1. Introduction
Tooth loss is among the most prevalent oral health conditions worldwide, reflecting the combined effects of dental caries, periodontal disease, and broader social determinants [
1,
2]. Despite substantial advances in preventive and restorative care, the population-level burden of severe tooth loss and edentulism has remained persistently high over recent decades. International assessments consistently identify tooth loss as a major contributor to disability and functional limitation, with disproportionately higher prevalence among older adults, women, rural populations, and socioeconomically disadvantaged groups [
1,
2,
3]. This enduring burden the limited capacity of clinical advances alone to address social and structural drivers, underscoring persistent inequalities in oral health outcomes [
3,
4,
5,
6]. Although some high-income countries have reported gradual declines, marked global and regional disparities persist [
1]. Consequently, tooth loss is widely recognized as both a marker of cumulative oral pathology across life curse [
7,
8,
9,
10,
11,
12,
13,
14,
15] and as a determinant of reduced quality of life and elevated systemic health risks [
15,
16,
17].
These global trends are mirrored in Chile, where rapid population aging and persistent inequalities in access to oral health services shape the national distribution of tooth loss. Data from the Chilean National Health Survey 2016–17 (ENS 2016–17) [
18,
19] indicates that 91.7% (95% CI: 88.6–94.0) of adults aged 35–44 years have functional dentition. This proportion decreases sharply to 30.2% among adults aged 65–74 years (95% CI: 24.9–36.0). Moderate and severe tooth loss affect 25.4% and 6.9% of adults, respectively, whereas edentulism reaches 4.8%. Furthermore, Chile exhibits high levels of multimorbidity: 54.9% of adults—and 82.4% of older adults—live with two or more chronic diseases. Results from the ENS 2016–17 demonstrate steep gradients in tooth retention by age, educational attainment, and multimorbidity burden, indicating that tooth loss in Chile is embedded within broader patterns of social vulnerability, chronic disease clustering, and unequal access to preventive and restorative care [
12,
18,
19]. Despite ongoing local health-system reforms [
20,
21,
22], pronounced oral-health disparities persist across sociodemographic groups [
16].
Understanding the causal determinants of tooth loss in this context is essential for informing prevention strategies. However, establishing causality from observational data presents substantial methodological challenges. Although numerous studies have reported associations between tooth loss and systemic conditions [
3,
5,
9,
10], most rely on observational designs vulnerable to confounding, selection bias, and reverse causation. Beyond these methodological limitations, the clinical complexity of tooth loss as an outcome poses additional challenges. Risk patterns vary substantially with age, socioeconomic position, and chronic disease burden [
16], and the clinical course spans multiple stages—from functional dentition to edentulism—each with distinct health implications. Simplifying this continuum into binary outcomes may obscure clinically relevant variation and complicate causal interpretation.
Despite these methodological and clinical challenges, recent advances in oral epidemiology—including longitudinal designs [
12], fixed-effects estimation [
14], as well as the application of directed acyclic graphs (DAGs) [
13] have enhanced conceptual clarity regarding probable causal pathways linking tooth loss to systemic health. However, rigorous evidence of population-level causation remains limited, particularly in middle-income countries characterized by pronounced social gradients, elevated multimorbidity, and inequitable healthcare access. Addressing this evidence gap requires clear causal frameworks that explicitly define estimands, specify identifying assumptions, and systematically control for confounding in observational data.
Applying these frameworks to social vulnerability [
16] and multimorbidity [
12] in observational data presents specific methodological challenges. First, these exposures are not randomly distributed but strongly correlated with age, health behaviors [
23], healthcare access, and health status [
24], creating complex confounding structures. Second, tooth loss may simultaneously represent an outcome of prior exposures and a marker of accumulated disadvantage [
16], raising concerns about reverse causation. Addressing these challenges requires explicit causal estimands, careful confounder identification, and analytic strategies that approximate counterfactual contrasts.
This study aimed to estimate the causal effects of social vulnerability and multimorbidity on tooth loss in the Chilean adult population, examining how these determinants shape both cumulative tooth-loss burden and clinical severity across the life course. By translating causal effect estimates into age-conditional risk profiles, we provide evidence to inform oral health policy and integrated prevention strategies targeting socially and clinically vulnerable populations.
