| Literature DB >> 35119615 |
Robinson Ramírez-Vélez1,2, Nicolás Martínez-Velilla1,2, María Correa-Rodríguez3, Mikel L Sáez de Asteasu1,2, Fabricio Zambom-Ferraresi1,2, Sara Palomino-Echeverria1, Antonio García-Hermoso1,4, Mikel Izquierdo5,6.
Abstract
Identifying serum biomarkers that can predict physical frailty in older adults would have tremendous clinical value for primary care, as this condition is inherently related to poor quality of life and premature mortality. We compared the serum lipid profile of physically frail and robust older adults to identify specific lipid biomarkers that could be used to assess physical frailty in older patients at hospital admission. Forty-three older adults (58.1% male), mean (range) age 86.4 (78-100 years) years, were classified as physically frail (n = 18) or robust (n = 25) based on scores from the Short Physical Performance Battery (≤ 6 points). Non-targeted metabolomic study by ultra-high performance liquid chromatography coupled to mass spectrometry (UHPLC-MS) analysis with later bioinformatics data analysis. Once the significantly different metabolites were identified, the KEGG database was used on them to establish which were the metabolic pathways mainly involved. Area under receiver-operating curve (AUROC) analysis was used to test the discriminatory ability of lipid biomarkers for frailty based on the Short Physical Performance Battery. We identified a panel of five metabolites including ceramides Cer (40:2), Cer (d18:1/20:0), Cer (d18:1/23:0), cholesterol, and phosphatidylcholine (PC) (14:0/20:4) that were significantly increased in physically frail older adults compared with robust older adults at hospital admission. The most interesting in the physically frail metabolome study found with the KEGG database were the metabolic pathways, vitamin digestion and absorption, AGE-RAGE signaling pathway in diabetic complications, and insulin resistance. In addition, Cer (40:2) (AUROC 0.747), Cer (d18:1/23:0) (AUROC 0.720), and cholesterol (AUROC 0.784) were identified as higher values of physically frail at hospital admission. The non-targeted metabolomic study can open a wide view of the physically frail features changes at the plasma level, which would be linked to the physical frailty phenotype at hospital admission. Also, we propose that metabolome analysis will have a suitable niche in personalized medicine for physically frail older adults.Entities:
Keywords: Biomarker; Ceramides; Cholesterol; Frailty; Lipidomic; Older adults; Phosphatidylcholines
Mesh:
Substances:
Year: 2022 PMID: 35119615 PMCID: PMC9213630 DOI: 10.1007/s11357-021-00511-1
Source DB: PubMed Journal: Geroscience ISSN: 2509-2723 Impact factor: 7.581
Clinical and functional characteristics at hospital admission
| Variable | Full sample | Physically frail | Robust | |
|---|---|---|---|---|
| Sex (male) ( | 25 (58.1) | 15 (83.3) | 10 (40.0) | 0.472 |
| Age (years) | 86.4 (4.3) | 87.8 (3.9) | 85.4 (4.3) | 0.075 |
| Body mass (kg) | 69.0 (15.9) | 71.4 (12.9) | 67.2 (17.8) | 0.401 |
| BMI (kg/m2) | 27.5 (5.4) | 27.2 (5.2) | 27.7 (5.6) | 0.790 |
| CIRS-G scoreb | 11.9 (6.3) | 11.0 (7.0) | 12.9 (5.4) | 0.405 |
| Length of hospital stay (days) | 7.2 (2.0) | 7.2 (1.2) | 7.0 (1.6) | 0.560 |
| SPPB (score)c | 6.1 (2.9) | 3.4 (1.3) | 8.1 (2.0) | < 0.001 |
| Gait speed (s (6 m)) | 10.8 (5.1) | 13.7 (6.1) | 8.8 (2.8) | < 0.001 |
| Five times sit-to-stand test (s) | 17.9 (8.5) | 24.9 (11.9) | 15.1 (4.4) | 0.002 |
| MMSE (scored) | 23.0 (4.2) | 22.8 (3.8) | 23.1 (4.6) | 0.829 |
| Barthel Index (ADL) (score)e | 76.3 (17.4) | 69.7 (16.4) | 81.5 (16.7) | 0.030 |
| Handgrip strength (kg) | 17.6 (5.4) | 17.4 (5.4) | 17.7 (5.5) | 0.853 |
Data are presented as the mean (SD), except for the sex group*. BMI, body mass index; CIRS-G, Cumulative Illness Rating Scale for Geriatrics; SPPB, Short Physical Performance Battery. aThe most prevalent diseases were coronary, pulmonary, genitourinary, and neurologic diseases. bThe CIRS-G scale evaluates individual body systems, ranging from 0 (best) to 56 (worst). cThe SPPB scale ranges from 0 (worst) to 12 (best). dMMSE, The Mini-Mental State Examination ranges from 0 (worst) to 30 (best). eThe Barthel Index ranges from 0 (severe functional dependence) to 100 (functional independence)
Fig. 1Principal component analysis (PCA) between the study groups. Score plot of PCA using 250 features identified by the metabolomic study between the study groups. The orange points correspond to physically frail subjects, and the green points correspond to and robust subjects
