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      랜덤 포레스트 기반 우울증 발현 패턴 도출 = Identifying the Expression Patterns of Depression Based on the Random Forest

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      https://www.riss.kr/link?id=A107973149

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      다국어 초록 (Multilingual Abstract)

      Depression is one of the most important psychiatric disorders worldwide. Most depression-related data mining and machine learning studies have been conducted to predict the presence of depression or to derive individual risk factors. However, since depression is caused by a combination of various factors, it is necessary to identify the complex relationship between the factors in order to establish effective anti-depression and management measures. In this study, we propose a methodology for identifying and interpreting patterns of depression expressions using the method of deriving random forest rules, where the random forest rule consists of the condition for the manifestation of the depressive pattern and the prediction result of depression when the condition is met. The analysis was carried out by subdividing into 4 groups in consideration of the different depressive patterns according to gender and age. Depression rules derived by the proposed methodology were validated by comparing them with the results of previous studies. Also, through the AUC comparison test, the depression diagnosis performance of the derived rules was evaluated, and it was not different from the performance of the existing PHQ-9 summing method. The significance of this study can be found in that it enabled the interpretation of the complex relationship between depressive factors beyond the existing studies that focused on prediction and deduction of major factors.
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      Depression is one of the most important psychiatric disorders worldwide. Most depression-related data mining and machine learning studies have been conducted to predict the presence of depression or to derive individual risk factors. However, since de...

      Depression is one of the most important psychiatric disorders worldwide. Most depression-related data mining and machine learning studies have been conducted to predict the presence of depression or to derive individual risk factors. However, since depression is caused by a combination of various factors, it is necessary to identify the complex relationship between the factors in order to establish effective anti-depression and management measures. In this study, we propose a methodology for identifying and interpreting patterns of depression expressions using the method of deriving random forest rules, where the random forest rule consists of the condition for the manifestation of the depressive pattern and the prediction result of depression when the condition is met. The analysis was carried out by subdividing into 4 groups in consideration of the different depressive patterns according to gender and age. Depression rules derived by the proposed methodology were validated by comparing them with the results of previous studies. Also, through the AUC comparison test, the depression diagnosis performance of the derived rules was evaluated, and it was not different from the performance of the existing PHQ-9 summing method. The significance of this study can be found in that it enabled the interpretation of the complex relationship between depressive factors beyond the existing studies that focused on prediction and deduction of major factors.

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      목차 (Table of Contents)

      • Ⅰ. 서론 Ⅱ. 방법 Ⅲ. 결과 Ⅳ. 토 론 Ⅴ. 결 론 References
      • Ⅰ. 서론 Ⅱ. 방법 Ⅲ. 결과 Ⅳ. 토 론 Ⅴ. 결 론 References
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      참고문헌 (Reference)

      1 안제용, "한국어판 우울증 선별도구(Patient Health Questionnaire-9, PHQ-9)의 표준화 연구" 대한생물치료정신의학회 19 (19): 47-56, 2013

      2 박명화, "의사결정나무 분석법을 활용한 우울 노인의 특성 분석" 한국간호과학회 43 (43): 1-10, 2013

      3 전현규, "국내성인에 있어서 우울증이 자살생각에 미치는 영향에 관한 실증연구: 국민건강영양조사 2008~2012 자료를 중심으로" 한국콘텐츠학회 15 (15): 264-281, 2015

      4 Kelly, A. C., "Within-persons predictors of change during eating disorders treatment: An examination of self-compassion, self-criticism, shame, and eating disorder symptoms" 49 (49): 716-722, 2016

      5 Martin, A., "Validity of the Brief Patient Health Questionnaire Mood Scale(PHQ-9)in the general population" 28 (28): 71-77, 2006

      6 Han, C., "Validation of the Patient Health Questionnaire-9 Korean version in the elderly population : The Ansan Geriatric study" 49 (49): 218-223, 2008

      7 McIntyre, R., "The role of self-criticism in common mental health difficulties in students : A systematic review of prospective studies" 10 : 13-27, 2018

      8 Noordenbos, G., "The Relationship Among Critical Inner Voices, Low Self-Esteem, and Self-Criticism in Eating Disorders" 22 (22): 337-351, 2014

