Issue 17, 2016

Multi-dimensional on-particle detection technology for multi-category disease classification

Abstract

A serum peptide profile contains important bio-information, which may help disease classification. The motivation of this study is to take advantage of porous silicon microparticles with multiple surface chemistries to reduce the loss of peptide information and simplify the sample pretreatment. We developed a multi-dimensional on-particle MALDI-TOF technology to acquire high fidelity and cross-reactive molecular fingerprints for mining disease information. The peptide fingerprint of serum samples from colorectal cancer patients, liver cancer patients and healthy volunteers were measured with this technology. The featured mass spectral peaks can successfully discriminate and predict the multi-category disease. Data visualization for future clinical application was also demonstrated.

Graphical abstract: Multi-dimensional on-particle detection technology for multi-category disease classification

Supplementary files

Article information

Article type
Communication
Submitted
13 Nov 2015
Accepted
18 Jan 2016
First published
18 Jan 2016

Chem. Commun., 2016,52, 3490-3493

Author version available

Multi-dimensional on-particle detection technology for multi-category disease classification

J. Tan, X. Chen, G. Du, Q. Luo, X. Li, Y. Liu, X. Liang and J. Wu, Chem. Commun., 2016, 52, 3490 DOI: 10.1039/C5CC09419D

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