3. Results
The Chilean National Health Survey 2016–2017 included 6233 participants. After restricting the sample to adults aged ≥20 years who completed the oral examination, the intermediate dataset comprised 5165 individuals. The final analytic sample comprised 4521 adults after exclusion of 129 individuals with missing data on alcohol consumption (MCAR; see
Section 2.1).
3.1. Sociodemographic Characteristics of the Analytical Sample
The analytical sample comprised 4521 adults aged ≥20 years. The weighted population represented approximately 11.7 million Chilean adults based on the survey expansion factor (Fexp_F1p_Corr). The mean age of participants was 51.0 years (SD = 17.7), with ages ranging from 20 to 98 years. Women accounted for 63.7% of the sample and men for 36.3%. Most individuals resided in urban areas (89.1%), while 10.9% lived in rural areas. Marked territorial heterogeneity was observed across macro-regions: just over half of the population resided in the Central macro-region (50.96%), followed by the Central–South (23.4%) and Austral (18.6%) macro-regions, whereas the Northern macro-region accounted for a smaller share (7.0%). Educational attainment ranged from 0 to 22 completed years of schooling, with a mean of 11.0 years (SD = 4.41), reflecting substantial variability in formal education across the population.
The Socioeconomic Vulnerability Index (SVI) was computed for 4910 participants (95.1% of the 5165 adults with completed oral examination) with complete information on all five components. Employment vulnerability was the most prevalent component (41.2%). Educational vulnerability, derived from normalized years of schooling, had a mean value of 0.54 (SD = 0.20), reflecting substantial dispersion in educational attainment across the population. SVI showed a mean of 0.28 (SD = 0.19), with values ranging from 0 to 1. The distribution was moderately right-skewed, with a median of 0.29 and an inter-quartile range of 0.091–0.355, indicating meaningful heterogeneity in social vulnerability within the study population. Quartile classification demonstrated that 23.9% of participants were in the highest vulnerability quartile, while 25.5% were in the lowest. The structural properties of the SVI were evaluated through inter-component correlations and the KMO measure of sampling adequacy [
28]. Inter-component correlations were low to moderate (mean
; range: −0.03 to 0.64), with the highest correlation observed between rural residence and household sanitation (
), which is substantively interpretable given the geographic distribution of sanitation infrastructure in Chile. The correlation between educational attainment and employment status was
, indicating that multicollinearity between these components does not threaten the validity of the composite index. The KMO value of 0.54 reflects the heterogeneous nature of the five structural dimensions captured by the index, consistent with its design as a composite of distinct social disadvantage indicators rather than a single latent factor. The composition and distribution of SVI components are detailed in
Table 4.
3.2. Health-Related Behaviors
Health-related behaviors were assessed to characterize lifestyle exposures in the adult population and to contextualize subsequent analyses of morbidity burden and oral health outcomes. After applying survey expansion factors, 33.4% of adults reported current tobacco use, whereas alcohol consumption during the previous 12 months was reported by 77.3% of the population, indicating a high prevalence of behavioral risk factors in the analytical sample (
Table 5).
The population-weighted prevalence of chronic conditions indicated a substantial burden of morbidity in the adult population. Obesity (36.7%) and arterial hypertension (30.6%) were the most prevalent conditions, followed by reduced mobility (21.1%) and diabetes mellitus (13.5%). Self-reported cancer showed a prevalence of 4.6%; however, valid data were available for only 62.2% of participants, and this variable was therefore excluded from the primary MS construction. A missingness analysis confirmed a MAR mechanism, and a sensitivity analysis including cancer as a 16th condition is reported in the sensitivity analyses section. Taken together, these results reflect a high prevalence of cardio-metabolic and functional conditions, supporting the relevance of modeling cumulative morbidity burden in subsequent analyses (
Table 6).
The morbidity score (MS), constructed from 15 chronic conditions excluding cancer, was calculated for 4890 individuals (94.7% of the 5165 adults with completed oral examinations) with complete information across all components. The unweighted count-based index (range 0–15) showed a mean of 1.81 (SD = 1.72), with a median of 1 condition and an observed range from 0 to 10. When normalized to a 0–1 scale, the mean MS was 0.12 (SD = 0.12), with values ranging from 0.000 to 0.667. The distribution was right-skewed: 26.1% of participants had no chronic conditions, 26.4% had one condition, and 47.4% met the definition of multimorbidity (≥2 conditions). Higher counts of coexisting conditions were progressively less frequent, with fewer than 5% of individuals presenting five or more conditions. The internal consistency of the MS was evaluated using Cronbach’s
(
) and KMO = 0.73 [
28]. The relatively low
is consistent with published multimorbidity indices, which do not assume a single latent construct but rather reflect the co-occurrence of clinically distinct conditions. The KMO value indicates adequate factor-ability of the item matrix. These results demonstrate a high cumulative burden of chronic disease in the adult population. In subsequent causal analyses, MS was modeled as a continuous exposure (0–1 scale), allowing estimation of dose–response relationships between increasing multimorbidity burden and tooth-loss outcomes through the regression coefficient
and population-averaged contrasts derived via g-computation.
