Ramanujam N, Mitchell M F, Mahadevan A, Thomsen S, Malpica A, Wright T, Atkinson N, Richards-Kortum R
Biomedical Engineering Program, University of Texas, Austin 78705, USA.
Lasers Surg Med. 1996;19(1):46-62. doi: 10.1002/(SICI)1096-9101(1996)19:1<46::AID-LSM7>3.0.CO;2-Q.
A general multivariate statistical algorithm has been developed to analyze the diagnostic content of cervical tissue fluorescence spectra acquired in vivo.
The primary steps of the algorithm are to: (1) preprocess the data to reduce inter-patient and intra-patient variation of tissue spectra within a diagnostic category, without a priori information, (2) dimensionally reduce the preprocessed fluorescence emission spectrum with minimal information loss and use it to select the minimum number of the original emission variables of the fluorescence spectrum required to achieve classification with negligible decrease in predictive ability, and (3) assign a posterior probability to the diagnosis of each sample, so that samples with relative uncertain diagnosis can be reevaluated by a clinician. The algorithm was tested retrospectively and prospectively on cervical tissue spectra acquired from 476 sites from 92 patients at 337 nm excitation.
The algorithm based on the entire fluorescence spectrum differentiates squamous intraepithelial lesions (SILs) from normal squamous epithelia and inflammation with an average sensitivity and specificity of 88% +/- 1.4 and 70% +/- 1, respectively. The average sensitivity and specificity of the identical algorithm based on intensity selected at only two emission wavelengths is 88% +/- 1.4 and 71% +/- 1.4, respectively.
The multivariate statistical algorithm based on both types of spectral inputs at 337 nm excitation has a similar sensitivity and significantly improved specificity relative to colposcopy in expert hands.
已开发出一种通用的多元统计算法,用于分析体内获取的宫颈组织荧光光谱的诊断内容。
该算法的主要步骤为:(1)对数据进行预处理,以减少诊断类别内患者间和患者内组织光谱的变化,无需先验信息;(2)在信息损失最小的情况下对预处理后的荧光发射光谱进行降维,并使用其选择荧光光谱的原始发射变量的最小数量,以实现分类,同时预测能力的下降可忽略不计;(3)为每个样本的诊断赋予后验概率,以便临床医生对诊断相对不确定的样本进行重新评估。该算法在337nm激发下从92例患者的476个部位获取的宫颈组织光谱上进行了回顾性和前瞻性测试。
基于整个荧光光谱的算法可将鳞状上皮内病变(SILs)与正常鳞状上皮和炎症区分开来,平均灵敏度和特异度分别为88%±1.4和70%±1。基于仅在两个发射波长处选择的强度的相同算法的平均灵敏度和特异度分别为88%±1.4和71%±1.4。
基于337nm激发下两种光谱输入类型的多元统计算法,与专家操作的阴道镜检查相比,具有相似的灵敏度和显著提高的特异度。