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postoperative-patient-data.arff
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UCI/postoperative-patient-data.arff
TunedIT
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2009-10-30 13:12:34
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Postoperative Patient Data
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% % 1. Title: Postoperative Patient Data % % 2. Source Information: % -- Creators: Sharon Summers, School of Nursing, University of Kansas % Medical Center, Kansas City, KS 66160 % Linda Woolery, School of Nursing, University of Missouri, % Columbia, MO 65211 % -- Donor: Jerzy W. Grzymala-Busse (jerzy@cs.ukans.edu) (913)864-4488 % -- Date: June 1993 % % 3. Past Usage: % 1. A. Budihardjo, J. Grzymala-Busse, L. Woolery (1991). Program LERS_LB 2.5 % as a tool for knowledge acquisition in nursing, Proceedings of the 4th % Int. Conference on Industrial & Engineering Applications of AI & Expert % Systems, pp. 735-740. % % 2. L. Woolery, J. Grzymala-Busse, S. Summers, A. Budihardjo (1991). The use % of machine learning program LERS_LB 2.5 in knowledge acquisition for % expert system development in nursing. Computers in Nursing 9, pp. 227-234. % % 4. Relevant Information: % The classification task of this database is to determine where % patients in a postoperative recovery area should be sent to next. % Because hypothermia is a significant concern after surgery % (Woolery, L. et. al. 1991), the attributes correspond roughly to body % temperature measurements. % % Results: % -- LERS (LEM2): 48% accuracy % % 5. Number of Instances: 90 % % 6. Number of Attributes: 9 including the decision (class attribute) % % 7. Attribute Information: % 1. L-CORE (patient's internal temperature in C): % high (> 37), mid (>= 36 and <= 37), low (< 36) % 2. L-SURF (patient's surface temperature in C): % high (> 36.5), mid (>= 36.5 and <= 35), low (< 35) % 3. L-O2 (oxygen saturation in %): % excellent (>= 98), good (>= 90 and < 98), % fair (>= 80 and < 90), poor (< 80) % 4. L-BP (last measurement of blood pressure): % high (> 130/90), mid (<= 130/90 and >= 90/70), low (< 90/70) % 5. SURF-STBL (stability of patient's surface temperature): % stable, mod-stable, unstable % 6. CORE-STBL (stability of patient's core temperature) % stable, mod-stable, unstable % 7. BP-STBL (stability of patient's blood pressure) % stable, mod-stable, unstable % 8. COMFORT (patient's perceived comfort at discharge, measured as % an integer between 0 and 20) % 9. decision ADM-DECS (discharge decision): % I (patient sent to Intensive Care Unit), % S (patient prepared to go home), % A (patient sent to general hospital floor) % % 8. Missing Attribute Values: % Attribute 8 has 3 missing values % % 9. Class Distribution: % I (2) % S (24) % A (64) % % % % % % Information about the dataset % CLASSTYPE: nominal % CLASSINDEX: last % @relation postoperative-patient-data @attribute L-CORE {high,low,mid} @attribute L-SURF {high,low,mid} @attribute L-O2 {excellent,good} @attribute L-BP {high,low,mid} @attribute SURF-STBL {stable,unstable} @attribute CORE-STBL {mod-stable,stable,unstable} @attribute BP-STBL {mod-stable,stable,unstable} @attribute COMFORT {05,07,10,15} @attribute decision {A,I,S} @data mid,low,excellent,mid,stable,stable,stable,15,A mid,high,excellent,high,stable,stable,stable,10,S high,low,excellent,high,stable,stable,mod-stable,10,A mid,low,good,high,stable,unstable,mod-stable,15,A mid,mid,excellent,high,stable,stable,stable,10,A high,low,good,mid,stable,stable,unstable,15,S mid,low,excellent,high,stable,stable,mod-stable,05,S high,mid,excellent,mid,unstable,unstable,stable,10,S mid,high,good,mid,stable,stable,stable,10,S mid,low,excellent,mid,unstable,stable,mod-stable,10,S mid,mid,good,mid,stable,stable,stable,15,A