Spectral characteristics of urine from patients with end-stage kidney disease analyzed using Raman Chemometric Urinalysis (Rametrix)
Autor: | Emily Baker, Hana Coogan, Meaghan Sullivan, Varun Kavuru, Stephanie Lundgren, Giuseppe Orlando, Caitlin Steen, Ben Agnor, Pang Du, Kristen Merrifield, Allan Sklar, Tommy Vu, John L. Robertson, James L. Pirkle, Susan Guelich, Lampros Karageorge, Austin Gouldin, Devasmita Dev, Gabrielle Martinez, William Carswell, Ryan S. Senger |
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Rok vydání: | 2020 |
Předmět: |
Male
Physiology medicine.medical_treatment Urine Spectrum Analysis Raman Biochemistry 01 natural sciences Mathematical and Statistical Techniques Dialysis Solutions Chronic Kidney Disease Medicine and Health Sciences Statistical Data Aged 80 and over Principal Component Analysis 0303 health sciences Multidisciplinary medicine.diagnostic_test Statistics Middle Aged Healthy Volunteers Body Fluids Data Accuracy Nephrology Physical Sciences symbols Medicine Female Analysis of variance Anatomy Peritoneal Dialysis Research Article Adult medicine.medical_specialty Adolescent Urinalysis Science Urology Research and Analysis Methods Sensitivity and Specificity Peritoneal dialysis Young Adult 03 medical and health sciences symbols.namesake Medical Dialysis medicine Metabolomics Humans Statistical Methods End-stage kidney disease Aged 030306 microbiology business.industry 010401 analytical chemistry Biology and Life Sciences Spectral processing medicine.disease 0104 chemical sciences Metabolism Specimen Preparation and Treatment Multivariate Analysis Kidney Failure Chronic business Raman spectroscopy Mathematics Biomarkers Kidney disease |
Zdroj: | PLoS ONE PLoS ONE, Vol 15, Iss 1, p e0227281 (2020) |
ISSN: | 1932-6203 |
DOI: | 10.1371/journal.pone.0227281 |
Popis: | Raman Chemometric Urinalysis (RametrixTM) was used to discern differences in Raman spectra from (i) 362 urine specimens from patients receiving peritoneal dialysis (PD) therapy for end-stage kidney disease (ESKD), (ii) 395 spent dialysate specimens from those PD therapies, and (iii) 235 urine specimens from healthy human volunteers. RametrixTM analysis includes spectral processing (e.g., truncation, baselining, and vector normalization); principal component analysis (PCA); statistical analyses (ANOVA and pairwise comparisons); discriminant analysis of principal components (DAPC); and testing DAPC models using a leave-one-out build/test validation procedure. Results showed distinct and statistically significant differences between the three types of specimens mentioned above. Further, when introducing "unknown" specimens, RametrixTM was able to identify the type of specimen (as PD patient urine or spent dialysate) with better than 98% accuracy, sensitivity, and specificity. RametrixTM was able to identify "unknown" urine specimens as from PD patients or healthy human volunteers with better than 96% accuracy (with better than 97% sensitivity and 94% specificity). This demonstrates that an entire Raman spectrum of a urine or spent dialysate specimen can be used to determine its identity or the presence of ESKD by the donor. |
Databáze: | OpenAIRE |
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