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Latent Similarity Identifies Important Functional Connections for Phenotype Prediction

Anton Orlichenko, Gang Qu, Gemeng Zhang, Binish Patel, Tony W. Wilson, Julia M. Stephen, Vince D. Calhoun, Yu‐Ping Wang

2022IEEE Transactions on Biomedical Engineering17 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: Endophenotypes such as brain age and fluid intelligence are important biomarkers of disease status. However, brain imaging studies to identify these biomarkers often encounter limited numbers of subjects but high dimensional imaging features, hindering reproducibility. Therefore, we develop an interpretable, multivariate classification/regression algorithm, called Latent Similarity (LatSim), suitable for small sample size but high feature dimension datasets. METHODS: LatSim combines metric learning with a kernel similarity function and softmax aggregation to identify task-related similarities between subjects. Inter-subject similarity is utilized to improve performance on three prediction tasks using multi-paradigm fMRI data. A greedy selection algorithm, made possible by LatSim's computational efficiency, is developed as an interpretability method. RESULTS: LatSim achieved significantly higher predictive accuracy at small sample sizes on the Philadelphia Neurodevelopmental Cohort (PNC) dataset. Connections identified by LatSim gave superior discriminative power compared to those identified by other methods. We identified 4 functional brain networks enriched in connections for predicting brain age, sex, and intelligence. CONCLUSION: We find that most information for a predictive task comes from only a few (1-5) connections. Additionally, we find that the default mode network is over-represented in the top connections of all predictive tasks. SIGNIFICANCE: We propose a novel prediction algorithm for small sample, high feature dimension datasets and use it to identify connections in task fMRI data. Our work can lead to new insights in both algorithm design and neuroscience research.

Topics & Concepts

Discriminative modelComputer scienceArtificial intelligenceInterpretabilityMachine learningMultiple kernel learningSimilarity (geometry)Pattern recognition (psychology)Softmax functionFeature selectionSample size determinationMetric (unit)Support vector machineKernel methodDeep learningMathematicsStatisticsEconomicsImage (mathematics)Operations managementFunctional Brain Connectivity StudiesFace Recognition and PerceptionEEG and Brain-Computer Interfaces