| Literature DB >> 27557501 |
Ruschca Jacobs1, Stephanus Malherbe1, Andre G Loxton1, Kim Stanley1, Gian van der Spuy1, Gerhard Walzl1, Novel N Chegou1.
Abstract
There is an urgent need for new tools for the rapid diagnosis of tuberculosis disease. We evaluated the potentials of 74 host markers as biomarkers for the immunological diagnosis of tuberculosis and monitoring of treatment response. Fifty-five individuals that presented with signs and symptoms requiring investigation for tuberculosis disease were prospectively recruited prior to clinical diagnosis, at a health centre in Cape Town, South Africa. Patients were later classified as having tuberculosis disease or other respiratory diseases (ORD) using a combination of clinical, radiological and laboratory findings. Out of 74 host markers that were evaluated in plasma samples from study participants using a multiplex platform, 18 showed potential as tuberculosis diagnostic candidates with the most promising being NCAM, CRP, SAP, IP-10, ferritin, TPA, I-309, and MIG, which diagnosed tuberculosis disease individually, with area under the ROC curve ≥0.80. Six-marker biosignatures containing NCAM diagnosed tuberculosis disease with a sensitivity of 100% (95%CI, 86.3-100%) and specificity of 89.3% (95%CI, 67.6-97.3%) irrespective of HIV status, and 100% accuracy in the absence of HIV infection. Furthermore, the concentrations of 11 of these proteins changed with treatment, thereby indicating that they may be useful in monitoring of the response to tuberculosis treatment. Our findings have potential to be translated into a point-of-care screening test for tuberculosis, after future validation studies.Entities:
Keywords: Immune response; Immunity; Immunology and Microbiology Section; acute phase proteins; biomarker; diagnosis; neural cell adhesion molecule (NCAM); tuberculosis
Mesh:
Substances:
Year: 2016 PMID: 27557501 PMCID: PMC5295374 DOI: 10.18632/oncotarget.11420
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Clinical and demographic characteristics of study participants
| Number of participants | All ( | TB ( | ORD ( |
|---|---|---|---|
| Males, | 22 (40) | 7 (32) | 15 (45) |
| Mean age, (Years)±SD | 35.8 ± 10.2 | 38.8 ±10.1 | 33.9 ± 9.9 |
| HIV Infected, n(%) | 14(25) | 4(18) | 10(30) |
| Quantiferon results | |||
| Positive, | 34 (64) | 15 (75) | 19 (58) |
| Negative, | 18 (34) | 4 (20) | 14 (42) |
| Indeterminate, | 1 (2) | 1 (5) | 0 (0) |
All the 22 TB patients included in the study were culture positive
Abbreviations: TB= pulmonary tuberculosis, SD=standard deviation
Median levels (and inter-quartile ranges in parenthesis) of host biomarkers detected in baseline plasma samples from pulmonary TB patients (n = 22) and individuals with other respiratory diseases (n = 33) and their diagnostic accuracies for TB disease
| Marker | ORD ( | TB Disease ( | AUC (95% CI) | Cut-off value | Sensitivity % (95% CI) | Specificity % (95% CI) | |
|---|---|---|---|---|---|---|---|
| 3297(2569-4504) | 4235 (2766-8073) | 0.044 | 0.66 (0.51-0.81) | > 3466 | 68 (45-86) | 64 (45-80) | |
| 803100 (624200-968800) | 625700 (519000-714300) | 0.01 | 0.70 (0.56-0.84) | <744162 | 91 (71-99) | 61 (42-77) | |
| 431400 (334100-548700) | 274300 (242800-351500) | 0.0014 | 0.76 (0.62-0.89) | < 318930 | 73 (50-89) | 82 (65-93) | |
