Wu Shao-Pai, Lin Ya-Wen, Lai Hung-Cheng, Chu Tang-Yuan, Kuo Yu-Liang, Liu Hang-Seng
Department of Obstetrics and Gynecology, Army Forces Tao-Yuan General Hospital, Tao-Yuan, Taiwan.
Taiwan J Obstet Gynecol. 2006 Mar;45(1):26-32. doi: 10.1016/S1028-4559(09)60186-8.
Proteomic profiling of plasma or serum is a technique to identify new biomarkers in disease. The objective of this study was to identify new plasma biomarkers in ovarian cancer patients using mass spectrometry protein profiling and artificial intelligence.
A total of 65 plasma samples obtained from women with ovarian cancer (n = 35) and age-matched disease-free controls (n = 30) were applied to anion exchange protein chips for protein profiling by surface-enhanced laser desorption/ionization time-of-flight mass spectrometry (SELDI-TOF MS).
SELDI-TOF MS was highly reproducible in detecting ovarian tumor-specific protein profiles. One protein peak (relative molecular mass, Mr, 11,537 Da) was identified in plasma from women with ovarian cancer but not in controls. Two peaks, Mr 5,147 and 8,780 Da, were present in the plasma of controls but not of women with ovarian cancer. After a training analysis, classification analysis generated by univariant or linear combination split was performed to reach a discriminant protein signature pattern. After cross validation, a sensitivity of 84% and specificity of 89% for all studied cases and controls was reached.
This study clearly demonstrates that the combined technology of SELDI-TOF MS and artificial intelligence is effective in distinguishing protein expression between normal and ovarian cancer plasma. The identified protein peaks may be candidate proteins for early detection of ovarian cancer or evaluation of therapeutic response.
血浆或血清蛋白质组分析是一种在疾病中识别新生物标志物的技术。本研究的目的是使用质谱蛋白质谱分析和人工智能识别卵巢癌患者新的血浆生物标志物。
从卵巢癌女性患者(n = 35)和年龄匹配的无病对照者(n = 30)中获取的总共65份血浆样本应用于阴离子交换蛋白质芯片,通过表面增强激光解吸/电离飞行时间质谱(SELDI-TOF MS)进行蛋白质谱分析。
SELDI-TOF MS在检测卵巢肿瘤特异性蛋白质谱方面具有高度可重复性。在卵巢癌女性患者的血浆中鉴定出一个蛋白质峰(相对分子质量,Mr,11,537 Da),而在对照者中未鉴定出。对照者血浆中存在Mr 5,147和8,780 Da的两个峰,而卵巢癌女性患者血浆中不存在。经过训练分析后,进行单变量或线性组合拆分生成的分类分析以得出判别性蛋白质特征模式。经过交叉验证,所有研究的病例和对照者的敏感性达到84%,特异性达到89%。
本研究清楚地表明,SELDI-TOF MS和人工智能的联合技术在区分正常血浆和卵巢癌血浆中的蛋白质表达方面是有效的。鉴定出的蛋白质峰可能是用于卵巢癌早期检测或治疗反应评估的候选蛋白质。