This study aims to address the challenge of matrix interference of various types of edible oils on intrinsic fluorescence of aflatoxin B (AFB) by developing a novel solution. Considering the fluorescence internal filtering effect, the absorption (μ) and reduced scattering (μ') coefficients at dual wavelengths (excitation: 375 nm, emission: 450 nm) were obtained by using integrating sphere technique, and were used to improve the quantitative prediction results for AFB contents in six different kinds of edible oils. A research process of "Monte Carlo (MC) simulation - phantom verification - actual sample validation" was conducted. The MC simulation was used to determine interference rule and correction parameters for fluorescence, the results indicated that the escaped fluorescence flux nonlinearly decreased with the μ, μ' at emission wavelength (μ, μ') and μ at excitation wavelength (μ), however increased with the μ' at excitation wavelength (μ'). And the required optical parameters to eliminate the interference of matrix on fluorescence intensity are: effective attenuation coefficients at excitation and emission wavelengths (μ, μ) and μ'. Phantom verification was conducted to explore the feasibility of fluorescence correction based on the identified parameters by MC simulation, and determine the optimal machine learning method. The modelling results showed that least squares support vector regression (LSSVR) model could reach the best performance. Three kinds of edible oil (peanut, rapeseed, corn), each with two brands were used to prepare oil samples with different AFB contamination. The LSSVR model for AFB based on μ, μ, μ' and fluorescence intensity at 450 nm was calibrated, both correlation coefficients for calibration (R) and the validation (R) sets could reach 1.000, root mean square errors for calibration (RMSEC) and the validation (RMSEV) sets were as low as 0.038 and 0.099 respectively. This study proposed a novel method which is based solely on the absorption, scattering, and fluorescence characteristics at excitation and emission wavelengths to achieve accurate prediction of AFB content in different types of vegetable oils.
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http://dx.doi.org/10.1016/j.saa.2024.123900 | DOI Listing |
Front Cell Infect Microbiol
January 2025
Department of Tuberculosis, The Fourth People's Hospital of Nanning, Nanning, China.
Background: This study aimed to explore the accuracy of third-generation nanopore sequencing to diagnose extrapulmonary tuberculosis (EPTB).
Methods: Samples were collected from the lesions of 67 patients with suspected EPTB admitted between April 2022 and August 2023. Nanopore sequencing, acid-fast bacilli (AFB) staining, DNA testing, and X-pert and mycobacterial cultures were performed.
Med Sci Sports Exerc
November 2024
Department of Kinesiology, School of Education and Human Development, University of Virginia, Charlottesville, VA.
Introduction: Force plate systems are increasingly utilized in the armed forces that claim to identify individuals at risk of musculoskeletal injury. However, factors influencing injury risk scores from a force plate system (SpartaScienceTM), and the effects of experimental perturbations on these scores, remain unclear.
Methods: Healthy males (n = 823; 22.
Appl Spectrosc
December 2024
Nuclear Mission Branch, Air Force Research Laboratory, Kirtland AFB, New Mexico, USA.
This work implements a mid-level data fusion methodology on spectral data from handheld X-ray fluorescence and laser-induced breakdown spectroscopy analyzers to quantify plutonium surrogate (CeO) contamination in soil samples for the first time. Spectral data from each analyzer were used independently to train supervised machine learning regressions to predict Ce concentration. Fused features from both data sets were then used to train the same models, comparing prediction performance by evaluating model precision and sensitivity.
View Article and Find Full Text PDFFood Chem
March 2025
Department of Agrotechnology and Food Sciences, Wageningen, The Netherlands. Electronic address:
Protein-flavor binding is a common challenge in food formulation. Prediction models provide a time-, resource-, and cost-efficient way to investigate how the structural and physicochemical properties of flavor compounds affect this binding mechanism. This study presents a Quantitative Structure-Activity Relationship model derived from five commercial plant-based proteins and thirty-three flavor compounds.
View Article and Find Full Text PDFAm J Emerg Med
November 2024
Department of Anesthesiology, University of Colorado - Anschutz Medical Campus, Aurora, Colorado, United States.
Background: The value of routine bedside lung ultrasound (LUS) for predicting patient disposition during visits to the Emergency Department (ED) is difficult to quantify. We hypothesized that a simplified scoring of bedside-acquired LUS images for the triage of acute respiratory symptoms in the ED would be associated with patient disposition.
Methods: For this observational pragmatic study, we reviewed prospectively-collected bedside LUS images from patients presenting to the ED with acute respiratory symptoms.
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