Decoding the Neural Basis of Sensory Phenotypes in Autism.
Kolisnyk Matthew, Lyons Kathleen, Choi Eun Jung, Vandewouw Marlee M, Stojanoski Bobby, Anagnostou Evdokia, Kushki Azadeh, Nicolson Rob, Kelley Elizabeth, Georgiades Stelios, Lerch Jason, Crosbie Jennifer, Schachar Russell, Ayub Muhammad, Jones Jessica, Arnold Paul, Liu Xudong, Stevenson Ryan
What this study means for families
This brain imaging study found that different sensory processing patterns in autism are linked to how different brain areas communicate with each other. Researchers studied 146 autistic people and identified 5 distinct sensory 'types' that could be distinguished by looking at brain connectivity patterns. This helps explain why autistic people experience sensory differences so differently from each other and suggests these differences have a clear biological basis in the brain.
Summary by AutismInsights from published abstract. This is not a substitute for reading the original paper.
Research summary
This neuroimaging study analyzed functional brain connectivity in 146 autistic participants from the POND Network to understand the neural basis of sensory processing differences. Researchers identified 5 distinct sensory phenotypes using clustering analysis and successfully distinguished 7 of 10 phenotype pairs through machine learning models based on brain connectivity patterns. Key brain regions involved included the somatomotor network, orbitofrontal cortex, posterior parietal cortex, prefrontal cortex, and subcortical areas. The findings demonstrate that different sensory processing patterns in autism correspond to measurable differences in how brain regions communicate, supporting the neurobiological basis of sensory heterogeneity in autism.
Summary by AutismInsights from published abstract. This is not a substitute for reading the original paper.
Key findings
- 1
Five distinct sensory processing phenotypes were identified in autistic individuals using clustering analysis
Confidence: moderateRelevance: high - 2
Machine learning models successfully distinguished 7 of 10 sensory phenotype pairs using brain connectivity measures
Confidence: moderateRelevance: high - 3
Sensory phenotypes corresponded to different functional connectivity patterns in somatomotor network, orbitofrontal cortex, posterior parietal cortex, prefrontal cortex, and subcortical areas
Confidence: moderateRelevance: high
Summary by AutismInsights from published abstract. This is not a substitute for reading the original paper.
Clinical implications
These findings support personalized approaches to sensory interventions based on neurobiological phenotypes. Understanding distinct sensory subtypes could inform more targeted therapeutic strategies and help clinicians better predict which interventions may be most effective for individual autistic clients.
Summary by AutismInsights from published abstract. This is not a substitute for reading the original paper.
Limitations
Single study from one network (POND) which may limit generalizability. Study type not specified in metadata. No information provided about participant demographics, age ranges, or potential confounding variables. Replication in independent samples needed.
Summary by AutismInsights from published abstract. This is not a substitute for reading the original paper.
Original abstract
Differences in sensory processing are a defining characteristic of autism, affecting up to 87% of autistic individuals. These differences cause widespread perceptual changes that can negatively impact cognition, development, and daily functioning. Our research identified 5 sensory processing phenotypes with varied behavioral presentations; however, their neural basis remains unclear. In this study, we aim to ground these sensory phenotypes in unique patterns of functional connectivity.
We analyzed data from 146 autistic participants from the POND Network (Province of Ontario Neurodevelopmental Disorders Network). We classified participants into 5 sensory phenotypes using k-means clustering of scores from the Short Sensory Profile. We computed functional connectivity matrices from functional magnetic resonance imaging data across 200 cortical and 32 subcortical regions and calculated graph-theoretical measures (betweenness centrality, strength, local efficiency, and clustering coefficient) to assess information exchange between these regions. We then trained machine learning models to use these measures to classify between all pairs of sensory phenotypes.
Our sample was clustered into 5 sensory phenotypes. The machine learning models distinguished 7 of the 10 total pairs of sensory phenotypes using graph-theoretical measures (p < .005). Information exchange within and between the somatomotor network, orbitofrontal cortex, posterior parietal cortex, prefrontal cortex, and subcortical areas was predictive of sensory phenotype. Sensory phenotypes in autism correspond to differences in functional connectivity across cortical, subcortical, and network levels.
These findings support the view that variability in sensory processing is reflected in measurable neural patterns and motivate continued work to refine models of sensory processing, with the goal of better understanding and capturing the heterogeneity implicit in autism.
Evidence Grade
moderate
Grade assigned by AutismInsights based on study type and published abstract.
Study Details
- Journal
- Biological psychiatry. Cognitive neuroscience and neuroimaging
- Year
- 2026
- PMID
- 41525855
- DOI
- 10.1016/j.bpsc.2025.12.013
MeSH Terms