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Journal Article

Citation

Daza Vergaray A, Miranda JCH, Cornelio JB, López Carranza AR, Ponce Sánchez CF. Inform. Med. Unlocked 2023; 41: e101295.

Copyright

(Copyright © 2023, Elsevier Publishing)

DOI

10.1016/j.imu.2023.101295

PMID

unavailable

Abstract

Background
Depression is that mental health disorder characterized by constant sadness for approximately 2 weeks, in which it generates an inability to do daily activities, and those affected lose interest in doing the things they previously enjoyed. About 1 billion people have mental disorders and more than 300 million people have depression globally. To predict depression, the use of machine learning techniques is essential, being helpful in obtaining automatic processes and creating models that help analyze and solve a problem.
Objective
The objective of the study was to propose a method and 3 combined models based on Stacking to predict depression in university students of a public university.
Methods
The dataset was composed of Computer and Systems Engineering students from a public university (n = 284). Then cleaning and pre-processing was performed, where the data was reviewed using the Python program. In the balancing of the data, the data were divided into 5 values obtained and the oversampling method was performed, distributing the data according to the condition. Then we proceeded to partition the balanced data, while using the Cross validation method for data training. For the model and evaluation, 4 independent algorithms were used, and based on these 3 combined models were proposed.
Results
Of the proposed combined models Ensemble Stacking 1 and Stacking 2 achieved the best Accuracy and ROC Curve score -micro and score-macro with 94.69% and 100.00%. In the same way with respect to sensitivity, Stacking 1 obtained the best sensitivity, accuracy and F1-Score, these being 94.22%, 94.09% and 94.12% respectively.
Conclusions
This study emphasizes the application of the Ensemble Stacking method to detect depression early in students of a public university in Peru. With this technology, when using the combined method, it was possible to observe an improvement in the performance of the process for the prediction of depression, unlike performing it with independent algorithms.


Language: en

Keywords

Depression; Oversampling; Stacking ensemble; University students

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