医学
闪烁照相术
血清学
自身抗体
组织病理学
抗核抗体
内科学
刺激
胃肠病学
病理
核医学
抗体
免疫学
作者
Guangwen Zhu,Zhou Gao,Hongbo Feng,Juanjuan Qiu
标识
DOI:10.1111/1756-185x.13779
摘要
Abstract Objectives To update Schall's classification for Sjögren's syndrome (SS) by the new quantitative stimulation test with dynamic salivary glands scintigraphy (qsDSGS) and to standardize quantitative salivary gland scintigraphy. Methods The histopathology, oral, ocular, serological examination and qsDSGS of 268 consecutive patients with suggestive SS were evaluated in this retrospective cohort study. The serological examination included 15 autoantibodies, antinuclear antibodies (ANA) and so on. The diagnostic thresholds of the functional parameters were set by the quantitative method, and the modified Schall's classification is well established and verified. Results Based on the quantitative analysis of qsDSGS, the peak uptake level (PUL) and stimulation excretion fraction (sEF) of each parotid gland were determined as the key imaging features, which had good diagnostic performance for SS. By the modified Schall's classification, all patients were classified into: Class 1 (normal; n = 44), Class 2 (mild to moderate involvement; n = 130), Class 3 (severe involvement; n = 56) and Class 4 (very severe involvement, non‐function; n = 38). Using the threshold PUL ≤ 10 counts per sec/pixel as positivity, the modified Schall's classification could provide better diagnostic performance with 88.4% specificity, 71.3% sensitivity, 96.14% positive predictive value and 43.20% negative predictive value for SS (likelihood ratio 6.15). The trends of serologically positive frequencies against SSA/Ro, anti‐SSB/La and ANA were significantly increased with the new classification. Conclusion The modified Schall's classification by the new stimulation test with dynamic scintigraphy is eligible to standardize quantitative salivary gland scintigraphy for SS, and may be more convenient and suitable in daily practice for clinical research and management of SS.
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