| Literature DB >> 28493537 |
Deng-Chyang Wu1,2, Kai-Yi Wang3,4, Sophie S W Wang1,2, Ching-Min Huang5, Yi-Wei Lee5, Michael Isaac Chen3, Szu-An Chuang6, Shu-Hua Chen6, Ying-Wei Lu7, Chun-Cheng Lin7, Ka-Wo Lee8, Wen-Hung Hsu1, Kun-Pin Wu5, Yu-Ju Chen3,4,6.
Abstract
We reported an integrated platform to explore serum protein variant pattern in cancer and its utility as a new class of biomarker panel for diagnosis. On the model study of serum amyloid A (SAA), we employed nanoprobe-based affinity mass spectrometry for enrichment, identification and quantitation of SAA variants from serum of 105 gastric cancer patients in comparison with 54 gastritis patients, 54 controls, and 120 patients from other cancer. The result revealed surprisingly heterogeneous and most comprehensive SAA bar code to date, which comprises 24 SAA variants including SAA1- and SAA2-encoded products, polymorphic isoforms, N-terminal-truncated forms, and three novel SAA oxidized isotypes, in which the variant-specific peptide sequence were also confirmed by LC-MS/MS. A diagnostic model was developed for dimension reduction and computational classification of the 24 SAA-variant bar code, providing good discrimination (AUC = 0.85 ± 3.2E-3) for differentiating gastric cancer group from gastritis and normal groups (sensitivity, 0.76; specificity, 0.81) and was validated with external validation cohort (sensitivity, 0.71; specificity, 0.74). Our platform not only shed light on the occurrence and modification extent of under-represented serum protein variants in cancer, but also suggested a new concept of diagnostic platform by serum protein variant profile.Entities:
Keywords: Diagnosis; Gastric cancer; Mass spectrometry; Post-translational modifications; Serum amyloid A variants
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Year: 2017 PMID: 28493537 DOI: 10.1002/pmic.201600356
Source DB: PubMed Journal: Proteomics ISSN: 1615-9853 Impact factor: 3.984