کد مقاله کد نشریه سال انتشار مقاله انگلیسی نسخه تمام متن
6268439 1614629 2015 14 صفحه PDF دانلود رایگان
عنوان انگلیسی مقاله ISI
Computational NeuroscienceSystem identification of point-process neural systems using Probability Based Volterra kernels
ترجمه فارسی عنوان
سیستم عصبی محاسباتی سیستم شناسایی سیستم های عصبی نقطه ای با استفاده از هسته های ولتررا بر اساس احتمالات
موضوعات مرتبط
علوم زیستی و بیوفناوری علم عصب شناسی علوم اعصاب (عمومی)
چکیده انگلیسی


- PBV kernels are novel and intuitive way of modeling point-process systems.
- PBV kernels gave excellent results for synthetic and real datasets from rodent hippocampus.
- PBV kernels may be used synergistically with LET kernels to maximize performance.

BackgroundNeural information processing involves a series of nonlinear dynamical input/output transformations between the spike trains of neurons/neuronal ensembles. Understanding and quantifying these transformations is critical both for understanding neural physiology such as short-term potentiation and for developing cognitive neural prosthetics.New methodA novel method for estimating Volterra kernels for systems with point-process inputs and outputs is developed based on elementary probability theory. These Probability Based Volterra (PBV) kernels essentially describe the probability of an output spike given q input spikes at various lags t1, t2, …, tq.ResultsThe PBV kernels are used to estimate both synthetic systems where ground truth is available and data from the CA3 and CA1 regions rodent hippocampus. The PBV kernels give excellent predictive results in both cases. Furthermore, they are shown to be quite robust to noise and to have good convergence and overfitting properties. Through a slight modification, the PBV kernels are shown to also deal well with correlated point-process inputs.Comparison with existing methodsThe PBV kernels were compared with kernels estimated through least squares estimation (LSE) and through the Laguerre expansion technique (LET). The LSE kernels were shown to fair very poorly with real data due to the large amount of input noise. Although the LET kernels gave the best predictive results in all cases, they require prior parameter estimation. It was shown how the PBV and LET methods can be combined synergistically to maximize performance.ConclusionsThe PBV kernels provide a novel and intuitive method of characterizing point-process input-output nonlinear systems.

ناشر
Database: Elsevier - ScienceDirect (ساینس دایرکت)
Journal: Journal of Neuroscience Methods - Volume 240, 30 January 2015, Pages 179-192
نویسندگان
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