Table 7 illustrates the distributional characteristics of SVI and MS across the analytical sample. Both indicators demonstrated substantial inter-individual variability, indicating heterogeneity in socioeconomic conditions and cumulative illness load among the adult population.
3.3. Sensitivity Analyses of Composite Indices
To evaluate whether the observed associations reflected cumulative constructs rather than dominance by single components, sensitivity analyses were conducted at both the structural and model levels.
3.3.1. Structural Stability: Leave-One-Out Analyses
Alternative specifications of each index were constructed by sequentially omitting individual components. For the SVI, exclusion of employment, indigenous status, sanitation, education, or rural residence produced highly correlated indices relative to the original specification (all ), supporting distributional stability. Exclusion of education resulted in , indicating that although education contributed to variance, the overall structure of the index remained stable. For the MS, exclusion of diabetes yielded with the original index (). Inclusion of cancer—despite valid data available for only 62.2% of participants—produced but reduced the effective sample to (38% reduction). Given this loss of precision and the MAR missingness mechanism confirmed for cancer, cancer was excluded from the primary MS specification.
3.3.2. Marginal Contribution of Dominant Components
To determine whether specific components disproportionately drove the associations, models were re-estimated, including educational attainment and diabetes mellitus explicitly alongside their respective indices. In the case of SVI, incorporation of education reduced the coefficient by 69.5%, although a statistically significant residual influence remained. In the MS analysis, inclusion of diabetes reduced the MS coefficient by 30.2%, yet both diabetes and the residual MS term remained statistically significant. These findings indicate that education and diabetes contribute substantially to their respective indices but do not fully account for the cumulative associations observed.
3.3.3. Interaction Between SVI and MS
An interaction term () was incorporated to evaluate potential effect modification. The interaction coefficient was negative and statistically significant (, ), indicating antagonistic effects between socioeconomic vulnerability and multimorbidity. The marginal effect of socioeconomic vulnerability diminished with elevated levels of multimorbidity, while the marginal effect of multimorbidity similarly diminished at increased levels of socioeconomic vulnerability. Two mechanisms may account for this antagonistic pattern: first, partial overlap in the causal pathways through which both factors influence outcomes; and second, ceiling or saturation effects, whereby the potential for further deterioration in health outcomes becomes constrained under conditions of extreme cumulative burden. Collectively, these sensitivity analyses support the structural robustness of both indices and substantiate their interpretation as cumulative exposures in subsequent analyses. Both indices represent coherent cumulative constructs, while recognizing the disproportionate influence of schooling within the SVI and diabetes within the MS.
3.3.4. Residual Diagnostics for the Survey-Weighted Linear Regression Model ()
Residual diagnostics for the survey-weighted linear regression model (
: number of remaining natural teeth) are presented in
Figure 2. The model explained 52.9% of the variance in remaining teeth (
). Panel (a) shows the residuals versus fitted values with a LOWESS smoothing curve; the fan-shaped pattern indicates heteroscedasticity, which is structurally expected given the bounded and discrete nature of the tooth count outcome (range 0–28) and is partially addressed by the WLS specification with survey expansion weights. Panel (b) presents the normal Q-Q plot, which shows adequate approximation to normality in the central quartile range with minor tail deviations consistent with the discrete outcome distribution; with
, the central limit theorem guarantees asymptotic validity of inference regardless of residual normality. Panel (c) displays the Scale-Location plot, confirming non-constant variance across the fitted value range. Panel (d) shows Cook’s Distance for each observation; 257 observations (5.7%) exceeded the conventional threshold (
), with no values approaching 1.0, indicating the absence of dominant influential observations. Throughout all models, inference was based on heteroscedasticity-consistent (HC) standard errors to account for the detected heteroscedasticity.
