J E Weeda, S M J van Kuijk, M P van den Berg, C H G Bastiaenen, H E Borst, L W van Rhijn, R A de Bie
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引用次数: 0
摘要
雷特综合征是一种神经发育障碍,脊柱侧弯是其常见的骨科并发症。本探索性研究旨在确定 Rett 综合征脊柱侧弯快速发展的预测因素,以便为未来预测模型的开发选择变量。根据多中心数据,采用单变量逻辑回归模型来确定可区分脊柱侧凸快速进展(>10 ∘Cobb 角/6 个月)患者和未快速进展患者的变量。采用单变量逻辑回归法(OR (95% CI) 和 AUC (95% CI))确定了预测因子。纳入时的年龄、基线时的 Cobb 角和癫痫对 Rett 综合征脊柱侧凸的快速发展具有最高的判别能力。
Identification of Predictors for Progression of Scoliosis in Rett Syndrome.
Rett syndrome is a neurodevelopmental disorder in which scoliosis is a common orthopedic complication. This explorative study aims to identify predictors for rapid progression of scoliosis in Rett syndrome to enable variable selection for future prediction model development. A univariable logistic regression model was used to identify variables that discriminate between individuals with and without rapid progression of scoliosis (>10Cobb angle/6 months) based on multi-center data. Predictors were identified using univariable logistic regression with OR (95% CI) and AUC (95% CI). Age at inclusion, Cobb angle at baseline and epilepsy have the highest discriminative ability for rapid progression of scoliosis in Rett syndrome.