Author: Nathan Veil (Applied Coherence Institute)
Date: May 12, 2026
Classification: Psychophysiology / Longitudinal Methodology / Behavioral Science
Document Type: Theoretical Framework / Research Protocol
Status Notice
| Status | This paper describes proposed longitudinal frameworks and hypothetical dynamics for future empirical validation. No longitudinal data are presented. All temporal models are theoretical. |
|---|
Abstract
The Coherence Metrics Framework (Humble, 2026) distinguishes between state coherence (short‑term fluctuations) and trait coherence (baseline stability). This paper proposes a longitudinal framework for understanding the temporal dynamics of coherence — how it fluctuates, recovers, drifts, and stabilizes over time. Drawing on time series analysis, multilevel modeling, and ecological momentary assessment (EMA) literature, the paper introduces key concepts: coherence recovery curves, decay rates, intervention persistence, resilience thresholds, and relapse dynamics. A proposed longitudinal study design (6‑12 months, N = 200) is outlined, with measurement protocols (daily CP-25, weekly CP-100, continuous HRV, event logs). Dynamical systems models (autoregressive integrated moving average; latent growth curve modeling) are proposed for analysis. The framework is offered as a research scaffold for future empirical investigation of coherence trajectories.
Keywords: longitudinal coherence, state‑trait dynamics, recovery curves, resilience thresholds, temporal stability, EMA
1. Introduction
Coherence is not static. It fluctuates within days, responds to stressors, recovers during rest, drifts over weeks, and stabilizes — or destabilizes — across months and years. Understanding these temporal dynamics is essential for:
- Predicting who will recover from extraction
- Timing interventions optimally
- Identifying early warning signs of dysregulation
- Measuring intervention persistence
- Establishing normative coherence trajectories
This paper proposes a longitudinal framework for studying coherence dynamics. It introduces key concepts, measurement protocols, analytical models, and a proposed study design. All models are theoretical; empirical validation is required.
Status Note: This is a proposed framework. No longitudinal data have been collected.
2. Key Temporal Constructs
2.1 State vs. Trait Coherence (Recalibrated)
| Construct | Definition | Time Scale | Measurement |
|---|---|---|---|
| State coherence | Short‑term fluctuations | Minutes to hours | EMA (daily CP-25, multiple time points) |
| Trait coherence | Baseline stability | Weeks to years | Weekly CP-100, monthly aggregate |
| Variability | Degree of state fluctuation | Days to weeks | Standard deviation of state measures |
| Recovery rate | Speed of return to baseline after stressor | Hours to days | Slope of recovery curve |
| Decay rate | Rate of coherence loss without intervention | Weeks to months | Exponential decay modeling |
| Resilience threshold | Stress level at which coherence degrades | Variable | Piecewise regression |
2.2 Coherence Recovery Curve
The recovery curve describes the trajectory of coherence following a stressor or extraction event.
| Phase | Description | Typical Duration | Proposed Measure |
|---|---|---|---|
| 1. Impact | Coherence drops abruptly | Minutes to hours | CP-25 drop > 0.5 points |
| 2. Acute recovery | Rapid return toward baseline | Hours to 1‑2 days | Steep positive slope |
| 3. Consolidation | Slower recovery to baseline | 2‑7 days | Shallow positive slope |
| 4. Baseline | Stable coherence | Variable | CP-25 within 0.2 points of baseline |
Hypothetical recovery curve equation: C(t)=Cbaseline−ΔC⋅e−kt
Where k = recovery rate constant (proposed; requires empirical estimation).
2.3 Coherence Decay Without Intervention
In the absence of coherence‑preserving practices, trait coherence may decay over time.
| Decay Phase | Description | Proposed Rate (Hypothetical) |
|---|---|---|
| Maintenance | Coherence stable with practice | ±0.1 CP-25 points/month |
| Gradual drift | Slow decline without practice | -0.05 to -0.15 CP-25 points/month |
| Accelerated decay | Rapid decline after major stressor | -0.2 to -0.5 CP-25 points/month |
| Floor effect | Severe dysregulation | CP-25 < 2.0 |
Hypothetical decay equation: C(t)=C0−λt
Where λ = decay rate (proposed; requires empirical estimation).
2.4 Resilience Threshold
The resilience threshold is the maximum stress load a person can absorb without coherence degradation.
| Threshold Level | CP-25 Change | Interpretation |
|---|---|---|
| Low resilience | Drop > 0.5 points from minor stressor | Intervention needed |
| Moderate resilience | Drop 0.2‑0.5 points from moderate stressor | Monitor; reinforce practices |
| High resilience | Drop < 0.2 points from major stressor | Robust; maintenance sufficient |
2.5 Intervention Persistence
The duration for which intervention effects persist after the intervention ends.
