Clinicians diagnosing virtual patients with the classification algorithm for chronic pain in the ICD-11 (CAL-CP) achieve better diagnoses and prefer the algorithm to standard tools: An experimental validation study

IF 3.5 2区 医学 Q1 ANESTHESIOLOGY European Journal of Pain Pub Date : 2024-04-17 DOI:10.1002/ejp.2274
Ginea Hay, Beatrice Korwisi, Norman Lahme-Hütig, Winfried Rief, Antonia Barke
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Abstract

Background

The ICD-11 classification of chronic pain comprises seven categories, each further subdivided. In total, it contains over 100 diagnoses each based on 5–7 criteria. To increase diagnostic reliability, the Classification Algorithm for Chronic Pain in the ICD-11 (CAL-CP) was developed. The current study aimed to evaluate the CAL-CP regarding the correctness of assigned diagnoses, utility and ease of use.

Methods

In an international online study, n = 195 clinicians each diagnosed 4 out of 8 fictitious patients. The clinicians interacted via chat with the virtual patients to collect information and view medical histories and examination findings. The patient cases differed in complexity: simple patients had one chronic pain diagnosis; complex cases had two. In a 2 × 2 repeated-measures design with the factors tool (algorithm/standard browser) and diagnostic complexity (simple/complex), clinicians used either the algorithm or the ICD-11 browser for their diagnoses. After each case, clinicians indicated the pain diagnoses and rated the diagnostic process. The correctness of the assigned diagnoses and the ratings of the algorithm's utility and ease of use were analysed.

Results

The use of the algorithm resulted in more correct diagnoses. This was true for chronic primary and secondary pain diagnoses. The clinicians preferred the algorithm over the ICD-11 browser, rating it easier to work with and more useful. Especially novice users benefited from the algorithm.

Conclusions

The use of the algorithm increases the correctness of the diagnoses for chronic pain and is well accepted by clinicians. The CAL-CP's use should be considered in routine care and research contexts.

Significance Statement

The ICD-11 has come into effect in January 2022. Clinicians and researchers will soon begin using the new classification of chronic pain. To facilitate clinicians training and diagnostic accuracy, a classification algorithm was developed. The paper investigates whether clinicians using the algorithm—as opposed to the generic tools provided by the WHO—reach more correct diagnoses when they diagnose standardized patients and how they rate the comparative utility of the diagnostic instruments available.

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临床医生使用 ICD-11 中的慢性疼痛分类算法(CAL-CP)对虚拟病人进行诊断,取得了较好的诊断效果,与标准工具相比,他们更喜欢使用该算法:实验验证研究
背景 ICD-11 慢性疼痛分类包括七个类别,每个类别又进一步细分。它总共包含 100 多个诊断,每个诊断基于 5-7 个标准。为了提高诊断的可靠性,ICD-11 中的慢性疼痛分类算法(CAL-CP)应运而生。方法在一项国际在线研究中,n = 195 名临床医生分别对 8 名虚构患者中的 4 名进行了诊断。临床医生通过聊天与虚拟病人互动,收集信息并查看病史和检查结果。患者病例的复杂程度不同:简单的患者只有一个慢性疼痛诊断;复杂的病例有两个。在一个包含工具(算法/标准浏览器)和诊断复杂性(简单/复杂)因素的 2 × 2 重复测量设计中,临床医生使用算法或 ICD-11 浏览器进行诊断。每个病例结束后,临床医生都会指出疼痛诊断结果,并对诊断过程进行评分。对指定诊断的正确性以及对算法的实用性和易用性的评分进行了分析。对慢性原发性和继发性疼痛的诊断都是如此。与 ICD-11 浏览器相比,临床医生更喜欢该算法,认为它更容易操作,更有用。结论该算法的使用提高了慢性疼痛诊断的正确率,并得到了临床医生的广泛认可。在日常护理和研究中应考虑使用 CAL-CP。临床医生和研究人员即将开始使用新的慢性疼痛分类。为了方便临床医生的培训和提高诊断的准确性,我们开发了一种分类算法。本文研究了临床医生在诊断标准化患者时,使用该算法(而非世卫组织提供的通用工具)是否能获得更正确的诊断,以及他们如何评价现有诊断工具的比较效用。
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来源期刊
European Journal of Pain
European Journal of Pain 医学-临床神经学
CiteScore
7.50
自引率
5.60%
发文量
163
审稿时长
4-8 weeks
期刊介绍: European Journal of Pain (EJP) publishes clinical and basic science research papers relevant to all aspects of pain and its management, including specialties such as anaesthesia, dentistry, neurology and neurosurgery, orthopaedics, palliative care, pharmacology, physiology, psychiatry, psychology and rehabilitation; socio-economic aspects of pain are also covered. Regular sections in the journal are as follows: • Editorials and Commentaries • Position Papers and Guidelines • Reviews • Original Articles • Letters • Bookshelf The journal particularly welcomes clinical trials, which are published on an occasional basis. Research articles are published under the following subject headings: • Neurobiology • Neurology • Experimental Pharmacology • Clinical Pharmacology • Psychology • Behavioural Therapy • Epidemiology • Cancer Pain • Acute Pain • Clinical Trials.
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