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PUBMED FOR HANDHELDS

Journal Abstract Search


168 related items for PubMed ID: 36802838

  • 1. A nomogram for predicting immunoglobulin-resistant Kawasaki disease in children.
    Pan Y, Fan Q.
    J Int Med Res; 2023 Feb; 51(2):3000605221139704. PubMed ID: 36802838
    [Abstract] [Full Text] [Related]

  • 2. Development of an immunoinflammatory indicator-related dynamic nomogram based on machine learning for the prediction of intravenous immunoglobulin-resistant Kawasaki disease patients.
    Wang Y, Cao Y, Li Y, Zhu F, Yuan M, Xu J, Ma X, Li J.
    Int Immunopharmacol; 2024 Jun 15; 134():112194. PubMed ID: 38703570
    [Abstract] [Full Text] [Related]

  • 3. A practical nomogram for predicting coronary thrombosis for Kawasaki disease patients with medium or large coronary artery aneurysm.
    Peng Y, Cheng Z, Yi Q.
    Clin Exp Med; 2023 Aug 15; 23(4):1317-1324. PubMed ID: 36151486
    [Abstract] [Full Text] [Related]

  • 4. Nomogram to predict risk of resistance to intravenous immunoglobulin in children hospitalized with Kawasaki disease in Eastern China.
    Huang H, Jiang J, Shi X, Qin J, Dong J, Xu L, Huang C, Liu Y, Zheng Y, Hou M, Shen Q, Zeng B, Qian G, Yang F, Lv H.
    Ann Med; 2022 Dec 15; 54(1):442-453. PubMed ID: 35099338
    [Abstract] [Full Text] [Related]

  • 5. Serum amyloid A as a biomarker for immunoglobulin resistance in Kawasaki disease.
    Huang XB, Zhao S, Liu ZY, Xu YY, Deng F.
    Ann Med; 2023 Dec 15; 55(2):2264315. PubMed ID: 37870383
    [Abstract] [Full Text] [Related]

  • 6. The expression of autophagy markers in IVIG-resistant Kawasaki disease and the establishment of prediction model.
    Zhou Y, Wu Y, Yuan C, Yin W, Wang B, Ding Y.
    BMC Pediatr; 2023 Dec 19; 23(1):642. PubMed ID: 38114939
    [Abstract] [Full Text] [Related]

  • 7. Verification of Current Risk Scores for Kawasaki Disease in Korean Children.
    Shin J, Lee H, Eun L.
    J Korean Med Sci; 2017 Dec 19; 32(12):1991-1996. PubMed ID: 29115081
    [Abstract] [Full Text] [Related]

  • 8. Nomogram for predicting coronary artery lesions in patients with Kawasaki disease.
    Chen J, Li J, Yue YH, Liu Y, Xie T, Peng JQ, Deng ZH, Cao YD.
    Clin Cardiol; 2023 Nov 19; 46(11):1434-1441. PubMed ID: 37540643
    [Abstract] [Full Text] [Related]

  • 9. [Expression of interleukin-17A in serum of children with intravenous immunoglobulin-resistant Kawasaki disease and its clinical significance].
    Li SY, Ding Y.
    Zhongguo Dang Dai Er Ke Za Zhi; 2023 Mar 15; 25(3):244-249. PubMed ID: 36946157
    [Abstract] [Full Text] [Related]

  • 10. A novel model for predicting intravenous immunoglobulin-resistance in Kawasaki disease: a large cohort study.
    Wang S, Ding C, Zhang Q, Hou M, Chen Y, Huang H, Qian G, Yang D, Tang C, Zheng Y, Huang L, Xu L, Zhang J, Gao Y, Zhuo W, Zeng B, Lv H.
    Front Cardiovasc Med; 2023 Mar 15; 10():1226592. PubMed ID: 37576105
    [Abstract] [Full Text] [Related]

