人工智能增强的早期卵巢癌诊断生物传感器。

IF 6.1 3区 医学 Q1 MATERIALS SCIENCE, BIOMATERIALS
Tao Hu, Haoyu Xiao, Shanling Ji, Zhihao Wu, Yunlin Quan, Wang Zhen, Xiao Li, Jianxiong Zhu and Zhonghua Ni
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引用次数: 0

摘要

在早期癌症诊断中,细胞外囊泡(EVs)比循环肿瘤细胞更有优势,因为它们体积更小,稳定性更强,穿透组织能力更强。这些特性导致体液中EV浓度较高,有利于早期发现。本研究利用表面增强拉曼散射(SERS)进行EV检测,采用一种由二硫化钼(MoS2)复合薄膜制成的新型生物传感器,与现有方法相比,展示了检测下限(LOD)和多标记同步定量测试性能。该生物传感器能够有效地测量EV浓度,并同时精确检测卵巢癌EV上的三种特异性蛋白(CD63、CD24和CA125)。该传感器以卵巢癌细胞系HO8910为样本,检测限为1.4 × 104颗粒/ mL,线性范围为3.4 × 104颗粒/ mL ~ 3.4 × 108颗粒/ mL,可有效区分健康个体和不同阶段卵巢癌患者的血清样本。此外,应用机器学习对检测数据进行分析,得到预测准确率为97.78%的诊断模型。这凸显了传感器在革命性的早期癌症检测和建立新的诊断模型方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An artificial intelligence-enhanced early ovarian cancer diagnosis biosensor

An artificial intelligence-enhanced early ovarian cancer diagnosis biosensor

In early cancer diagnosis, extracellular vesicles (EVs) are more advantageous than circulating tumor cells due to their smaller size, greater stability, and enhanced tissue penetration. These qualities lead to higher EV concentrations in body fluids, facilitating early detection. This study leverages surface-enhanced Raman scattering (SERS) for EV detection, employing a novel biosensor made with a molybdenum disulfide (MoS2) composite film on silicon and demonstrating a lower limit of detection (LOD) and multi-marker synchronous quantitative testing performance compared to existing methodologies. This biosensor efficiently measures EV concentrations and precisely detects three specific proteins on ovarian cancer EVs simultaneously (CD63, CD24, and CA125). Using the ovarian cancer cell line HO8910, the sensor demonstrated a detection limit of 1.4 × 104 particles per mL and a wide linear range of 3.4 × 104 particles per mL to 3.4 × 108 particles per mL. It also effectively discriminated between serum samples from healthy individuals and ovarian cancer patients at different stages. Additionally, machine learning was applied to analyze detection data, resulting in a diagnostic model with a 97.78% prediction accuracy. This highlights the sensor's potential in revolutionizing early cancer detection and establishing new diagnostic models.

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来源期刊
Journal of Materials Chemistry B
Journal of Materials Chemistry B MATERIALS SCIENCE, BIOMATERIALS-
CiteScore
11.50
自引率
4.30%
发文量
866
期刊介绍: Journal of Materials Chemistry A, B & C cover high quality studies across all fields of materials chemistry. The journals focus on those theoretical or experimental studies that report new understanding, applications, properties and synthesis of materials. Journal of Materials Chemistry A, B & C are separated by the intended application of the material studied. Broadly, applications in energy and sustainability are of interest to Journal of Materials Chemistry A, applications in biology and medicine are of interest to Journal of Materials Chemistry B, and applications in optical, magnetic and electronic devices are of interest to Journal of Materials Chemistry C.Journal of Materials Chemistry B is a Transformative Journal and Plan S compliant. Example topic areas within the scope of Journal of Materials Chemistry B are listed below. This list is neither exhaustive nor exclusive: Antifouling coatings Biocompatible materials Bioelectronics Bioimaging Biomimetics Biomineralisation Bionics Biosensors Diagnostics Drug delivery Gene delivery Immunobiology Nanomedicine Regenerative medicine & Tissue engineering Scaffolds Soft robotics Stem cells Therapeutic devices
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