Abstract
Cardiovascular ageing is a process that begins early in life and leads to a progressive change in structure and decline in function due to accumulated damage across diverse cell types, tissues and organs contributing to multi-morbidity. Damaging biophysical, metabolic and immunological factors exceed endogenous repair mechanisms resulting in a pro-fibrotic state, cellular senescence and end-organ damage, however the genetic architecture of cardiovascular ageing is not known. Here we use machine learning approaches to quantify cardiovascular age from image-derived traits of vascular function, cardiac motion and myocardial fibrosis, as well as conduction traits from electrocardiograms, in 39,559 participants of UK Biobank. Cardiovascular ageing is found to be significantly associated with common or rare variants in genes regulating sarcomere homeostasis, myocardial immunomodulation, and tissue responses to biophysical stress. Ageing is accelerated by cardiometabolic risk factors and we also identify prescribed medications that are potential modifiers of ageing. Through large-scale modelling of ageing across multiple traits our results reveal insights into the mechanisms driving premature cardiovascular ageing and reveal potential molecular targets to attenuate age-related processes.
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Introduction
Cardiovascular disease (CVD) is the leading cause of death globally, and ageing is a primary risk factor for its development and progression1,2. Cardiovascular ageing is a process that begins in early life and occurs at multiple scales across different organ systems leading to an accumulation of damage that cannot be recovered through endogenous repair and regeneration. Biophysical, metabolic and immunological factors lead to a pro-fibrotic state, cellular senescence, and end-organ damage affecting both the heart and circulatory system3,4. Ageing is driven by intrinsic processes that act at genetic, molecular and cellular targets, as well as extrinsic drivers such as lifestyle and environmental risk factors that modify these processes. In common with ageing in other organ systems, these mechanisms converge upon dysregulated inflammation, alteration of epigenetic modifications, and metabolic imbalances5. A final common pathway of cardiovascular ageing is loss of tissue compliance which is manifest through diastolic dysfunction, interstitial fibrosis and vascular remodelling6,7. Such changes can be assessed through non-invasive imaging and enable an estimate of how an individual’s cardiovascular system has aged relative to a normative population8. An equivalent calculation of the 'age gap' has been shown to be a promising neuro-imaging marker for modelling dynamic lifespan trajectories of brain ageing9,10,11.
Here we used computer vision techniques to analyse cardiac magnetic resonance (CMR) imaging in 39,559 participants of the UK Biobank to extract image-derived phenotypes of the three-dimensional (3D) geometry and motion of the heart as well as dynamic assessment of vascular function. These image-derived traits were used to train supervised machine learning algorithms to predict participants’ ages and derive a cardiovascular age-delta for each individual, quantifying the deviation in years from healthy ageing. We also trained a model to learn the spatial features of electrocardiograms (ECG) associated with aging. Using age-delta as a trait for genome-wide common and exome-wide rare variant association analyses, we found ageing-associated loci containing genes known to be associated with tissue elasticity, myocardial contractility, inflammatory regulation and immune response to apoptosis. We also describe the relationship between cardiovascular risk factors and characteristics of premature cardiovascular ageing, and describe associated patterns of structural, functional and tissue-level changes in the heart. Together these analyses reveal the environmental and genetic mechanisms which underlie ageing of the cardiovascular system and indicate potential targets for risk modification.
Results
Study overview
We analysed CMR data from 39,559 participants in UK Biobank using machine learning segmentation and motion tracking to measure multiple imaging traits associated with cardiovascular structure, function and fibrosis (Fig. 1). Baseline characteristics of the population and a flow chart of analysis steps are shown in Supplementary Materials. We first trained a machine learning model to define healthy cardiovascular ageing in a development set determined to be free of cardiac, respiratory and metabolic disease, using a gradient boosting algorithm (CatBoost)12. We used the image-derived traits to predict cardiovascular age and computed an age-delta for the difference between predicted age and chronological age. We then predicted cardiovascular age in the rest of the UK Biobank population, and analysed the associations of the cardiovascular age-delta with traditional cardiovascular risk factors. We next performed a genome-wide association study (GWAS) of cardiovascular age-delta and then a phenome-wide association study (PheWAS) to identify phenotypes associated with both age-delta and polygenic risk score (PRS) for age-delta. We performed rare variant association analyses using whole exome sequencing (WES). Latent features of ECG traits may also be associated with ageing, and so we also trained a deep learning network to predict corresponding “ECG-ages” and age-deltas to discover any shared genetic architecture with cardiovascular ageing13.
