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Proteome Characteristic Pattern Study of Unstable Angina with Blood Stasis Symptom based on least angle regression algorithm

机译:基于最小角度回归算法的血瘀症状蛋白质组特征模式研究

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The aim of this study was to analyze the proteome characteristic pattern of unstable angina with blood stasis symptom. Plasma samples were obtained from twelve unstable angina patients and twelve healthy volunteers. To remove the six most abundant proteins, a polyclonal antibody affinity column was used. Then, the two classes of samples were separated by 2D-DIGE. The differentially expressed protein spots were selected and identified with matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF-MS) or MS-MS. In the end, using least angle regression algorithm, we studied the proteome characteristic pattern of unstable angina with blood stasis symptom. There are significant difference between unstable angina patients and healthy volunteers. The seventeen proteins made pattern could distinguish unstable angina with qi deficiency and blood stasis syndrome patients from the healthy people and it is probably the proteome characteristic pattern of unstable angina patients with qi deficiency and blood stasis syndrome; The twelve proteins made pattern could distinguish unstable angina with intermingled phlegm and blood stasis syndrome patients from the healthy people and it is probably the proteome characteristic pattern of unstable angina patients with intermingled phlegm and blood stasis syndrome. Using the seventeen proteins made pattern, the unstable angina with qi deficiency and blood stasis syndrome diagnosis accuracy could reach 100%. Using the twelve proteins made pattern, the unstable angina with intermingled phlegm and blood stasis syndrome diagnosis accuracy also could reach 100%. The least angle regression may be a suitable data mining method for the discovery of illness diagnosis pattern.
机译:本研究的目的是分析不稳定心绞痛的蛋白质组特征模式,血瘀症状。从12个不稳定的心绞痛患者和12名健康志愿者获得等离子体样品。为了去除六种最丰富的蛋白质,使用多克隆抗体亲和力柱。然后,通过2D-Dige分离两类样品。选择差异表达的蛋白质斑点并用基质辅助激光解吸/电离飞行时间质谱(MALDI-TOF-MS)或MS-MS鉴定。最后,使用最小角度回归算法,我们研究了不稳定的心绞痛的蛋白质组特征模式,血瘀症状。不稳定的心绞痛患者和健康志愿者之间存在显着差异。 17种蛋白质制造的模式可以用健康人的血清缺乏症和血瘀综合征患者区分不稳定的心绞痛,这可能是不稳定的心绞痛患者血瘀综合征的蛋白质组特征模式; 12种蛋白质制造的模式可以将不稳定的心绞痛与来自健康人群的杂交和血瘀综合征患者区分,可能是不稳定的肺结气患者的蛋白质组特征模式和血瘀综合征。使用十七蛋白制造的模式,具有Qi缺乏和血瘀综合征诊断精度的不稳定心绞痛可以达到100%。使用12种蛋白质制作的模式,不稳定的心绞痛与痰盂和血瘀综合征诊断精度也可以达到100%。最小角度回归可以是用于发现疾病诊断模式的合适的数据挖掘方法。

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