首页> 外文会议>2012 19th Iranian Conference of Biomedical Engineering >Optical spectroscopy combined with neural network classification improves diagnosis of cervical precancerous lesions
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Optical spectroscopy combined with neural network classification improves diagnosis of cervical precancerous lesions

机译:光谱结合神经网络分类可改善宫颈癌前病变的诊断

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In this study the value of an optical reflectance spectroscopy method in diagnosis of cervical squamous intraepithelial lesions (SIL) was assessed. Single fiber reflectance (SFR) spectroscopy was used to measure reflected light from thirty two patients undergoing standard colposcopy. Seven parameters extracted from the spectra in addition to two biographic parameters were compared in biopsy-confirmed SIL versus non-SIL. The tissue classification was done using two types of neural networks including radial basis function (RBF) and feed-forward backpropagation (FFBP) networks. The classification performance was evaluated by leave - one - out (LOO) and 5-fold (5F) cross-validation methods. Also, the minimum number of neurons required for perfect discrimination with both networks was compared. The best performance was seen using FFBP network with four neurons to achieve a perfect tissue classification. However, RBF required at least 9 neurons for a similar performance although with a shorter run time. Using FFBP the best retrospective sensitivity, specificity and area under the receiver operating characteristic (ROC) curve for discrimination of diseased versus non-diseased sites were 70%, 74% and 0.71, respectively. The results showed that the SFR spectroscopy shows promise as a non-invasive, real-time method to guide the clinician in reducing the number of unnecessary biopsies. Discrimination of SIL from other abnormalities compares favorably with that obtained by fluorescence alone and by fluorescence combined with reflectance spectroscopy while the simplicity and low cost of the presented system are dominant.
机译:在这项研究中,评估了光反射光谱法在宫颈鳞状上皮内病变(SIL)诊断中的价值。单纤维反射率(SFR)光谱用于测量来自32例接受标准阴道镜检查的患者的反射光。在两个活检确认的SIL与非SIL中,比较了从光谱中提取的七个参数以及两个生物学参数。使用两种类型的神经网络对组织进行分类,包括径向基函数(RBF)和前馈反向传播(FFBP)网络。分类性能通过留一法(LOO)和5倍(5F)交叉验证方法进行评估。此外,还比较了两个网络完全区分所需的最小神经元数量。使用带有四个神经元的FFBP网络可看到最佳性能,以实现完美的组织分类。但是,RBF需要至少9个神经元才能达到类似的性能,尽管运行时间较短。使用FFBP,区分患病和非患病部位的最佳回顾性敏感性,特异性和受体工作特征(ROC)曲线下面积分别为70%,74%和0.71。结果表明,SFR光谱法有望作为一种无创,实时的方法来指导临床医生减少不必要的活检次数。 SIL与其他异常的区别优于单独使用荧光以及通过荧光与反射光谱法相结合所获得的SIL,而本系统的简单性和低成本是主要的。

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