3D Superclusters with Hybrid Bioinks for Early Detection in Breast Cancer

等离子体子 拉曼散射 计算机科学 星团(航天器) 纳米技术 分析物 乳腺癌 材料科学 癌症检测 人工智能 拉曼光谱 癌症 光电子学 化学 物理 医学 光学 内科学 色谱法 程序设计语言
作者
Thanh Mien Nguyen,SinSung Jeong,Seok Kyung Kang,Seungwook Han,Thu M. T. Nguyen,Seungju Lee,Youn Joo Jung,You Hwan Kim,Sung Soo Park,Gyeong-Ha Bak,Young‐Chai Ko,Eun‐Jung Choi,Hyun Yul Kim,Jin‐Woo Oh
出处
期刊:ACS Sensors [American Chemical Society]
卷期号:9 (2): 699-707 被引量:14
标识
DOI:10.1021/acssensors.3c01938
摘要

The surface-enhanced Raman scattering (SERS) technique has garnered significant interest due to its ultrahigh sensitivity, making it suitable for addressing the growing demand for disease diagnosis. In addition to its sensitivity and uniformity, an ideal SERS platform should possess characteristics such as simplicity in manufacturing and low analyte consumption, enabling practical applications in complex diagnoses including cancer. Furthermore, the integration of machine learning algorithms with SERS can enhance the practical usability of sensing devices by effectively classifying the subtle vibrational fingerprints produced by molecules such as those found in human blood. In this study, we demonstrate an approach for early detection of breast cancer using a bottom-up strategy to construct a flexible and simple three-dimensional (3D) plasmonic cluster SERS platform integrated with a deep learning algorithm. With these advantages of the 3D plasmonic cluster, we demonstrate that the 3D plasmonic cluster (3D-PC) exhibits a significantly enhanced Raman intensity through detection limit down to 10-6 M (femtomole-(10-17 mol)) for p-nitrophenol (PNP) molecules. Afterward, the plasma of cancer subjects and healthy subjects was used to fabricate the bioink to build 3D-PC structures. The collected SERS successfully classified into two clusters of cancer subjects and healthy subjects with high accuracy of up to 93%. These results highlight the potential of the 3D plasmonic cluster SERS platform for early breast cancer detection and open promising avenues for future research in this field.
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