Neurotechnology Platform Design: From Markers to States
Core Principle
A neurotechnology platform should not treat individual neurofeedback markers as states.
Instead, it should use the following pipeline:
marker / feature -> construct axis -> task-specific state
This is the core abstraction that turns a collection of EEG / fNIRS / physiological features into a reusable software foundation for neurofeedback, cognitive training, and clinical applications.
The Problem This Solves
Literature tables give us many useful markers:
- SMR
- FMT
- Theta/Beta Ratio
- Upper Alpha
- FAA
- SCPs
- Alpha/Theta
- T3 Alpha / Temporal-Frontal Coherence
- HbO Up-Regulation
- Decoded EEG or fNIRS signals
- etc.
But these are not directly the things an app should train.
For example:
- SMR is not the same thing as calm focus
- FAA is not the same thing as good mood
- Theta/Beta Ratio is not the same thing as attention
- FMT is not universally “up good” or “down good”
These markers are better treated as:
- observations
- control handles
- evidence-backed proxies
- inputs to latent construct estimation
So the platform should infer construct axes and then map those axes into task-specific states.
The Pipeline
1. Marker / Feature Layer
This is the raw library of things the platform can compute.
Examples:
- EEG bandpower
- individualized alpha
- theta/beta ratio
- SMR
- FAA
- coherence
- SCP amplitude
- HbO / HbR changes
- decoded multivariate patterns
- HRV
- respiration
- EDA
- movement load
- task performance metrics
This layer answers:
- What can we measure?
- From where?
- With what latency?
- Under what task assumptions?
- For which populations or use cases?
- With what evidence strength?
This should be implemented as a feature registry.
2. Construct Axis Layer
Construct axes are reusable latent dimensions that markers contribute to.
These axes are more stable and reusable than app-specific states.
A list of potential shared axes:
- Arousal / activation
- Task engagement
- Cognitive control
- Calm focus / stable attentional readiness
- Motor automaticity
- Perceptual breadth / visuospatial readiness
- Affective regulation / emotional load
- Executive recruitment / cognitive load
- Fatigue / instability
- Sleep readiness / sleep stability
- Signal reliability
A single marker can contribute to multiple axes.
Example:
- SMR may contribute to calm focus, motor stability, and sleep stability
- FMT may contribute to task engagement and cognitive control
- FAA may contribute to affective regulation
- dlPFC HbO may contribute to executive recruitment and cognitive load
This is the key move: markers are grouped into latent constructs rather than treated as whole states
Similarly, each axis would be composed of multiple markers.
For example, calm focus could potentially be derived from SMR, upper alpha and high-beta.
3. Task-Specific State Layer
States are protocol-specific control abstractions built from combinations of axes.
Examples:
Athletic precision states
- under-engaged
- calm-focused
- over-aroused
- over-controlled
- automatic / in-the-pocket
- fatigued
Cognitive enhancement / wellbeing states
- distracted
- stable attention
- mentally strained
- inward / meditative
- emotionally loaded
- sleep-ready
Clinical states
- hyperaroused
- dysregulated
- avoidant / shut down
- regulated
- impulsive / distractible
- cognitively overloaded
States are what the app or protocol actually responds to.
