Releases: spectre-team/spectre
Spectre-v5.0.2.1802
In this version:
- Docker image tagging schema got more flexible. It will be easier to track changes now, with less updates of service versions.
- Message after successful analysis scheduling now displays success instead of error.
- Aspects are centered on the screen, instead of wide.
- Finished analyses are normalized with other views.
Spectre-v5.0.1.1785
This release reduces repository structure to contain only web client and docker-compose
for deployment. It supports generic workers API maintained through master API node.
Spectre-v2.24.7.1118
Release notes
Web Client
- Angular-based web client has been added
- It has been updated to version 4
- interactive visualization of each spectrum
- interactive visualization of each mass channel
- interactive visualization of DiviK result
Web API
- Web API has been extended to provide information about preparations
- It has been cleaned up
Algorithms
GMM
- added
- splitters implementation is still ongoing
- dynamic programming based initialization condition is not yet approached
DiviK
- awaits implementation of peak detection method
Genetic training set selection
- genetic algorithm has been implemented
- dataset splitting has been implemented
- fitness function implementation is ongoing
DiviK-v1.0.359
This version contains simple WPF client for DiviK algorithm.
It requires MATLAB Compiler Runtime in version 9.1.
More details are included in the manual embedded in the archive.
Spectre
Spectre is a versatile tool used for analysis of MALDI-MSI data sets.
For the sake of simplicity, the toolset provided is available to be used
through interfacing with web application, which is currently a work-in-progress.
In order to build and run the application, please refer to the
installation section.
About
The project is currently in its early stage. However, it comprises the
implementation of our own spectra modelling based on Gaussian Mixture Models,
and Divisive IK-means algorithm for unsupervised segmentation, which can be
used for efficient dataset compression as well as for knowledge discovery.
Aformentioned algorithms have already been published and links refering
have been enclosed under references section.
Also, several classification and clusterization methods will be provided soon,
along with supporting statistics.
Install
Please refer to docs.
Exemplary usage
Please refer to docs.
How to contribute?
Please contact us by an e-mail. We will
answer you in details.
Environment
Please refer to docs.
References
This software is part of contribution made by Data Mining Group of Silesian University of Technology, rest of which is published here.
- Marczyk M, Polanska J, Polanski A: Comparison of Algorithms for Profile-Based
Alignment of Low Resolution MALDI-ToF Spectra. In Advances in Intelligent
Systems and Computing, Vol. 242 of Man-Machine Interactions 3, Gruca A,
Czachorski T, Kozielski S, editors. Springer Berlin Heidelberg 2014, p. 193-201
(ISBN: 978-3-319-02308-3), ICMMI 2013, 22-25.10.2013 Brenna, Poland - P. Widlak, G. Mrukwa, M. Kalinowska, M. Pietrowska, M. Chekan, J. Wierzgon, M.
Gawin, G. Drazek and J. Polanska, "Detection of molecular signatures of oral
squamous cell carcinoma and normal epithelium - application of a novel
methodology for unsupervised segmentation of imaging mass spectrometry data,"
Proteomics, vol. 16, no. 11-12, pp. 1613-21,
2016 - M. Pietrowska, H. C. Diehl, G. Mrukwa, M. Kalinowska-Herok, M. Gawin, M.
Chekan, J. Elm, G. Drazek, A. Krawczyk, D. Lange, H. E. Meyer, J. Polanska, C.
Henkel, P. Widlak, "Molecular profiles of thyroid cancer subtypes:
Classification based on features of tissue revealed by mass spectrometry
imaging," Biochimica et Biophysica Acta (BBA)-Proteins and Proteomics, 2016 - G. Mrukwa, G. Drazek, M. Pietrowska, P. Widlak and J. Polanska, "A Novel
Divisive iK-Means Algorithm with Region-Driven Feature Selection as a Tool for
Automated Detection of Tumour Heterogeneity in MALDI IMS Experiments," in
International Conference on Bioinformatics and Biomedical Engineering, 2016 - A. Polanski, M. Marczyk, M. Pietrowska, P. Widlak and J. Polanska, "Signal
partitioning algorithm for highly efficient Gaussian mixture modeling in mass
spectrometry," PloS one, vol. 10, no. 7, p. e0134256, 2015