Cervical Cancer Prognosis and Diagnosis Using Electrical Impedance Spectroscopy.

Q3 Biochemistry, Genetics and Molecular Biology
Journal of Electrical Bioimpedance Pub Date : 2021-12-27 eCollection Date: 2021-01-01 DOI:10.2478/joeb-2021-0018
Ping Li, Peter E Highfield, Zi-Qiang Lang, Darren Kell
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引用次数: 3

Abstract

Electrical impedance spectroscopy (EIS) has been used as an adjunct to colposcopy for cervical cancer diagnosis for many years, Currently, the template match method is employed for EIS measurements analysis, where the measured EIS spectra are compared with the templates generated from three-dimensional finite element (FE) models of cancerous and non-cancerous cervical tissue, and the matches between the measured EIS spectra and the templates are then used to derive a score that indicates the association strength of the measured EIS to the High-Grade Cervical Intraepithelial Neoplasia (HG CIN). These FE models can be viewed as the computational versions of the associated physical tissue models. In this paper, the problem is revisited with an objective to develop a new method for EIS data analysis that might reveal the relationship between the change in the tissue structure due to disease and the change in the measured spectrum. This could provide us with important information to understand the histopathological mechanism that underpins the EIS-based HG CIN diagnostic decision making and the prognostic value of EIS for cervical cancer diagnosis. A further objective is to develop an alternative EIS data processing method for HG CIN detection that does not rely on physical models of tissues so as to facilitate extending the EIS technique to new medical diagnostic applications where the template spectra are not available. An EIS data-driven method was developed in this paper to achieve the above objectives, where the EIS data analysis for cervical cancer diagnosis and prognosis were formulated as the classification problems and a Cole model-based spectrum curve fitting approach was proposed to extract features from EIS readings for classification. Machine learning techniques were then used to build classification models with the selected features for cervical cancer diagnosis and evaluation of the prognostic value of the measured EIS. The interpretable classification models were developed with real EIS data sets, which enable us to associate the changes in the observed EIS and the risk of being HG CIN or developing HG CIN with the changes in tissue structure due to disease. The developed classification models were used for HG CIN detection and evaluation of the prognostic value of EIS and the results demonstrated the effectiveness of the developed method. The method developed is of long-term benefit for EIS-based cervical cancer diagnosis and, in conjunction with standard colposcopy, there is the potential for the developed method to provide a more effective and efficient patient management strategy for clinic practice.

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应用电阻抗谱分析宫颈癌预后及诊断。
多年来,电阻抗谱(EIS)一直被用作宫颈癌症诊断的阴道镜辅助手段。目前,采用模板匹配方法进行EIS测量分析,其中将测量的EIS谱与癌性和非癌性宫颈组织的三维有限元(FE)模型生成的模板进行比较,然后使用测量的EIS光谱和模板之间的匹配来导出指示测量的EIS与高级别宫颈上皮内肿瘤(HG-CIN)的关联强度的分数。这些FE模型可以被视为相关物理组织模型的计算版本。在本文中,我们重新审视了这个问题,目的是开发一种新的EIS数据分析方法,该方法可能揭示疾病引起的组织结构变化与测量光谱变化之间的关系。这可以为我们提供重要信息,以了解基于EIS的HG CIN诊断决策的组织病理学机制以及EIS对宫颈癌症诊断的预后价值。另一个目标是开发一种用于HG CIN检测的替代EIS数据处理方法,该方法不依赖于组织的物理模型,以便于将EIS技术扩展到模板光谱不可用的新的医学诊断应用。为了实现上述目标,本文开发了一种EIS数据驱动方法,其中将宫颈癌症诊断和预后的EIS数据分析公式化为分类问题,并提出了基于Cole模型的频谱曲线拟合方法来从EIS读数中提取特征进行分类。然后使用机器学习技术建立具有选定特征的分类模型,用于宫颈癌症诊断和测量EIS的预后价值评估。可解释的分类模型是用真实的EIS数据集开发的,这使我们能够将观察到的EIS的变化、HG CIN或发展为HG CIN的风险与疾病引起的组织结构变化联系起来。所开发的分类模型用于HG CIN的检测和EIS预后价值的评估,结果证明了所开发方法的有效性。所开发的方法对基于EIS的宫颈癌症诊断具有长期益处,并且结合标准阴道镜检查,所开发的该方法有可能为临床实践提供更有效和高效的患者管理策略。
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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来源期刊
Journal of Electrical Bioimpedance
Journal of Electrical Bioimpedance Engineering-Biomedical Engineering
CiteScore
3.00
自引率
0.00%
发文量
8
审稿时长
17 weeks
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