Biosensors for Imaging
The field of optical biosensors has been a growing research area over the last three decades. A wide range of books and review articles has been published by experts in the field who have highlighted the advantages of optical sensing over other transduction methods. Fluorescence is by far the method most often applied and comes in a variety of schemes. Nowadays, one of the most common approaches in the field of optical biosensors is to combine the high sensitivity of fluorescence detection in combination with the high selectivity provided by ligand-binding proteins. In this chapter we deal with reviewing our recent results on the implementation of fluorescence-based sensors for monitoring environmentally hazardous gas molecules.
Related Conference of Biosensors for Imaging
12th World Congress on Computer Science, Machine Learning and Big Data
6th International Conference on Renewable Energy and Resources
12th International Conference and Exhibition on Mechanical & Aerospace Engineering
25th International Conference on Big Data & Data Analytics
Biosensors for Imaging Conference Speakers
Recommended Sessions
- Advancement in Nanotechnology
- Bioelectronics
- Bioelectronics & Neuroprosthetics
- Bioengineering Applications
- Bioinstrumentation
- BioMEMS/NEMS
- Biosensing Technologies
- Biosensors
- Biosensors Applications
- Biosensors for Imaging
- Biosensors in Healthcare
- DNA Chips and Nucleic Acid Sensors
- Environmental Biosensors
- Gas Sensors
- Nanobiosensors & Nanosensors
- Nanoelectronics
- Photonic Sensor Technologies
- Transducers in Biosensors
- Wearable Biosensors
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