Chinese Journal of Antituberculosis ›› 2026, Vol. 48 ›› Issue (3): 320-328.doi: 10.19982/j.issn.1000-6621.20250380
• Original Articles • Previous Articles Next Articles
Zhang Yujie1,2, Zhou Jie2, Wang Yun1(
), Fan Lin1,2(
)
Received:2025-09-19
Online:2026-03-10
Published:2026-03-06
Contact:
Wang Yun,Fan Lin
E-mail:441334899@qq.com;fanlinsj@163.com
Supported by:CLC Number:
Zhang Yujie, Zhou Jie, Wang Yun, Fan Lin. Evaluation of diagnostic value of novel blood-derived biomarkers for active pulmonary tuberculosis[J]. Chinese Journal of Antituberculosis, 2026, 48(3): 320-328. doi: 10.19982/j.issn.1000-6621.20250380
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URL: https://www.zgflzz.cn/EN/10.19982/j.issn.1000-6621.20250380
| 基因(人) | 前引物 | 后引物 |
|---|---|---|
| β-actin | 5'-CCTGGACTTCGAGCAAGAGATGG-3' | 5'-CAGGAAGGAAGGCTGGAAGAGTG-3' |
| ETV5 | 5'-TCAGCAAGTCCCTTTTATGGTC-3' | 5'-GCTCTTCAGAATCGTGAGCCA-3' |
| CDKL3 | 5'-TTCATCACGAAAACCTGGTCAA-3' | 5'-AAGTCGCTTACTCTCTAGTCCAT-3' |
| AJUBA | 5'-ATGGGGAAGTCCTATCATCCAG-3' | 5'-TGGTAGTCGGTGACACAGTAT-3' |
| P4HA2 | 5'-CAAACTGGTGAAGCGGCTAAA-3' | 5'-GCACAGAGAGGTTGGCGATA-3' |
| CFB | 5'-GCGATCTGTGACAACGGAG-3' | 5'-GCTGTCTTCAAGGCGGTACT-3' |
| LIPT2 | 5'-CTGACGCCCGAGGAAACTG-3' | 5'-GTGGGATGTGATGTGCCTTC-3' |
| TUBB3 | 5'-GGCCAAGGGTCACTACACG-3' | 5'-GCAGTCGCAGTTTTCACACTC-3' |
| BEND7 | 5'-CTGGATCAAACTGCTGTACTTG-3' | 5'-GGGAAATTGGAGGTTGTTGTCTG-3' |
| DDAH1 | 5'-CAAAAGGACAAATCAACGAGGT-3' | 5'-TGTGCAGATTCACTAGACCCAA-3' |
| KLHL23 | 5'-ATGCCACGGAAAGGATATACCT-3' | 5'-CAACACCTGAGGACCAAACTAC-3' |
| MOK | 5'-CCGGAGTGTCTCCTCACTGAT-3' | 5'-CAGACTGGCGATCTCGTAGAA-3' |
| DOCK6 | 5'-GCTTCTGGAGACGAGAGGTC-3' | 5'-AGGTTCCTCAGGTCGAAGATG-3' |
| FKBP9 | 5'-CAGGTGTCTGATTTTGTGAGGT-3' | 5'-TTCATGCGATTGTGACTCGAA-3' |
| TG | 5'-AGGGAGAGTTTATGCCTGTCC-3' | 5'-CAATACCCAGATACCTCAGGGA-3' |
| ERRFI1 | 5'-GACCCACCGAAGATTAAGAAGG-3' | 5'-GGTCTAGGAGGTATGGGAACTCT-3' |
| TRIM22 | 5'CTGTCCTGTGTGTCAGACCAG-3' | 5'TGTGGGCTCATCTTGACCTCT-3' |
| 基因 | 健康验证组 (58例) | 结核验证组 | Z值 | P值 | |
|---|---|---|---|---|---|
| 病原学阳性(35例) | 病原学阴性(34例) | ||||
| ETV5 | 0.87(0.48,2.65) | 0.18(0.14,0.29) | 0.11(0.09,0.47) | 4.543 | 0.077 |
| CDKL3 | 0.94(0.50,3.09) | 0.22(0.17,0.38) | 0.36(0.13,0.70) | 3.938 | 0.008 |
