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用于预测中国 2 型糖尿病人群带状疱疹感染风险的新预测列线图的开发和评估
Authors Zeng N , Li Y, Wang Q, Chen Y, Zhang Y, Zhang L, Jiang F , Yuan W, Luo D
Received 12 April 2021
Accepted for publication 20 October 2021
Published 27 November 2021 Volume 2021:14 Pages 4789—4797
DOI https://doi.org/10.2147/RMHP.S310938
Checked for plagiarism Yes
Review by Single anonymous peer review
Peer reviewer comments 2
Editor who approved publication: Dr Natasha Hodgkinson
Purpose: To identify potential risk factors for herpes zoster infection in type 2 diabetes mellitus in southeast Chinese population.
Patients and Methods: We built a model involving 266 herpes zoster patients collecting data from January 2018 to December 2019. The least absolute shrinkage and selection operator (Lasso) predictive model was used to test herpes zoster virus risk using the patient data. Multivariate regression was conducted to decide which variable would be the strongest to decrease the Lasso penalty. The predictive model was tested using the C-index, a calibration plot, and decision curve study. External validity was verified by bootstrapping by counting probabilities.
Results: In the prediction nomogram, the prediction variables included age, sex, weight, length of hospital stay, infection, and blood pressure. The C-index of 0.844 (0.798– 0.896) indicated substantial variability and thus the model was adjusted appropriately. A score of 0.825 was achieved somewhere in the above interval. Examination of the decision curve estimated that herpes zoster nomogram was useful when the intervention was determined at the 16 percent of the herpes zoster infection potential threshold.
Conclusion: The herpes zoster nomogram combines age, weight, position of the rash, 2-hour plasma glucose, glycosuria, serum creatinine, length of the hospital stay, and hypertension. This calculator can be used to assess the individual herpes zoster risks in patients diagnosed with type 2 diabetes mellitus.
Keywords: glycemic status, herpes zoster, nomogram, type 2 diabetes mellitus, infection