Image and electrocardiogram phenotyping
We performed automated quality-controlled analysis on CMR cine imaging to assess bi-atrial and bi-ventricular volumes and function, as well as left ventricular mass14. Diastolic function, which is a key feature of the ageing heart, was assessed using motion analysis to derive end-diastolic strain rates6. We assessed diffuse myocardial fibrosis, an early feature of natural ageing15, using native T1 mapping of the interventricular septum16. Central vascular function was assessed by measuring aortic distensibility from central blood pressure estimates and dynamic aortic imaging14. In total, 126 quantitative imaging phenotypes characterising structure, function and tissue characteristics were generated for each participant. To visualise variation in cardiac morphology with age, we used time-resolved 3D morphometry of the heart17. Resting ECG traces were parsed from XML files in UK Biobank. Each ECG sample corresponded to a measured recording for 1 s at 500 Hz (see Supplementary Materials for further pre-processing details).
Cardiovascular and ECG age predictions
A CatBoost machine learning model trained on healthy participants (n = 4019), applied on a holdout test set (n = 1044), yielded a coefficient of determination (R2) of 0.49, a Pearson correlation coefficient (∣r∣) between predicted age and chronological age of 0.70 (P < 1.0 × 10−16) and a mean absolute error (MAE) of 4.21 years. After bias-correction, there was no correlation between cardiovascular age-delta and chronological age (∣r∣ = − 5.5 × 10−16, P ≈ 1), showing that any deviations from healthy cardiovascular ageing were not related to the participant’s actual age. There was a strong correlation between predicted age and chronological age (∣r∣ = 0.85, P < 2.2 × 10−16) using latent ECG features, which is comparable to other deep learning architectures18. There was also no relationship to the participants’ actual age (∣r∣ = − 0.01, P ≈ 1).
The distribution and correlation between image-derived traits is shown in Figs. 2, 3, and the feature importance of traits for cardiovascular age-delta is shown in Fig. 4. Differences between sexes were observed across most phenotypes and were strongest for volumetric data. Sex was therefore used as a covariate in all analyses. There were also correlations between left and right chamber measurements, reflecting ventricular interdependence, with left-sided traits having greater predictive value. Arterial distensibility, in both the ascending and descending thoracic aorta, was the strongest predictor of age-delta. Late diastolic strain rates were also important contributors to the predictive model, especially the radial component. 3D models of the heart also enabled visualisation of the morphological and functional changes related to age (Fig. 5). Left ventricular volumes decreased with age with the remodelling of the lateral wall, while wall thickness showed progressive septal hypertrophy. Motion analysis demonstrated that regional changes in both left ventricular systolic contraction and diastolic relaxation occur with ageing.
Phenome-wide association study and risk factor analysis
We first aimed to assess associations of cardiovascular age-delta with an unbiased range of diseases in the UK Biobank using a PheWAS. Here we performed independent logistic regression analyses with age-delta as a predictor for each outcome adjusted for age, sex, ethnicity and multiple comparisons. We used PheCodes to aggregate a broad range of disease classifications and showed that age-delta was predominantly associated with circulatory and metabolic disorders (Fig. 6a), with the strongest associations linked to hypertension and diabetes.
We next aimed to quantify the associations between established risk factors and cardiovascular age-delta. We used linear regression with each risk factor in turn as a predictor and age-delta as the dependent variable. We adjusted for age, sex and multiple comparisons controlling for false discovery and showed that hypertension (+1.58 years, P < 1.0 × 10−16) and diabetes (+0.74 years, P = 0.0012) were both associated with an increase in predicted age (Fig. 6b).
Age-delta was also elevated in both males with obesity (+0.46 years, P = 0.018), and females with coronary artery disease (+0.85 years, P = 0.047). Serum levels of apolipoprotein B (+0.70 years per mg/dL, P = 5.0 × 10−4), triglyceride (+0.56 years per mmol/L, P < 1.0 × 10−16) and LDL (+0.13 years per mg/dL, P = 0.020) levels were all also associated with adverse effects on cardiovascular ageing.
Smoking (+0.03 years per smoking pack year, P = 3.0 × 10−9) and alcohol (+0.02 years per gram per day increase in daily alcohol consumption, P = 2.5 × 10−8) were also associated with adverse effects on cardiovascular ageing, with comparable effect sizes to brain ageing19. Telomere length was associated with favourable effects on cardiovascular age (−0.10 years per unit increase in z-adjusted telomere length, P = 0.025) (Fig. 6c).
Age-delta and cardiovascular events
We found a modest association between cardiovascular age-delta and major adverse cardiovascular events (hazard ratio, 1.09; 95% confidence intervals, 1.01 − 1.21; P = 0.022) when comparing upper and lower quartiles of age-delta in a covariate-adjusted model, but no significant associations in models considering cardiovascular age-delta as a continuous variable (see Supplementary Material for details).
