Artificial intelligence in pediatrics: Important clinical signs in newborn syndromes

被引:3
作者
Braaten, O
机构
[1] Department of Medical Genetics, Ullevaal University Hospital, Blindern, 0315 Oslo 3
来源
COMPUTERS AND BIOMEDICAL RESEARCH | 1996年 / 29卷 / 03期
关键词
D O I
10.1006/cbmr.1996.0013
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
New methods are warranted in the field of syndromology. This study is an exploration into whether an artificial intelligence method (ID3) could provide a new angle for approaching syndromes. Diagnosing syndromes in the newborn is difficult. The accepted approach is to look for individual clinical signs that add up to a syndrome diagnosis. Of all possible clinical signs, one would want to extract the signs with the strongest predictive power. I used the ID3 algorithm to extract predictive clinical signs from a catalogue of syndromes (Birth Defects Encyclopedia Online; BDEO). Using information from BDEO, files of randomly generated ''patients'' were created. The signs consistently high in the identification tree were long philtrum, short palpebral fissures, low-set ears, and hepatosplenomegaly. The program used featured a crude ''expert system'' based on the ID3 algorithm. When using one-half of the data set as a training set and the other half as a testbed, a correct classification rate of 92.1-98.1% was attained. When the ID3 expert system was tested against cases from a clinical database (Pictures of Standard Syndromes and Undiagnosed Malformations), the correct classification rate was less than 20%. This may not necessarily reflect faults with the ID3 approach, but possibly biases in the clinical database. In syndromology no ''criterion standards'' exist that can confirm a diagnosis. The statistical method of cluster analysis does not require prior knowledge of diagnoses and will make a tree of syndromes based upon clinical signs. A cluster analysis was performed as a validity check to provide a tree for comparison with the ID3 tree. There was a reasonable degree of agreement between the two. Applying artificial intelligence methods to this held highlights problems with basic assumptions and philosophical aspects of syndrome diagnosis. (C) 1996 Academic Press, Inc.
引用
收藏
页码:153 / 161
页数:9
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