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Title of Database: SPECT heart data
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Sources: -- Original owners: Krzysztof J. Cios, Lukasz A. Kurgan University of Colorado at Denver, Denver, CO 80217, U.S.A. [email protected] Lucy S. Goodenday Medical College of Ohio, OH, U.S.A.
-- Donors: Lukasz A.Kurgan, Krzysztof J. Cios -- Date: 10/01/01
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Past Usage:
- Kurgan, L.A., Cios, K.J., Tadeusiewicz, R., Ogiela, M. & Goodenday, L.S. "Knowledge Discovery Approach to Automated Cardiac SPECT Diagnosis" Artificial Intelligence in Medicine, vol. 23:2, pp 149-169, Oct 2001
Results: The CLIP3 machine learning algorithm achieved 84.0% accuracy References: Cios, K.J., Wedding, D.K. & Liu, N. CLIP3: cover learning using integer programming. Kybernetes, 26:4-5, pp 513-536, 1997
Cios, K.J. & Kurgan, L. Hybrid Inductive Machine Learning: An Overview of CLIP Algorithms, In: Jain, L.C., and Kacprzyk, J. (Eds.) New Learning Paradigms in Soft Computing,
Physica-Verlag (Springer), 2001
SPECT is a good data set for testing ML algorithms; it has 267 instances that are descibed by 23 binary attributes
Other results (in press): -- CLIP4 algorithm achieved 86.1% accuracy -- ensemble of CLIP4 classifiers achieved 90.4% accuracy -- Predicted attribute: OVERALL_DIAGNOSIS (binary)
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Relevant Information: The dataset describes diagnosing of cardiac Single Proton Emission Computed Tomography (SPECT) images.
Each of the patients is classified into two categories: normal and abnormal. The database of 267 SPECT image sets (patients) was processed to extract features that summarize the original SPECT images.
As a result, 44 continuous feature pattern was created for each patient. The pattern was further processed to obtain 22 binary feature patterns. The CLIP3 algorithm was used to generate classification rules from these patterns. The CLIP3 algorithm generated rules that were 84.0% accurate (as compared with cardilogists' diagnoses). -
Number of Instances: 267
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Number of Attributes: 23 (22 binary + 1 binary class)
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Attribute Information:
- OVERALL_DIAGNOSIS: 0,1 (class attribute, binary)
- F1: 0,1 (the partial diagnosis 1, binary)
- F2: 0,1 (the partial diagnosis 2, binary)
- F3: 0,1 (the partial diagnosis 3, binary)
- F4: 0,1 (the partial diagnosis 4, binary)
- F5: 0,1 (the partial diagnosis 5, binary)
- F6: 0,1 (the partial diagnosis 6, binary)
- F7: 0,1 (the partial diagnosis 7, binary)
- F8: 0,1 (the partial diagnosis 8, binary)
- F9: 0,1 (the partial diagnosis 9, binary)
- F10: 0,1 (the partial diagnosis 10, binary)
- F11: 0,1 (the partial diagnosis 11, binary)
- F12: 0,1 (the partial diagnosis 12, binary)
- F13: 0,1 (the partial diagnosis 13, binary)
- F14: 0,1 (the partial diagnosis 14, binary)
- F15: 0,1 (the partial diagnosis 15, binary)
- F16: 0,1 (the partial diagnosis 16, binary)
- F17: 0,1 (the partial diagnosis 17, binary)
- F18: 0,1 (the partial diagnosis 18, binary)
- F19: 0,1 (the partial diagnosis 19, binary)
- F20: 0,1 (the partial diagnosis 20, binary)
- F21: 0,1 (the partial diagnosis 21, binary)
- F22: 0,1 (the partial diagnosis 22, binary) -- dataset is divided into: -- training data ("SPECT.train" 80 instances) -- testing data ("SPECT.test" 187 instances)
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Missing Attribute Values: None
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Class Distribution: -- entire data Class # examples 0 55 1 212 -- training dataset Class # examples 0 40 1 40 -- testing dataset Class # examples 0 15 1 172