      9 Kroenke, K., "The PHQ-9" 16 (16): 606-613, 2001

      10 Byles, J. E., "The Experience of Insomnia Among Older Women" 28 (28): 972-979, 2005

      1 안제용, "한국어판 우울증 선별도구(Patient Health Questionnaire-9, PHQ-9)의 표준화 연구" 대한생물치료정신의학회 19 (19): 47-56, 2013

      2 박명화, "의사결정나무 분석법을 활용한 우울 노인의 특성 분석" 한국간호과학회 43 (43): 1-10, 2013

      3 전현규, "국내성인에 있어서 우울증이 자살생각에 미치는 영향에 관한 실증연구: 국민건강영양조사 2008~2012 자료를 중심으로" 한국콘텐츠학회 15 (15): 264-281, 2015

      4 Kelly, A. C., "Within-persons predictors of change during eating disorders treatment: An examination of self-compassion, self-criticism, shame, and eating disorder symptoms" 49 (49): 716-722, 2016

      5 Martin, A., "Validity of the Brief Patient Health Questionnaire Mood Scale(PHQ-9)in the general population" 28 (28): 71-77, 2006

      6 Han, C., "Validation of the Patient Health Questionnaire-9 Korean version in the elderly population : The Ansan Geriatric study" 49 (49): 218-223, 2008

      7 McIntyre, R., "The role of self-criticism in common mental health difficulties in students : A systematic review of prospective studies" 10 : 13-27, 2018

      8 Noordenbos, G., "The Relationship Among Critical Inner Voices, Low Self-Esteem, and Self-Criticism in Eating Disorders" 22 (22): 337-351, 2014

      9 Kroenke, K., "The PHQ-9" 16 (16): 606-613, 2001

      10 Byles, J. E., "The Experience of Insomnia Among Older Women" 28 (28): 972-979, 2005

      11 Hastie, T., "The Elements of Statistical Learning" 485-585, 2009

      12 Fernandez-Aranda, F., "Symptom profile of major depressive disorder in women with eating disorders" 41 (41): 24-31, 2007

      13 Rudin, C., "Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead" 1 (1): 206-215, 2019

      14 Sukegawa, T., "Sleep disturbances and depression in the elderly in Japan" 57 (57): 265-270, 2003

      15 Nolen-Hoeksema, S., "Sex differences in unipolar depression : Evidence and theory" 101 (101): 259-, 1987

      16 Rector, N. A., "Self-criticism and dependency in depressed patients treated with cognitive therapy or pharmacotherapy" 24 (24): 571-584, 2000

      17 Peat, C. M., "Self-Objectification, Disordered Eating, and Depression: A Test of Mediational Pathways" 2011

      18 Mallon, L., "Relationship between insomnia, depression, and mortality: A 12-year follow-up of older adults in the community" 12 (12): 295-306, 2000

      19 Daskalakis, C., "Regression analysis of multiple-source longitudinal outcomes : A"Stirling County"depression study" 155 (155): 88-94, 2002

      20 Ali, J., "Random forests and decision trees" 9 (9): 272-, 2012

      21 Breiman, L., "Random Forests" 45 (45): 5-32, 2001

      22 Avery, D., "Psychomotor retardation and agitation in depression" 7 (7): 67-76, 1984

      23 Schoevers, R. A., "Prevention of Late-Life Depression in Primary Care : Do We Know Where to Begin?" 163 (163): 1611-1621, 2006

      24 Shin, D., "Predictive Modeling of Postpartum Depression Using Machine Learning Approaches(P18-130-19)" 3 : 2019

      25 Bhakta, I., "Prediction of depression among senior citizens using machine learning classifiers" 144 (144): 11-16, 2016

      26 Xin, L. K., "Prediction of Depression among Women Using Random Oversampling and Random Forest" 1-5, 2021

      27 Na, K. S., "Predicting future onset of depression among community dwelling adults in the Republic of Korea using a machine learning algorithm" 2020

      28 Choudhury, A.A, "Predicting Depression in Bangladeshi Undergraduates using Machine Learning" 789-794, 2019

      29 Spiegel, D., "Pain and depression in patients with cancer" 74 (74): 2570-2578, 1994

      30 Jayawardena, S., "Ordinal Logistic Regression with Partial Proportional Odds for Depression Prediction" 2020

      31 Smit, F., "Opportunities for cost-effective prevention of late-life depression : An epidemiological approach" 63 (63): 290-296, 2006