3.4. Oral Health Outcomes
Oral health outcomes were assessed using two complementary measures: an ordinal indicator of tooth-loss severity (
) and a continuous measure representing the cumulative number of remaining natural teeth (
). Regarding
, 72.6% of adults presented functional dentition (≥20 remaining teeth), and 5.5% were edentulous. For
, the mean number of remaining natural teeth was 21.5 (SD = 9.6), with an observed range from 0 to 28 teeth (
Table 8).
Figure 3 presents the distribution of remaining natural teeth across age groups, illustrating the life-course gradient in tooth retention within the analytical sample. Median tooth count declined progressively with age, with individuals aged 20–30 years exhibiting near-complete dentition, followed by a gradual reduction in the 31–45 and 46–60 age groups. A marked shift was observed from age 61 years onwards, where the median number of remaining teeth fell below the functional dentition threshold (20 teeth). Among participants aged 76 years or older, tooth loss was more advanced, with a high concentration of low tooth counts and edentulism. This age-stratified pattern supports the cumulative nature of tooth loss and reinforces the biological plausibility of modeling age as a key confounder in subsequent causal analyses. While age captures the temporal dimension of cumulative dental loss, it does not account for the structural and clinical determinants that shape differential trajectories across individuals.
3.5. Descriptive Associations and Model-Building Rationale
Prior to causal estimation, analyses were conducted to characterize the conditional-dependence structure among age, SVI, MS, and oral health outcomes (
Figure 4). This preliminary step aimed to identify relevant statistical associations, inform covariate selection for subsequent causal models, and detect potential effect modification. These descriptive patterns do not constitute causal claims; formal causal inference [
32] is presented in subsequent sections after appropriate adjustment for confounding.
3.6. Causal Effects of Social Vulnerability and Multimorbidity on Tooth Loss
We estimated the independent effects of SVI and MS—interpretable as causal under the assumptions stated in
Section 2.3—using confounder-adjusted regression models followed by weighted g-computation with probability-proportional-to-size bootstrap (1000 replications).
3.6.1. Conditional Effects
In the proportional-odds model for
, higher SVI was strongly associated with worse clinical categories (OR = 6.09; 95% CI: 4.21–8.81 per unit increase). MS was also independently associated with greater severity (OR = 3.83; 95% CI: 2.06–7.13). Because both indices are scaled from 0 to 1, these odds ratios correspond to the full observed exposure range and should be interpreted as reflecting strong monotonic gradients across the vulnerability and multimorbidity continua. The proportional odds assumption was evaluated using the Brant test [
35]. The omnibus test was statistically significant (
, df = 12,
), with threshold-specific heterogeneity confined to SVI and sex. For SVI, coefficients showed a decreasing gradient across thresholds (
, 1.86, and 0.95 for
,
, and
, respectively), without sign reversal, suggesting that socioeconomic vulnerability exerts a larger effect on the transition from functional dentition to moderate loss than on progression to edentulism. Given the large sample size (
), the Brant test [
35] has high statistical power to detect threshold heterogeneity of limited practical importance; furthermore, population-averaged causal contrasts obtained via g-computation average predictions over the observed covariate distribution and are robust to moderate departures from the proportional odds assumption. For
, both exposures were associated with fewer remaining teeth. Each unit increase in SVI was associated with
teeth (95% CI:
to
), and each unit increase in MS with
teeth (95% CI:
to
), after adjustment.
3.6.2. Population-Averaged Effects (P25 → P75)
To obtain population-level causal contrasts under realistic exposure shifts, we estimated ATEs comparing the 25th and 75th percentiles of each exposure distribution (
Table 9). For SVI, an increase from 0.091 to 0.355 was associated with a 0.110-point increase in ordinal tooth-loss severity (95% CI: 0.090–0.129) and a reduction of 1.95 remaining teeth (95% CI:
to
). For MS, an increase from 0.00 to 0.20 was associated with a 0.062-point increase in ordinal severity (95% CI: 0.013–0.066) and a reduction of 1.20 remaining teeth (95% CI:
to
). Across both outcomes, SVI demonstrated slightly larger population-averaged effects than MS, indicating that upstream socioeconomic vulnerability may exert a broader influence on tooth-loss burden, independent of chronic disease accumulation. All ATEs were estimated using weighted g-computation with probability-proportional-to-size bootstrap (1000 replications), ensuring consistency with the survey expansion factor for dental outcomes.
