Diagnosis of T-cell-mediated kidney rejection by biopsy-based proteomic biomarkers and machine learning

被引:4
作者
Fang, Fei [1 ]
Liu, Peng [2 ]
Song, Lei [1 ]
Wagner, Patrick [3 ]
Bartlett, David [3 ]
Ma, Liane [3 ]
Li, Xue [4 ]
Rahimian, M. Amin [5 ]
Tseng, George [2 ]
Randhawa, Parmjeet [6 ]
Xiao, Kunhong [1 ,3 ,7 ,8 ]
机构
[1] Univ Pittsburgh, Sch Med, Dept Pharmacol & Chem Biol, Pittsburgh, PA 15213 USA
[2] Univ Pittsburgh, Dept Biostat, Pittsburgh, PA USA
[3] Allegheny Hlth Network Canc Inst, Pittsburgh, PA 15224 USA
[4] Michigan State Univ, Dept Chem, E Lansing, MI USA
[5] Univ Pittsburgh, Dept Ind Engn, Pittsburgh, PA USA
[6] Univ Pittsburgh, Thomas E Starzl Transplantat Inst, Dept Pathol, Pittsburgh, PA USA
[7] Allegheny Hlth Network Canc Inst, Ctr Prote & Artificial Intelligence, Pittsburgh, PA 15224 USA
[8] Allegheny Hlth Network Canc Inst, Ctr Clin Mass Spectrometry, Pittsburgh, PA 15224 USA
来源
FRONTIERS IN IMMUNOLOGY | 2023年 / 14卷
基金
美国国家卫生研究院;
关键词
biomarker; quantitative proteomics; machine learning; FFPE; kidney transplantation; diagnosis; mass spectrometry; OUT CROSS-VALIDATION; PLASMA-PROTEOME; TRANSPLANTS; EXPRESSION;
D O I
10.3389/fimmu.2023.1090373
中图分类号
R392 [医学免疫学]; Q939.91 [免疫学];
学科分类号
100102 ;
摘要
BackgroundBiopsy-based diagnosis is essential for maintaining kidney allograft longevity by ensuring prompt treatment for graft complications. Although histologic assessment remains the gold standard, it carries significant limitations such as subjective interpretation, suboptimal reproducibility, and imprecise quantitation of disease burden. It is hoped that molecular diagnostics could enhance the efficiency, accuracy, and reproducibility of traditional histologic methods. MethodsQuantitative label-free mass spectrometry analysis was performed on a set of formalin-fixed, paraffin-embedded (FFPE) biopsies from kidney transplant patients, including five samples each with diagnosis of T-cell-mediated rejection (TCMR), polyomavirus BK nephropathy (BKPyVN), and stable (STA) kidney function control tissue. Using the differential protein expression result as a classifier, three different machine learning algorithms were tested to build a molecular diagnostic model for TCMR. ResultsThe label-free proteomics method yielded 800-1350 proteins that could be quantified with high confidence per sample by single-shot measurements. Among these candidate proteins, 329 and 467 proteins were defined as differentially expressed proteins (DEPs) for TCMR in comparison with STA and BKPyVN, respectively. Comparing the FFPE quantitative proteomics data set obtained in this study using label-free method with a data set we previously reported using isobaric labeling technology, a classifier pool comprised of features from DEPs commonly quantified in both data sets, was generated for TCMR prediction. Leave-one-out cross-validation result demonstrated that the random forest (RF)-based model achieved the best predictive power. In a follow-up blind test using an independent sample set, the RF-based model yields 80% accuracy for TCMR and 100% for STA. When applying the established RF-based model to two public transcriptome datasets, 78.1%-82.9% sensitivity and 58.7%-64.4% specificity was achieved respectively. ConclusionsThis proof-of-principle study demonstrates the clinical feasibility of proteomics profiling for FFPE biopsies using an accurate, efficient, and cost-effective platform integrated of quantitative label-free mass spectrometry analysis with a machine learning-based diagnostic model. It costs less than 10 dollars per test.
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页数:12
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