3051-2492ReAttach Affect Coach JournalReAC3051-2492ReAttach Therapy International FoundationNetherlandsPsychologyBeyond Distress and Resilience: Identification of Seven Distinct Emotional Phenotypes in Functional Neurological Disorder Through Large-Scale Digital PhenotypingPainterSteven
steven@neurolog.app
Zeestraten-BartholomeusDr. PaulaMehradProf. Dr. Aida
Neurolog, United KingdomReAttach Academy, NetherlandsUniversitat Internacional de Catalunyahttps://ror.org/00tse2b39SpainCorresponding author: Steven Painter, Neurolog, United Kingdom .Email:steven@neurolog.app122nd issue97101Copyright 2025 @Steven Painter2025ReAttach Therapy International Foundationhttps://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.Beyond Distress and Resilience: Identification of Seven Distinct Emotional Phenotypes in Functional Neurological Disorder Through Large-Scale Digital PhenotypingObjective

Functional Neurological Disorder (FND) has traditionally been understood through a binary emotional framework, distinguishing distressed from resilient patients. This study aimed to identify more nuanced emotional presentations using large-scale digital phenotyping data from a symptom-tracking application, emphasizing the importance of these insights for advancing clinical understanding.

Method

The researchers analysed 10,556 emotion instances across 3,307 emotional logs from 1,032 FND patients using the NeuroLog mobile application [1]. While digital phenotyping offers real-time insights, limitations include potential selection bias and reliance on self-reporting, which may affect data validity. Co-occurrence clustering, hierarchical pattern analysis, and temporal transition modelling were employed to identify distinct emotional groupings with prevalence greater than 3%.

Result

The researchers analysed 10,556 emotion instances across 3,307 emotional logs from 1,032 FND patients using the NeuroLog mobile application [1]. While digital phenotyping offers real-time insights, limitations include potential selection bias and reliance on self-reporting, which may affect data validity. Co-occurrence clustering, hierarchical pattern analysis, and temporal transition modelling were employed to identify distinct emotional groupings with prevalence greater than 3%.

Conclusion

FND emotional experience is multidimensional rather than bipolar. These findings have significant implications for personalised treatment approaches and suggest that current therapeutic models may inadequately address the heterogeneity of emotional presentations in FND, encouraging clinicians to consider more tailored interventions.

Functional Neurological Disorderemotional phenotypesdigital phenotypingcluster analysisConversion DisorderFile created by JATS EditorJATS Editorissue-created-year2025
Study Aims

The present study utilised large-scale data from a dedicated FND symptom-tracking application to address three primary questions: (a) Do FND patients demonstrate distinct emotional clustering patterns beyond the traditional distress-resilience binary? (b) What is the prevalence and clinical profile of each identified emotional phenotype? and (c) How do patients transition between emotional states, and what are the implications for intervention timing?

MethodParticipants and Setting

Data were collected from 1,032 registered users of NeuroLog, a mobile application designed specifically for FND symptom tracking [1]. Users self-identified as having received an FND diagnosis from a healthcare provider. The sample represented a convenience sample of individuals who voluntarily downloaded and used the application between March 2025 and November 2025.

Demographic data were collected with explicit consent from a subset of participants (n = 95). The majority of respondents were female (consistent with FND epidemiology), with ages ranging from 18 to 72 years. Participants resided primarily in the United Kingdom, United States, Australia, and continental Europe.

The NeuroLog Application

NeuroLog is a Progressive Web Application enabling daily logging of FND symptoms, emotional states, triggers, sleep patterns, and self-management interventions [1]. The emotion tracking module presents users with a comprehensive list of 47 discrete emotional states, from which they may select all that apply to their current experience. Users also rate overall symptom severity (0-10), emotional intensity (0-10), and physical intensity (0-10). The application was designed following accessibility guidelines for individuals with cognitive symptoms, featuring simple language, large touch targets, and minimal cognitive load requirements.

Data Extraction and Preprocessing

The researchers extracted 3,307 daily logs containing emotion data, yielding 10,556 individual emotion instances. For cluster analysis, The researchers focused on multi-emotion logs (n = 2,024) where users reported two or more simultaneous emotions, as these provided insight into naturally co-occurring emotional states. Data preprocessing included removal of duplicate entries within 24-hour windows, standardisation of emotion labels to account for spelling variations, and exclusion of logs with missing severity or intensity ratings.

