Cluster analysis of the results of intraoperative optical spectroscopic diagnostics In brain glioma neurosurgery

Q3 Medicine
I. Osmakov, T. Savelieva, V. Loschenov, S. Goryajnov, A. Potapov
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引用次数: 2

Abstract

The paper presents the results of a comparative study of methods of cluster analysis of optical intraoperative spectroscopy data during surgery of glial tumors with varying degree of malignancy. The analysis was carried out both for individual patients and for the entire dataset. The data were obtained using combined optical spectroscopy technique, which allowed simultaneous registration of diffuse reflectance spectra of broadband radiation in the 500–600 nm spectral range (for the analysis of tissue blood supply and the degree of hemoglobin oxygenation), fluorescence spectra of 5‑ALA induced protoporphyrin IX (Pp IX) (for analysis of the malignancy degree) and signal of diffusely reflected laser light used to excite Pp IX fluorescence (to take into account the scattering properties of tissues). To determine the threshold values of these parameters for the tumor, the infltration zone and the normal white matter, we searched for the natural clusters in the available intraoperative optical spectroscopy data and compared them with the results of the pathomorphology. It was shown that, among the considered clustering methods, EM‑algorithm and k‑means methods are optimal for the considered data set and can be used to build a decision support system (DSS) for spectroscopic intraoperative navigation in neurosurgery. Results of clustering relevant to thepathological studies were also obtained using the methods of spectral and agglomerative clustering. These methods can be used to postprocess combined spectroscopy data.
脑胶质瘤神经外科术中光谱诊断结果的聚类分析
本文对不同恶性程度神经胶质肿瘤术中光学光谱数据的聚类分析方法进行了比较研究。该分析是针对个别患者和整个数据集进行的。数据采用组合光谱学技术获得,该技术允许同时注册500-600 nm光谱范围内的宽带辐射漫反射光谱(用于分析组织血供和血红蛋白氧合程度);5‑ALA诱导原卟啉IX (Pp IX)的荧光光谱(用于分析其恶性程度)和用于激发Pp IX荧光的漫反射激光信号(考虑组织的散射特性)。为了确定肿瘤、浸润区和正常白质的这些参数的阈值,我们在术中可用的光学光谱数据中寻找自然簇,并将其与病理形态学结果进行比较。结果表明,在考虑的聚类方法中,EM算法和k均值方法对考虑的数据集最优,可用于构建神经外科术中光谱导航的决策支持系统(DSS)。采用光谱聚类和聚类聚类的方法,得到与病理研究相关的聚类结果。这些方法可用于组合光谱数据的后处理。
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
Biomedical Photonics
Biomedical Photonics Medicine-Surgery
CiteScore
1.80
自引率
0.00%
发文量
19
审稿时长
8 weeks
期刊介绍: The main goal of the journal – to promote the development of Russian biomedical photonics and implementation of its advances into medical practice. The primary objectives: - Presentation of up-to-date results of scientific and in research and scientific and practical (clinical and experimental) activity in the field of biomedical photonics. - Development of united Russian media for integration of knowledge and experience of scientists and practitioners in this field. - Distribution of best practices in laser medicine to regions. - Keeping the clinicians informed about new methods and devices for laser medicine - Approval of investigations of Ph.D candidates and applicants.
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