Recommended Software Abstraction
The platform should be organized as:
signals -> markers -> axes -> states -> feedback policy
Signals
Raw EEG / fNIRS / physiology / behavior
Markers
Computed features and protocol-specific measurements
Axes
Shared latent constructs estimated from marker combinations
States
Task-specific regions or categories in axis space
Feedback Policy
What the app does next:
- visual feedback
- audio feedback
- task adaptation
- protocol progression
- clinician recommendation
- stimulation policy
Why This Matters
This architecture prevents the platform from becoming:
- a bag of unrelated protocol scripts
- a hardcoded “SMR app / FAA app / Theta-Beta app” zoo
- a brittle collection of narrow decoders
Instead, it creates:
- a shared ontology
- reusable estimators
- protocol portability
- room for personalization
- room for future learned representations or manifold models
Marker-to-Axis-to-State Ontology
Canonical Axes
| Canonical Axis | What It Represents | Example App-Level States |
|---|---|---|
| Arousal / Activation | How under-activated, optimal, or over-activated the person is | under-engaged, optimal, over-aroused |
| Task Engagement | Whether the person is actively on-task vs drifting or disengaging | distracted, engaged, mind-wandering |
| Cognitive Control | Degree of top-down task control and monitoring | unfocused, controlled, over-controlled |
| Calm Focus / Stable Attentional Readiness | Quiet, stable, low-noise task readiness | scattered, calm-focused, sedated |
| Motor Automaticity | Degree to which motor skill is flowing without verbal interference | effortful, automatic, choking |
| Perceptual Breadth / Visuospatial Readiness | Peripheral awareness, spatial monitoring, situational scanning | tunnel vision, broad awareness, diffuse attention |
| Affective Regulation / Emotional Load | Emotional distress, regulation success, approach vs avoidance | distressed, regulating, settled |
| Executive Recruitment / Cognitive Load | Working memory and prefrontal task recruitment | under-recruited, optimal, overloaded |
| Fatigue / Instability | Cognitive or performance drift, degradation, inconsistency | fresh, stable, fatigued |
| Sleep Readiness / Sleep Stability | Transition toward sleep and ability to maintain sleep-supportive physiology | alert, winding down, sleep-ready, restless |
| Signal Reliability | Whether the platform should trust the current signal estimate | usable, noisy, invalid |
Internal Ontology Table
| Marker | Domain | Canonical Axis | Typical Sign | Context Sensitivity | Confidence | Candidate Protocol States |
|---|---|---|---|---|---|---|
| Sensorimotor Rhythm (SMR) | Athletic, Wellbeing, Clinical | Calm Focus; Motor Automaticity; Sleep Stability | Usually positive for calm, stable, low-noise readiness | Medium. Can reflect useful stability, but may also look high in low-demand or passive states | Medium-High in sport; Medium in attention; Low-Medium in sleep | calm-focused, stable attention, automatic, sleep-stable, under-engaged if high without behavioral engagement |
| Frontal Midline Theta (FMT) | Athletic, Wellbeing | Task Engagement; Cognitive Control | Bidirectional. Can be beneficial when higher or lower depending on expertise and task | High. Must be calibrated to task and person | Medium | engaged, focused, over-controlled, flow-ready, cognitively strained |
| Theta/Beta Ratio | Athletic, Wellbeing, Clinical | Task Engagement; Distractibility / Attention Regulation | Lower ratio often better for focused alertness | Medium. Stronger in ADHD-like settings than general wellness | Medium | distractible, engaged, impulsive, task-ready |
| Multi-Band Reaction Speed Profile (SMR and Beta1 up / Theta and Beta2 down) |
Athletic | Calm Focus; Task Engagement; Fatigue / Instability | Positive when stable focused alertness increases and drift decreases | Medium | Medium | locked in, scattered, mentally cooked, reaction-ready |
| Upper Alpha / Individualized Alpha | Wellbeing, Athletic, Clinical | Calm Focus; Memory Readiness; Perceptual Stability | Usually positive for calm attentional control and working-memory support | Medium. Better when individualized around IAF | Medium-High | stable attention, deep work, broad readiness, calm cognitive control |
| Alpha Band Up-Training / CVSA | Athletic | Perceptual Breadth / Visuospatial Readiness | Positive for broad peripheral awareness and covert visuospatial attention | Medium-High. Likely task-specific and best with behavioral anchors | Emerging | tunnel vision, broad field awareness, scanning-ready |
| COSMI Index | Athletic | Calm Focus; Task Engagement; Motor Readiness | Positive when SMR rises and distracting/noisy bands drop | Medium | Emerging | reaction-ready, precise, stable, mentally noisy |