3.7. Age-Conditional Counterfactual Trajectories of Tooth-Loss Severity
To translate the estimated causal effects into clinically interpretable age-dependent risk profiles, we derived age-conditional counterfactual trajectories of tooth-loss severity from the fitted proportional-odds model. Tooth-loss severity was represented using four ordered clinical states: functional dentition (), moderate tooth loss (), severe tooth loss (), and edentulism (). Rather than modeling observed longitudinal transitions, predicted outcome probabilities were evaluated across increasing ages while holding determinant profiles constant, yielding age-conditional projections under sustained exposure scenarios.
For each baseline age (35, 45, and 60 years), the probability of edentulism () was computed over a 40-year horizon by incrementing age within the fitted ordinal model while fixing exposure profiles. Favorable and unfavorable realistic scenarios were defined empirically using the 25th and 75th percentiles of SVI and MS, respectively, with sex, tobacco use, and alcohol consumption fixed at reference categories. This approach provides a transparent mapping from determinant profiles to age-conditional severity risks without invoking assumptions about underlying transition intensities.
Across all baseline ages, unfavorable profiles were associated with systematically higher predicted probabilities of edentulism than favorable profiles. At a baseline age of 35 years, the predicted probability of edentulism by age 100 was approximately 0.69 under favorable conditions and 0.85 under unfavorable conditions, corresponding to an absolute difference of 0.15. For individuals starting at 45 years, the corresponding probabilities were approximately 0.64 (favorable) and 0.98 (unfavorable), yielding a larger absolute separation at advanced ages. Among those beginning at 60 years, predicted probabilities rose more steeply, approaching unity under unfavorable conditions by late life and remaining elevated even under favorable profiles.
At intermediate target ages, contrasts were also clinically meaningful. For example, at age 90, the absolute difference between unfavorable and favorable profiles exceeded 0.20 across baseline strata, indicating a substantial shift in the population-level risk of complete tooth loss attributable to sustained adverse determinant conditions. The widening separation with increasing age reflects cumulative amplification of risk under fixed high-vulnerability and high-multimorbidity profiles.
Baseline age functioned as a structural modifier of predicted risk: individuals entering the projection at 60 years exhibited markedly higher probabilities throughout the time horizon than those starting at 35 or 45 years under identical determinant profiles. These findings are consistent with the non-linear age gradient estimated in the underlying ordinal model and reinforce the interaction between chronological aging and sustained social and systemic risk exposure.
Figure 5a–c illustrate the age-dependent likelihood of edentulism (
) over a 40-year period, stratified by baseline age and counterfactual determinant profile. Shaded areas represent 95% bootstrap confidence intervals derived from a probability-proportional-to-size resampling procedure aligned with the survey expansion factors. These trajectories correspond to model-derived, age-conditional projections under fixed exposure scenarios and should not be interpreted as observed longitudinal transitions. Absolute differences between favorable and unfavorable profiles were substantial across all age groups, whereas relative differences diminished at extreme ages as projected probabilities approached their upper bounds, consistent with the logistic functional form of the proportional-odds model. Collectively, these results illustrate how regression-based causal estimates can be translated into age-dependent risk trajectories while remaining consistent with the underlying cross-sectional design.