  • 11. Predictive value of albumin for intravenous immunoglobulin resistance in a large cohort of Kawasaki disease patients.
    Zhang R, Shuai S, Zhang H, Cai J, Cui N, Tang M, Xing S, Gao Y, Liu X, Yang X.
    Ital J Pediatr; 2023 Jun 25; 49(1):78. PubMed ID: 37357258
    [Abstract] [Full Text] [Related]

  • 12. Predictors for Intravenous Immunoglobulin Resistance in Patients with Kawasaki Disease.
    Li W, Zhang L, Wang Z, He X, Lin H, Wang Y, Yuan J, Xie X, Zhang X, Qin Y, Huang P.
    Int J Clin Pract; 2022 Jun 25; 2022():2726686. PubMed ID: 35989868
    [Abstract] [Full Text] [Related]

  • 13. Interleukin-6 is prone to be a candidate biomarker for predicting incomplete and IVIG nonresponsive Kawasaki disease rather than coronary artery aneurysm.
    Wu Y, Liu FF, Xu Y, Wang JJ, Samadli S, Wu YF, Liu HH, Chen WX, Luo HH, Zhang DD, Wei W, Hu P.
    Clin Exp Med; 2019 May 25; 19(2):173-181. PubMed ID: 30617865
    [Abstract] [Full Text] [Related]

  • 14. A decision tree model for predicting intravenous immunoglobulin resistance and coronary artery involvement in Kawasaki disease.
    Joung J, Oh JS, Yoon JM, Ko KO, Yoo GH, Cheon EJ.
    BMC Pediatr; 2022 Aug 05; 22(1):474. PubMed ID: 35931986
    [Abstract] [Full Text] [Related]

  • 15. Prediction of repeated intravenous immunoglobulin resistance in children with Kawasaki disease.
    Lu Y, Chen T, Wen Y, Si F, Wu X, Yang Y.
    BMC Pediatr; 2021 Sep 16; 21(1):406. PubMed ID: 34530763
    [Abstract] [Full Text] [Related]

  • 16. Value of C-reactive protein/albumin ratio in predicting intravenous immunoglobulin-resistant Kawasaki disease- a data from multi-institutional study in China.
    Li G, Wang T, Gou Y, Zeng R, Liu D, Duan Y, Liu B.
    Int Immunopharmacol; 2020 Dec 16; 89(Pt A):107037. PubMed ID: 33242833
    [Abstract] [Full Text] [Related]

  • 17. Prediction of intravenous immunoglobulin unresponsiveness in patients with Kawasaki disease.
    Kobayashi T, Inoue Y, Takeuchi K, Okada Y, Tamura K, Tomomasa T, Kobayashi T, Morikawa A.
    Circulation; 2006 Jun 06; 113(22):2606-12. PubMed ID: 16735679
    [Abstract] [Full Text] [Related]

  • 18. Predictors for intravenous immunoglobulin resistance and coronary artery lesions in Kawasaki disease.
    Xie T, Wang Y, Fu S, Wang W, Xie C, Zhang Y, Gong F.
    Pediatr Rheumatol Online J; 2017 Mar 21; 15(1):17. PubMed ID: 28320400
    [Abstract] [Full Text] [Related]

  • 19. Prediction of intravenous immunoglobulin resistance in Kawasaki disease in children.
    Wu S, Liao Y, Sun Y, Zhang CY, Zhang QY, Yan H, Qi JG, Liu XQ, Chen YH, Wang YL, Li XY, Jin HF, Du JB.
    World J Pediatr; 2020 Dec 21; 16(6):607-613. PubMed ID: 32232677
    [Abstract] [Full Text] [Related]

  • 20. [Predictive value of serum ferritin and a new predictive model for intravenous immunoglobulin resistance in Kawasaki disease].
    Zhang YJ, Bai HT, Chen PL.
    Zhonghua Er Ke Za Zhi; 2021 Dec 02; 59(12):1080-1085. PubMed ID: 34856668
    [Abstract] [Full Text] [Related]


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