| 5774 (3824-8838) | 3791 (1683-6187) | 0.017 | 0.69 (0.55-0.84) | < 3467 | 45 (24-68) | 91 (76-98) | |
| 114800 (70110-176600) | 151600 (95100-291100) | 0.100 | 0.63 (0.48-0.79) | > 212263 | 32 (14-55) | 97 (84-100) | |
| 729100 (557000-795100) | 875400 (715200-980300) | 0.0072 | 0.72 (0.57-0.86) | > 808359 | 68 (45-86) | 82 (65-93) | |
| 2019 (440-6330) | 52980 (10020-137400) | 0.89 (0.79 −1.00) | > 9081 | 82 (60-95) | 90 (76-98) | ||
| 62850 (41840-120100) | 161000 (116800-355300) | 0.78 (0.64 −0.92) | > 93785 | 91 (71-99) | 67 (48-82) | ||
| 19.2(9.8-41.7) | 49.24 (25.10-125.5) | 0.002 | 0.75 (0.62 −0.88) | > 21.06 | 91 (71-99) | 55 (36-72) | |
| 108000 (73120-130200) | 144100 (108500-171800) | 0.0022 | 0.75 (0.61-0.89) | > 136956 | 59 (36-79) | 85 (68-95) | |
| 1.24(1.1-1.4) | 2.25 (1.4-3.5) | 0.0002 | 0.80 (0.67-0.93) | > 1.945 | 68 (45-86) | 90 (73-98) | |
| 5.78(0.39-49) | 31.06 (8.81-156) | 0.02 | 0.69 (0.54 −0.83) | > 3.910 | 91 (70-99) | 48 (31-66) | |
| 88.77 (21.75-211.5) | 164.9 (70.79-251.9) | 0.100 | 0.63 (0.48-0.78) | > 131.8 | 68 (45-86) | 61 (42-77) | |
| 444 (258-876) | 1469 (878-3865) | P<0.0001 | 0.78 (0.64 −0.91) | > 746.6 | 86 (65-97) | 73 (54-87) | |
| 628.0 (87.49-1253) | 1106 (519.1-2042) | 0.022 | 0.68 (0.54-0.83) | > 276.5 | 95 (77-100) | 36 (20-55) | |
| 453.9 (300.5-567.3) | 600.7 (346.7-1028) | 0.062 | 0.65 (0.50-0.80) | > 552.8 | 59 (36-79) | 76 (58-89) | |
| 312.4 (87.21-1028) | 3076 (592.2-13830) | 0.81 (0.69-0.94) | > 1700 | 68 (45-86) | 88 (72-97) | ||
| 92.5 (53.6-152) | 208 (90-369) | 0.012 | 0.70 (0.55-0.85) | > 220.9 | 50 (28-72) | 91 (76-98) | |
| 592100 (430200-684200) | 350800 (306800-421000) | 0.88 (0.78-0.98) | < 477229 | 91 (71-99) | 73 (54-87) | ||
| 7520 (6749-8370) | 8702(8185-9888) | 0.0009 | 0.77 (0.64-0.90) | > 8101 | 86 (65-97) | 67 (48-82) | |
| 10790 (8852-12870) | 12360 (10360-15270) | 0.0502 | 0.66 (0.50-0.81) | > 11423 | 68 (45-86) | 64 (45-80) | |
| 202(163-549) | 441 (263-796) | 0.030 | 0.67 (0.53 −0.82) | > 265.7 | 77 (55-92) | 58 (39-75) | |
| 5972(1324-12570) | 9837 (6078-43000) | 0.0081 | 0.71 (0.58 −0.85) | > 8626 | 68 (45-86) | 70 (51-84) | |
| 21850 (16980-24670) | 30660 (23820-45050) | 0.85 (0.72-0.98) | > 25958 | 68 (45-86) | 85 (68-95) | ||
| 5.3 (1.8-8.0) | 8.03 (4.52-13.22) | 0.065 | 0.65 (0.50-0.81) | >6.7 | 67 (43-85) | 68 (49-83) | |
| 7.4(4.1-13.4) | 15.9 (11.8-24.6) | 0.0024 | 0.74 (0.61-0.88) | > 10.85 | 82 (60-95) | 73 (54-87) | |
| 5895 (5187-6507) | 7199 (6536-7702) | 0.0002 | 0.80 (0.68-0.92) | > 6307 | 86 (65-97) | 76 (58-89) | |
| 544700 (398000-638500) | 293700 (212700-397500) | 0.0005 | 0.78 (0.65-0.91) | < 416242 | 82 (60-95) | 76 (58-89) | |
| 147 (0-546) | 289 (134.3-877) | 0.081 | 0.64 (0.50-0.79) | > 175.6 | 73 (50-89) | 55 (36-72) |
Only analytes showing significant differences or trends between groups with the Mann-Whitney U test are shown. Optimal cut-off values and associated sensitivity and specificity were determined based on the Youden's Index. The concentrations of CRP, SAP, SAA, antithrombin III, ADAMTS-13, p-selectin, GDF-15, Apo A-1, transthyretin, CFH, sFAS, lipocalin-2, MIP-4 and CC4 are in ng/ml. The concentrations of all the other analytes are in pg/ml.
