Machine‐Learning‐Aided Advanced Electrochemical Biosensors
McGill University · Montreal General Hospital
Abstract
Electrochemical biosensors offer numerous advantages, including high sensitivity, specificity, portability, ease of use, rapid response times, versatility, and multiplexing capability. Advanced materials and nanomaterials enhance electrochemical biosensors by improving sensitivity, response, and portability. Machine learning (ML) integration with electrochemical biosensors is also gaining traction, being particularly promising for addressing challenges such as electrode fouling, interference from non-target analytes, variability in testing conditions, and inconsistencies across samples. ML enhances data processing and analysis efficiency, generating actionable results with minimal information loss.…
Citation impact
- FWCI
- 48.07
- Percentile
- 100%
- References
- 197
Authors
12Topics & keywords
- Biosensor
- Nanotechnology
- Software portability
- Nanomaterials
- Computer science
- Materials science