Prescribed medications and cardiovascular age
To assess the potential use of age-delta as a surrogate marker of cardiovascular disease progression, we also performed separate drug-specific linear regression models with age-delta as the dependent variable, and drug use as the independent variable. We used two models, with the first model adjusting for sex, age, age2, cardiovascular risk factors and the second model additionally adjusting for haemodynamics (blood pressure and pulse rate) (see Supplementary Material for further details). Most associations between anti-hypertensives and age-delta were explained by cardiovascular risk factors and haemodynamics. Beta-blocker (+0.61 years) and metformin (+0.80 years) use was associated with elevated cardiovascular age, and calcium channel blocker (−0.34 years) use was associated with favourable cardiovascular age, independent of cardiovascular risk factors and haemodynamic parameters (Fig. 7).
Genome-wide association study of cardiovascular age-delta
All genetic analyses are reported in compliance with STREGA guidelines20. The proportion of phenotypic variance in image-derived age-delta due to additive genetic variation (h2) explained by all genotyped single nucleotide polymorphisms (SNPs) was 10.5% (see Supplementary Material). We identified five genome-wide significant independent loci from our GWAS that are associated with image-derived cardiovascular age-delta (P = 5 × 10−8) (Fig. 8a). Summary information for the 5 loci identified using the full GWAS dataset are presented in Table 1, with further information provided in Supplementary Material. The nearest gene to the locus is defined, along with the most “likely gene” based on: evidence of a functional effect on a gene; previously documented cardiovascular disease association; or reported mechanism potentially involved in cellular ageing processes (Supplementary Material). The lead variants have known roles in myocardial contractility (Titin, TTN)21, and arterial mechanics (Elastin, ELN)22, and have been implicated in pro-inflammatory activity and antihypertensive responses (Phospholipase C Epsilon 1, PLCE1)23,24. Additionally, TTN was a likely causal gene for ECG-derived age-delta amongst 7 other independently-associated loci that include genes related to trabecular development (T-Box Transcription Factor 3, TBX3)25, and regulation of cardiac rhythm (Sodium voltage-gated channel alpha subunit 5, SCN5A; Calcium/Calmodulin Dependent Protein Kinase II Delta, CAMK2D and Myozenin 1, MYOZ1) (Fig. 8b).
A covariate-corrected polygenic risk score (PRS) comprising 13 SNPs selected using a clumping/thresholding approach for image-derived cardiovascular age-delta was evaluated in 373,948 independent genotyped participants of UK Biobank, and showed an association with hypertension (P = 2.9 × 10−12) (see Supplementary Material).
Rare variant association study of cardiovascular age-delta
Predicted loss of function variant (pLoF) gene burden testing using Regenie26, with three variant prioritisation masks on allele frequencies applied, identified two further genes associated with image-derived cardiovascular age-delta independent of common variant signals. These were Triggering Receptor Expressed On Myeloid Cells 2 (TREM2) and Mitochondrial Calcium Uptake Family Member 3 (MICU3). TREM2 encodes a transmembrane receptor expressed in the central nervous system and macrophages, and has been linked to anti-inflammatory effects in atherosclerotic plaque, cardiac tissue repair and immunomodulation of monocytes in the heart27,28,29. MICU3 encodes a uniporter channel in the heart and skeletal muscle, which regulates calcium homoeostasis30,31.
Discussion
Cardiovascular ageing is an interaction of genetic, cellular, and biophysical processes that results in declining adaptive homoeostasis. In this study, we used machine learning of multiple image-derived and electrical cardiovascular phenotypes to predict biological age and determine the genetic and environmental associations with deviation from healthy ageing. We found that healthy ageing was associated with a progressive decline in both vascular and myocardial tissue compliance, and these traits were also the strongest predictors of deviation from healthy cardiovascular ageing. A decline in diastolic function is recognised as a hallmark of cardiac ageing, which occurs through multiple pro-fibrotic and energetic pathways.32,33 A key driver of diastolic impairment is myocardial interstitial fibrosis, and we found that an imaging biomarker of fibrosis predicted accelerated ageing. Variation in this specific biomarker is thought to be mediated by glucose metabolism, tissue repair and oxidative stress34, with fibrosis being a final common pathway after homoeostatic mechanisms are exhausted35. Three-dimensional image analysis showed that ageing results in asymmetrical remodelling, and patterns of contractility and relaxation in the left ventricle. We observed progressive septal hypertrophy, which is recognised as an independent feature of ageing in longitudinal studies36. The aorta also becomes stiffer with age, which is associated with numerous cardiovascular disease endpoints37. Elastin fragmentation, endothelial dysfunction and deposition of advanced glycation end-products are thought to play a causal role38, and distensibility is associated with pathways related to cardiovascular development, extracellular matrix production, and smooth muscle cell contraction39.
