Diagnosis, prognosis and treatment support of lymphomas with the use of artificial intelligence

Abstract

Current dissertation focuses on the creation of an efficient model for Bio-medical data integration. Starting with an analytical approach of the medical knowledge and the problems that may occur cause of the way that medical data are produced, continues with the necessary solutions for single domain data integration and concludes with the proposal of a working framework for mass data integration, originating from multiple medical domains. The proposed integration model is based on the “horizontal” logic of a database design and it’s efficient enough to produce query results in real time, even for complex real-life medical questions. The proof of concept of the working framework and its goals for mass data integration is achieved through the presentation of a medical information system. The presented system, by taking advantage of the “horizontal” database design, is able to manage Flow Cytometry measurements, originating for any available hardware and by integrating the cytometric data ...
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DOI
10.12681/eadd/25668
Handle URL
http://hdl.handle.net/10442/hedi/25668
ND
25668
Alternative title
Διάγνωση, πρόγνωση και υποστήριξη θεραπευτικής αγωγής κακοήθων λεμφωμάτων με χρήση τεχνητής νοημοσύνης
Author
Drakos, John
Date
2009
Degree Grantor
University of Patras
Committee members
Ζούμπος Νικόλαος
Νικηφορίδης Γεώργιος
Λυκοθανάσης Σπυρίδων
Μεγαλοοικονόμου Βασίλειος
Καρακάντζα Μαρίνα
Σακελλαρόπουλος Γεώργιος
Συμεωνίδης Ανάργυρος
Discipline
Medical and Health SciencesClinical Medicine
Keywords
Flow cytometry; Lymphomas; B-cell chronic lymphocytic leukemia; Medical databases; Artificial intelligence; Integration; Data mining techniques
Country
Greece
Language
Greek
Description
200 σ., im.
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