Centre for Musculoskeletal Research, NIHR Manchester Biomedical Research Centre, Lydia Becker Institute of Immunology and Inflammation, The University of Manchester, Manchester, UK.
Norwich Medical School, University of East Anglia, Norwich, UK.
Arthritis Rheumatol. 2024 May;76(5):696-703. doi: 10.1002/art.42760. Epub 2024 Jan 17.
There is growing evidence that genetic data are of benefit in the rheumatology outpatient setting by aiding early diagnosis. A genetic probability tool (G-PROB) has been developed to aid diagnosis has not yet been tested in a real-world setting. Our aim was to assess whether G-PROB could aid diagnosis in the rheumatology outpatient setting using data from the Norfolk Arthritis Register (NOAR), a prospective observational cohort of patients presenting with early inflammatory arthritis.
Genotypes and clinician diagnoses were obtained from patients from NOAR. Six G-probabilities (0%-100%) were created for each patient based on known disease-associated odds ratios of published genetic risk variants, each corresponding to one disease of rheumatoid arthritis, systemic lupus erythematosus, psoriatic arthritis, spondyloarthropathy, gout, or "other diseases." Performance of the G-probabilities compared with clinician diagnosis was assessed.
We tested G-PROB on 1,047 patients. Calibration of G-probabilities with clinician diagnosis was high, with regression coefficients of 1.047, where 1.00 is ideal. G-probabilities discriminated clinician diagnosis with pooled areas under the curve (95% confidence interval) of 0.85 (0.84-0.86). G-probabilities <5% corresponded to a negative predictive value of 96.0%, for which it was possible to suggest >2 unlikely diseases for 94% of patients and >3 for 53.7% of patients. G-probabilities >50% corresponded to a positive predictive value of 70.4%. In 55.7% of patients, the disease with the highest G-probability corresponded to clinician diagnosis.
G-PROB converts complex genetic information into meaningful and interpretable conditional probabilities, which may be especially helpful at eliminating unlikely diagnoses in the rheumatology outpatient setting.
越来越多的证据表明,遗传数据通过辅助早期诊断,有益于风湿科门诊。已经开发出一种遗传概率工具(G-PROB)来辅助诊断,但尚未在真实环境中进行测试。我们的目的是评估 G-PROB 是否可以使用来自诺福克关节炎登记处(NOAR)的患者数据在风湿科门诊中辅助诊断,该登记处是一个具有早期炎症性关节炎表现的患者前瞻性观察队列。
从 NOAR 的患者中获取基因型和临床医生的诊断。根据已发表的遗传风险变异体的已知疾病相关优势比,为每位患者创建了 6 个 G-probabilities(0%-100%),每个对应于一种疾病,包括类风湿关节炎、系统性红斑狼疮、银屑病关节炎、脊柱关节炎、痛风或“其他疾病”。评估 G-probabilities 与临床医生诊断的性能。
我们对 1047 名患者进行了 G-PROB 测试。G-probabilities 与临床医生诊断的校准度很高,回归系数为 1.047,其中 1.00 是理想的。G-probabilities 以 0.85(0.84-0.86)的 pooled 曲线下面积(95%置信区间)区分临床医生的诊断。G-probabilities <5%对应于 96.0%的阴性预测值,对于 94%的患者可以建议 2 种以上不太可能的疾病,对于 53.7%的患者可以建议 3 种以上的疾病。G-probabilities >50%对应于 70.4%的阳性预测值。在 55.7%的患者中,具有最高 G-probability 的疾病与临床医生的诊断相对应。
G-PROB 将复杂的遗传信息转化为有意义且可解释的条件概率,这在风湿科门诊中尤其有助于排除不太可能的诊断。