Our study provides insights into the biological basis of heterogeneity in cardiovascular ageing. One of our loci implicated PLCE1, which regulates contractile myocardial reserve with loss of expressed PLCε signalling sensitising the heart to the development of hypertrophy in response to chronic cardiac stress40. PLCε also regulates inflammatory responses to myocardial injury23, consistent with the putative causal relationship of 'inflammageing' with cardiovascular disease and multi-morbidity41. ELN was also a leading locus, with elastin being an abundant extracellular matrix protein that provides elasticity and resilience to tissues, including the distensibility of blood vessels. The low turnover of elastin and chronic biophysical stress makes it susceptible to age-related changes caused by mechanical fracture, proteolysis, and calcification22. Age-associated arterial structural and functional decline may not be inevitable and lifestyle interventions have been shown to preserve vascular elasticity42. We observed two loci in common between our cardiovascular age-delta GWAS and previously reported single-trait GWASs of aortic function, suggesting that the majority of these trait-associated pathways are not modifiers of ageing39,43. For instance, elastin expression and organisation modify arterial ageing through signalling pathways which are accelerated by oxidative stress and inflammation.41,44 Using WES, we found rare variants in two further genes that were associated with deviation from healthy cardiovascular ageing. The protein expressed by TREM2 is an immune regulator controlling monocyte/macrophage transitions in response to apoptosis in the heart28. This suggests it may play a role at the interface of immunomodulation and cardioprotection in the ageing heart. MICU3 plays an important role in regulating pathological calcium overload in the heart30, and has been implicated in determining antioxidant responses in skeletal muscle ageing31.
We identified variants in a cardiomyopathy-associated gene (TTN) suggesting a role for sarcomere homoeostasis as a mediator of human cardiac ageing. This may occur through an age-dependent effect on adaptive capacity that is distinct to the changes in titin isoform expression seen in heart failure45. Common variants in TTN were also implicated in ECG age-delta, suggesting a shared genetic mechanism with conduction-associated traits, however, other loci were predominately related to pathways regulating cardiac rhythm, suggesting that the conduction system ages through distinct mechanisms, as has been observed in other organs and tissues46. For instance, CAMK2D is a gene associated with atrial remodelling, fibrosis and premature atrial fibrillation, and we found it to be a factor influencing ageing in the conduction system47. Fibrosis due to ageing is thought to play a major role in modulating conduction and repolarization diseases, with age also known to affect the severity and expressivity of the channelopathy-associated gene SCN5A identified in the ECG age-delta GWAS48. Gain or loss of function mutations in SCN5A are also implicated in progressive atrial fibrosis, although the mechanisms are not fully understood49.
Overall the SNP-based heritability of cardiovascular ageing was 10.5%, suggesting that non-genetic contributions predominantly affect ageing. We found that cardiometabolic risk factors, including hypertension, diabetes and dyslipidemia, all contribute to an increased age-delta. 'Early vascular ageing' is thought to be induced by the integrated effect of haemodynamic factors, glycaemic dysregulation and fetal programming50, while diabetes and dyslipidaemia have also been shown to be causally associated with diastolic dysfunction, which is also a major contributor to premature ageing in the heart6. Atherosclerosis is associated with normal and premature biological ageing, and although we could not assess atherogenesis or plaque burden directly, our image-derived phenotypes are sensitive to downstream effects of arteriosclerosis and vasculopathy as plaque is associated with diffuse changes to distensibility51. The lack of specific atherosclerotic phenotyping may underestimate its role in mediating ageing, but we did find that circulating atherosclerosis-related biomarkers were associated with accelerated ageing.
Obesity showed divergent effects in each sex, and in men, was associated with accelerated ageing while the opposite effect was observed in women. Obesity and overweight are associated with a non-linear increased risk of all-cause mortality52, but misclassification of body composition, particularly among women, may lead to biased risk estimates53. There is evidence that obesity accelerates the ageing process through epigenetic alterations, mitochondrial dysfunction, cellular senescence and a pro-inflammatory state54. Obesity may also affect telomere dynamics and accelerate the ageing process, although the data is heterogeneous55. We did observe an association between telomere shortening and premature cardiovascular ageing, although the effect size was relatively small. Alcohol and smoking showed adverse associations with cardiovascular ageing that were of similar effects sizes to those observed in brain ageing19. For cardiovascular age-delta to be a useful surrogate endpoint, it would need to be correlated with hard clinical outcomes in the absence of intervention and modulated by established therapies, with its magnitude of modulation related to the effect of the intervention56. In cross-sectional analyses, whilst most antihypertensive effects on ageing were explained by known risk factors, beta-blockers, CCB, and metformin were independent predictors of age-delta. Further research is needed to investigate the response of cardiovascular age-delta to drug therapy, either in appropriately designed interventional studies, or through analysis of emerging observational data, whilst appropriately accounting for potential biases in this type of data.
