Establishment of a non-invasive salivary diagnostic model for TCM syndrome differentiation in breast cancer based on SELDI and bioinformatics techniques

Cao Meiqun, Wu Zheng-zhi, Sun Kehuan, Zhang Xiaoli, L. Yinghong, Wu Anming, Jin Yu
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Abstract

Objective The salivary proteins of breast cancer patients of liver-qi stagnation syndrome and of liver-kidney yin deficiency syndrome were examined using surface-enhanced laser desorption/ionization time-of-flight mass spectrometry (SELDI-TOF-MS), and specific protein markers were screened out to establish a salivary protein fingerprint model for distinguishing breast cancer liver-qi stagnation and liver-kidney yin deficiency. Methods The protein patterns of 47 salivary specimens (26 cases of liver-qi stagnation of breast cancer, 21 cases of liver-kidney yin deficiency of breast cancer) were examined with SELDI-TOF-MS to establish a TCM syndrome diagnosis model for breast cancer. Results 243 protein peaks were detected in the specimens, 33 of which showed significant difference between the two groups. The liver-qi stagnation syndrome and the liver-kidney yin deficiency syndrome of breast cancer could be correctly distinguished by the diagnostic model comprised of two proteins with M/Z of 8087.575 and 3378.142 Da, respectively; 25 out of the 26 cases of liver-qi stagnation syndrome was correctly diagnosed, and all the 21 cases of liver-kidney yin deficiency were correctly excluded; the sensitivity reached 96.15% (25/26) and the specificity was 80.95%(17/21). Conclusion The salivary protein fingerprint model for TCM syndrome differentiation established with SELDI-TOF-MS provided a highly specific, sensitive new method that is worth further study and application.
基于SELDI和生物信息学技术的乳腺癌无创唾液诊断模型的建立
目的采用表面增强激光解吸/电离飞行时间质谱法(SELDI-TOF-MS)检测乳腺癌肝郁证和肝肾阴虚证患者唾液蛋白,筛选特异性蛋白标记物,建立鉴别乳腺癌肝郁证和肝肾阴虚证的唾液蛋白指纹模型。方法应用SELDI-TOF-MS检测47例(乳腺癌肝郁证26例,肝肾阴虚证21例)唾液标本的蛋白谱,建立乳腺癌中医证候诊断模型。结果共检测到243个蛋白峰,其中33个蛋白峰在两组间有显著性差异。M/Z分别为8087.575和3378.142 Da的两种蛋白组成的诊断模型能够正确鉴别乳腺癌的肝郁证和肝肾阴虚证;26例肝气郁结证中25例被正确诊断,21例肝肾阴虚证被正确排除;灵敏度为96.15%(25/26),特异度为80.95%(17/21)。结论利用SELDI-TOF-MS建立的唾液蛋白指纹图谱模型是一种特异性高、灵敏度高的中医辨证新方法,值得进一步研究和应用。
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