b798513c34534e20
|
2.6 MB | Download |
|
md5:f8b57d8a444b3c170ba275b828893176
|
4.0 MB | Preview Download |
|
md5:cddfb0ef8a4e43b20bdf358ce52630b3
|
10.3 MB | Preview Download |
|
md5:071eab4111bdbdd8ce5e76a1bc625ebf
|
32.3 MB | Preview Download |
Additional details
Identifiers
- Eprint ID
- 122333
- Resolver ID
- CaltechAUTHORS:20230717-55915200.27
Funding
- NSF
- ECCS-2145802
- NIH
- R01HL155815
- NIH
- R21DK13266
- Office of Naval Research (ONR)
- N00014-21-1-2483
- Office of Naval Research (ONR)
- N00014-21-1-2845
- Heritage Medical Research Institute
Dates
- Created
-
2023-08-17Created from EPrint's datestamp field
- Updated
-
2023-08-17Created from EPrint's last_modified field