Hypoplastic left heart syndrome: knowledge discovery with a data mining approach
Autor: | Thomas J. Persoon, Fred S. Lamb, Andrew Kusiak, Christopher A. Caldarone, Michael D. Kelleher, Alex Burns |
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Rok vydání: | 2004 |
Předmět: |
Critical Care
media_common.quotation_subject Health Informatics computer.software_genre Hypoplastic left heart syndrome law.invention Data acquisition Knowledge extraction law Hypoplastic Left Heart Syndrome medicine Humans Quality (business) Decision Making Computer-Assisted media_common Monitoring Physiologic Postoperative Care Measure (data warehouse) business.industry Infant Newborn medicine.disease Intensive care unit Computer Science Applications Feature (computer vision) Data mining Metric (unit) business computer Algorithms |
Zdroj: | Computers in biology and medicine. 36(1) |
ISSN: | 0010-4825 |
Popis: | Hypoplastic left heart syndrome (HLHS) affects infants and is uniformly fatal without surgical palliation. Post-surgery mortality rates are highly variable and dependent on postoperative management. A data acquisition system was developed for collection of 73 physiologic, laboratory, and nurse-assessed parameters. The acquisition system was designed for the collection on numerous patients. Data records were created at 30s intervals. An expert-validated wellness score was computed for each data record. To efficiently analyze the data, a new metric for assessment of data utility, the combined classification quality measure, was developed. This measure assesses the impact of a feature on classification accuracy without performing computationally expensive cross-validation. The proposed measure can be also used to derive new features that enhance classification accuracy. The knowledge discovery approach allows for instantaneous prediction of interventions for the patient in an intensive care unit. The discovered knowledge can improve care of complex to manage infants by the development of an intelligent bedside advisory system. |
Databáze: | OpenAIRE |
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