Multivariable index for assessing the activity and predicting all-cause mortality in antineutrophil cytoplasmic antibody-associated vasculitis.

JOURNAL OF CLINICAL LABORATORY ANALYSIS(2020)

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Abstract
Background So far, there has been no tool to estimate activity at diagnosis and predict all-cause mortality in patients with ANCA-associated vasculitis (AAV). Hence, we determined the initial predictors of them in patients with AAV. Methods We retrospectively reviewed the medical records of 182 patients with AAV. Severe AAV was defined as Birmingham Vasculitis Activity Score (BVAS) >= 16. The cutoffs were extrapolated by the receiver operator characteristic (ROC) curve. The odds ratio (OR) and the relative risk (RR) were assessed using the multivariable logistic regression analysis and the chi-square test, respectively. Results In the comparison analysis, patients with severe AAV exhibited the higher neutrophil and platelet counts, creatinine, erythrocyte sedimentation rate and C-reactive protein, and the lower lymphocyte count, hemoglobin, and serum albumin than those without. In the multivariable logistic regression analysis, creatinine >= 0.9 mg/dL (OR 2.264), lymphocyte count <= 1430.0/mm(3) (OR 1.856), and hemoglobin <= 10.8 g/dL (OR 2.085) were associated with severe AAV. We developed a new equation of a multivariable index for AAV (MVIA) = 0.6 x (Lymphocyte count <= 1430.0/mm(3)) + 0.7 x (Hemoglobin <= 10.8 g/dL) + 0.8 x (Creatinine >= 0.9 mg/dL). The optimal cutoff of MVIA for severe AAV was set as 1.35. Severe AAV was identified more frequently in patients with MVIA at diagnosis >= 1.35 than those without (RR 4.432). Patients with MVIA at diagnosis >= 1.35 exhibited the lower cumulative patient survival rate than those without. Conclusion Multivariable index for AAV could assess the cross-sectional activity and predict all-cause mortality in patients with AAV.
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Key words
activity,ANCA-associated vasculitis,multivariable index,prognosis
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