4. Discussion
This population-based analysis of 4521 Chilean adults provides evidence regarding the independent effects of SVI and MS on tooth-loss severity () and the number of remaining natural teeth (), under the identifying assumptions of temporal precedence, conditional exchangeability, and correct model specification. In fully adjusted proportional-odds models, a one-unit increase in SVI (0–1 scale) was associated with an odds ratio of 6.09 for transition to a more severe tooth-loss category, whereas MS showed an odds ratio of 3.83. For the continuous outcome, a one-unit increase in SVI was associated with a reduction of 7.40 teeth, and a one-unit increase in MS with a reduction of 6.02 teeth after adjustment for age, sex, tobacco use, and alcohol consumption. Because both indices are scaled from 0 to 1, these coefficients represent gradients across the full observed exposure range. Population-averaged contrasts obtained through weighted g-computation facilitate interpretation at the distributional level. An increase in SVI from the 25th to the 75th percentile (0.091 to 0.355) was associated with a 0.110-point increase in ordinal severity and a reduction of 1.95 remaining teeth. A comparable shift in MS (0.00–0.20) was associated with an increase in severity of 0.062 points and a reduction of 1.20 teeth. Across both outcomes, SVI exhibited slightly larger population-averaged effects than MS, suggesting that socioeconomic vulnerability may exert a broader influence on tooth-loss burden than the accumulation of chronic diseases. Sensitivity analyses assessed the structural stability of both indices. Leave-one-out procedures showed high correlations between alternative and primary SVI specifications (all ) and between the primary MS and the specification, excluding diabetes (). Including cancer in the MS yielded but substantially reduced the effective sample size; cancer was, therefore, excluded from the primary specification to preserve statistical precision. When educational attainment was explicitly included alongside SVI, the SVI coefficient decreased by 69.5% but remained statistically significant, indicating that education explains a substantial portion of the SVI effect without fully accounting for it. Similarly, when diabetes was included explicitly alongside MS, the MS coefficient decreased by 30.2%, while both variables remained statistically significant. These findings suggest that the observed associations are not driven by a single component within either index. A statistically significant negative interaction between SVI and MS (, ) was observed, consistent with partial overlap in their contributions to tooth-loss severity. Regression-based estimates were further translated into age-conditional trajectories of edentulism () using a non-homogeneous, age-dependent Markov extension of the fitted ordinal model. Under sustained unfavorable exposure profiles (75th percentiles of SVI and MS), projected probabilities of edentulism increased more rapidly with age than under favorable profiles (25th percentiles). These projections reflect model-derived age gradients calibrated to cross-sectional data and should not be interpreted as observed longitudinal transitions. Overall, the consistency of results across regression models, g-computation contrasts, structural sensitivity analyses, component-specific re-estimation, interaction testing, and age-conditional projections supports the internal coherence of the analytical framework and the stability of the primary findings.
Our results align with prior evidence documenting socioeconomic gradients in tooth loss [
1,
4,
16,
37]. Our approach differs from prior studies by modeling socioeconomic disadvantage as a composite index rather than as isolated indicators. Instead of analyzing individual socioeconomic variables separately, we constructed a Social Vulnerability Index (SVI) scaled continuously from 0 to 1. Within this framework, a complete shift across the SVI range corresponded to an odds ratio of 6.09 for progression to a more severe tooth-loss category and a mean reduction of 7.40 remaining teeth. When expressed through inter-quartile contrasts (P25 versus P75), the corresponding population-averaged reduction of 1.95 teeth reflects cumulative structural disadvantage rather than isolated socioeconomic markers.
The substantially larger gradients observed in the present study likely stem from three methodological distinctions. First, the SVI simultaneously captures multiple structural dimensions—including educational attainment, employment status, sanitation infrastructure, indigenous ethnicity, and geographical area of residence—within a unified exposure construct. Second, exposures were modeled on a continuous scale, thereby preserving dose–response information across the entire distribution rather than relying on binary or categorical contrasts. Third, causal contrasts were estimated using g-computation with probability-proportional-to-size bootstrap resampling, yielding distributional-level estimates under explicit percentile shifts rather than conventional regression coefficients alone. These distinctions suggest that the magnitude of the observed gradients reflects the cumulative configuration of structural vulnerability across domains rather than the effect of isolated socioeconomic characteristics.
Santos-López et al. (2024) [
12] recently reported an odds ratio of 1.66 (95% CI: 1.04–2.66) for severe tooth loss among adults aged ≥65 years with two or more chronic conditions when analyzing the same ENS 2016–2017 dataset. The present study demonstrates a comparable direction of association between multimorbidity and tooth loss, although important methodological differences should be noted. The conventional approach, as exemplified by Santos-López et al., operationalizes multimorbidity as a simple count of chronic diseases. This binary or categorical specification does not fully capture the cumulative risk arising from the co-occurrence of multiple chronic conditions. In contrast, the morbidity index used here is scaled continuously, reflecting progressive disease burden across the entire distribution. Moreover, the finding that the inclusion of diabetes led to a 30.2% attenuation of the multimorbidity coefficient is consistent with diabetes functioning as a key pathway linking multimorbidity to tooth loss, given the well-established role of diabetes in the progression of periodontal disease [
17,
38].
While longitudinal associations between tooth loss and chronic conditions are extensively documented [
3,
5,
7,
12,
15,
23,
39,
40], formal causal evidence remains limited, particularly in middle-income settings. Recent methodological advances include Kiuchi et al. (2022) [
14] fixed-effects analysis of oral status and cognitive decline, and Baumeister et al. (2025) [
24] instrumental variable approach to estimating smoking effects on tooth loss. Our study extends this emerging causal literature by: (1) focusing on upstream structural social determinants of health and multimorbidity rather than individual behaviors; (2) providing population-representative estimates from a nationally representative middle-income country survey; (3) explicitly defining target estimands within a potential outcomes framework; and (4) translating causal effects into clinically interpretable age-conditional risk trajectories.
