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청소년 건강행태에 따른 정신건강 위험 예측 : 하이브리드 머신러닝 방법의 적용

원문정보

Predicting Mental Health Risk based on Adolescent Health Behavior : Application of a Hybrid Machine Learning Method

고은경, 전효정, 박현태, 옥수열

피인용수 : 0(자료제공 : 네이버학술정보)

초록

영어

Purpose: The purpose of this study is to develop a model for predicting mental health risk among adolescents based on health behavior information by employing a hybrid machine learning method. Methods: The study analyzed data of 51,850 domestic middle and high school students from 2022 Youth Health Behavior Survey conducted by the Korea Disease Control and Prevention Agency. Firstly, mental health risk levels (stress perception, suicidal thoughts, suicide attempts, suicide plans, experiences of sadness and despair, loneliness, and generalized anxiety disorder) were classified using the k-mean unsupervised learning technique. Secondly, demographic factors (family economic status, gender, age), academic performance, physical health (body mass index, moderate-intensity exercise, subjective health perception, oral health perception), daily life habits (sleep time, wake-up time, smartphone use time, difficulty recovering from fatigue), eating habits (consumption of high-caffeine drinks, sweet drinks, late-night snacks), violence victimization, and deviance (drinking, smoking experience) data were input to develop a random forest model predicting mental health risk, using logistic and XGBoosting. The model and its prediction performance were compared. Results: First, the subjects were classified into two mental health groups using k-mean unsupervised learning, with the high mental health risk group constituting 26.45% of the total sample (13,712 adolescents). This mental health risk group included most of the adolescents who had made suicide plans (95.1%) or attempted suicide (96.7%). Second, the predictive performance of the random forest model for classifying mental health risk groups significantly outperformed that of the reference model (AUC=.94). Predictors of high importance were ‘difficulty recovering from daytime fatigue’ and ‘subjective health perception’. Conclusion: Based on an understanding of adolescent health behavior information, it is possible to predict the mental health risk levels of adolescents and make interventions in advance.

목차

ABSTRACT
서론
1. 연구의 필요성
연구방법
1. 연구설계
2. 연구대상 및 자료수집방법
3. 연구도구
4. 자료분석방법
연구결과
1. 비지도학습에 의한 정신건강 위험집단 분류
2. 지도학습에 의한 정신건강 위험집단 예측
논의
결론
REFERENCES

저자정보

  • 고은경 Eun-Kyoung Goh. 동아대학교 휴먼라이프리서치센터 연구교수
  • 전효정 Hyo-Jeong Jeon. 동아대학교 아동학과 교수
  • 박현태 Hyuntae Park. 동아대학교 건강과학과 교수
  • 옥수열 Sooyol Ok. 동아대학교 컴퓨터공학과 교수

참고문헌

자료제공 : 네이버학술정보

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