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연구 분야
프로젝트
발행물
구성원
article|
gold
·인용수 9
·2023
Predicting Fetal Alcohol Spectrum Disorders Using Machine Learning Techniques: Multisite Retrospective Cohort Study
Sarah Soyeon Oh, Irene Kuang, Hyewon Jeong, Jinyeop Song, Boyu Ren, Jong Youn Moon, Eun‐Cheol Park, Ichiro Kawachi
IF 6Journal of Medical Internet Research
초록

Machine learning algorithms were able to identify FAS risk with a prediction performance higher than that of previous models among pregnant drinkers. For small training sets, which are common with FAS, boosting mechanisms like CatBoost may help alleviate certain problems associated with data imbalances and difficulties in optimization or generalization.

키워드
Fetal alcohol syndromeMachine learningLogistic regressionArtificial intelligenceMedicineGradient boostingPregnancyReceiver operating characteristicPopulationComputer science
타입
article
IF / 인용수
6 / 9
게재 연도
2023