Analytical ApproachCo-occurrence Analysis

We calculated pairwise co-occurrence frequencies for all emotion combinations, establishing a minimum threshold of 3% prevalence (61+ occurrences) for inclusion in subsequent analyses.

Hierarchical Clustering

Agglomerative hierarchical clustering with Ward's linkage was applied to the emotion cooccurrence matrix to identify natural groupings.

Temporal Transition Modelling

We examined emotion-to-emotion transitions across consecutive logging days to identify recovery pathways and persistence patterns.

Trajectory Classification

Patients were classified as "improving," "stable," or "deteriorating" based on severity changes across their logging history (≥2 point improvement, ±2 point stability, or ≥2 point worsening).

ResultsEmotion Co-occurrence Patterns

Analysis of multi-emotion logs revealed substantial clustering of emotional experiences (table 1). The most frequently co-occurring emotion pairs were Sad + Frustrated (12.0%, M severity = 7.54), Anxious + Stressed (9.2%, M severity = 7.05), and Overwhelmed + Stressed (9.1%, M severity = 7.34). Notably, 19 of the top 20 co-occurring pairs represented negative emotional states. The sole positive pairing (Happy + Content) appeared with 6.5% prevalence and substantially lower severity (M = 5.35).

Top 20 Emotion Pairs (≥61 co-occurrences, >3% prevalence)

RankEmotion 1Emotion 2Co-occurrencePrevalenceMean SeverityMean Intensity
1SadFrustrated27412.3%7.617.82
2AnxiousStressed2209.9%7.117.28
3OverwhelmedStressed2159.7%7.387.48
4AnxiousOverwhelmed2129.5%7.147.42
5FrustratedAnxious2119.5%7.237.42
6AnxiousFrustrated1978.9%7.517.67
7SadAnxious1948.7%7.327.62
8FrustratedStressed1788.0%7.347.64
9FrustratedOverwhelmed1747.8%7.367.56
10AnxiousSad1677.5%7.367.82
11AnxiousWorried1617.3%7.067.32
12SadOverwhelmed1597.2%7.467.86
13WorriedStressed1496.7%7.257.38
14HappyContent1476.6%5.416.29
15FrustratedWorried1476.6%7.147.33
16SadStressed1476.6%7.507.76
17StressedUncomfortable1366.1%7.627.38
18OverwhelmedUncomfortable1356.1%7.567.42
19SadGrief1346.0%7.287.76
20SadDisappointed1315.9%7.377.72

As shown in table 2, all top 10 combinations of three emotions (triads) are distress-related. Mean severity across triads = 7.50/10. Mean emotional intensity = 7.83/10 (approaching ceiling).

Top 10 Three-Emotion Combinations (≥50 occurrences)

RankTriadFrequencyPrevalenceMean SeverityMean Intensity
1Anxious + Overwhelmed + Stressed1409.3%7.377.59
2Frustrated + Overwhelmed + Stressed1218.0%7.467.80
3Frustrated + Anxious + Stressed1137.5%7.437.82
4Frustrated + Anxious + Overwhelmed1067.0%7.437.90
5Sad + Overwhelmed + Stressed1036.8%7.707.98
6Sad + Anxious + Stressed1016.7%7.557.85
7Worried + Overwhelmed + Stressed1006.6%7.567.76
8Sad + Frustrated + Anxious1006.6%7.667.95
9Sad + Anxious + Overwhelmed1006.6%7.528.01
10Anxious + Worried + Stressed996.6%7.337.63
Identification of Seven Emotional Phenotypes

Cluster analysis revealed seven distinct emotional phenotypes, each with characteristic presentations, severity profiles, and clinical implications, as shown in table 3.

