Multi-dimensional classification of GABAergic interneurons with Bayesian network-modeled label uncertainty

被引:11
作者
Mihaljevic, Bojan [1 ]
Bielza, Concha [1 ]
Benavides-Piccione, Ruth [2 ,3 ]
DeFelipe, Javier [2 ,3 ]
Larranaga, Pedro [1 ]
机构
[1] Univ Politecn Madrid, Escuela Tecn Super Ingenieros Informat, Dept Inteligencia Artificial, Computat Intelligence Grp, E-28660 Madrid, Spain
[2] Univ Politecn Madrid, Ctr Technol Biomed, Lab Cajal Circuitos Cortales, E-28660 Madrid, Spain
[3] CSIC, Inst Cajal, E-28002 Madrid, Spain
关键词
probabilistic labels; consensus; distance-weighted k nearest neighbors; multiple annotators; neuronal morphology; DENDRITIC GEOMETRY; DIVERSITY; COMBINATION; NEURONS;
D O I
10.3389/fncom.2014.00150
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Interneuron classification is an important and long-debated topic in neuroscience. A recent study provided a data set of digitally reconstructed interneurons classified by 42 leading neuroscientists according to a pragmatic classification scheme composed of five categorical variables, namely, of the interneuron type and four features of axonal morphology. From this data set we now learned a model which can classify interneurons, on the basis of their axonal morphometric parameters, into these five descriptive variables simultaneously. Because of differences in opinion among the neuroscientists, especially regarding neuronal type, for many interneurons we lacked a unique, agreed-upon classification, which we could use to guide model learning. Instead, we guided model learning with a probability distribution over the neuronal type and the axonal features, obtained, for each interneuron, from the neuroscientists' classification choices. We conveniently encoded such probability distributions with Bayesian networks, calling them label Bayesian networks (LBNs), and developed a method to predict them. This method predicts an LBN by forming a probabilistic consensus among the LBNs of the interneurons most similar to the one being classified. We used 18 axonal morphometric parameters as predictor variables, 13 of which we introduce in this paper as quantitative counterparts to the categorical axonal features. We were able to accurately predict interneuronal LBNs. Furthermore, when extracting crisp (i.e., non-probabilistic) predictions from the predicted LBNs, our method outperformed related work on interneuron classification. Our results indicate that our method is adequate for multi-dimensional classification of interneurons with probabilistic labels. Moreover, the introduced morphometric parameters are good predictors of interneuron type and the four features of axonal morphology and thus may serve as objective counterparts to the subjective, categorical axonal features.
引用
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页数:13
相关论文
共 77 条
[1]  
Ambroise C., 2001, 10 INT S APPL STOCH, V1, P101
[2]  
[Anonymous], 2004, Learning Bayesian Networks
[3]  
[Anonymous], 1973, Pattern Classification and Scene Analysis
[4]   NeuroMorpho.Org: A central resource for neuronal morphologies [J].
Ascoli, Giorgio A. ;
Donohue, Duncan E. ;
Halavi, Maryam .
JOURNAL OF NEUROSCIENCE, 2007, 27 (35) :9247-9251
[5]   Quantitative Morphometry of Electrophysiologically Identified CA3b Interneurons Reveals Robust Local Geometry and Distinct Cell Classes [J].
Ascoli, Giorgio A. ;
Brown, Kerry M. ;
Calixto, Eduardo ;
Card, J. Patrick ;
Galvan, E. J. ;
Perez-Rosello, T. ;
Barrionuevo, German .
JOURNAL OF COMPARATIVE NEUROLOGY, 2009, 515 (06) :677-695
[6]   Beyond the frontiers of neuronal types [J].
Battaglia, Demian ;
Karagiannis, Anastassios ;
Gallopin, Thierry ;
Gutch, Harold W. ;
Cauli, Bruno .
FRONTIERS IN NEURAL CIRCUITS, 2013, 7
[7]   Dendritic size of pyramidal neurons differs among mouse cortical regions [J].
Benavides-Piccione, Ruth ;
Hamzei-Sichani, Farid ;
Ballesteros-Yanez, Inmaculada ;
DeFelipe, Javier ;
Yuste, Rafael .
CEREBRAL CORTEX, 2006, 16 (07) :990-1001
[8]   Multi-dimensional classification with Bayesian networks [J].
Bielza, C. ;
Li, G. ;
Larranaga, P. .
INTERNATIONAL JOURNAL OF APPROXIMATE REASONING, 2011, 52 (06) :705-727
[9]   Bayesian networks in neuroscience: a survey [J].
Bielza, Concha ;
Larranaga, Pedro .
FRONTIERS IN COMPUTATIONAL NEUROSCIENCE, 2014, 8
[10]   Predicting human immunodeficiency virus inhibitors using multi-dimensional. Bayesian network classifiers [J].
Borchani, Hanen ;
Bielza, Concha ;
Toro, Carlos ;
Larranaga, Pedro .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2013, 57 (03) :219-229