Which patients are at risk of developing symptom diagnoses that persist for more than a year in primary care? Development and external validation of a prediction model

IF 3.5 2区 医学 Q2 PSYCHIATRY Journal of Psychosomatic Research Pub Date : 2024-07-15 DOI:10.1016/j.jpsychores.2024.111859
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Abstract

Objectives

To train, test and externally validate a prediction model that supports General Practitioners (GPs) in early identification of patients at risk of developing symptom diagnoses that persist for more than a year.

Methods

We retrospectively collected and selected all patients having episodes of symptom diagnoses during the period 2008 and 2021 from the Family Medicine Network (FaMe-Net) database. From this group, we identified symptom diagnoses that last for less than a year and symptom diagnoses that persist for more than a year. Multivariable logistic regression analysis using a backward selection was used to assess which factors were most predictive for developing symptom diagnoses that persist for more than a year. Performance of the model was assessed using calibration and discrimination (AUC) measures. External validation was tested using data between 2018 and 2022 from AHON-registry, a primary care electronic health records data registry including 73 general practices from the north and east regions of the Netherlands and about 460, 795 patients.

Results

From the included 47,870 patients with a symptom diagnosis in the FaMe-Net registry, 12,481 (26.1%) had a symptom diagnosis that persisted for more than a year. Older age (≥ 75 years: OR = 1.30, 95% CI [1.19, 1.42]), having more previous symptom diagnoses (≥ 3: 1.11, [1.05, 1.17]) and more contacts with the GP over the last 2 years (≥ 10 contacts: 5.32, [4.80, 5.89]) were predictive of symptom diagnoses that persist for more than a year with a marginally acceptable discrimination (AUC 0.70, 95% CI [0.69–0.70]). The external validation showed poor performance with an AUC of 0.64 ([0.63–0.64]).

Conclusion

A clinical prediction model based on age, number of previous symptom diagnoses and contacts might help the GP to early identify patients developing symptom diagnoses that persist for more than a year. However, the performance of the original model is limited. Hence, the model is not yet ready for a large-scale implementation.

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哪些患者有可能在初级保健中出现持续一年以上的症状诊断?预测模型的开发和外部验证
方法 我们从家庭医学网络(FaMe-Net)数据库中回顾性地收集并选择了 2008 年至 2021 年期间所有出现症状诊断的患者。我们从中找出了持续时间少于一年的症状诊断和持续时间超过一年的症状诊断。我们使用反向选择的多变量逻辑回归分析来评估哪些因素对持续一年以上的症状诊断最具预测性。模型的性能通过校准和区分度(AUC)进行评估。使用AHON-登记处2018年至2022年的数据进行了外部验证,该登记处是一个初级保健电子健康记录数据登记处,包括荷兰北部和东部地区的73家全科诊所和约460 795名患者。结果在FaMe-Net登记处纳入的47870名有症状诊断的患者中,有12481人(26.1%)的症状诊断持续一年以上。年龄较大(≥ 75 岁:OR = 1.30,95% CI [1.19,1.42])、既往症状诊断次数较多(≥ 3 次:1.11,[1.05,1.17])以及过去 2 年中与全科医生接触次数较多(≥ 10 次:5.32,[4.80,5.89])均可预测持续一年以上的症状诊断,其区分度略可接受(AUC 0.70,95% CI [0.69-0.70])。结论 基于年龄、既往症状诊断次数和接触次数的临床预测模型可帮助全科医生及早发现症状诊断持续一年以上的患者。然而,原始模型的性能有限。因此,该模型尚未准备好大规模实施。
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来源期刊
Journal of Psychosomatic Research
Journal of Psychosomatic Research 医学-精神病学
CiteScore
7.40
自引率
6.40%
发文量
314
审稿时长
6.2 weeks
期刊介绍: The Journal of Psychosomatic Research is a multidisciplinary research journal covering all aspects of the relationships between psychology and medicine. The scope is broad and ranges from basic human biological and psychological research to evaluations of treatment and services. Papers will normally be concerned with illness or patients rather than studies of healthy populations. Studies concerning special populations, such as the elderly and children and adolescents, are welcome. In addition to peer-reviewed original papers, the journal publishes editorials, reviews, and other papers related to the journal''s aims.
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