Characteristics of Seven Emotional Phenotypes in FND

PhenotypePrevalenceMean SeverityMean IntensityIntervention RateCore Emotions
Distress40.2%6.667.707.7%Anxious, Sad, Frustrated
Shutdown32.8%6.105.066.3%Empty, Numb, Indifferent
Activation33.6%6.416.542.5%Energetic, Nervous, Excited
Anger16.0%6.24-7.427.640.0%Frustrated, Irritated, Angry
Social Isolation16.3%6.696.61Lonely, Empty, Grief
Resilience12.8%5.106.107.1%Happy, Content, Grateful
Ambivalent9.5%6.296.74Hopeful + Worried
Phenotype 1: Distress Cluster

Representing 40.2% of emotional logs (n = 1,329), the Distress Cluster was the most common presentation, characterised by co-occurring anxiety, sadness, and frustration. Mean symptom severity was 6.66/10, with emotional intensity ratings averaging 7.50-7.90. This cluster demonstrated the highest emotional persistence; anxious states appeared on consecutive logging days 30.7% of the time.

Phenotype 2: Shutdown Cluster

Affecting nearly one-third of patients (32.8%, n = 1,085), the Shutdown Cluster was characterised by emotional numbing, emptiness, and indifference. This phenotype demonstrated a paradox: moderate symptom severity (M = 6.10) coupled with low emotional intensity (M = 5.06). Intervention utilisation in this cluster was notably low (6.3%).

Phenotype 3: Activation Cluster

The Activation Cluster (33.6%, n = 1,110) presented with high arousal states combining both positive (energetic) and negative (nervous) emotional features. Mean severity was substantial (6.41/10) despite patients often reporting feeling "better." This phenotype demonstrated the lowest intervention utilisation of any cluster (2.5%).

Phenotype 4: Anger Cluster

The Anger Cluster (16.0%, n = 528) encompassed presentations ranging from frustration to overt anger. When anger co-occurred with distress emotions, severity increased substantially (M = 7.42). Intervention utilisation in the Anger Cluster was zero percent.

Phenotypes 5, 6, and 7

The Social Isolation Cluster (16.3%) was characterised by loneliness and grief. The Resilience Cluster (12.8%) represented the only predominantly positive phenotype, though temporal analysis revealed these states were fragile, with 39% of patients transitioning to anxious states within three days. The Ambivalent Cluster (9.5%) captured simultaneous positive and negative experiences, such as hope alongside worry.

Temporal Dynamics and Recovery Trajectories

Analysis of emotional transitions revealed distinct pathways from distress states. Following distress-dominant logs, patients most commonly transitioned to continued anxiety (40%), escalation to frustration (29%), or recovery to calm states (27%). The mean time from severe distress (≥7/10 severity) to meaningful improvement (≤5/10 severity) was 3.0 days (SD = 2.1).

Discussion

The identification of seven distinct emotional phenotypes challenges the binary distressresilience model that has dominated FND conceptualisation. Our findings suggest that emotional experience in FND is fundamentally multidimensional.

The Shutdown Phenomenon and Activation Paradox

The Shutdown Cluster, affecting one-third of patients, represents a "hidden majority." The low arousal, low motivation profile creates a therapeutic paradox: patients most in need of intervention may be least likely to seek it. Similarly, the Activation Cluster represents a potential precursor to "boom-bust" cycling, where patients fail to recognise distress when masked by high energy.

The Anger Gap

The complete absence of intervention utilisation in the Anger Cluster represents a critical finding. Anger and frustration feature prominently in FND experience-appearing in 16% of logs-yet patients appear to possess no strategies for managing these emotions.

Besides providing greater clarity on the need for tailored interventions for different phenotypes within FND, this research also offers direct guidance on transdiagnostic interventions that can provide tailored solutions for patients with psychobiosocial conditions, such as FND. Although the results of this study are limited to the FND group and therefore not generalizable, the FND population is heterogeneous, with complex symptomatology and comorbidity.

We will directly benefit from the results of this study to guide effectiveness research on transdiagnostic interventions, including ReAttach, which aims to provide personalized care [9]. Now we have the opportunity to investigate not only whether an intervention, such as ReAttach, is effective or not, but also for which phenotypes. Additionally, the study outcomes help therapists and patients select tailored ReAttach self-regulation techniques, such as the W.A.R.A.

Conclusions

This study provides the first large-scale, ecologically valid characterisation of emotional phenotypes in FND. The identification of seven distinct clusters suggests substantial heterogeneity in emotional experience. These findings have significant implications for personalised treatment approaches, particularly regarding the specific needs of patients in Shutdown, Activation, and Anger states.

Declaration of interest

Steven Painter is the developer of Neurolog.

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