There are limitations of this study. The rate of participation in the UK Biobank is higher among women, older age groups, and persons living in less socioeconomically deprived areas57. The population is predominantly European and further work is required to explore ageing traits and outcomes in people of diverse ancestries and social groups as an accelerated ageing phenotype may be observed due to the interaction of biological, psychosocial and socioeconomic factors58. Cardiovascular age-delta is derived at a single time-point in this cross-sectional study, and we could not assess within-person ageing of the cardiovascular system nor fully account for differential cohort and periodic effects. Nonetheless, such studies are able to capture disease-relevant features of biological ageing that are not related to chronological age or fully explained by later-in-life behaviours and exposures59. Age-delta provides information beyond variance in the individual traits used for prediction and is also independent of chronological age60, with associations reflecting modifiers of healthy aging in the phenotypes assessed. We also observed that stronger effect sizes may be seen for age-delta SNP associations than underlying single traits. Longitudinal imaging will help to assess whether early-life influences and polygenic scores are the predominant drivers of the rate of aging across the lifespan and any pleiotropy between age-related changes in cardiac function and baseline traits.
We did not find that conventional ECG intervals improved predictive performance in a joint model with image-derived phenotypes, so we used an independent convolutional neural network to learn spatial features in ECG traces related to aging. Incorporating multi-modal features that include imaging, ECG waveforms, and other clinical data could provide a broader assessment of traits contributing to cardiovascular aging, although this may be at the expense of model explainability and would need an appropriate network architecture. Our findings, using independent image and ECG models, also show distinct patterns and genetic associations of ageing in different systems suggesting that ageing is not a homogeneous process9, and that conduction phenotypes provide complementary information to cardiovascular imaging on age-related atrial fibrosis and electrical remodelling. Further work is required to assess the contribution of processes to biological cardiovascular ageing not captured by CMR imaging or ECG data, for instance, atherosclerosis, by using more direct measures of plaque burden. Additionally, a longer follow-up period after image-phenotyping would provide greater power to investigate the association of age-delta with outcomes and the cumulative risks of accelerated aging, adjusting for any genetically associated disease phenotypes. Furthermore, understanding causal mechanisms and the effect of genetically-modulated cardiovascular ageing on 'health-span' could be performed on independent genotyped cohorts where time-to-event data is available. While we did not see a very strong association with binary outcomes, we may expect accelerated ageing to mediate age-associated morbidity as has been observed in other organ systems46,61.
In conclusion, we found that cardiovascular ageing is linked to multiple modifiable risk factors, shows distinct patterns of remodelling, and is associated with loci related to genes regulating sarcomere homoeostasis, myocardial immunomodulation, and tissue responses to biophysical stress.
Methods
All analyses in this study are available online (https://github.com/ImperialCollegeLondon/cardiovascular_ageing) and were conducted with R v.>3.6.0 and Python v.3.9.
Participants
UK Biobank comprises ~500,000 community-dwelling participants aged 40–69 years who were recruited across the United Kingdom between 2006 and 201062. All participants provided written informed consent for participation in the study, which was approved by the National Research Ethics Service (11/NW/0382). Our study was conducted under terms of access approval numbers 28807 and 40616. A range of available data were included in this study, comprising genotyping arrays and WES, cardiac imaging, health-related diagnoses, and biological samples. There were 488,252 genotyped participants, of which 454,787 have WES.
Non-imaging phenotypes
Participants underwent a resting 12 lead ECG. Other phenotypes were collected by touch screen questionnaire, interview, biophysical measurement, hospital episode statistics, and primary care data (see Supplementary Material). Leucocyte telomere length (LTL) was measured using a multiplex qPCR assay from 488,415 available DNA samples of participants in UK Biobank63. After quality control (QC), valid LTL measurements were available for 472,577 individuals and log-transformed and z-standardised values were used for analysis (UK Biobank data field code 22192). Details of how each phenotype was acquired are available on the UK Biobank Showcase (http://biobank.ctsu.ox.ac.uk/crystal/).
Imaging protocol
A standardised CMR protocol was followed to acquire two-dimensional, retrospectively-gated cine imaging on a 1.5T magnet (Siemens Healthineers, Erlangen, Germany)64. Short-axis plane cine imaging involved acquiring a contiguous stack of images from the left ventricular base to the apex, and long-axis cine imaging was also performed in the two and four-chamber views. Cine sequences all consisted of 50 cardiac phases with an acquired temporal resolution of 31 ms64. Transverse cine imaging of the ascending and descending thoracic aorta was also performed. Native T1 mapping within a single breath hold was performed at the mid-ventricular level using a shortened modified Look-Locker inversion recovery (ShMOLLI) sequence. Imaging phenotypes all underwent QC prior to use in analysis65.
