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首页> 外文期刊>Vibrational Spectroscopy: An International Journal devoted to Applications of Infrared and Raman Spectroscopy >Analysis of Raman spectroscopy data with algorithms based on paraconsistent logic for characterization of skin cancer lesions
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Analysis of Raman spectroscopy data with algorithms based on paraconsistent logic for characterization of skin cancer lesions

机译:基于滞后性逻辑的算法分析拉曼光谱数据,以表征皮肤癌病变

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Analysis of the Raman data to obtain results in discrimination models is usually done with multivariate statistics based on principal component analysis (PCA). In this work, we present a technique based on a non-classical logic called paraconsistent logic (PL). The aim of this work is to use computational procedures capable of generating efficient expert systems to discriminate cutaneous tissue samples obtained by Raman spectroscopy. First, a set of algorithms originating from PL is presented, and then its application in discrimination analyses is described; the discrimination analysis was conducted using a database of skin tissue samples obtained ex vivo by Raman spectroscopy of spectrum range of 400-1800 cm(-1) wavelengths. Data processing, pattern creation, and comparisons were performed using the set of paraconsistent algorithms (SPA-PAL2v). The total number of samples was divided into four histopathological groups, with 115 spectra of basal cell carcinoma (BCC), 21 spectra of squamous cell carcinoma (SCC), 57 spectra of actinic keratosis (AK), and 30 normal skin (NO) spectra. An arrangement type was created for this study, and the samples were randomly selected and analyzed, and the NO group was compared with the group of non-melanoma cancer lesions (BCC + SCC) and the AK tumor lesion. Two analyses were performed. The first (SPA-PAL2v) Mode 1 (no cross-validation) achieved 76% of hits, and the second (SPA-PAL2v) Mode 2 (with cross-validation) achieved 75.78% of hits. These results were compared with discrimination using PCA statistical methods (PCA/DA) and presented superior percentages of hits, which proves the robustness of the SPA-PAL2v, confirming its potential for Raman spectrum data analysis.
机译:基于主成分分析(PCA)的多变量统计,通常使用多元统计数据来获得判别模型的拉曼数据的分析。在这项工作中,我们提出了一种基于非古典逻辑的技术,称为滞后逻辑(PL)。这项工作的目的是利用能够产生有效专家系统来区分通过拉曼光谱获得的皮肤组织样本的计算程序。首先,提出了一组源自PL的算法,并描述了其在辨别分析中的应用;使用通过拉曼光谱范围为400-1800cm(-1)波长的拉曼光谱法,进行歧视分析。数据处理,模式创建和比较是使用该组滞假算法(SPA-PAL2V)进行的。将样品的总数分为四个组织病理学基团,具有115个基础细胞癌(BCC)的光谱,21个鳞状细胞癌(SCC),57个光化角膜病(AK)和30个正常皮肤(NO)光谱。为该研究创建了一种布置类型,并随机选择并分析样品,并将NO组与非黑色素瘤癌病变(BCC + SCC)和AK肿瘤病变进行比较。进行了两次分析。第一个(SPA-PAL2V)模式1(无交叉验证)达到76%的命中,第二(SPA-PAL2V)模式2(带交叉验证)达到75.78%的命中。将这些结果与使用PCA统计方法(PCA / DA)的鉴别进行了比较,并呈现出优越的命中百分比,证明了SPA-PAL2V的稳健性,确认其对拉曼谱数据分析的可能性。

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