Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9

This study employed the Predictive A priori algorithm in identifying significant questions of Patient Health Questionnaire-9 (PHQ-9) for suicide tendency prediction by using PHQ-9 and suicidal screening form (8Q). The random forest was applied to calculate the classification accuracy of PHQ-9 and 3...

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Main Authors: Yaowarat Sirisathitkul, Putthiporn Thanathamathee, Saifon Aekwarangkoon
Format: Article
Language:English
Published: UIKTEN 2019-11-01
Series:TEM Journal
Subjects:
Online Access:http://www.temjournal.com/content/84/TEMJournalNovember2019_1449_1455.pdf
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spelling doaj-e8656281c6334c00be292127ba7b9af12020-11-25T01:31:57ZengUIKTENTEM Journal2217-83092217-83332019-11-01841449145510.18421/TEM84-49Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9Yaowarat SirisathitkulPutthiporn ThanathamatheeSaifon AekwarangkoonThis study employed the Predictive A priori algorithm in identifying significant questions of Patient Health Questionnaire-9 (PHQ-9) for suicide tendency prediction by using PHQ-9 and suicidal screening form (8Q). The random forest was applied to calculate the classification accuracy of PHQ-9 and 3 feature selection algorithms were applied to determine the attribute importance. The Predictive Apriori algorithm was applied to find the meaningful association rules. The classification accuracy of PHQ-9 is 92.12% and item no. 1 and no. 9 of PHQ-9 are less important. The significant risk factors associated with suicidal ideation are Item no. 2, no. 4, and no. 5.http://www.temjournal.com/content/84/TEMJournalNovember2019_1449_1455.pdfdepressionfeature selectionpredictive apriori algorithmrandom forestsuicidal risk
collection DOAJ
language English
format Article
sources DOAJ
author Yaowarat Sirisathitkul
Putthiporn Thanathamathee
Saifon Aekwarangkoon
spellingShingle Yaowarat Sirisathitkul
Putthiporn Thanathamathee
Saifon Aekwarangkoon
Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9
TEM Journal
depression
feature selection
predictive apriori algorithm
random forest
suicidal risk
author_facet Yaowarat Sirisathitkul
Putthiporn Thanathamathee
Saifon Aekwarangkoon
author_sort Yaowarat Sirisathitkul
title Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9
title_short Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9
title_full Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9
title_fullStr Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9
title_full_unstemmed Predictive Apriori Algorithm in Youth Suicide Prevention by Screening Depressive Symptoms from Patient Health Questionnaire-9
title_sort predictive apriori algorithm in youth suicide prevention by screening depressive symptoms from patient health questionnaire-9
publisher UIKTEN
series TEM Journal
issn 2217-8309
2217-8333
publishDate 2019-11-01
description This study employed the Predictive A priori algorithm in identifying significant questions of Patient Health Questionnaire-9 (PHQ-9) for suicide tendency prediction by using PHQ-9 and suicidal screening form (8Q). The random forest was applied to calculate the classification accuracy of PHQ-9 and 3 feature selection algorithms were applied to determine the attribute importance. The Predictive Apriori algorithm was applied to find the meaningful association rules. The classification accuracy of PHQ-9 is 92.12% and item no. 1 and no. 9 of PHQ-9 are less important. The significant risk factors associated with suicidal ideation are Item no. 2, no. 4, and no. 5.
topic depression
feature selection
predictive apriori algorithm
random forest
suicidal risk
url http://www.temjournal.com/content/84/TEMJournalNovember2019_1449_1455.pdf
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AT saifonaekwarangkoon predictiveapriorialgorithminyouthsuicidepreventionbyscreeningdepressivesymptomsfrompatienthealthquestionnaire9
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