The large protective effect of educational attainment operates through multiple interconnected life-course pathways. Education shapes oral health literacy and preventive behaviors from early life, influencing knowledge about caries prevention, periodontal disease, and the importance of routine dental care. Employment status—itself strongly correlated with education—determines income, health insurance coverage, and capacity to afford dental treatment in Chile’s mixed public-private healthcare system. Rural residence is associated with markedly reduced availability of dental services and greater geographical barriers to access [
16]. The irreversibility of tooth loss means that disadvantages accumulating across these domains have permanent consequences, with limited opportunity for reversal even if circumstances later improve.
Systemic morbidity affects tooth loss through both biological and behavioral pathways. Chronic diseases generate systemic inflammation that exacerbates periodontal tissue destruction and impairs wound healing [
17,
38,
41]. Diabetes specifically causes metabolic dysregulation, compromising immune function and increasing susceptibility to oral infections [
23,
42]. Medications used in the management of chronic conditions—particularly antihypertensives, antidepressants, and immunosuppressants—frequently cause xerostomia, reducing saliva’s protective antimicrobial and buffering effects and thereby increasing the risk of caries and periodontal disease [
23,
38]. Beyond these direct biological mechanisms, multimorbidity may also reduce the capacity for oral self-care through functional limitations, depression-related neglect of hygiene, and mobility constraints affecting access to dental services. Moreover, individuals with limited resources may prioritize management of life-threatening systemic conditions over oral health, creating a “competing demands” dynamic that relegates preventive dental care. Our finding that diabetes accounts for 30.2% of the morbidity effect, while substantial residual effects remain, indicates that integrated chronic disease management addressing both diabetes control and oral health maintenance may be necessary but insufficient; the broader burden of multimorbidity must also be considered.
A methodological contribution of this analysis is the translation of regression-based estimates into age-conditional edentulism trajectories. While odds ratios measure relationships on a relative scale, absolute risk trajectories provide clinically interpretable representations of population-level burden and illustrate the accumulation of effects across the life course. By evaluating model predictions across increasing ages under sustained favorable versus unfavorable exposure conditions, we observed substantial divergence between profiles. These projections should be interpreted as pseudo-temporal representations of effect magnitude rather than predictions of individual outcomes, as they rely on cross-sectional age gradients and assume constant exposure conditions that do not fully represent real-world dynamics. Nevertheless, they clearly illustrate that population-level prevention requires early and sustained intervention to prevent cumulative disadvantage, rather than focusing exclusively on late-stage disease in older adults.
This study has several important strengths. The ENS 2016–2017 provides nationally representative data with extensive measurement of sociodemographic, behavioral, and clinical characteristics, allowing adjustment for a broad set of potential confounders. Our explicit causal framework, grounded in the potential outcomes approach, enables more transparent inference than conventional observational analyses by clearly defining assumptions, estimands, and comparison strategies. The use of continuous composite indices preserves dose–response information that is often lost in categorical analyses. G-computation provides population-averaged causal effects that are directly relevant for public health planning, complementing conditional estimates derived from regression models. Sensitivity analyses confirmed the robustness of findings across alternative model specifications, and E-value analysis indicated that an unmeasured confounder would need to be associated with both SVI and tooth-loss severity by a risk ratio of at least 11.65 (E-value for the point estimate) and 7.89 (E-value for the lower confidence limit) to fully explain the observed association—values substantially exceeding the typical effect size of the strongest known unmeasured confounder in this context (oral hygiene behavior, RR ≈ 1.5–3.0). Residual diagnostics for the survey-weighted linear model () confirmed adequate model fit () with structurally expected heteroscedasticity—consistent with the bounded and discrete nature of the tooth count outcome—and no dominant influential observations (Cook’s for all cases); inference was based throughout on heteroscedasticity-consistent (HC) standard errors. Finally, translating causal estimates into age-conditional trajectories enhances clinical and policy interpretability.