Cardiac image analysis
Automated segmentation of the short-axis and long-axis cine images in UK Biobank was performed using fully convolutional networks6. Image segmentation in the UK Biobank dataset using this deep learning network is equivalent to expert human readers65. Volumes (end-diastolic, end-systolic, and stroke volume) and ejection fraction were determined for both ventricles. Myocardial volumes were used to compute left ventricular myocardial mass, assuming a density of 1.05 g ml−1. Atrial volumes were calculated using the biplane area-length formula \(V=\frac{8}{3\pi }\cdot \frac{{A}_{2Ch}\cdot {A}_{4Ch}}{L}\) (where A2Ch and A4Ch are the atrial areas on the two and four-chamber cine views, respectively, and L is the averaged longitudinal diameter across two views). Measurements were indexed to body surface area (BSA) as per the Du Bois formula: 0.20247 × (Weight0.425) × (Height0.725), with weight in kg and height in m. The heart was divided into 16 standardised anatomical segments, excluding the true apex66.
The aorta was segmented using the cine images with a spatiotemporal neural network67, from which maximum and minimum cross-sectional areas were derived. Distensibility was calculated using central blood pressure estimates obtained using peripheral pulse-wave analysis (Vicorder, Wuerzburg, Germany)14.
Non-rigid image registration between successive frames enabled motion tracking on greyscale images.68 Registration errors were minimised by tracking motion in both backwards and forwards directions from end-diastole, resulting in an averaged displacement field14, which was then used to warp segmentations from end-diastole to successive adjacent frames. Circumferential (Ecc) and radial (Err) strains were calculated using short-axis cines as \({E}_{dir}=\frac{{{\Delta }}{L}_{dir}}{{L}_{dir}}\), where dir represents circumferential or radial direction, Ldir the absolute length of a line segment along this direction and ΔLdir its change in length over time. Longitudinal (Ell) strain was calculated from long-axis four-chamber motion tracking measured at basal, mid-ventricular, and apical levels. Segmental and global peak strains were then calculated. Strain rate was computed as the first derivative of strain, and thereafter peak early diastolic strain rate in radial (PDSRrr) and longitudinal (PDSRll) planes was then identified. The ShMOLLI T1 maps were analysed using probabilistic hierarchical segmentation with automated quality control defining a region of interest within the interventricular septum as previously validated16. Blood pool T1 was used as a linear correction of myocardial T1 values16,69.
Three-dimensional visualisation of left ventricular shape and motion with respect to age was performed through atlas-based registration of the segmentations and motion fields. We calculated the mean phenotypes (shape, wall thickness and motion pathlines) for each decade of chronological age and represented these values on the epicardial surface of the models relative to participants aged 40–49 years17.
Cardiovascular age prediction
To define a model of healthy cardiovascular ageing, as previously validated in other organ systems,11,61,70,71 we first partitioned the 39,559 participants into a development set, which consisted of 5063 “healthy” individuals that were free of cardiac, metabolic or respiratory disease, with a body-mass index below 30 (see Supplementary Material for details). We randomly split this group into separate training (80%, n = 4019) and test (20%, n = 1044) sets.
We used CatBoost, a decision-tree-based gradient boosting machine learning algorithm, on this feature set to predict the age of each participant in the healthy training and test sets. CatBoost was trained using the default hyperparameter set, except for early stopping rounds (patience) between 50 and 100, which was chosen by the default hyperparameter search method. A 10% validation holdout set (n = 403) was used for hyperparameter search (using the Python package Optuna). From the remaining training dataset, an additional 10% (n = 362) holdout set was taken to be used by CatBoost for internal early stopping evaluation (therefore, training CatBoost with the remaining n = 3256 instances). Thirty models (with distinct random initialisation seeds) were trained, and the one with the lowest mean absolute error on the holdout dataset was chosen.
The trained CatBoost model was used to predict the age of participants from the evaluation set (n = 34,147)10,11. As in brain age modelling11,19,72,73,74, we corrected the correlation between age-delta and chronological age. For this bias-correction we used linear regression between the initial uncorrected cardiovascular age-delta against chronological age73. An offset is then calculated by multiplying chronological age by the slope of the regression line, and adding the intercept. A corrected predicted age is computed by subtracting this offset from the uncorrected predicted age.
Evaluating associations of cardiovascular age-delta with risk factors
To explore associations of cardiovascular age-delta with classical cardiovascular risk factors, we curated four groups from the evaluation set, comprising individuals with obesity, hypertension, diabetes mellitus (DM) and coronary artery disease. We additionally obtained smoking frequency, serum levels of low-density lipoprotein, triglycerides and apolipoprotein B, z-adjusted leucocyte telomere length data, and derived alcohol consumption for participants (see Supplementary Material for details). For each of the four diseases, we selected a set of controls from the test set who did not have the disease, matched for age and sex using 1:1 propensity score matching. Each test sample thus had the same number of controls as the number with the disease of interest, and data from some participants also acted as control data for several disease groups (see Supplementary Material for further detail). Consistent with recommendations from brain ageing literature, all onward statistical analyses adjusted for age, age2 and sex10,74. We then fit a linear regression model to test for the association between cardiovascular age-delta and the presence of disease. For continuous risk variables (alcohol and smoking consumption, serum levels of low-density lipoprotein, triglycerides and apolipoprotein B, and telomere length), we fit a linear regression model in all individuals of the test dataset that had complete data for these variables to assess the association between cardiovascular age-delta and risk factor. We adjusted for multiple comparisons by controlling the false discovery rate (α = 0.05). For modelling associations with self-reported medication see Supplementary Materials.
