Title :
Limitations of principal component analysis as a method to detect neuronal assemblies
Author :
Sardeto Deolindo, Camila ; Bione Kunicki, Ana Carolina ; Lima Brasil, Fabricio ; Moioli, Renan Cipriano
Author_Institution :
Edmond & Lily Safra Int. Inst. of Neurosci. of Natal, Natal, Brazil
Abstract :
The anatomical and functional characterization of neuronal assemblies (NAs) is a major challenge in neuroscience. Principal component analysis (PCA) is a widely used method for feature detection, however, when dealing with neuronal data analysis, its limitations have not yet been fully understood. Our work complements previous PCA studies which, in general, characterise NAs based solely on excitatory neuronal interactions. We analysed the performance of PCA in two neglected scenarios: assemblies containing patterns of neural interactions (1) with inhibition and (2) with delays. The analyses considered two types of artificially generated data, one drawn from a traditional Poissonian model, and the other drawn from a latent multivariate Gaussian model; in both models, data from a behaving Wistar rat was used for parameter tuning. Our results highlight scenarios in which neglecting complex interactions between neurons can lead to false conclusions when using PCA to detect NAs. Also, we reinforce the importance of more realistic simulations in the evaluation of neuronal signal processing algorithms.
Keywords :
Gaussian processes; Poisson distribution; neurophysiology; principal component analysis; signal processing; NA characterisation; PCA; Poissonian model; Wistar rat; artificially generated data; complex interactions; excitatory neuronal interactions; feature detection; latent multivariate Gaussian model; neural interaction patterns; neuronal assembly anatomical characterization; neuronal assembly detection method; neuronal assembly functional characterization; neuronal data analysis; neuronal signal processing algorithms; parameter tuning; performance analysis; principal component analysis; Assembly; Firing; Mathematical model; Measurement; Neurons; Neuroscience; Principal component analysis; Neural Simulation; Neuronal Assemblies; Principal Component Analysis (PCA);
Conference_Titel :
e-Health Networking, Applications and Services (Healthcom), 2014 IEEE 16th International Conference on
Conference_Location :
Natal
DOI :
10.1109/HealthCom.2014.7001808