A Clinical Prediction Model to Assist Screening Patients for Scabies in Primary Care.

IF 1.6 4区 医学 Q2 PEDIATRICS
Sanskruti Zaveri, Tarun Nambiar, Simon Thornley, Vanessa Selak, Gerhard Sundborn, Rachel Roskvist, Arthur J Morris
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引用次数: 0

Abstract

Aim: To develop and test a clinical prediction model based on demography and symptoms to assist in screening for scabies diagnosis in primary care.

Methods: Data from a scabies prevalence survey conducted in Auckland, New Zealand (NZ) were analysed using logistic regression to predict diagnosis, defined by either clinical criteria (International Alliance for the Control of Scabies, IACS) or quantitative polymerase chain reaction (qPCR) for scabies derived from a skin swab. Best subsets regression was used to select predictors in the final models, using Akaike's information criterion. Model performance was assessed using internal validation with bootstrap resampling.

Results: From a survey of 181 children aged between 8 months and 14 years, 105 were available for analysis with complete questionnaires. Age and symptoms of itch (in the child and their close contacts) were retained as predictors of the model where clinical scabies diagnosis was the outcome. In addition to these predictors, whether household members were affected by insect bites, skin sores or blisters was also retained as a predictor of qPCR-based diagnosis. Accuracy was good for both models, with discrimination and calibration indices favourable (Harrell's concordance index 0.96 [IACS] and 0.85 [qPCR]; calibration slope 0.82 [IACS] and 0.77 [qPCR]).

Conclusion: Simple logistic models based on common symptoms of scabies, especially itch in the child and 'simultaneous itch in the family', accurately predict scabies status. Such tools have potential use in supporting screening and improving diagnosis of scabies in community and primary care settings.

一个临床预测模型,以协助筛选疥疮患者在初级保健。
目的:开发和测试一种基于人口统计学和症状的临床预测模型,以帮助在初级保健中筛查疥疮诊断。方法:在新西兰奥克兰进行的一项疥疮流行调查数据使用逻辑回归进行分析,以预测诊断,根据临床标准(国际疥疮控制联盟,IACS)或定量聚合酶链反应(qPCR)对皮肤拭子衍生的疥疮进行定义。采用赤池信息准则,采用最佳子集回归选择最终模型的预测因子。模型性能评估使用内部验证与自举重采样。结果:对181例8个月~ 14岁的儿童进行调查,其中105例可供分析,问卷完整。年龄和瘙痒症状(儿童及其密切接触者)被保留为模型的预测因子,其中临床疥疮诊断是结果。除了这些预测因素外,家庭成员是否受到昆虫叮咬、皮肤溃疡或水疱的影响也被保留为基于qpcr的诊断的预测因素。两种模型的准确度均较好,判别和校准指标均较好(Harrell’s concordance index 0.96 [IACS]和0.85 [qPCR]);校准斜率分别为0.82 [IACS]和0.77 [qPCR])。结论:基于疥疮常见症状,特别是儿童瘙痒和“家庭同时瘙痒”的简单逻辑模型可以准确预测疥疮状况。这些工具在支持社区和初级保健机构的疥疮筛查和改进诊断方面具有潜在的用途。
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来源期刊
CiteScore
2.90
自引率
5.90%
发文量
487
审稿时长
3-6 weeks
期刊介绍: The Journal of Paediatrics and Child Health publishes original research articles of scientific excellence in paediatrics and child health. Research Articles, Case Reports and Letters to the Editor are published, together with invited Reviews, Annotations, Editorial Comments and manuscripts of educational interest.
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