Spatially Resolved Fibre-Optic Probe for Cervical Precancer Detection Using Fluorescence Spectroscopy and PCA-ANN-Based Classification Algorithm: An In Vitro Study.

Journal of biophotonics Pub Date : 2024-11-01 Epub Date: 2024-10-08 DOI:10.1002/jbio.202400284
Shivam Shukla, Bhaswati Singha Deo, Nemichand, Pankaj Singh, Prabodh Kumar Pandey, Asima Pradhan
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Abstract

Cervical cancer can be detected at an early stage through the changes occurring in biochemical and morphological properties of epithelium layer. Fluorescence spectroscopy has the ability to identify these subtle changes non-invasively and in real time with good accuracy in comparison with conventional techniques. In this paper, we report the usage of a custom designed spatially resolved fibre-optic probe (SRFOP), which consists of 77 fibres in two concentric rings, for the detection of cervical cancer using fluorescence spectroscopy technique. The aim of this study is to classify different grades of cervical precancer on the basis of their fluorescence spectra followed by a robust classification algorithm. Fluorescence spectra of 28 cervical tissue samples of different categories have been recorded using six detector fibres of FOP at different spatial locations with the source fibre (SF). A 405 nm laser diode source has been utilised to excite the samples and a USB 4000 Ocean Optics spectrometer to collect the output spectra in the wavelength range 400-700 nm. Principal component analysis (PCA) was applied to the collected spectra to reduce the dimensionality of the data while preserving the most significant features for classification. The first 10 principal components, which captured the majority of the variance in the spectra, were selected as input features for the classification model. Classification was then performed using an artificial neural network (ANN) with a specific architecture, including an input layer, hidden layers, and a softmax activation function in the output layer. Experimental and classification results both demonstrate that proximal fibres (PFs) perform better than distal fibres (DFs) in capturing the discriminatory features present in the epithelium layer of cervical tissue samples as PF collect most of the signal from the epithelium layer. The combined approach of spatially resolved fluorescence spectroscopy and PCA-ANN classification techniques is able to discriminate different grades of cervical precancer and normal with an average sensitivity, specificity and accuracy of 93.33%, 96.67% and 95.57%, respectively.

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利用荧光光谱学和基于 PCA-ANN 分类算法的空间分辨光纤探针检测宫颈癌前病变:体外研究
宫颈癌可通过上皮细胞层的生化和形态特性的变化在早期发现。与传统技术相比,荧光光谱技术能够非侵入性地实时识别这些微妙的变化,并具有良好的准确性。在本文中,我们报告了定制设计的空间分辨光纤探头(SRFOP)的使用情况,该探头由 77 根光纤组成两个同心环,利用荧光光谱技术检测宫颈癌。这项研究的目的是根据荧光光谱对不同等级的宫颈癌前病变进行分类,然后采用一种稳健的分类算法。使用 FOP 的六根检测光纤,在不同的空间位置记录了 28 个不同类别宫颈组织样本的荧光光谱。405 nm 激光二极管源用于激发样品,USB 4000 Ocean Optics 光谱仪用于收集波长范围为 400-700 nm 的输出光谱。对收集到的光谱进行了主成分分析(PCA),以降低数据的维度,同时保留最重要的分类特征。前 10 个主成分捕获了光谱中的大部分差异,被选为分类模型的输入特征。然后使用具有特定结构的人工神经网络(ANN)进行分类,该结构包括输入层、隐藏层和输出层中的软最大激活函数。实验和分类结果都表明,近端纤维(PF)在捕捉宫颈组织样本上皮细胞层的鉴别特征方面比远端纤维(DF)更胜一筹,因为近端纤维收集了上皮细胞层的大部分信号。空间分辨荧光光谱和 PCA-ANN 分类技术的组合方法能够区分不同等级的宫颈癌前病变和正常病变,其平均灵敏度、特异性和准确性分别为 93.33%、96.67% 和 95.57%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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