mid,low,good,high,stable,stable,mod-stable,10,A high,high,excellent,high,unstable,stable,unstable,15,A mid,high,good,mid,unstable,stable,mod-stable,10,A mid,low,good,high,unstable,unstable,stable,15,S high,high,excellent,high,unstable,stable,unstable,10,A low,high,good,high,unstable,stable,mod-stable,15,A mid,low,good,high,unstable,stable,stable,10,A mid,high,good,mid,unstable,stable,unstable,15,A mid,mid,good,mid,stable,stable,stable,10,A low,high,good,mid,unstable,stable,stable,15,A low,mid,excellent,high,unstable,stable,unstable,10,S mid,mid,good,mid,unstable,stable,unstable,15,A mid,mid,good,mid,unstable,stable,stable,10,A high,high,good,mid,stable,stable,mod-stable,10,A low,mid,good,mid,unstable,stable,stable,10,A high,mid,good,low,stable,stable,mod-stable,10,A low,mid,excellent,high,stable,stable,mod-stable,10,A mid,mid,excellent,mid,stable,stable,unstable,15,A mid,mid,good,mid,unstable,stable,unstable,10,S mid,mid,good,high,unstable,stable,stable,10,A low,low,good,mid,unstable,stable,unstable,10,A mid,mid,excellent,high,unstable,stable,mod-stable,10,A mid,low,good,mid,stable,stable,stable,10,A low,mid,excellent,high,stable,stable,mod-stable,10,A mid,mid,good,mid,stable,stable,stable,10,A low,mid,excellent,mid,stable,stable,stable,10,S low,low,good,mid,unstable,stable,unstable,10,S low,low,good,mid,stable,stable,stable,07,S mid,mid,good,high,unstable,stable,mod-stable,10,A low,low,good,mid,unstable,stable,stable,10,A low,mid,good,mid,stable,stable,stable,15,S high,high,good,high,unstable,stable,stable,15,S mid,mid,good,mid,stable,stable,stable,10,S low,low,excellent,mid,stable,stable,stable,10,A low,mid,good,mid,unstable,stable,stable,10,S low,mid,good,high,unstable,stable,stable,?,I mid,mid,excellent,mid,unstable,stable,stable,10,A high,high,excellent,high,stable,stable,unstable,?,A mid,high,good,low,unstable,stable,stable,10,A mid,high,good,mid,unstable,mod-stable,mod-stable,10,A low,high,excellent,mid,unstable,stable,stable,10,A mid,low,excellent,high,unstable,stable,unstable,10,A mid,mid,good,mid,unstable,stable,mod-stable,10,S high,high,excellent,mid,unstable,stable,mod-stable,10,A mid,mid,good,mid,unstable,stable,stable,15,A high,mid,good,high,stable,stable,unstable,15,A mid,low,good,high,unstable,stable,mod-stable,10,A low,low,good,high,stable,stable,stable,10,A mid,high,good,mid,stable,stable,mod-stable,10,A mid,high,good,mid,unstable,stable,unstable,10,A mid,low,excellent,high,stable,stable,stable,10,A mid,mid,good,mid,stable,stable,unstable,10,A mid,low,excellent,mid,stable,stable,unstable,10,S high,mid,excellent,mid,unstable,unstable,unstable,10,A mid,mid,good,high,stable,stable,stable,10,S mid,low,excellent,mid,unstable,stable,stable,10,A mid,mid,excellent,mid,unstable,stable,stable,10,A mid,mid,excellent,high,stable,stable,stable,10,A mid,mid,excellent,low,stable,stable,stable,10,A mid,low,excellent,mid,unstable,unstable,unstable,?,A low,low,excellent,mid,stable,stable,stable,10,A mid,mid,excellent,mid,stable,stable,mod-stable,10,S mid,mid,excellent,high,stable,stable,stable,10,A mid,low,excellent,high,stable,stable,mod-stable,10,A low,mid,good,mid,stable,stable,unstable,10,A mid,mid,excellent,mid,stable,stable,mod-stable,10,A mid,mid,excellent,mid,stable,stable,unstable,10,A mid,mid,excellent,mid,unstable,unstable,stable,10,S mid,mid,good,high,stable,stable,stable,10,A mid,mid,excellent,mid,stable,stable,stable,15,A mid,mid,excellent,mid,stable,stable,stable,10,S mid,low,good,mid,stable,stable,unstable,10,I high,mid,excellent,mid,unstable,stable,unstable,05,A mid,mid,excellent,mid,stable,stable,unstable,10,A mid,mid,excellent,mid,unstable,stable,stable,10,A mid,mid,excellent,mid,unstable,stable,stable,15,S mid,mid,good,mid,unstable,stable,stable,15,A mid,mid,excellent,mid,unstable,stable,stable,10,A mid,mid,good,mid,unstable,stable,stable,15,S