In Vitro Detection of S100B and Severity Evaluation of Traumatic Brain Injury Based on Biomimetic Peptide-Modified Nanochannels

Wenyuan Zhang, Jianrui Zhang, Yijun Wang,Senyao Wang, Yitian Wu, Wenchang Zhang,Minghui Wu,Li Wang,Guoheng Xu, Fuan Deng, Wenchao Liu, Zhengwei Liu, Lu Chen,Kai Xiao,Lu Zhang

SMALL(2023)

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摘要
The diagnosis and evaluation of traumatic brain injury (TBI) are crucial steps toward the treatment and prognosis of patients. A common question remains as to whether it is possible to introduce an ideal device for signal detection and evaluation that can directly connect digital signals with TBI, thereby enabling prompt response of the evaluation signal and sensitive and specific functioning of the detection process. Herein, a method is presented utilizing polymetric porous membranes with TRTK-12 peptide-modified nanochannels for the detection of S100B (a TBI biomarker) and assessment of TBI severity. The method leverages the specific bonding force between TRTK-12 peptide and S100B protein, along with the nanoconfinement effect of nanochannels, to achieve high sensitivity (LOD: 0.002 ng mL-1) and specificity ( increment I/I0: 44.7%), utilizing ionic current change as an indicator. The proposed method, which is both sensitive and specific, offers a simple yet responsive approach for real-time evaluation of TBI severity. This innovative technique provides valuable scientific insights into the advancement of future diagnostic and therapeutic integration devices. Here a method for detecting S100B (Traumatic brain injury biomarker) concentration to evaluate TBI severity is reported, which uses polymetric porous membrane with TRTK-12 peptide-modified nanochannels. This method exhibits high sensitivity, high specificity, and simply effective real-time response. It anticipates broad implications in future medical-grade comprehensive tests and assessment of disease extent.image
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关键词
nanochannels,nanofluidic,peptide,S100B detection,traumatic brain injury
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