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[质谱尿谱树状分析模式在膀胱移行细胞癌鉴别诊断中的应用]

[Tree analysis pattern of mass spectral urine profiles in differential diagnosis of bladder transitional cell carcinoma].

作者信息

Wu Deng-long, Zhang Yuan-fang, Guan Ming, Liu Wei-wei, Xu Yue-min, Jin San-bao, Zhang Jiong, Jin Chong-rui, Lü Yuan

机构信息

Department of Urology, Shanghai 6th People's Hospital, Shanghai Jiatong University, Shanghai 200233, China.

出版信息

Zhonghua Zhong Liu Za Zhi. 2007 Apr;29(4):274-7.

Abstract

OBJECTIVE

To develope a tree analysis pattern of mass spectral urine profiles to discriminate bladder transitional cell carcinoma (TCC) from non-cancer lesions using surface-enhanced laser desorption and ionization time-of-flight mass spectrometry (SELDI-TOF-MS) technology.

METHODS

Urine samples from 61 bladder transitional cell carcinoma (TCCs) patients, 53 healthy volunteers and 42 patients with other urogenital diseases were analyzed using IMAC-Cu-3 ProteinChip. Proteomic spectra were generated by SELDI-TOF- MS. A preliminary "training" set of spectra derived from analysis of urine from 46 TCC patients, 32 patients with benign urogenital diseases (BUD), and 40 age-matched unaffected healthy men were used to train and develop a decision tree classification algorithm which identified a fine-protein mass pattern that discriminated cancers from non-cancers effectively. A blinded test set including 38 cases was used to determine the sensitivity and specificity of the classification system.

RESULTS

The algorithm identified a cluster pattern that, in the training set, segregated cancer from non-cancer with a sensitivity of 84.8% and specificity of 91.7%. The discriminatory pattern was correctly identified. A sensitivity of 93.3% and a specificity of 87% for the blinded test were obtained when compared the TCC versus non-cancers.

CONCLUSION

SELDI-TOF-MS technology is a rapid, convenient and high-throughput analyzing method. The urine tree analysis proteomic pattern as a screening tool is effective for differential diagnosis of bladder cancer. More detailed studies are needed to further evaluate the clinical value of this pattern.

摘要

目的

利用表面增强激光解吸电离飞行时间质谱(SELDI-TOF-MS)技术,建立一种质谱尿谱树分析模式,以区分膀胱移行细胞癌(TCC)与非癌性病变。

方法

使用IMAC-Cu-3蛋白质芯片对61例膀胱移行细胞癌(TCC)患者、53名健康志愿者和42例其他泌尿生殖系统疾病患者的尿液样本进行分析。通过SELDI-TOF-MS生成蛋白质组谱。一组初步的“训练”谱来自对46例TCC患者、32例良性泌尿生殖系统疾病(BUD)患者和40名年龄匹配的未受影响健康男性尿液的分析,用于训练和开发一种决策树分类算法,该算法识别出一种能有效区分癌症与非癌症的精细蛋白质质量模式。一个包含38例病例的盲法测试集用于确定分类系统的敏感性和特异性。

结果

该算法识别出一种聚类模式,在训练集中,区分癌症与非癌症的敏感性为84.8%,特异性为91.7%。这种区分模式被正确识别。将TCC与非癌症进行比较时,盲法测试的敏感性为93.3%,特异性为87%。

结论

SELDI-TOF-MS技术是一种快速、便捷且高通量的分析方法。尿树分析蛋白质组模式作为一种筛查工具,对膀胱癌的鉴别诊断有效。需要更详细的研究来进一步评估这种模式的临床价值。

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