Several limitations should also be acknowledged. First, the cross-sectional design prevents direct observation of temporal sequence and therefore constrains causal inference, despite the application of methods designed to mitigate this limitation. Although the social vulnerability components and multimorbidity burden plausibly precede tooth loss—which is itself largely irreversible—reverse causation cannot be fully excluded (e.g., tooth loss affecting employment or contributing to depression). Accordingly, the term “causal effect” throughout this work denotes a standardized contrast within the potential-outcomes framework under the stated identifying assumptions, rather than causation demonstrated by the study design itself; longitudinal follow-up of ENS participants would be required to confirm temporal ordering. This terminological caution is distinct from the question of unmeasured confounding, which the E-value analysis addresses separately, indicating that an unmeasured confounder is unlikely to fully account for the observed gradients.
Second, unmeasured confounding remains possible. The ENS lacks detailed information on oral hygiene behaviors—including toothbrushing, flossing, and dental attendance—which are key determinants of dental caries and periodontitis leading to tooth loss. These behaviors reflect underlying oral health values (OHV), which shape preventive practices and treatment-seeking patterns [
43]. This likely induces bias toward underestimation, as individuals with lower social vulnerability and multimorbidity tend to exhibit stronger OHV and better oral hygiene. Although SVI may partially proxy this dimension through its association with education and health literacy, residual confounding cannot be excluded. To evaluate its potential impact, we used the E-value framework [
31], which quantifies the minimum strength of association that an unmeasured confounder would need with both the exposure and the outcome to fully explain the observed effect. Empirical evidence from oral health research suggests that confounders related to preventive care and periodontal status typically exhibit moderate to strong associations (RR ≈ 1.56–3.68) [
44]. Within this plausible range, such confounding is unlikely to fully account for the magnitude of the observed associations, supporting the robustness of our estimates.
Third, tooth loss was assessed by trained nurses rather than dentists; however, high inter-rater reliability () and the use of simple presence/absence assessment reduce concerns regarding measurement error.
Fourth, self-reported chronic conditions may underestimate true prevalence, potentially biasing morbidity effects toward the null.
Finally, the findings may not be fully generalizable beyond Chile, as social determinants and health system structures vary across settings, although the biological mechanisms linking chronic disease and periodontal health are likely broadly applicable [
38,
45,
46].
These findings have direct implications for oral health policy in Chile and in comparable middle-income settings. Chilean oral health policy has historically prioritized individuals under 20 years of age, leaving adults over 20 years—except pregnant women and those aged 60 years with GES coverage—largely restricted to emergency care services [
16,
18,
22,
46]. This prioritization pattern may have contributed to the substantial burden of disease documented in this study, with 27.4% of adults presenting moderate-to-severe tooth loss or edentulism. The 2020
Estrategia de Cuidado Integral Centrado en las Personas (ECICEP) [
21]—a shift toward person-centered chronic disease management for individuals aged 15 years and older—represents an important opportunity for integration. However, the ECICEP operational framework does not explicitly include caries or periodontitis, despite their high prevalence as non-communicable diseases, leaving oral health largely peripheral within the strategy. A notable positive element of this policy is the inclusion of periodontal treatment for individuals aged 35–54 years with uncontrolled diabetes, together with the development of dental risk assessment guidelines for adults aged 20 years and older. The cumulative disadvantage framework emphasizes that policies aimed at improving oral health must incorporate upstream interventions addressing structural determinants, including educational attainment and labor conditions. The development of a comprehensive continuum of oral health care—integrating risk stratification based on a social vulnerability index within routine adult care—has the potential to modify tooth-loss trajectories at the population level. At a second level of intervention, public policies should include: (1) ensuring access to preventive services for adults aged ≥20 years; (2) formally integrating oral health assessment within the ECICEP framework; (3) expanding conservative and restorative dental coverage for adults aged 20–59 years; (4) strengthening the oral health care network through university-based training clinics and community outreach programs; (5) improving access in rural and geographically isolated areas through mobile dental units and remote dentistry platforms; (6) developing partnerships with Indigenous communities to co-design culturally appropriate oral health services; and (7) establishing integrated data systems linking oral health indicators with chronic disease registries. Future research should prioritize longitudinal designs following ENS cohorts, pragmatic trials testing integrated chronic disease and oral health interventions, formal causal mediation analyses, investigations of effect heterogeneity across age, sex, and regional subgroups, and economic evaluations of upstream prevention strategies. Comparative studies across Latin American countries would enhance understanding of context-dependent social determinants.