Outcome analysis
For assessing the association of cardiovascular age-delta with prospective cardiovascular events, we calculate the time-to-first major cardiovascular event (MACE) (stroke, heart failure, arrhythmia, cardiovascular death; see Supplementary Material for details) from the time of the imaging visit. We stratify by MACE prior to the MRI visit. Participants are split into quartiles, and associations with MACE are assessed through both descriptive analysis (cumulative incidence curves with all-cause death as a competing event) and model-based analysis with both a fully covariate-adjusted Cox model (age, sex, obesity, diabetes, smoking, alcohol consumption, hypertension, coronary artery disease and hypercholesterolaemia) or a minimally covariate-adjusted Cox model (age and sex).
Medication effect analysis
We considered the most commonly used drugs, for which effectiveness on clinical outcomes is established: all major anti-hypertensives, i.e. beta-blockers, angiotensin-converting-enzyme inhibitors (ACEi), angiotensin receptor blockers (ARBs), calcium channel blockers (CCBs) and diuretics, as well as statins, metformin and digoxin (Supplementary Table 5). To assess the association between self-reported medication intake across the drugs and drug-classes considered, and cardiovascular age-delta, we performed separate drug-specific linear regression models with age-delta as the dependent variable, in 27,546 participants with complete data. We adjusted for sex, age, age2, smoking pack years, alcohol consumption in grams per day, body-mass index, SBP/DBP, heart rate, prior diagnosis of obesity, coronary artery disease, hypertension, diabetes mellitus, hypercholesterolaemia and heart failure. All covariates were evaluated at the time of the imaging visit.
Genotyping and sample quality control
Genotyping of UK Biobank participants has been detailed previously62, and in brief, UK Biobank genotyping for 488,252 participants was performed on UK BiLEVE or UK Biobank Axiom arrays and imputation performed with the HaplotypeReference Consortium panel and the UK10K+1000 Genomes Project panel. We used UK Biobank Imputation V3 (in GRCh37 coordinates). The UK Biobank released whole exome data sequencing of 454,787 participants in 2021, and details regarding sequencing methods and variant calling procedures are described elsewhere75. We utilised genotypes in their released PLINK-format files, and restricted the cohort to the European population. We performed standard quality control steps recommended by UK Biobank, detailed in the Supplementary Material.
GWAS analysis
GWAS analyses for cardiovascular age-delta were performed with PLINK (v.2) (n = 29,506). All GWAS analyses were adjusted for sex, age (at the time of MRI), age2, the first ten genetic principal components, MRI assessment centre and genotyping array. Post-GWAS analysis removed SNPs with a Hardy–Weinberg equilibrium P < 0.05 and minor allele frequency (MAF) <0.005. Lead variants for each locus were assigned likely causal genes using variant annotations. Expression quantitative trait loci (eQTL) evidence for each locus was extensively searched for using the GTEx Portal and where available, full summary statistics were downloaded to assess co-localisation (Supplementary Material).
Identification of rare variant gene-based associations that were independent of common variant signals
We performed rare-variants burden testing on UK Biobank WES using Regenie26 on the Research Analysis Platform (RAP) (https://ukbiobank.dnanexus.com). The intersection of European participants with exome sequencing data, the age-delta phenotype, and array data after QC is 31,515. We further quality-checked the WES data by requiring that at least 90% of genotypes for a given variant, independent of variant allele zygosity, have a read depth of at least 10 (the 90pct10dp filter) to avoid spurious hits. After QC, we ran step 1 to obtain predictors of individual trait values based on common genetic data, which were then used in step 2 for the rare variant gene burden testing.
For step 2, we annotated pLoF variants and defined gene variant sets using the UK Biobank 450K Exome helper files76, also see UK Biobank Resource 916. We tested the pLoF variants on three separate burden masks per gene, based on the frequency of the alternative allele of the variants: MAF ≤1%, MAF ≤0.1% and singletons only. We tested genes with enough (5) pLoF carriers across all samples. Namely, the number of genes tested for singletons is 4271, for MAF ≤0.1% is 10,431, and for MAF ≤1% is 10,592. We performed Regenie step 2 with the adjustment of sex, age (at the time of MRI), age2, the first ten genetic principal components, and genotyping array. The association was considered significant after multiple testing correction at α = 0.05.
