拉曼光谱
牙周炎
唾液
支持向量机
化学
白蛋白
分析化学(期刊)
数学
模式识别(心理学)
材料科学
人工智能
牙科
色谱法
物理
计算机科学
医学
生物化学
光学
作者
Caroleny Eloiza Villalba Hernández,María de los Angeles Moyaho‐Bernal,F. Narea-Jiménez,H.N. Chavarría-Lizárraga,María Cecilia Galeazzi‐Minutti,Rosendo Carrasco‐Gutiérrez,J. Castro-Ramos
摘要
Abstract Many research areas have developed techniques to diagnose lung cancer, cardiovascular diseases, stress, caries, and periodontitis by analyzing saliva. This paper describes a study that predicts periodontitis based on Raman spectra of saliva and biomarkers, such as albumin and alanine aminotransferase (ALT). The spectra were smoothed using a Whittaker filter and baseline correction in MATLAB. In addition, a residual analysis of intensities was performed, and the root mean square deviation was calculated and used as a threshold to establish the active bands of interest, based on the Raman bands associated with albumin and ALT. ORCA quantum chemistry software was used to predict the fundamental frequencies and intensities of some saliva constituents. Support vector machines were used to perform spectral distinction and discriminate between healthy and periodontitis patients.
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