Fig. 2Heatmap of Cer (40:2), Cer (d18:1/20:0), Cer (d18:1/23:0), cholesterol, and PC (14:0/20:4) after logarithmic transformation of the data
Fig. 3Boxplots of Cer (40:2) (upper left panel), Cer (d18:1/20:0) (upper right panel), Cer (d18:1/23:0) and cholesterol (middle panel), and PC (14:0/20:4) (bottom panel) after logarithmic transformation of the data. FoldChangeLog value for each metabolite was 0.94, 0.87, 0.87, 0.80, and 0.79, respectively
The metabolic pathways most involved in the physically frail metabolome study
| Metabolite (common name) | Chemical formula | KEGG code | KEGG pathways/biological process | KEGG map code |
|---|---|---|---|---|
| Cholesterol | C27H46O | C00187 | Lipid and atherosclerosis | map05417 |
| Vitamin digestion and absorption | map04977 | |||
| Steroid hormone biosynthesis | map00140/map00100 | |||
| Metabolic pathways | map01100 | |||
| Fat digestion and absorption | map04975 | |||
| Cholesterol metabolism | map04979 | |||
| Overview of biosynthetic pathways | map01010 | |||
| Bile secretion | map04976 | |||
| Primary bile acid biosynthesis | map00120 | |||
| Steroid degradation | map00984 | |||
| Microbial metabolism in diverse environments | map01120 | |||
| Ovarian steroidogenesis | map04913 | |||
| Aldosterone synthesis and secretion | map04925 | |||
| Cortisol synthesis and secretion | map04927 | |||
| PC (14:0/20:4) | C42H76NO8P | C00157 | Biosynthesis of secondary metabolites | map01110 |
| Metabolic pathways | map01100 | |||
| alpha-Linolenic acid metabolism | map00592 | |||
| Linoleic acid metabolism | map00591 | |||
| Arachidonic acid metabolism | map00590 | |||
| Glycerophospholipid metabolism | map00564 | |||
| Cer (d18:1/20:0) | C38H75NO3 | C00195 | Sphingolipid signaling pathway | map04071 |
| Insulin resistance | map04931 | |||
| Sphingolipid metabolism | map00600 | |||
| Metabolic pathways | map01100 | |||
| Neurotrophin signaling pathway | map04722 | |||
| Adipocytokine signaling pathway | map04920 | |||
| AGE-RAGE signaling pathway in diabetic complications | map04933 | |||
| Diabetic cardiomyopathy | map05415 | |||
| Cer (d18:1/23:0) | C41H81NO3 | HMDB0000950* | Lipid peroxidation | − |
| Insulin signaling pathway | − | |||
| Apoptosis | − | |||
| Lipid metabolism pathway | − | |||
| Phospholipid metabolism | − | |||
| Lipid transport | − | |||
| Lipid metabolism | − | |||
| Fatty acid metabolism | − |
We used the metabolic pathways by the Kyoto Encyclopedia of Genes and Genomes (KEGG) database were used for searches metabolites by their chemical name in the database and their KEGG codes were registered. This code locates the pathways where the metabolite is involved. Then, the script program obtains the most involved metabolic KEGG pathways by counting the number of metabolites (significantly differentiated) involved in each pathway (https://www.genome.jp/kegg/). *Lipid nomenclature and classification follow the LIPID MAPS convention (https://www.lipidmaps.org) from The Human Metabolome Database (HMDB) ID. –, no informed
Performance of ROC-derived cut-off values for Cer (40:2), Cer (d18:1/20:0), Cer (d18:1/23:0), cholesterol, and PC (14:0/20:4) in identification of physically frail at hospital admission
| Parameter | Cer (40:2) | Cer (d18:1/20:0) | Cer (d18:1/23:0) | Cholesterol | PC (14:0/20:4) |
|---|---|---|---|---|---|
| AUC (SE) | 0.747 (0.0751) | 0.689 (0.0825) | 0.720 (0.0791) | 0.784 (0.0732) | 0.611 (0.0885) |
| 95% CI | 0.591 to 0.867 | 0.530 to 0.821 | 0.562 to 0.846 | 0.633 to 0.895 | 0.450 to 0.756 |
| < 0.0001 | < 0.0001 | < 0.0001 | < 0.0001 | < 0.0001 | |
| Youden index | 0.5044 | 0.3689 | 0.3689 | 0.6089 | 0.2489 |
| Cut-offa | 0.457 | 0.4724 | 0.3862 | 0.6653 | 0.3386 |
| Sensitivity | 56.00 | 48.00 | 48.00 | 72.00 | 36.00 |
| Specificity | 94.44 | 88.89 | 88.89 | 88.89 | 88.89 |
| + LR | 10.08 | 4.32 | 4.32 | 6.48 | 3.24 |
| − LR | 0.47 | 0.59 | 0.59 | 0.32 | 0.72 |
| + PV | 93.3 | 85.7 | 85.7 | 90.0 | 81.8 |
| − PV | 60.7 | 55.2 | 55.2 | 69.6 | 50.0 |
AUC, area under the curve; SE, standard error; CI, confidence interval; + PV, positive predictive value; − PV, negative predictive value; + LR, likelihood ratio positive; − LR, likelihood ratio negative. aMost suitable threshold according to ROC analysis and Youden’s J statistic
Fig. 4Performance of five plasma metabolites in prediction of physically frail. Receiver operating characteristic (AUROC, left panel) and precision-recall cures (AUPRC, right panel) for different plasma metabolite scores in prediction of physically frail at hospital admission