| ACC Modulation / Arousal Regulation | Athletic | Arousal / Activation | Positive when arousal moves toward an optimal band, not simply lower | High. The target is optimality, not one direction | Emerging | flat, optimal, overheated, panic-prone |
| Left Temporal Alpha (T3) | Athletic | Motor Automaticity | Usually positive for reducing verbal-analytic interference in precision skills | High. Most relevant in expert self-paced precision contexts | Medium | automatic, overthinking, choking, fluent execution |
| Temporal-Frontal Coherence | Athletic | Motor Automaticity; Cognitive Control | Often interpreted relative to reduced conscious overcontrol | High | Medium | automatic, effortful control, paralysis by analysis |
| FAA (Frontal Alpha Asymmetry) | Wellbeing, Clinical | Affective Regulation / Emotional Load | Protocol-dependent; often tied to healthier approach-oriented affect | Medium-High. Evidence is mixed and targetability is not perfectly settled | Medium | distressed, regulating, settled, pre-sleep emotionally downshifted |
| Decoded EEG Emotion-State / Reappraisal Signal | Wellbeing, Clinical | Affective Regulation; Cognitive Reappraisal | Positive when decoded affect-regulation pattern matches desired state | High. Depends on decoder training and calibration | Emerging | emotionally loaded, reappraising, resilient, settled |
| Alpha/Theta Ratio / Alpha-Theta Training | Wellbeing, Clinical | Arousal / Activation; Affective Regulation; Sleep Readiness | Often positive for downshifting, inwardness, relaxation | Medium | Medium-Low to Medium | relaxed inward, unwinding, meditative, sleep-ready |
| SCPs (Slow Cortical Potentials) | Wellbeing, Clinical, Accessibility / BCI | Task Engagement; Intentional Control | Depends on whether the protocol trains activation or deactivation | Medium | Medium-High clinically | engaged, release, intentional control, accessibility control state |
| PCC / DMN Downregulation | Wellbeing | Affective Regulation; Inward Attention; Mind-Wandering Control | Positive when self-referential drift decreases during meditation-like states | High. Measurement often indirect unless imaging is used | Emerging | mind-wandering, present, inward, meditative |
| dlPFC HbO Up-Regulation | Athletic, Wellbeing, Clinical | Executive Recruitment / Cognitive Load; Task Engagement | Positive up to a point. More is not always better if overload appears | Medium | Medium / Emerging | under-recruited, optimal executive engagement, overloaded |
| Decoded Prefrontal fNIRS Patterns | Wellbeing | Executive Recruitment; Cognitive Control | Positive when decoded control-related patterns strengthen | High. Heavily decoder-dependent | Emerging | anti-distraction, executive-ready, controlled, resilient |
| Network-Based fNIRS Small-Worldness | Wellbeing | Executive Recruitment; Cognitive Control; Fatigue / Instability | Positive when network efficiency aligns with lower cognitive load and stronger control | High | Emerging | efficient-control, overloaded, unstable-control |
| SMR-Linked Sleep Stability / Spindle-Adjacent Training | Wellbeing, Clinical | Sleep Readiness / Sleep Stability | Potentially positive for sleep-supportive stability, but evidence is mixed | Medium | Mixed | winding down, sleep-stable, restless |
| Autism-Oriented EEG Self-Regulation Targets (SCP, beta/theta, mu / alpha etc.) |
Clinical | Task Engagement; Affective Regulation; Executive Recruitment | Protocol-dependent | High. Highly population- and target-specific | Emerging-Medium | engaged, dysregulated, more regulated, overloaded |
| ADHD-Oriented EEG Targets (Theta/Beta, SMR, SCPs) |
Clinical | Task Engagement; Cognitive Control; Fatigue / Instability | Protocol-dependent; usually lower distractibility and higher control are desirable | Medium | Mixed / Low | distractible, task-engaged, impulsive, fatigued |
| Tinnitus Alpha/Delta Targets | Clinical | Affective Regulation; Sensory Distress / Symptom Load | Protocol-dependent and likely indirect | High | Emerging / Mixed | distressed, symptom-loaded, more regulated |
| MCI Cognitive EEG Targets (alpha, beta, SMR/theta combinations) |
Clinical | Executive Recruitment; Memory Readiness; Task Engagement | Usually positive when supporting cognitive engagement and memory stability | Medium | Emerging-Medium | under-recruited, cognitively engaged, fatigued |
How to Use This in Practice
Rule 1: Do Not Build Apps Around Single Markers
Do not build:
- an SMR app
- an FAA app
- a theta/beta app
Build:
- a calm-focus estimator
- an overcontrol detector
- a sleep-readiness estimator
- an affective regulation estimator
- a competition-readiness estimator
Markers should sit underneath the estimator.
