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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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 |
work_keys_str_mv |
AT yaowaratsirisathitkul predictiveapriorialgorithminyouthsuicidepreventionbyscreeningdepressivesymptomsfrompatienthealthquestionnaire9 AT putthipornthanathamathee predictiveapriorialgorithminyouthsuicidepreventionbyscreeningdepressivesymptomsfrompatienthealthquestionnaire9 AT saifonaekwarangkoon predictiveapriorialgorithminyouthsuicidepreventionbyscreeningdepressivesymptomsfrompatienthealthquestionnaire9 |
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1725084192698531840 |