Service d'Hépato-Gastroentérologie, Centre Hospitalo-Universitaire de Reims, Hôpital R Debré, Reims, France.
Anal Bioanal Chem. 2011 Nov;401(9):2919-25. doi: 10.1007/s00216-011-5402-8. Epub 2011 Sep 20.
Assessment of liver fibrosis is of paramount importance to guide the therapeutic strategy in patients with chronic hepatitis C (CHC). In this pilot study, we investigated the potential of serum Fourier transform infrared (FTIR) spectroscopy for differentiating CHC patients with extensive hepatic fibrosis from those without fibrosis. Twenty-three serum samples from CHC patients were selected according to the degree of hepatic fibrosis as evaluated by the FibroTest: 12 from patients with no hepatic fibrosis (F0) and 11 from patients with extensive fibrosis (F3-F4). The FTIR spectra (ten per sample) were acquired in the transmission mode and data homogeneity was tested by cluster analysis to exclude outliers. After selection of the most discriminant wavelengths using an ANOVA-based algorithm, the support vector machine (SVM) method was used as a supervised classification model to classify the spectra into two classes of hepatic fibrosis, F0 and F3-F4. Given the small number of samples, a leave-one-out cross-validation algorithm was used. When SVM was applied to all spectra (n = 230), the sensitivity and specificity of the classifier were 90.1% and 100%, respectively. When SVM was applied to the subset of 219 spectra, i.e., excluding the outliers, the sensitivity and specificity of the classifier were 95.2% and 100%, respectively. This pilot study strongly suggests that the serum from CHC patients exhibits infrared spectral characteristics, allowing patients with extensive fibrosis to be differentiated from those with no hepatic fibrosis.
肝纤维化的评估对于指导慢性丙型肝炎(CHC)患者的治疗策略至关重要。在这项初步研究中,我们研究了血清傅里叶变换红外(FTIR)光谱在区分 CHC 患者广泛纤维化与无纤维化的潜在价值。根据 FibroTest 评估的肝纤维化程度,从 CHC 患者中选择了 23 个血清样本:12 个来自无纤维化(F0)患者,11 个来自广泛纤维化(F3-F4)患者。以透射模式采集 FTIR 光谱(每个样本 10 次),并通过聚类分析测试数据均匀性,以排除异常值。在用基于方差分析的算法选择最具判别力的波长后,使用支持向量机(SVM)方法作为有监督分类模型将光谱分为两类肝纤维化,F0 和 F3-F4。由于样本数量较少,采用了留一交叉验证算法。当 SVM 应用于所有光谱(n = 230)时,分类器的灵敏度和特异性分别为 90.1%和 100%。当 SVM 应用于 219 个光谱子集,即排除异常值时,分类器的灵敏度和特异性分别为 95.2%和 100%。这项初步研究强烈表明,CHC 患者的血清表现出红外光谱特征,可区分广泛纤维化患者和无纤维化患者。