克朗巴赫阿尔法
判别效度
结构效度
巴西葡萄牙语
天花板效应
生活质量(医疗保健)
医学
可视模拟标度
收敛有效性
物理疗法
葡萄牙语
心理测量学
内部一致性
临床心理学
哲学
病理
护理部
替代医学
语言学
作者
Edward Barnard,E. Cesaréo
标识
DOI:10.1016/j.accpm.2022.101077
摘要
We aimed to develop and validate a Portuguese version of the Obstetric Quality of Recovery-10 (ObsQoR-10-Portuguese) patient-reported outcome measure and evaluate its psychometric properties.After ethical approval, we recruited term pregnant women undergoing uncomplicated elective cesarean delivery in a single Brazilian institution. Women were invited to complete the translated ObsQoR-10-Portuguese and EuroQoL (EQ-5D) questionnaires (including a global health visual analog scale [GHVAS]) at 24 h (±6 h) following delivery, and a subset of women an hour later. We assessed validity and reliability of ObsQoR-10-Portuguese.One hundred thirteen enrolled women completed the surveys at 24 h and 29 women at 25 h (100% response rate). Validity: (i) convergent validity: ObsQoR-10-Portuguese correlated moderately with EuroQoL score (r = −0.587) and GHVAS score (r = 0.568) at 24 h. (ii) Discriminant validity: ObsQoR-10 discriminated well between good versus poor recovery (GHVAS score ≥ 70 versus < 70; difference in mean scores 14.2; p < 0.001). (iii) Hypothesis testing: 24-h ObsQoR-10-Portuguese scores correlated with gestational age (r = 0.191; p = 0.043). (iv) Cross-cultural validity: differential item functioning analysis suggested bias in 2 items. Reliability: (i) internal consistency was good (Cronbach’s alpha = 0.82 and inter-item correlation = 0.31). (ii) Split-half reliability was very good (Spearman–Brown Prophesy Reliability Estimate = 0.80). (iii) Test re-test reliability was excellent (intra-class correlation coefficient = 0.87). (iv) Floor and ceiling effects: < 5% women scored either 0 or 100 (lowest and highest scores, respectively).ObsQoR-10-Portuguese is valid and reliable, and should be considered for use in Portuguese-speaking women to assess their quality of inpatient recovery following cesarean delivery.
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