Quantitative self-organizing maps for clustering electron tomograms

被引:23
作者
Pascual-Montano, A
Taylor, KA
Winkler, H
Pascual-Marqui, RD
Carazo, JM
机构
[1] CSIC, Ctr Nacl Biotecnol, Madrid 28049, Spain
[2] Florida State Univ, Inst Mol Biophys, Tallahassee, FL 32306 USA
[3] Univ Hosp Psychiat, KEY Inst Brain Mind Res, CH-8029 Zurich, Switzerland
关键词
classification; electron tomography; image processing; neural networks; self-organizing maps; probability density function; kernel functions; actin; myosin; muscle proteins;
D O I
10.1016/S1047-8477(02)00008-4
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Tomography emerges as a powerful methodology for determining the complex architectures of biological specimens' that are better regarded from the structural point of view as singular entities. However, once the structure of a sufficiently large number of singular specimens is solved, quite possibly structural patterns start to emerge. This latter situation is addressed here, where the clustering of a set of 3D reconstructions using a novel quantitative approach is presented. In general terms, we propose a new variant of a self-organizing neural network for the unsupervised classification of 3D reconstructions. The novelty of the algorithm lies in its rigorous mathematical formulation that, starting from a large set of noisy input data, finds a set of "representative" items, organized onto an ordered output map, such that the probability density of this set of representative items resembles at its possible best the probability density of the input data. In this study, we evaluate the feasibility of application of the proposed neural approach to the problem of identifying similar 3D motifs within tomograms of insect flight muscle. Our experimental results prove that this technique is suitable for this type of problem, providing the electron microscopy community with a new tool for exploring large sets of tomogram data to find complex patterns. (C) 2002 Elsevier Science (USA). All rights reserved.
引用
收藏
页码:114 / 122
页数:9
相关论文
共 20 条
[1]   Molecular modeling of averaged rigor crossbridges from tomograms of insect flight muscle [J].
Chen, LF ;
Winkler, H ;
Reedy, MK ;
Reedy, MC ;
Taylor, KA .
JOURNAL OF STRUCTURAL BIOLOGY, 2002, 138 (1-2) :92-104
[2]   Theoretical aspects of the SOM algorithm [J].
Cottrell, M ;
Fort, JC ;
Pagès, G .
NEUROCOMPUTING, 1998, 21 (1-3) :119-138
[3]   BINDING OF MYOSIN SUBFRAGMENT-1 TO GLYCERINATED INSECT FLIGHT-MUSCLE IN THE RIGOR STATE [J].
GOODY, RS ;
REEDY, MC ;
HOFMANN, W ;
HOLMES, KC ;
REEDY, MK .
BIOPHYSICAL JOURNAL, 1985, 47 (02) :151-169
[4]   A clustering method based on the estimation of the probability density function and on the skeleton by influence zones. Application to image processing [J].
Herbin, M ;
Bonnet, N ;
Vautrot, P .
PATTERN RECOGNITION LETTERS, 1996, 17 (11) :1141-1150
[5]   INTERPRETATION OF THE LOW-ANGLE X-RAY-DIFFRACTION FROM INSECT FLIGHT-MUSCLE IN RIGOR [J].
HOLMES, KC ;
TREGEAR, RT ;
BARRINGTONLEIGH, J .
PROCEEDINGS OF THE ROYAL SOCIETY SERIES B-BIOLOGICAL SCIENCES, 1980, 207 (1166) :13-+
[6]  
Kohonen T., 1997, Self-organizing Maps, V2nd ed.
[7]   FRACTION OF MYOSIN HEADS BOUND TO THIN-FILAMENTS IN RIGOR FIBRILS FROM INSECT FLIGHT AND VERTEBRATE MUSCLES [J].
LOVELL, SJ ;
KNIGHT, PJ ;
HARRINGTON, WF .
NATURE, 1981, 293 (5834) :664-666
[8]   ESTIMATION OF A PROBABILITY DENSITY-FUNCTION AND MODE [J].
PARZEN, E .
ANNALS OF MATHEMATICAL STATISTICS, 1962, 33 (03) :1065-&
[9]   Smoothly distributed fuzzy c-means:: a new self-organizing map [J].
Pascual-Marqui, RD ;
Pascual-Montano, AD ;
Kochi, K ;
Carazo, JM .
PATTERN RECOGNITION, 2001, 34 (12) :2395-2402
[10]   A novel neural network technique for analysis and classification of EM single-particle images [J].
Pascual-Montano, A ;
Donate, LE ;
Valle, M ;
Bárcena, M ;
Pascual-Marqui, RD ;
Carazo, JM .
JOURNAL OF STRUCTURAL BIOLOGY, 2001, 133 (2-3) :233-245