Promises and pitfalls of topological data analysis for brain connectivity analysis

被引:26
作者
Caputi, Luigi [1 ,4 ]
Pidnebesna, Anna [1 ,2 ,3 ]
Hlinka, Jaroslav [1 ,2 ]
机构
[1] Czech Acad Sci, Inst Comp Sci, Pod Vodarenskou Vezi 271-2, Prague 18207, Czech Republic
[2] Natl Inst Mental Hlth, Topolova 748, Klecany 25067, Czech Republic
[3] Czech Tech Univ, Fac Elect Engn, Tech 1902-2, Prague 16627, Czech Republic
[4] Univ Aberdeen, Inst Math, Aberdeen AB24 3UE, Scotland
关键词
Persistent homology; Connectivity; fMRI; Electrophysiology; Epilepsy; Schizophrenia; RESTING-STATE FMRI; FUNCTIONAL CONNECTIVITY; PERSISTENT HOMOLOGY; NETWORKS; STABILITY; CAUSALITY; TOOLBOX; MODEL;
D O I
10.1016/j.neuroimage.2021.118245
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key neuroscientific challenge. Topological Data Analysis, despite its relative novelty, already generated many promising applications, including in neuroscience. We conjecture its prominent tool of persistent homology may benefit from going beyond analysing structural and functional connectivity to effective connectivity graphs capturing the direct causal interactions or information flows. Therefore, we assess the potential of persistent homology to directed brain network analysis by testing its discriminatory power in two distinctive examples of disease-related brain connectivity alterations: epilepsy and schizophrenia. We estimate connectivity from functional magnetic resonance imaging and electrophysiology data, employ Persistent Homology and quantify its ability to distinguish healthy from diseased brain states by applying a support vector machine to features quantifying persistent homology structure. We show how this novel approach compares to classification using standard undirected approaches and original connectivity matrices. In the schizophrenia classification, topological data analysis generally performs close to random, while classifications from raw connectivity perform substantially better; potentially due to topographical, rather than topological, specificity of the differences. In the easier task of seizure discrimination from scalp electroencephalography data, classification based on persistent homology features generally reached comparable performance to using raw connectivity, albeit with typically smaller accuracies obtained for the directed (effective) connectivity compared to the undirected (functional) connectivity. Specific applications for topological data analysis may open when direct comparison of connectivity matrices is unsuitable such as for intracranial electrophysiology with individual number and location of measurements. While standard homology performed overall better than directed homology, this could be due to notorious technical problems of accurate effective connectivity estimation.
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页数:20
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