      32 Cortez, P., "Opening black box data mining models using sensitivity analysis" 341-348, 2011

      33 McElroy, E., "Networks of depression and anxiety symptoms across development" 57 (57): 964-973, 2018

      34 Blair-West, G. W., "Lifetime suicide risk in major depression : Sex and age determinants" 55 (55): 171-178, 1999

      35 Hirata, S., "Key factors associated with major depression in a national sample of stroke survivors" 25 (25): 1090-1095, 2016

      36 Deng, H., "Interpreting tree ensembles with intrees" 7 (7): 277-287, 2019

      37 Choi, J., "Intelligent Healthcare Service Using Health Lifelog Analysis" 40 (40): 188-, 2016

      38 Patel, D., "Insomnia in the elderly : a review" 14 (14): 1017-1024, 2018

      39 Bi, Y., "Influence and interaction of genetic, cognitive, neuroendocrine and personalistic markers to antidepressant response in Chinese patients with major depression" 2021

      40 Mongrain, M., "Immature dependence and self-criticism predict the recurrence of major depression" 62 (62): 705-713, 2006

      41 Lin, H., "Gender-specific prevalence and influencing factors of depression in elderly in rural China : A cross-sectional study" 288 : 99-106, 2021

      42 Pacheco, J. P. G., "Gender inequality and depression among medical students : A global meta-regression analysis" 111 : 36-43, 2019

      43 Perrin, A. J., "Gender Differences in Parkinson’s Disease Depression" 36 : 93-97, 2017

      44 Blatt, S. J., "Experiences of depression in normal young adults" 85 (85): 383-389, 1976

      45 Kessler, R., "Epidemiology of women and depression" 74 (74): 5-13, 2003

      46 Taylor, D. J., "Epidemiology of Insomnia, Depression, and Anxiety" 28 (28): 457-1464, 2005

      47 Mahendran, N., "Effective Classification of Major Depressive Disorder Patients Using Machine Learning Techniques" 12 (12): 41-48, 2019

      48 Livingston, G, "Does sleep disturbance predict depression in elderly people? A study in inner London" 4-, 1993

      49 Høstmælingen, A., "Do self-criticism and somatic symptoms play a key role in chronic depression? Exploring the factor structure of Beck depression inventory-II in a sample of chronically depressed inpatients" 283 : 317-324, 2021

      50 Evans, M., "Diagnosis of depression in elderly patients" 6 (6): 49-56, 2000

      51 Byeon, H., "Developing a random forest classifier for predicting the depression and managing the health of caregivers supporting patients with Alzheimer’s Disease" 27 (27): 531-544, 2019

      52 Alexopoulos, G. S., "Depression in the elderly" 365 (365): 1961-1970, 2005

      53 World Health Organization, "Depression and other common mental disorders: Global health estimates" World Health Organization 2017

      54 Gotlib, I. H., "Depression and general psychopathology in university students" 93 (93): 19-, 1984

      55 Mamun Ibn Bashar, "Depression and Quality of Life among Postmenopausal Women in Bangladesh: A Cross-sectional Study" 대한폐경학회 23 (23): 171-181, 2017

      56 Chekroud, A. M., "Cross-trial prediction of treatment outcome in depression : A machine learning approach" 3 (3): 243-250, 2016

      57 Baek, J. W., "Context deep neural network model for predicting depression risk using multiple regression" 8 : 18171-18181, 2020

      58 Liaw, A., "Classification and Regression by Random Forest, Vol. 2" 5-, 2002

      59 Cantazaro, A., "Adult Attachment, Dependence, Self-Criticism, and Depressive Symptoms:A Test of a Mediational Model" 78 (78): 1135-1162, 2010

      60 Phelan, E., "A study of the diagnostic accuracy of the PHQ-9 in primary care elderly" 11 (11): 63-, 2010

      61 Biau, G., "A random forest guided tour" 25 (25): 197-227, 2016

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      2015-01-01 평가 등재학술지 유지 (등재유지) KCI등재
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      2005-01-01 평가 등재후보 1차 PASS (등재후보1차) KCI등재후보
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      기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
      2016 0.34 0.34 0.3
      KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
      0.28 0.28 0.37 0.16
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