Effect of mean platelet volume and platelet count on the prognosis of branch atheromatous disease

Author:

Liu Yinglin1,Wu Kun2,Xu Ronghua1,He Lanying1,Zheng Min3ORCID,Wang Jian1

Affiliation:

1. Department of Neurology Chengdu Second People's Hospital Chengdu Sichuan China

2. Department of Laboratory Yibin Sixth People's Hospital Chengdu Sichuan China

3. Department of Laboratory University of Electronic Science and Technology Chengdu Sichuan China

Abstract

AbstractObjectiveThe purpose of this study was to investigate the predictive value of mean platelet volume (MPV) and platelet count (PC) in branch atheromatous disease (BAD).MethodsThis retrospective study included 216 patients with BAD‐stroke within 48 h of symptom onset. These patients were divided into good and poor prognosis groups according to their 3‐month modified Rankin scale scores after discharge. Multiple logistic regression analysis was used to evaluate independent predictors of poor prognosis in BAD‐stroke patients. Receiver‐operating characteristic (ROC) analysis was used to estimate the predictive value of MPV and PC on BAD‐stroke.ResultsOur research showed that a higher MPV (aOR, 2.926; 95% CI, 2.040–4.196; p < .001) and PC (aOR, 1.013; 95% CI, 1.005–1.020; p = .001) were independently associated with poor prognosis after adjustment for confounders. The ROC analysis of MPV for predicting poor prognosis showed that the sensitivity and specificity were 74% and 84.9%, respectively, and that the AUC was .843 (95% CI, .776–.909, p < .001). The optimal cut‐off value was 12.35. The incidence of early neurological deterioration (END) was 24.5% (53 of 163), and 66% of patients in the poor prognosis group had END (33 of 50). Multiple logistic regression analyses showed that elevated MPV and PC were associated with the occurrence of END (p < .05).ConclusionOur results suggested that an elevated MPV and PC may be important in predicting a worse outcome in BAD‐stroke patients. Our study also demonstrated an independent association of MPV and PC with END, which is presumably the main reason for the poor prognosis.

Funder

Chengdu Science and Technology Bureau

Publisher

Wiley

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