Huang Zhuochun, Shi Yunying, Cai Bei, Wang Lanlan, Wu Yongkang, Ying Binwu, Qin Li, Hu Chaojun, Li Yongzhe
Department of Laboratory Medicine, West China Hospital, Sichuan University, Chengdu, China.
Rheumatology (Oxford). 2009 Jun;48(6):626-31. doi: 10.1093/rheumatology/kep058. Epub 2009 Apr 23.
To discover novel potential biomarkers and establish a diagnostic pattern for SLE by using proteomic technology.
Serum proteomic spectra were generated by matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF MS) combined with weak cationic exchange magnetic beads. A training set of spectra, derived from analysing sera from 32 patients with SLE, 43 patients with other autoimmune diseases and 43 age- and sex-matched healthy volunteers, was used to train and develop a decision tree model with a machine learning algorithm called decision boosting. A blinded testing set, including 32 patients with SLE, 42 patients with other autoimmune diseases and 40 healthy people, was used to determine the accuracy of the model.
The diagnostic pattern with a panel of four potential protein biomarkers of mass-to-charge (m/z) ratio 4070.09, 7770.45, 28 045.1 and 3376.02 could accurately recognize 25 of 32 patients with SLE, 36 of 42 patients with other autoimmune diseases and 36 of 40 healthy people.
The preliminary data suggested a potential application of MALDI-TOF MS combined with magnetic beads as an effective technology to profile serum proteome, and with pattern analysis, a diagnostic model comprising four potential biomarkers was indicated to differentiate individuals with SLE from RA, SS, SSc and healthy controls rapidly and precisely.
运用蛋白质组学技术发现系统性红斑狼疮(SLE)新的潜在生物标志物并建立诊断模式。
采用基质辅助激光解吸/电离飞行时间质谱(MALDI-TOF MS)结合弱阳离子交换磁珠生成血清蛋白质组图谱。从32例SLE患者、43例其他自身免疫性疾病患者以及43例年龄和性别匹配的健康志愿者血清分析中获得一组训练图谱,用于训练和开发一种名为决策增强的机器学习算法的决策树模型。一个盲法测试集,包括32例SLE患者、42例其他自身免疫性疾病患者和40名健康人,用于确定该模型的准确性。
由质荷比(m/z)为4070.09、7770.45、28045.1和3376.02的四种潜在蛋白质生物标志物组成的诊断模式能够准确识别32例SLE患者中的25例、42例其他自身免疫性疾病患者中的36例以及40名健康人中的36例。
初步数据表明,MALDI-TOF MS结合磁珠作为分析血清蛋白质组的有效技术具有潜在应用价值,通过模式分析,一种包含四种潜在生物标志物的诊断模型被证明能够快速、准确地将SLE患者与类风湿关节炎(RA)、干燥综合征(SS)、系统性硬化症(SSc)患者及健康对照区分开来。