Polygenic risk score (PRS) and PheWAS
Candidate variants for PRS for the cardiovascular age-delta were obtained based on the respective GWAS results by performing clumping (PLINK v1.9) using a linkage disequilibrium (LD) threshold of R2 = 0.1 (in a window of 250 kb) and considering all SNPs with P < 0.001. These selected variants were then used to construct a genetic score for all individuals in the dataset using linear scoring in PLINK v2. Missing genotypes were imputed using the default mean imputation approach. We have additionally constructed a multivariable linear model evaluated on the European subset of the full imaging cohort, using sex, age (at the time of MRI), age2, the first ten genetic principal components, MRI assessment centre and genotyping array as additional covariates, and cardiovascular age-delta as the dependent variable. We report the variance explained by the PRS as the difference of linear regression R2 between a model of age-delta with all non-genetic covariates and the model that additionally includes the PRS as a covariate (see Supplementary Material).
PheWAS of image-derived cardiovascular age-delta and age-delta PRS was performed in European ancestry participants in the UK Biobank. PRS PheWAS was performed in participants that were not included in the derivation GWAS (n = 373,948), whilst image-derived age-delta PheWAS was performed in the same imaging cohort (n = 34,137). For phenotypes with at least 20 cases, the association was tested using logistic regression for categorical outcomes and linear regression for continuous traits, adjusting for age, age2, sex, and the first ten genetic principal components. Statistical significance threshold (P < 4.4 × 10−5) was adjusted for multiple testing using Bonferroni correction for the total number of phenotypes tested (1149 phenotypes), and data presented with Manhattan plots grouped by body systems. PheWAS was performed using the PheWAS package in R version 4.0.3.
Age prediction using resting electrocardiograms
Age-delta predictions have been performed previously using ECG data77. We were interested to see how predictions from CMR imaging and resting ECG data might correlate, and also investigate shared genetic variants for age-delta. To achieve this, we adapted a previously published neural network model to perform the ECG-based predictions. We trained the model using ECG input data from the UK Biobank RAP and re-formatted these according to the requirements of the model. Subsequently, we fine-tuned the pre-trained model using the same development set used in the imaging-based predictions. Details on data input adaption and model refinement are provided in Supplementary Material. We used the same statistical and GWAS approach for ECG age-delta as described for image-derived cardiovascular age-delta.
Reporting summary
Further information on research design is available in the Nature Portfolio Reporting Summary linked to this article.
Data availability
All raw and derived data in this study are available from UK Biobank (http://www.ukbiobank.ac.uk/), conducted under application number 40616. GWAS summary level data were publicly available through the GWAS catalogue (https://www.ebi.ac.uk/gwas/), deposited using accession numbers GCST90239748 and GCST90239749. For colocalization analyses, we used the unfiltered eQTL results from eQTL Catalogue (https://www.ebi.ac.uk/eqtl/) and the Genotype-Tissue Expression (GTEx) Portal v.8 (https://gtexportal.org/home/).
Code availability
The code used for our analyses are publicly available: https://github.com/ImperialCollegeLondon/cardiovascular_ageing(https://doi.org/10.5281/zenodo.8143760)78.
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Acknowledgements
D.P.O’R. acknowledges support from Bayer AG, the Medical Research Council (MC_UP_1605/13); National Institute for Health Research (NIHR) Imperial College Biomedical Research Centre; and the British Heart Foundation (RG/19/6/34387, RE/18/4/34215); J.S.W. acknowledges support from the Sir Jules Thorn Charitable Trust [21JTA]. This research has been conducted using the UK Biobank Resource under Application Numbers 28807 and 40616. The genetic association analyses were conducted on the UK Biobank Research Analysis Platform (https://ukbiobank.dnanexus.com). We thank James Cole (UCL) and Tobias Kaufmann (University of Tübingen) for advice on age-delta modelling. We also thank Tim Dawes, Ghalib Bello, and Carlo Biffi (Imperial College London) for developing the three-dimensional cardiac modelling used in this study. We also acknowledge Esther Puyól-Anton, Bram Ruijsink and Reza Razavi for the T1 mapping data.
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M.S. and M.H.d.A.I. performed the formal analyses and co-wrote the paper; W.B. and A.P.K. performed the image analysis; K.A.M., E.E., I.K., C.L., J.S.W., J.M., C.B. and D.F.F. performed or interpreted the genetic and outcome analyses; S.L.Z., P.-R.S., A.d.M. and A.C. performed additional data modelling; M.R.W. critically revised the manuscript; D.P.O’R. conceived the study, managed the project and revised the manuscript. All authors reviewed the final manuscript.
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J.M., E.E., I.K., C.B. and D.F.F. are full-time employees of Bayer AG, Germany. D.P.O’R. has received research support and consultancy fees from Bayer AG. The remaining authors declare no competing interests.
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Shah, M., de A. Inácio, M.H., Lu, C. et al. Environmental and genetic predictors of human cardiovascular ageing. Nat Commun 14, 4941 (2023). https://doi.org/10.1038/s41467-023-40566-6
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DOI: https://doi.org/10.1038/s41467-023-40566-6