Figure 1Concentrations of host markers detected in plasma samples from TB patients (n = 22) and individuals with other respiratory diseases (n = 33) and receiver operator characteristics curves showing the accuracies of these markers in the diagnosis of TB disease
Representative plots are shown for CRP, SAP, ferritin, IP-10, NCAM and MIG. Error bars in the scatter dot plots represent the median with interquartile range.
Figure 2Accuracy of multi-marker models in the diagnosis of TB disease
Receiver operator characteristics (ROC) curve showing the accuracy of the most accurate six-marker biosignature (NCAM, SAP, IL-1β, sCD40L, IL-13 and Apo A-1) in the diagnosis of TB disease in all study participants, regardless of HIV infection status A., frequency of analytes in the top 13 general discriminant analysis (GDA) models that most accurately classified study participants as TB disease or ORD irrespective of HIV status B., ROC curve showing the accuracy of the most accurate six-marker biosignature (NCAM+A2M+IL-22+ferritin+ myoglobulin+IL-12(p40) or NCAM+A2M+IL-22+ferritin+TNF-β+MIP-4) in the diagnosis of TB disease in HIV negative study participants C., and frequency of analytes in the top 34 GDA models that most accurately classified study participants as TB disease or ORD in the absence of HIV infection D.. The bar graphs B. and D. indicate the frequency of analytes in the most accurate GDA models.
Accuracies of plasma protein biosignatures in the diagnosis of TB disease
| Biosignature | Resubstitution Classification matrix | Leave-one-out cross validation | |||||||
|---|---|---|---|---|---|---|---|---|---|
| Sensitivity % (95% CI) | Specificity % (95%, CI) | PPV % (95% CI) | NPV % (95% CI) | Sensitivity % (95% CI) | Specificity % (95% CI) | PPV % (95% CI) | NPV % (95% CI) | ||
| NCAM+ SAP+ ferritin+ CFH+ECM-1 | 95.2 (81.0-99.9) | 92.9 (70.8-98.9) | 90.9 (69.4-98.4) | 96.3 (79.1-99.8) | 95.2 (81-99.9) | 89.3 (66.4-97.2) | 87 (65.3-96.6) | 96.2 (78.4-99.8) | |
| NCAM+ SAP+IL-1β+sCD40L +IL-13+Apo A-1 | 100 (86.3-100) | 89.3 (67.6-97.3) | 87.5 (66.5-96.7) | 100 (83.4-100) | 100 (86.3-100) | 89.3 (67.6-97.3) | 87.5 (66.5-96.7) | 100 (83.4-100) | |
| NCAM+A2M+IL22+ ferritin+ myoglobulin+IL-12(p40) | 100 (78.1-100) | 100 (79.1-100) | 100 (78.1-100) | 100 (79.1-100) | 100 (78.1-100) | 100 (79.1-100) | 100 (78.1-100) | 100 (79.1-100) | |
| NCAM+A2M+IL22+ ferritin+ TNF-β+MIP-4 | 100 (78.1-100) | 100 (79.1-100) | 100 (78.1-100) | 100 (79.1-100) | 100 (78.1-100) | 100 (79.1-100) | 100 (78.1-100) | 100 (79.1-100) | |
Only the top two biosignatures generated for the diagnosis of TB disease, regardless of HIV infection status and in the HIV uninfected individuals only, are shown. The importance of the different analytes in biosignatures for the diagnosis of TB disease is shown in Figure 2.
Figure 3Before (baseline) and after treatment (month 6) concentrations of host markers in plasma samples from TB patients
Plasma was collected from patients at recruitment, prior to the initiation of anti-TB therapy and then at the end of standard TB treatment (month 6). Error bars indicate the Least Squared means with 95% Confidence Intervals.