Magnetic 3D macroporous MOF oriented urinary exosome metabolomics for early diagnosis of bladder cancer.

IF 10.6 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Yiqing Cao, Jianan Feng, Qiao Zhang, Chunhui Deng, Chen Yang, Yan Li
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Abstract

Bladder cancer (BCa) exhibits the escalating incidence and mortality due to the untimely and inaccurate early diagnosis. Urinary exosome metabolites, carrying critical tumor cell information and directly related to bladder, emerge as promising non-invasive diagnostic biomarkers of BCa. Herein, the magnetic 3D ordered macroporous zeolitic imidazolate framework-8 (magMZIF-8) is synthesized and used for efficient urinary exosome isolation. Notably, beyond retaining the single crystals and micropores of conventional ZIF-8, MZIF-8 is further enhanced with highly oriented and ordered macropores (150 nm) and the large specific surface area (973 m2·g-1), which could enable the high purity and yield separation of exosomes via leveraging the combination of size exclusion, affinity, and electrostatic interactions between magMZIF-8 and the surfaces of exosome. Furthermore, the magnetic and hydrophilic properties of magMZIF-8 will further simplify the process and enhance the efficiency of separation. After conditional optimization, a 50 mL of urine is sufficient for exosome metabolomics analysis, and the time for isolating exosomes from 42 urine samples was 2 hours only. Incorporating machine learning algorithms with LC-MS/MS analysis of the metabolic patterns obtained from isolated exosomes, early-stage BCa patients were differentiated from healthy controls, with area under the curve (AUC) value of 0.844-0.9970 in the training set and 0.875-1.00 in the test set, signifying its potential as a reliable diagnostic tool. This study offers a promising approach for the non-invasive and efficient diagnosis of BCa on a large scale via exosome metabolomics.

面向尿液外泌体代谢组学的磁性三维大孔 MOF,用于膀胱癌的早期诊断。
由于早期诊断不及时和不准确,膀胱癌(BCa)的发病率和死亡率不断上升。尿液外泌体代谢物携带重要的肿瘤细胞信息,并与膀胱直接相关,有望成为膀胱癌的非侵入性诊断生物标志物。本文合成了磁性三维有序大孔沸石咪唑啉框架-8(magMZIF-8),并将其用于高效分离尿液外泌体。值得注意的是,除了保留传统ZIF-8的单晶和微孔外,MZIF-8还进一步增强了高度定向有序的大孔(150 nm)和大比表面积(973 m2-g-1),这可以通过利用magMZIF-8与外泌体表面之间的尺寸排阻、亲和力和静电相互作用的组合,实现高纯度和高产量的外泌体分离。此外,magMZIF-8 的磁性和亲水性将进一步简化分离过程并提高分离效率。经过条件优化后,50 毫升尿液足以进行外泌体代谢组学分析,而从 42 份尿液样本中分离外泌体的时间仅为 2 小时。结合机器学习算法和 LC-MS/MS 分析从分离的外泌体中获得的代谢模式,可将早期 BCa 患者与健康对照组区分开来,训练集的曲线下面积(AUC)值为 0.844-0.9970,测试集的曲线下面积(AUC)值为 0.875-1.00,这表明它有望成为一种可靠的诊断工具。这项研究为通过外泌体代谢组学大规模无创、高效地诊断 BCa 提供了一种可行的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Nanobiotechnology
Journal of Nanobiotechnology BIOTECHNOLOGY & APPLIED MICROBIOLOGY-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
13.90
自引率
4.90%
发文量
493
审稿时长
16 weeks
期刊介绍: Journal of Nanobiotechnology is an open access peer-reviewed journal communicating scientific and technological advances in the fields of medicine and biology, with an emphasis in their interface with nanoscale sciences. The journal provides biomedical scientists and the international biotechnology business community with the latest developments in the growing field of Nanobiotechnology.
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