| Literature DB >> 28858850 |
Maximus V Peto1, Carlos De la Guardia1, Ksenia Winslow1, Andrew Ho1, Kristen Fortney1, Eric Morgen1.
Abstract
Biomarkers of all-cause mortality are of tremendous clinical and research interest. Because of the long potential duration of prospective human lifespan studies, such biomarkers can play a key role in quantifying human aging and quickly evaluating any potential therapies. Decades of research into mortality biomarkers have resulted in numerous associations documented across hundreds of publications. Here, we present MortalityPredictors.org, a manually-curated, publicly accessible database, housing published, statistically-significant relationships between biomarkers and all-cause mortality in population-based or generally healthy samples. To gather the information for this database, we searched PubMed for appropriate research papers and then manually curated relevant data from each paper. We manually curated 1,576 biomarker associations, involving 471 distinct biomarkers. Biomarkers ranged in type from hematologic (red blood cell distribution width) to molecular (DNA methylation changes) to physical (grip strength). Via the web interface, the resulting data can be easily browsed, searched, and downloaded for further analysis. MortalityPredictors.org provides comprehensive results on published biomarkers of human all-cause mortality that can be used to compare biomarkers, facilitate meta-analysis, assist with the experimental design of aging studies, and serve as a central resource for analysis. We hope that it will facilitate future research into human mortality and aging.Entities:
Keywords: aging; biomarker; database; mortality; population-based
Mesh:
Substances:
Year: 2017 PMID: 28858850 PMCID: PMC5611985 DOI: 10.18632/aging.101280
Source DB: PubMed Journal: Aging (Albany NY) ISSN: 1945-4589 Impact factor: 5.682
Figure 1Top five most commonly studied human biomarkers of all-cause mortality by number of publications
The top five most commonly studied biomarkers in the database are shown here. The bar height indicates the number of publications associated with each, and this number is explicitly shown in white near the top of each bar.
Biomarker types according to the number of curated biomarkers
| Biomarkers | Publications | Type | Example biomarkers | Largest normalized effect size |
|---|---|---|---|---|
| 165 | 310 | Blood | Apolipoprotein A-1, Mean corpuscular volume, Lymphocyte percentage | 8.33 |
| 30 | 35 | Composite | Body mass index and leg extensor strength, Lipid accumulation product, Hypothyroidism | 7.93 |
| 10 | 14 | Computed tomography | Bone density, Thigh intramuscular fat, Skeletal muscle density | 12.28 |
| 4 | 4 | Echocardiography | Interventricular septum thickness, Left ventricular ejection fraction, Left ventricular hypertrophy | 6 |
| 61 | 45 | Electrocardiography | Low frequency power of heart rate variability, QRS Transition, counterclockwise rotation, QTc dispersion minimum value | 14.29 |
| 79 | 3 | Epigenetics | cg14575484, cg16197857, cg27635330 | 2.45 |
| 10 | 25 | Exercise test | Exercise capacity, Strength, Cardiorespiratory fitness | 6.67 |
| 22 | 24 | Other | Relative abdominal fat, Basal metabolic rate, Interday rhythm stability | 8.4 |
| 47 | 94 | Physical parameter | Arm circumference, Lean mass index, Body mass index | 16.9 |
| 10 | 58 | Sphygmomanometry | Blood pressure, Pulse pressure, Mean arterial pressure | 4.2 |
| 11 | 14 | Spirometry | Peak expiratory flow, Forced expiratory volume, Forced vital capacity | 4.59 |
| 13 | 12 | Ultrasonography | QUI stiffness, Bone mineral density, Broadband ultrasound attenuation | 4.89 |
| 12 | 23 | Urine | Creatinine excretion, Proteinuria, Sodium (24-hour excreted) | 11 |
Top 10 biomarkers by number of publications, within the blood biomarker type
| Name | Publications | Results | Largest normalized effect size | Best p value |
|---|---|---|---|---|
| Glucose | 35 | 43 | 4.1 | 0.0001 |
| Cholesterol | 23 | 29 | 5.08 | 0.001 |
| C-reactive protein | 22 | 26 | 3.64 | 0.0001 |
| 25-hydroxyvitamin D | 21 | 24 | 4.93 | 0.0001 |
| Estimated glomerular filtration rate | 15 | 22 | 7.8 | 0.0001 |
| Uric acid | 12 | 15 | 2.8 | 0.001 |
| High-density lipoprotein cholesterol | 12 | 12 | 2.38 | 0.0002 |
| White blood cell count | 12 | 31 | 3.33 | 9.22E-31 |
| Glycated hemoglobin | 11 | 14 | 3.2 | 0.001 |
| Testosterone | 11 | 20 | 2.3 | 0.001 |
Figure 2MortalityPredictors.org Database homepage
This is a screen capture of the database home page. Major database statistics are summarized on the left. In the center, an interactive bubble diagram displays a colored bubble for each database biomarker. Each bubble's color corresponds to the biomarker type (color key shown at right), and the size corresponds to the largest normalized effect size for that marker. Clicking on a bubble leads to the database page for that biomarker. At the top, the main database section labels are shown as hyperlinks that lead to those portions of the database.
Figure 3Database biomarkers sorted by statistical significance of their reported associations
This is a screen capture of the database “Biomarkers” section, sorted by “best p-value” for that biomarker in increasing order. “Best p-value” refers to the lowest p-value among curated studies for that biomarker. Other presented information on each biomarker includes the number of curated publications, the number of curated associations resulting from those publications (“# Results”), the biomarker type, and the largest normalized effect size for that biomarker (as defined in the manuscript text).