Nástroje pro analýzu dat
SigHunt: Horizontal Gene Transfer Finder Optimized for Eukaryotic Genomes
Authors
Kamil S. Jaroň, Jiří Moravec, Natália Martínková
Citation
Jaroň, K. S,, Moravec, J, Martínková, N. SigHunt: Horizontal gene transfer finder optimized for eukaryotic genomes [online]. 2013. Available from: https://iba.med.muni.cz/en/science-research/tools-for-data-analysis#sighunt
Description
SigHunt analyses genomic signature of a DNA sequence and outputs the score DIAS. It consists of several tools:
Main tools
- SigHunter -- batch program written in C that reads a fasta file and outputs genomic signature for specified, sequential windows of the DNA sequence.
- SigHunt.r -- R functions that analyse genomic signatures provided by SigHunter
Additional tools
- Discriminator -- R script for finding the most informative tetranucleotides with the TES
- slaver.r -- R script written for easy manipulation of a large number of sequences
Data Analysis Tool for the Estimation of the Current Survival Measures
Authors
Eva Janoušová, Tomáš Pavlík, Richard Hůlek, Jiří Mayer, Ladislav Dušek
Description
This portal makes current survival measures for outcome assessment in chronic myeloid leukaemia (CML) patients available online. You can analyze your data in three simple steps and get summary tables and publication-quality figures. The calculations are based on a methodology recently published in international peer-reviewed journals.
DBM Toolbox for Neuroimage Data
Author
Daniel Schwarz
Citation
Schwarz, D. DBM Toolbox for Neuroimage Data, version 1.1 [online]. 2012. Available from: https://iba.med.muni.cz/en/science-research/tools-for-data-analysis#dbm-toolbox
Description
DBM Toolbox provides algorithms for deformable image registration of 3-D magnetic resonance brain images. The algorithms were implemented as functions and scripts in MATLAB® environment. Some of the functions, which provide computationally intensive tasks, have been compiled into *.mexw64 files for 64 bit Windows operation systems.
The toolbox was developed within the frame of the grant project Modern pattern recognition methods for image data analysis in neuropsychiatric research, supported by the Internal Grant Agency of the Czech Ministry of Health (project no. NS10347).
Recognition Toolbox for Neuroimage Data
Author
Eva Janoušová
Citation
Janoušová, E.. Recognition Toolbox for Neuroimage Data, version 1.0 [online]. 2012. Available from: https://iba.med.muni.cz/en/science-research/tools-for-data-analysis#recognition-toolbox
Description
Recognition Toolbox provides algorithms for reduction and classification of two-dimensional (2-D) or three-dimensional (3-D) medical image data acquired with diverse medical imaging techniques. The algorithms were implemented as functions in MATLAB® environment.
The toolbox was developed within the frame of the grant project Modern pattern recognition methods for image data analysis in neuropsychiatric research, supported by the Internal Grant Agency of the Czech Ministry of Health (project no. NS10347).
Penalised Reduction & Classification Toolbox
Author
Eva Janoušová
Citation
Janoušová, E.. Penalised Reduction & Classification Toolbox, version 1.0 [online]. 2016 . Available from: https://iba.med.muni.cz/en/science-research/tools-for-data-analysis#penalised-reduction-classification-toolbox
Description
Penalised Reduction & Classification Toolbox provides algorithms for reduction and classification of various types of data, such as genetic data, two-dimensional (2-D) face image data or three-dimensional (3-D) brain image data. The algorithms were implemented as functions in MATLAB® environment. Nowadays, the toolbox enables reduction of data by selecting most discriminative features using penalised linear discriminant analysis (pLDA) with resampling, penalised linear regression (pLR) with resampling, and t-test or feature extraction using intersubject principal component analysis (isPCA). The reduced data are then classified into two groups using linear discriminant analysis (LDA) or linear support vector machines (SVM). Classification performance of methods acquired by leave-one-out cross-validation can be compared using the McNemar’s test.
Acknowledgement
The toolbox was developed within the frame of the grant project Advanced Methods for Recognition of MR brain images for Computer Aided Diagnosis of Neuropsychiatric Disorders, supported by the Internal Grant Agency of the Czech Ministry of Health (project no. NT 13359-4).
Feature Extraction & Classification Toolbox
Author
Radomír Kůs
Citation
Kůs, R. FEATbox (Feature Extraction & clAssification Toolbox), version 1.0 [on-line]. 2016. https://iba.med.muni.cz/en/science-research/tools-for-data-analysis#featbox
Description
FEATbox (Feature Extraction & clAssification Toolbox) is an outcome of attempts to compare feature extraction and selection methods for schizophrenia classification based on magnetic resonance images (MRI) of brains. Thus, the primary focus of the toolbox are various feature extraction techniques, extracting features from 3-D images given in NIfTI format. Namely, Mann-Whitney testing is implemented as a representative of univariate approaches with contrast to multivariate methods such as intersubject PCA (isPCA), the K-SVD algorithm, and pattern-based morphometry (PBM). The extracted features can be either examined more thoroughly or passed to a subsequent leave-one-out cross-validated (LOOCV) linear support vector machine (SVM) classification. Also, several classification measures are implemented in the toolbox for assessing and comparing classification performance of different classification schemes.
Toolbox for Brain Image Recognition Using Artificial Neural Networks
Author
Roman Vyškovský
Citation
Vyškovský, R.: Toolbox for brain image recognition using artificial neural networks, version 1.0 [on-line]. 2016. Available from: https://iba.med.muni.cz/en/science-research/tools-for-data-analysis#brain-recognition-toolbox
Description
This toolbox is focused on brain image classification using artificial neural networks. The functions implemented in MATLAB® were created during experimentation aiming at the design of a classification scheme able to detect first-episode schizophrenia from brain MRI data. The experiments resulted in two classification schemes. The first one uses single classifiers based on artificial neural networks (ANN) and the second scheme takes advantage of Random Subspace Ensemble Multi-layer Perceptron (RSE-MLP).
Neurominer Package
Authors
Roman Vyškovský, Jakub Jamárik, Vendula Churová, Kateřina Maršálová, Daniel Schwarz
Citation
Vyskovsky R, Jamarik J, Churova V, Marsalova K, Schwarz D: Neurominer Package for Matlab. 2022. Available from: https://iba.med.muni.cz/en/science-research/tools-for-data-analysis#neurominer-package
Description
This SW package provides algorithms (Matlab scripts and functions) for data processing and analysis carried out within the R&D efforts in the Neurominer project funded by the Czech Ministry of Health, grant number 17-33136A. The SW package consists of four main components: (1) Deformation-Based Morphometry, (2) Anomaly Detection, (3) Cortical Layers, and (4) Deep Learning; all of them having their purpose and documentation.