| AJUBA | 0.40(0.13,1.53) | 0.22(0.14,0.35) | 0.44(0.29,0.90) | 0.379 | 0.557 |
| P4HA2 | 0.05(0.02,0.09) | 0.02(0.02,0.03) | 0.04(0.03,0.06) | 3.009 | 0.002 |
| CFB | 0.86(0.35,5.05) | 0.29(0.09,0.45) | 0.37(0.11,0.56) | 2.857 | 0.323 |
| LIPT2 | 0.37(0.15,1.03) | 0.39(0.32,0.57) | 0.40(0.29,0.77) | -0.729 | 0.647 |
| TUBB3 | 0.44(0.18,1.42) | 0.34(0.18,0.94) | 0.45(0.20,1.69) | 0.076 | 0.543 |
| DDAH1 | 0.30(0.09,1.68) | 0.07(0.05,0.10) | 0.08(0.05,0.13) | 3.304 | 0.327 |
| KLHL23 | 1.69(0.79,3.96) | 0.02(0.01,0.04) | 0.03(0.00,0.07) | 6.044 | <0.001 |
| BEND7 | 1.30(0.72,3.72) | 6.11(3.86,17.81) | 4.36(2.68,12.57) | -4.007 | 0.911 |
| MOK | 0.55(0.21,1.53) | 0.31(0.12,0.45) | 0.45(0.16,0.63) | 1.003 | 0.752 |
| DOCK6 | 0.19(0.10,0.35) | 0.07(0.05,0.13) | 0.08(0.06,0.12) | 3.498 | 0.044 |
| FKBP9 | 0.20(0.11,0.49) | 6.41(4.05,12.32) | 5.70(2.54,7.40) | -4.425 | 0.007 |
| TG | 0.27(0.15,0.51) | 0.23(0.13,0.36) | 0.26(0.15,0.40) | 1.065 | 0.248 |
| ERRGI1 | 0.44(0.17,1.37) | 5.70(3.05,13.46) | 5.57(2.95,7.38) | -6.044 | 0.002 |
| TRIM22 | 14.53(12.40,15.45) | 42.32(29.75,72.16) | 43.69(32.85,64.09) | -5.030 | <0.001 |
| 指标 | 最佳界值 | 敏感度(%) | 特异度(%) | AUC值 |
|---|---|---|---|---|
| TRIM22 | ||||
| 肺结核患者 | 22.60 | 80.00 | 91.38 | 0.956 |
| 病原学阴性 | 32.33 | 98.21 | 93.79 | 0.896 |
| 病原学阳性 | 32.63 | 97.21 | 93.79 | 0.958 |
| FKBP9 | ||||
| 肺结核患者 | 0.201 | 98.44 | 91.67 | 0.769 |
| 病原学阴性 | 0.206 | 95.83 | 86.02 | 0.731 |
| 病原学阳性 | 3.754 | 82.35 | 91.38 | 0.894 |
| ERRFI1 | ||||
| 肺结核患者 | 0.095 | 94.29 | 97.76 | 0.819 |
| 病原学阴性 | 1.184 | 85.11 | 75.86 | 0.842 |
| 病原学阳性 | 3.542 | 70.59 | 94.83 | 0.838 |
| 联合检测 | ||||
| 肺结核患者 | 0.545 | 88.24 | 76.11 | 0.796 |
| 病原学阴性 | 0.685 | 98.53 | 97.23 | 0.848 |
| 病原学阳性 | 0.005 | 80.39 | 98.23 | 0.885 |
| 基因 | Non-TB组 | TB(MTB阳性)组 | TB(MTB阴性)组 | Z值 | P值a | Z值 | P值b | Z值 | P值c |
|---|---|---|---|---|---|---|---|---|---|
| TRIM22 | 42.32(30.84,60.16) | 42.33(29.76,70.86) | 43.15(32.85,88.45) | 2.279 | 0.651 | 4.507 | 0.528 | 1.977 | 0.778 |
| FKBP9 | 8.85(3.46,12.42) | 5.77(3.84,12.15) | 5.70(2.54,7.40) | 1.826 | 0.349 | 3.362 | 0.058 | 1.841 | 0.085 |
| ERRFI1 | 0.86(0.23,4.46) | 6.41(4.05,12.32) | 5.32(2.89,7.47) | 1.784 | 0.001 | 2.152 | 0.005 | 1.672 | 0.095 |
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