Rule 2: Build Shared Axes First
A platform should estimate reusable axes before it estimates task states.
Recommended shared axes for version 1:
- Arousal / Activation
- Task Engagement
- Cognitive Control
- Calm Focus
- Motor Automaticity
- Affective Regulation
- Executive Recruitment
- Fatigue / Instability
- Sleep Readiness
- Signal Reliability
These axes can then be reused across:
- sport
- wellbeing
- cognitive enhancement
- clinical training
Rule 3: States Are Domain-Specific
Example sport states
- under-engaged
- calm-focused
- over-aroused
- over-controlled
- automatic
- fatigued
Example wellbeing states
- distracted
- stable attention
- mentally strained
- inward / meditative
- emotionally loaded
- sleep-ready
Example clinical states
- hyperaroused
- dysregulated
- avoidant / shut down
- regulated
- impulsive / distractible
- cognitively overloaded
Worked Example: Athletic Performance
Goal State
Calm-focused and competition-ready
This should not be inferred from SMR alone.
It should be estimated from multiple axes, for example:
- Calm Focus
- Motor Automaticity
- Arousal Optimality
- Fatigue / Instability
Example Marker Contributions
Calm Focus
- SMR
- Upper Alpha
- Theta/Beta Ratio
- COSMI components
Motor Automaticity
- T3 Alpha
- Temporal-Frontal Coherence
- Expert-specific FMT effects
Arousal Optimality
- ACC modulation
- stress-sensitive beta features
- optional HRV / respiration if available
Fatigue / Instability
- performance drift
- RT variability
- dlPFC HbO load
- multi-band degradation over time
Example State Definition
A rough internal rule might be:
competition-ready when:
- Calm Focus is high
- Automaticity is high
- Arousal is within an optimal band
- Fatigue is low
- Signal quality is acceptable
This means:
SMR does not directly become “competition-ready”
It becomes one weighted contributor to the Calm Focus axis, which then contributes to the final competition-ready state.
Worked Example: From SMR to Calm Focus
Wrong approach
SMR = calm focus
Better approach
SMR contributes to a Calm Focus construct together with other markers.
Example conceptual composite:
Calm Focus is estimated from:
- SMR
- Upper Alpha
- High-Beta or tension marker
- Theta/Beta Ratio
- optional EMG / motion noise
- optional behavioral stability
Then the athlete’s state is determined from that axis plus others.
This gives:
SMR -> Calm Focus axis -> Competition-Ready state
But in practice the real flow is:
SMR + other markers -> Calm Focus axis
then
Calm Focus + other axes -> Competition-Ready state
Platform Design Recommendation
The platform should implement:
1. Marker Registry
Stores:
- what the marker is
- how it is computed
- where it is measured
- required preprocessing
- domain relevance
- evidence confidence
- known caveats
2. Axis Estimators
Reusable models that combine markers into construct axes.
Examples:
- Calm Focus Estimator
- Arousal Estimator
- Affective Regulation Estimator
- Executive Recruitment Estimator
3. State Decoders
Protocol-specific mappings from axes to app states.
Examples:
- Sport readiness decoder
- Sleep readiness decoder
- Mood regulation decoder
- ADHD attention-state decoder
- Trauma regulation decoder
4. Feedback Policy Engine
Decides what the app does once state is inferred.
Examples:
- increase / decrease feedback intensity
- adapt task difficulty
- hold state
- encourage down-regulation
- reinforce best-state similarity
- trigger clinician note or safety pause
Summary
Markers
Evidence-backed measurements and control handles
Construct Axes
Reusable latent dimensions that markers contribute to
Task-Specific States
Protocol-level control abstractions built from axes
Final Rule
Markers are not states.
Axes are reusable constructs.
States are protocol-specific regions in axis space.
So the correct abstraction is:
signals -> markers -> axes -> states -> feedback policy
That is the foundation for a neurotechnology platform that supports:
- athletic performance products
- cognitive enhancement products
- wellbeing products
- clinical neurofeedback products
- future manifold / learned-representation layers
