| Literature DB >> 27480133 |
Syed Ghulam Musharraf1,2, Amna Jabbar Siddiqui2, Tahir Shamsi1,3, M Iqbal Choudhary1,2,4, Atta-Ur Rahman1,2.
Abstract
Acute leukemia is a critical neoplasm of white blood cells. In order to differentiate between the metabolic alterations associated with two subtypes of acute leukemia, acute lymphoblastic leukemia (ALL) and acute myeloid leukemia (AML), we investigated the serum of ALL and AML patients and compared with two controls (healthy and aplastic anemia) using (1)H NMR (nuclear magnetic resonance) spectroscopy. Thirty-seven putative metabolites were identified using Carr-Purcell-Meiboom-Gill (CPMG) sequence. The use of PLS-DA and OPLS-DA models gave results with 84.38% and 90.63% classification rate, respectively. The metabolites responsible for classification are mainly lipids, lactate and glucose. Compared with controls, ALL and AML patients showed serum metabonomic differences involving aberrant metabolism pathways including glycolysis, TCA cycle, lipoprotein changes, choline and fatty acid metabolisms.Entities:
Mesh:
Year: 2016 PMID: 27480133 PMCID: PMC4969755 DOI: 10.1038/srep30693
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Stacked view of 1H NMR spectra of blood serum from ALL (green), AML (blue), APA (red) and healthy control (yellow).
(A) standard 1D, (B) T2-edited (CPMG), (C) diffusion edited. The low field region (δ 6–9) is vertically projected 10 times relative to the rest of the spectrum.
Figure 2Assignments of the 1H-NMR signals of a representative 500 MHz 1D-CPMG 1H-NMR average spectrum of a healthy serum sample measured at 310 K.
A, full spectrum (δ 5.50–0.5 ppm) and magnification of aromatic region (δ 9.00–6.50 ppm). Peak assignments: 0, unidentified; 1, cholesterol; 2, lipids (–CH3) (mainly LDL/VLDL); 3, leucine; 4, valine; 5, 3-hydroxybutyrate; 6, lipids (CH2)n (mainlyLDL/VLDL); 7, lactate; 8, alanine; 9, adipicacid; 10, arginine; 11, lysine; 12, acetate; 13, lipids (CH2–C=C); 14, acetyl signals from glycoproteins; 15, glutamine; 16, lipids (CH2–CO); 17, citrate; 18, lipids (CH=CH–CH2–CH=CH–); 19, Albumin lysyl; 20, creatine; 21, choline; 22, Trimethylamine N-oxide; 23, Proline; 24, glucose; 25, glycerol; 26, Myo-inositol; 27, creatinine; 28, threonine; 29, β-glucose; 30, glycerol of lipids; 31, α-glucose; 32, lipids (–CH=CH–); 33, tyrosine; 34, phenylalanine; 35, histidine; 36, 1-methylhistidine; 37, formate.
Figure 3Scores scatter plots (A) PCA, (B) PLS-DA and (C) OPLS-DA of 1H CPMG NMR spectra of serum from ALL (green), AML (blue), APA (red) and healthy control (yellow).
Average prediction results obtained by a default method of 7-fold internal cross validation of the software of PLS-DA and OPLS-DA models based on standard 1D, CPMG and diffusion edited spectra of serum from ALL, AML, APA and healthy control.
| R2 | Q2 | Sensitivity | Specificity | Classification rate | |
|---|---|---|---|---|---|
| PLS-DA model | |||||
| Standard 1D | 0.254 | 0.11 | 77.08 | 100 | 82.81 |
| CPMG | 0.291 | 0.086 | 79.17 | 100 | 84.38 |
| Diffusion edited | 0.234 | 0.099 | 66.67 | 32 | 75 |
| OPLS-DA model | |||||
| Standard 1D | 0.344 | 0.306 | 64.58 | 93.75 | 71.88 |
| CPMG | 0.62 | 0.492 | 87.5 | 100 | 90.63 |
| Diffusion edited | 0.416 | 0.308 | 67.71 | 100 | 75.78 |
Figure 4Permutation plots for the OPLS-DA model showing R2 (green) and Q2 (blue) values.
Figure 5OPLS-DA loadings plot colored as a function of VIP.
Assignment of main signals is indicated (unassigned signals with high VIP are marked with an asterisk).
Figure 6Average changes relative to healthy control of main metabolites contributing to the discrimination between serum of cancer patients and of healthy subjects.