| Persistence Type | Duration | CP-25 Retention |
|---|---|---|
| Transient | < 2 weeks | < 50% of gain retained |
| Medium | 2‑8 weeks | 50‑75% retained |
| Long‑term | 2‑6 months | 75‑90% retained |
| Durable | > 6 months | > 90% retained |
3. Proposed Longitudinal Study Design
3.1 Overview
| Parameter | Specification |
|---|---|
| Design | Prospective longitudinal cohort with embedded EMA and intervention phase |
| Duration | 12 months |
| Sample size | N = 200 (target; selected for power analysis) |
| Inclusion | Adults (18‑65), varied coherence baselines |
| Exclusion | Acute psychosis, severe cognitive impairment, unstable medical conditions |
3.2 Measurement Schedule
| Time Point | Measures | Duration |
|---|---|---|
| Baseline (Day 0) | CP-100, HRV (5 min), demographics, health history | 45 min |
| Weeks 1‑4 | Daily CP-25 (EMA, 1x/day); continuous HRV (wearable) | 5 min/day |
| Week 5 | CP-100, HRV | 20 min |
| Weeks 6‑8 | Daily CP-25; continuous HRV | 5 min/day |
| Week 9 | CP-100, HRV | 20 min |
| Weeks 10‑12 | Daily CP-25; continuous HRV | 5 min/day |
| Month 4, 6, 8, 10, 12 | CP-100, HRV (weekly) | 20 min each |
| Event logs | Daily stressor, conflict, sleep, practice log | 2 min/day |
3.3 EMA Protocol
| Parameter | Specification |
|---|---|
| Prompts | 4‑6 random prompts daily (10 AM – 8 PM) |
| Response window | 15 minutes |
| Items | CP-25 (all 25 items) or ultra‑brief (5 items, 1 per domain) |
| Duration per prompt | 30‑60 seconds (ultra‑brief) to 3‑5 minutes (full CP-25) |
| Compliance target | > 80% |
4. Analytical Approaches (Proposed)
4.1 Latent Growth Curve Modeling (LGCM)
LGCM estimates individual trajectories of coherence change over time.
| Parameter | Description | Proposed Interpretation |
|---|---|---|
| Intercept | Baseline coherence | Initial stability |
| Slope | Rate of linear change | Improvement or decline |
| Quadratic term | Acceleration/deceleration | Nonlinear trajectories |
| Variance components | Individual differences | Heterogeneity in change patterns |
Hypothesis: Intervention phase will produce positive slope; slope will moderate after intervention ends.
4.2 Autoregressive Integrated Moving Average (ARIMA)
ARIMA models capture time‑dependent structure in coherence time series.
| Parameter | Interpretation for Coherence |
|---|---|
| AR(1) | Today’s coherence predicted by yesterday’s |
| MA(1) | Random shock impact persists 1 day |
| Differencing | Non‑stationarity (trend or drift) |
Hypothesis: Coherence time series will show significant autocorrelation; intervention will reduce autocorrelation (increased flexibility).
4.3 Multilevel Modeling (MLM)
MLM partitions variance into within‑person (day‑to‑day) and between‑person (trait) components.
| Level | Variance Source | Proposed Proportion (Hypothetical) |
|---|---|---|
| Within‑person | Day‑to‑day fluctuations | 30‑40% |
| Between‑person | Baseline differences | 60‑70% |
Hypothesis: Intervention increases within‑person stability (reduces residual variance).
4.4 Change Point Detection
Identify moments when coherence trajectories shift significantly.
| Method | Application | Proposed Threshold |
|---|---|---|
| Bayesian change point | Detect intervention onset effects | Probability > 0.95 |
| CUSUM | Cumulative sum of deviations | Exceeds 5 standard deviations |
| Segmented regression | Breakpoint estimation | Significant slope change at p < 0.01 |
Hypothesis: Change points will coincide with major life events (extraction attempts, losses, interventions).
