KARDIO: a study in deep and qualitative knowledge for expert systems
This book is the first detailed account of the development of a complex and successful expert system based on deep and qualitative knowledge. It shows how the qualitative modeling approach, using logic based representations and machine learning techniques, can be used to construct knowledge bases whose complexity is far beyond the capability of traditional, dialogue based techniques of knowledge acquisition.The relevant techniques are demonstrated in full detail in the building of Kardio, a medical expert system model of the human heart designed for the diagnosis of cardiac arrhythmias. Kardio's performance is estimated by cardiologists to be equivalent to that of a specialist of internal medicine (not a cardiologist) who is highly skilled in the reading of ECG recordings, and it can be used as a diagnostic tool in ECG interpretation. It may also be used for instruction in electrocardiography.The authors show how the model was compiled, by means of qualitative simulation and machine learning tools, into various representations that are suited for particular expert tasks. They investigate a hierarchical organization of a qualitative model and outline an experiment whereby the construction of a deep model is automated by means of machine learning techniques. The book contains a complete model of the electrical system of the heart that can be used to further development in this area of applications.Ivan Bratko, author of Prolog Programming for Artificial Intelligence, is a professor of computer science at E. Kardelj University and leads the AI laboratory at the Jozef Stefan Institute in Ljubljana, Yugoslavia. Igor Mozetic and Nada Lavrac are researchers at the institute.
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Qualitative Model of the Heart
Model Interpretation and Derivation
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abnormal absent abstract aeb V quiet after_P_some_QRS_miss algorithm arr_heart Arrs Artificial Intelligence atr_focus atria attributes av_block av_conduct av_junction av_node avb3 avbl Bratko bulb bundle branches cardiac arrhythmias circuit clauses combined arrhythmias conduction corresponding ECG debugger deep model defined delta_LBBB depth-first search derived diagnostic rules Disj DisjO disjunctive domain dominant_QRS ECG descriptions ECG features ECGi ect_vent_focus ectopic beats ectopic_QRS(l expert system Figure function heart components heart disorders hypothesis Impulsel independent_P_QRS inductive learning irregular KARDIO knowledge base Lavrac learning program logic logic programming machine learning meaningless V after_P_always_QRS meaningless V after_QRSJs_P Michalski mob2 Mozetic NEWGEM occasional impulses P_wave permanent impulses positive examples possible Prolog QRS complexes qualitative model qualitative simulation Rate rate_of_P rate_of_QRS Ratel RateO reduced arrhythmia-ECG base reg_vent_focus regular relation_P_QRS representation rhythm rhythm_QRS sa_node shortened simple arrhythmias sinus_rhythm St rate_of_P surface knowledge SV_cond under_60 values ventricles ventricular wide_LBBB V wide_non_specific wide_LBBB V wide_RBBB zero zero_60
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Machine Learning: ECML 2001: 12th European Conference on Machine ..., Volume 12
Luc de Raedt,Peter Flach
No preview available - 2001