可计算的表型,用于真实世界、数据驱动的 ANCA 相关性血管炎复发回顾性鉴定

IF 5.1 2区 医学 Q1 RHEUMATOLOGY RMD Open Pub Date : 2024-04-01 DOI:10.1136/rmdopen-2023-003962
Jennifer Scott, Arthur White, Cathal Walsh, Louis Aslett, Matthew A Rutherford, James Ng, Conor Judge, Kuruvilla Sebastian, Sorcha O’Brien, John Kelleher, Julie Power, Niall Conlon, Sarah M Moran, Raashid Ahmed Luqmani, Peter A Merkel, Vladimir Tesar, Zdenka Hruskova, Mark A Little
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Methods We studied 536 patients with AAV and >6 months follow-up recruited to the Rare Kidney Disease registry (a national longitudinal, multicentre cohort study). We followed five steps: (1) independent encounter adjudication using primary medical records to assign the ground truth, (2) selection of data elements (DEs), (3) CP development using multilevel regression modelling, (4) internal validation and (5) development of additional models to handle missingness. Cut-points were determined by maximising the F1-score. We developed a web application for CP implementation, which outputs an individualised probability of relapse. Results Development and validation datasets comprised 1209 and 377 encounters, respectively. After classifying encounters with diagnostic histopathology as relapse, we identified five key DEs; DE1: change in ANCA level, DE2: suggestive blood/urine tests, DE3: suggestive imaging, DE4: immunosuppression status, DE5: immunosuppression change. F1-score, sensitivity and specificity were 0.85 (95% CI 0.77 to 0.92), 0.89 (95% CI 0.80 to 0.99) and 0.96 (95% CI 0.93 to 0.99), respectively. Where DE5 was missing, DE2 plus either DE1/DE3 were required to match the accuracy of BVAS. Conclusions This CP accurately quantifies the individualised probability of relapse in AAV retrospectively, using objective, readily accessible registry data. This framework could be leveraged for other outcomes and relapsing diseases. Data are available on reasonable request. We would invite any potential research collaborations or data requests through the corresponding author, MAL (mlittle@tcd.ie), on reasonable request, as agreed by participants in their written informed consent (detailed on page 3: <https://www.tcd.ie/medicine/thkc/assets/pdf/RKD-Vasculitis-Patient-PIL-ICF-Version-5-07AUG19.pdf>). 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引用次数: 0

摘要

目的 ANCA 相关性血管炎(AAV)是一种复发-缓解性疾病,会导致组织损伤不断加重。金标准复发定义(伯明翰脉管炎活动评分,BVAS>0)在登记设置中经常缺失或不准确,导致这一关键结果的确定出现错误。我们试图创建一种可计算表型 (CP),利用研究环境中的真实数据自动进行复发的回顾性鉴定。方法 我们对罕见肾脏病登记处(一项全国性纵向多中心队列研究)招募的 536 名 AAV 患者进行了研究,这些患者的随访时间超过 6 个月。我们采取了五个步骤:(1)使用原始医疗记录进行独立的病例判定,以确定基本事实;(2)选择数据元素(DE);(3)使用多层次回归模型开发 CP;(4)内部验证;(5)开发其他模型以处理遗漏。切点通过最大化 F1 分数来确定。我们开发了一个用于实施 CP 的网络应用程序,可输出个性化的复发概率。结果 开发和验证数据集分别包括 1209 和 377 个病例。在将具有组织病理学诊断结果的病例归类为复发后,我们确定了五个关键 DE:DE1:ANCA 水平变化;DE2:提示性血液/尿液检测;DE3:提示性影像学检查;DE4:免疫抑制状态;DE5:免疫抑制变化。F1得分、灵敏度和特异性分别为0.85(95% CI 0.77至0.92)、0.89(95% CI 0.80至0.99)和0.96(95% CI 0.93至0.99)。如果缺少 DE5,则需要 DE2 加上 DE1/DE3 才能与 BVAS 的准确性相匹配。结论 该 CP 利用客观、易于获取的登记数据,准确量化了 AAV 复发的个体化概率。这一框架可用于其他结果和复发疾病。如有合理要求,可提供相关数据。根据参与者在书面知情同意书(详见第3页:)中的同意,我们将通过通讯作者MAL(mlittle@tcd.ie)邀请任何潜在的研究合作或数据请求。我们将根据具体情况考虑这些请求。
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Computable phenotype for real-world, data-driven retrospective identification of relapse in ANCA-associated vasculitis
Objective ANCA-associated vasculitis (AAV) is a relapsing-remitting disease, resulting in incremental tissue injury. The gold-standard relapse definition (Birmingham Vasculitis Activity Score, BVAS>0) is often missing or inaccurate in registry settings, leading to errors in ascertainment of this key outcome. We sought to create a computable phenotype (CP) to automate retrospective identification of relapse using real-world data in the research setting. Methods We studied 536 patients with AAV and >6 months follow-up recruited to the Rare Kidney Disease registry (a national longitudinal, multicentre cohort study). We followed five steps: (1) independent encounter adjudication using primary medical records to assign the ground truth, (2) selection of data elements (DEs), (3) CP development using multilevel regression modelling, (4) internal validation and (5) development of additional models to handle missingness. Cut-points were determined by maximising the F1-score. We developed a web application for CP implementation, which outputs an individualised probability of relapse. Results Development and validation datasets comprised 1209 and 377 encounters, respectively. After classifying encounters with diagnostic histopathology as relapse, we identified five key DEs; DE1: change in ANCA level, DE2: suggestive blood/urine tests, DE3: suggestive imaging, DE4: immunosuppression status, DE5: immunosuppression change. F1-score, sensitivity and specificity were 0.85 (95% CI 0.77 to 0.92), 0.89 (95% CI 0.80 to 0.99) and 0.96 (95% CI 0.93 to 0.99), respectively. Where DE5 was missing, DE2 plus either DE1/DE3 were required to match the accuracy of BVAS. Conclusions This CP accurately quantifies the individualised probability of relapse in AAV retrospectively, using objective, readily accessible registry data. This framework could be leveraged for other outcomes and relapsing diseases. Data are available on reasonable request. We would invite any potential research collaborations or data requests through the corresponding author, MAL (mlittle@tcd.ie), on reasonable request, as agreed by participants in their written informed consent (detailed on page 3: ). Requests will be considered on a case-by-case basis.
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来源期刊
RMD Open
RMD Open RHEUMATOLOGY-
CiteScore
7.30
自引率
6.50%
发文量
205
审稿时长
14 weeks
期刊介绍: RMD Open publishes high quality peer-reviewed original research covering the full spectrum of musculoskeletal disorders, rheumatism and connective tissue diseases, including osteoporosis, spine and rehabilitation. Clinical and epidemiological research, basic and translational medicine, interesting clinical cases, and smaller studies that add to the literature are all considered.
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