4.5 Dynamical Systems Models
| Model | Application | Proposed Parameter (Hypothetical) |
|---|---|---|
| First‑order differential equation | Coherence recovery | τ (time constant) = 2‑5 days |
| Second‑order (damped oscillator) | Coherence with momentum | Damping ratio = 0.3‑0.7 |
| Piecewise linear | Threshold effects | Resilience threshold = CP-25 2.5‑3.0 |
5. Proposed Longitudinal Hypotheses
| Hypothesis | Description | Proposed Analysis |
|---|---|---|
| H1: Baseline stability | Trait coherence (weekly CP-100 aggregate) shows stability over 2‑4 weeks without intervention | ICC > 0.80 |
| H2: Stressor sensitivity | Major stressors (life events, extraction attempts) produce CP-25 drop > 0.5 points within 48 hours | Change point detection |
| H3: Recovery rate | Recovery to baseline occurs within 3‑7 days for moderate stressors | Multilevel modeling |
| H4: Intervention persistence | Coherence gains from 8‑week intervention persist at 50% at 6 months | Latent growth curve |
| H5: Practice dose‑response | Higher daily practice frequency predicts faster recovery and less decay | Time‑varying covariate MLM |
| H6: Environmental sensitivity | Low environmental coherence (noise, procedural burden) predicts lower CP-25 | EMA multilevel |
| H7: Relational buffering | High relational coherence attenuates stressor impact on CP-25 | Moderation analysis |
| H8: Individual differences | Baseline CP-100 predicts recovery rate (faster recovery for higher baseline) | Latent growth mixture modeling |
6. Proposed Clinical and Predictive Applications
| Application | Method | Proposed Threshold |
|---|---|---|
| Early warning | Moving average (7‑day) of CP-25 | Alert when > 0.3 points below baseline for 3 consecutive days |
| Relapse prevention | Accelerated decay detection (negative slope > 0.1 CP-25 points/week for 2 weeks) | Trigger intervention reinforcement |
| Treatment response | Within‑person change (reliable change index) | RCI > 1.96 (p < 0.05) |
| Stratification | Latent class trajectory grouping | Identify fast responders, slow responders, non‑responders |
7. Integration with Coherence Metrics Framework
| Domain | State Measure (EMA) | Trait Measure (Weekly) |
|---|---|---|
| Physiological | Current HRV (wearable), felt calm (1 item) | Weekly HRV average |
| Cognitive | “Right now, I can focus” (1 item) | Weekly CP-100 cognitive domain |
| Behavioral | “I did what I said I would do today” (1 item) | Weekly commitment‑keeping rate |
| Relational | “I feel safe in my current interaction” (1 item) | Weekly conflict frequency |
| Environmental | “My current environment feels predictable” (1 item) | Weekly procedural load |
8. Planned Validation Studies
| Study | Description | Duration | Sample Size | Status |
|---|---|---|---|---|
| 1 | Naturalistic cohort (no intervention) | 6 months | N = 100 | Planned |
| 2 | Intervention cohort (8‑week phased protocol) | 12 months | N = 100 | Planned |
| 3 | EMA‑only validation (ultra‑brief CP) | 14 days | N = 50 | Planned |
| 4 | Stressor reactivity (controlled laboratory stressor) | 1 day | N = 50 | Planned |
9. Limitations
| Limitation | Mitigation |
|---|---|
| No empirical data yet | This is a proposed framework; validation studies required |
| Attrition risk in longitudinal studies | Oversample; incentives; minimize burden |
| EMA compliance challenges | Brief measures; user‑friendly app; compliance monitoring |
| Measurement reactivity | CP‑25 repeated administration may itself affect coherence (test sensitization) |
| Causality ambiguity | Observational design cannot prove causation; RCT needed |
| Generalizability | Single‑country samples; cross‑cultural replication required |
10. Conclusion
This paper has proposed a longitudinal framework for understanding the temporal dynamics of coherence — how it fluctuates, recovers, decays, and stabilizes over time. Key constructs were introduced (recovery curves, decay rates, resilience thresholds, intervention persistence). A longitudinal study design was outlined, with measurement protocols and analytical approaches. Testable hypotheses were proposed.
The framework is offered as a research scaffold for future empirical investigation. Longitudinal data are required to validate these temporal models. The dynamics of coherence are not merely theoretical — they are measurable, predictable, and intervenable.
“Coherence is not a photograph. It is a film. Longitudinal dynamics are the frames between the frames.”
11. References
Bolger, N., & Laurenceau, J. P. (2013). Intensive Longitudinal Methods: An Introduction to Diary and Experience Sampling Research. Guilford Press.
Box, G. E. P., Jenkins, G. M., Reinsel, G. C., & Ljung, G. M. (2015). Time Series Analysis: Forecasting and Control (5th ed.). John Wiley & Sons.
Duncan, T. E., Duncan, S. C., & Strycker, L. A. (2013). An Introduction to Latent Variable Growth Curve Modeling: Concepts, Issues, and Applications (2nd ed.). Routledge.
Grimm, K. J., Ram, N., & Estabrook, R. (2016). Growth Modeling: Structural Equation and Multilevel Modeling Approaches. Guilford Press.
Hamaker, E. L., & Wichers, M. (2017). No time like the present: Discovering the hidden dynamics in intensive longitudinal data. Current Directions in Psychological Science, 26(1), 10‑15.
Humble, D. (2026a). Toward a Unified Coherence Metrics Framework. Zenodo.
Humble, D. (2026b). *Development of the CP-25: A Proposed Brief Multi-Domain Coherence Screening Instrument*. Zenodo.
Humble, D. (2026c). *Validation Protocol for the Coherence Profile (CP-100)*. Zenodo.
Raudenbush, S. W., & Bryk, A. S. (2002). Hierarchical Linear Models: Applications and Data Analysis Methods (2nd ed.). Sage Publications.
Shiffman, S., Stone, A. A., & Hufford, M. R. (2008). Ecological momentary assessment. Annual Review of Clinical Psychology, 4, 1‑32.
Stone, A. A., & Shiffman, S. (1994). Ecological momentary assessment (EMA) in behavioral medicine. Annals of Behavioral Medicine, 16(3), 199‑202.
Trull, T. J., & Ebner‑Priemer, U. W. (2013). Ambulatory assessment. Annual Review of Clinical Psychology, 9, 151‑176.
Wichers, M. (2014). The dynamic nature of depression: A new micro‑level perspective of mental disorder that meets current challenges. Psychological Medicine, 44(7), 1349‑1360.
End of Paper
Leave a Reply