Title :
Using probabilistic logic and the principle of maximum entropy for the analysis of clinical brain tumor data
Author :
Varghese, Jobin ; Beierle, Christoph ; Potyka, Nico ; Kern-Isberner, Gabriele
Author_Institution :
FernUniv. in Hagen, Hagen, Germany
Abstract :
Dealing with uncertainty that is inherently present in any medical domain, is one of the major challenges when designing a medical decision support system. We demonstrate how probabilistic logic can be used to design medical knowledge bases at the example of analysing clinical brain tumor data. We use MECoRe, a system implementing probabilistic conditional logic, to create a knowledge base BT that contains medical knowledge originating from both statistical data as well as from medical experts. Any incomplete or unspecified knowledge is completed by MECoRe in an information-theoretically optimal way by employing the principle of maximum entropy. BT is evaluated with respect to a series of queries regarding diagnosis and prognosis, using a real documented patient case.
Keywords :
brain; cancer; data analysis; decision support systems; knowledge based systems; maximum entropy methods; medical administrative data processing; medical diagnostic computing; patient diagnosis; probabilistic logic; tumours; MECoRe system; clinical brain tumor data analysis; diagnosis; knowledge base BT; maximum entropy principle; medical decision support system; medical domain; medical experts; medical knowledge bases design; probabilistic conditional logic; prognosis; queries; real documented patient case; statistical data; Entropy; Medical diagnostic imaging; Probabilistic logic; Probability; Surgery; Tumors;
Conference_Titel :
Computer-Based Medical Systems (CBMS), 2013 IEEE 26th International Symposium on
Conference_Location :
Porto
DOI :
10.1109/CBMS.2013.6627826