Back

A detailed investigation of Shared Variance Component Analysis as a tool to characterize neural dimensionality

Carballosa, A.; Torcini, A.

2026-05-04 neuroscience
10.64898/2026.04.30.721904 bioRxiv
Show abstract

BackgroundThe relevance of spontaneous activity has been unlocked thanks to recent large scale recordings that revealed, via Shared Variance Component Analysis (SVCA), the high-dimensional nature of the ongoing activity. A fundamental problem is how the dimension modifies when more neurons are included in the analysis. Contradictory results have been reported on this subject based on SVCA and Principal Component Analysis (PCA). New MethodWe investigate pro et contra of SVCA and PCA for the identification of reliable responses encoding underlying state variables. We focus on common features of the spectra of the reliable variances (RVs) and on their dimensionality. The analysis is demonstrated on previously published Ca2+ data from the visual and the dorsal cortex in head fixed mice during spontaneous behavior. ResultsRVs grow proportionally to the number N of neurons and show a power-law decay k- with the k-th SVC dimension over a range bounded by a maximal dimension kc, initially diverging as N 1/ and then saturating at sufficiently large N. The reliable dimensionality, estimated with different methodologies, also shows a clear saturation to an asymptotic value for large N. Furthermore, its value decreases when becomes larger, as demonstrated by employing experimental data as well as theoretical predictions. ConclusionWe have shown that SVCA is an extremely effective tool to extract reliable features from the neural signals, and that the exponent represents a biomarker able to reveal the level of correlation of the neurons as well as the dimensionality of the reliable space. HighlightsO_LIAdvantages and drawbacks of Shared Variance Component Analysis to extract reliable signals from neural data C_LIO_LIComparison of different methods to estimate reliable neural dimensionality associated to spontaneous activity C_LIO_LIAnalytical expressions of embedding dimensionality for power-law decaying reliable variances C_LIO_LIBounded growth of the dimensionality with the number of neurons C_LI

Matching journals

The top 8 journals account for 50% of the predicted probability mass.

1
PLOS ONE
4510 papers in training set
Top 16%
10.7%
2
Scientific Reports
3102 papers in training set
Top 11%
7.4%
3
Biomedical Signal Processing and Control
18 papers in training set
Top 0.1%
7.4%
4
Chaos, Solitons & Fractals
32 papers in training set
Top 0.3%
6.5%
5
Neuroinformatics
40 papers in training set
Top 0.1%
6.5%
6
eneuro
389 papers in training set
Top 1%
5.0%
7
Journal of Neuroscience Methods
106 papers in training set
Top 0.3%
4.1%
8
PLOS Computational Biology
1633 papers in training set
Top 9%
3.7%
50% of probability mass above
9
Frontiers in Neuroinformatics
38 papers in training set
Top 0.2%
3.3%
10
European Journal of Neuroscience
168 papers in training set
Top 0.2%
2.1%
11
Frontiers in Human Neuroscience
67 papers in training set
Top 0.8%
2.1%
12
Heliyon
146 papers in training set
Top 0.9%
2.1%
13
Sensors
39 papers in training set
Top 0.8%
1.9%
14
Neuroscience
88 papers in training set
Top 0.9%
1.8%
15
Frontiers in Neuroscience
223 papers in training set
Top 3%
1.7%
16
Frontiers in Psychiatry
83 papers in training set
Top 2%
1.4%
17
Neuroscience Letters
28 papers in training set
Top 0.5%
1.4%
18
Computers in Biology and Medicine
120 papers in training set
Top 3%
1.4%
19
Brain and Behavior
37 papers in training set
Top 0.8%
1.3%
20
PeerJ
261 papers in training set
Top 11%
1.0%
21
Brain Sciences
52 papers in training set
Top 1%
1.0%
22
Cognitive Neurodynamics
15 papers in training set
Top 0.3%
1.0%
23
Frontiers in Neural Circuits
36 papers in training set
Top 0.4%
1.0%
24
BMC Bioinformatics
383 papers in training set
Top 6%
0.9%
25
Wellcome Open Research
57 papers in training set
Top 2%
0.9%
26
Journal of Medical Internet Research
85 papers in training set
Top 4%
0.8%
27
Frontiers in Systems Neuroscience
19 papers in training set
Top 0.4%
0.8%
28
Biology
43 papers in training set
Top 3%
0.7%
29
Frontiers in Physiology
93 papers in training set
Top 7%
0.7%
30
Neural Computation
36 papers in training set
Top 1.0%
0.5%