Analyzing the basic principles of tissue microarray data measuring the cooperative phenomena of marker proteins in invasive breast cancer

Background: The analysis of a protein-expression pattern from tissue microarray (TMA) data will not immediately give an answer on synergistic or antagonistic effects between the observed proteins. But contrary to apparent first impression, it is possible to reveal those cooperative phenomena from TM...

Verfasser: Bürger, Horst Karl Erich
Boecker, Florian
Packeisen, Jens
Agelopoulos, Konstantin
Poos, Kathrin
Nadler, Walter
Korsching, Eberhard Ulrich
FB/Einrichtung:FB 05: Medizinische Fakultät
Dokumenttypen:Artikel
Medientypen:Text
Erscheinungsdatum:2013
Publikation in MIAMI:26.02.2013
Datum der letzten Änderung:03.03.2023
Angaben zur Ausgabe:[Electronic ed.]
Quelle:Open Access Bioinformatics 5 (2013) 1–21
Schlagwörter:tissue microarrays; protein expression; dependency structure; breast cancer; progression; algorithm; biological networks
Fachgebiet (DDC):610: Medizin und Gesundheit
Lizenz:CC BY-NC 3.0
Sprache:English
Anmerkungen:Finanziert durch den Open-Access-Publikationsfonds 2012/2013 der Deutschen Forschungsgemeinschaft (DFG) und der Westfälischen Wilhelms-Universität Münster (WWU Münster).
Format:PDF-Dokument
URN:urn:nbn:de:hbz:6-27379454536
Weitere Identifikatoren:DOI: 10.2147/OAB.S36565
Permalink:https://nbn-resolving.de/urn:nbn:de:hbz:6-27379454536
Onlinezugriff:OAB-36565-analyzing-the-basic-principles-of-tissue-microarray-data-mea_011613.pdf

Background: The analysis of a protein-expression pattern from tissue microarray (TMA) data will not immediately give an answer on synergistic or antagonistic effects between the observed proteins. But contrary to apparent first impression, it is possible to reveal those cooperative phenomena from TMA data. The data is (1) preserving a lot of the original physiological information content and (2) because of minor variances between the tumor samples, contains several related slightly different biological states. We present here a largely assumption-free combinatorial analysis, related to correlation networks but with much less arbitrary constraints. A strong focus was put on the analysis of the basic data to analyze how the cooperative phenomena might be imprinted in the TMA data structure. Results: The study design was based on two independent panels of 589 and 366 invasive breast cancer cases from different institutions, assembled on tissue microarrays. The combinatorial analysis generates an optimal rank ordering of protein-expression coherence. The outcome of the analysis corresponds to all the single observations scattered over several publications and integrates them in one context. This means all these scattered observations can also be deduced from one TMA experiment. A comprehensive statistical meta-analysis of the TMA data suggests the existence of a superposition of three basic coherence situations, and offers the opportunity to analyze these data properties with additional real-world data and synthetic data in more detail. Conclusion: The presented algorithm gives molecular pathologists a tool to extract dependency information from TMA data. Beyond this practical benefit, some light was shed on how dependency aspects might be imprinted into expression data. This will certainly foster the refinement of algorithms to reconstruct dependency networks. The implementation of the algorithm is at the moment not end-user suitable, but available on request.