Login / Signup

Advancing Peptide-Based Biorecognition Elements for Biosensors Using in-Silico Evolution.

Xingqing XiaoZhifeng KuangJoseph M SlocikSirimuvva TadepalliMichael BrothersSteve S KimPeter A MirauClaire ButkusBarry L FarmerSrikanth SingamaneniCarol K HallRajesh R Naik
Published in: ACS sensors (2018)
Sensors for human health and performance monitoring require biological recognition elements (BREs) at device interfaces for the detection of key molecular biomarkers that are measurable biological state indicators. BREs, including peptides, antibodies, and nucleic acids, bind to biomarkers in the vicinity of the sensor surface to create a signal proportional to the biomarker concentration. The discovery of BREs with the required sensitivity and selectivity to bind biomarkers at low concentrations remains a fundamental challenge. In this study, we describe an in-silico approach to evolve higher sensitivity peptide-based BREs for the detection of cardiac event marker protein troponin I (cTnI) from a previously identified BRE as the parental affinity peptide. The P2 affinity peptide, evolved using our in-silico method, was found to have ∼16-fold higher affinity compared to the parent BRE and ∼10 fM (0.23 pg/mL) limit of detection. The approach described here can be applied towards designing BREs for other biomarkers for human health monitoring.
Keyphrases
  • human health
  • risk assessment
  • climate change
  • molecular docking
  • label free
  • loop mediated isothermal amplification
  • small molecule
  • heart failure
  • amino acid
  • atrial fibrillation
  • molecular dynamics simulations