An Optimized Convolutional Neural Network Model for Detecting Depressive Symptoms from Image Posts
Автор: Awoyelu T.M., Iyanda A.R., Mosaku S.K.
Журнал: International Journal of Information Technology and Computer Science @ijitcs
Статья в выпуске: 4 Vol. 16, 2024 года.
Бесплатный доступ
This paper presents an optimized model that uses an optimized CNN to detect depressive symptoms from image posts. This is with a view to detecting depression symptoms in individuals. Visual data were collected in their raw form and assessed as having or not having a mental condition. The images were processed, and the relevant features retrieved from them. An optimized convolutional neural network (CNN) was used to simulate the defined classification model of the image posts. The model was implemented using Python Programming Language. Precision, recall, accuracy, and the area under the Receiver Operating Characteristics (ROC) curve were used as performance indicators to assess the model's efficacy. The collected findings indicate that 77% accuracy is achieved by the optimized model. As a result, 77% of the cases were accurately predicted by the model, suggesting that the model is generally accurate in its predictions. The research will contribute to a decrease in the incidence, prevalence, and recurrence of mental health illnesses as well as the disabilities they cause.
Depression, Images, Convolutional Neural Network, Twitter, Accuracy
Короткий адрес: https://sciup.org/15019400
IDR: 15019400 | DOI: 10.5815/ijitcs.2024.04.03
Список литературы An Optimized Convolutional Neural Network Model for Detecting Depressive Symptoms from Image Posts
- Jeanine M. Mingé and Nicole. Defenbaugh, “Communicating and Navigating Digitized Healthcare”. Storied Health and Illness: Communicating Personal, Cultural, and Political Complexities, pp 105, 2016.
- Samira Pouyanfar, Saad Sadiq, Yilin Yan, Haiman Tian, Yudong Tao, Maria P. Reyes, Mei-Ling Shyu, Shu. C. Chen, and Sundaraja S. Iyengar, “A survey on deep learning: Algorithms, techniques, and applications”. ACM Computing Surveys (CSUR), 51(5):1–36, 2018.
- Chao Zhang, Zichao. Yang, Xiaodong He and Li Deng, “Multimodal intelligence: Representation learning, information fusion, and applications”. IEEE Journal of Selected Topics in Signal Processing, 14(3):478–493, 2020.
- Mann Paulo, Aline. Paes and Elton H. Matsushima, “See and read: detecting depression symptoms in higher education students using multimodal social media data”. In Proceedings of the International AAAI Conference on Web and Social Media, volume 14, pp. 440–451, 2020.
- James Lando, Sheree. M. Williams, Stephanie Sturgis and Branalyn Williams, “A logic model for the integration of mental health into chronic disease prevention and health promotion”. Preventing Chronic Disease, 3(2), 2006.
- Michelle Morales, Stefan Scherer and Rivka Levitan, “A cross-modal review of indicators for depression detection systems”. In Proceedings of the fourth workshop on computational linguistics and clinical psychology—from linguistic signal to clinical reality, pp. 1–12, 2017.
- Munmum De Choudhury, Michael Gamon, Scott Counts and Eric Horvitz, “Predicting depression via social media”. In Seventh International AAAI conference on weblogs and social media, 2013.
- Sho Tsugawa, Yusuke Kikuchi, Fumio Kishino, Kosuke Nakajima, Yuichi Itoh and Hiroyuki. Ohsaki (2015). Recognizing depression from twitter activity. In Proceedings of the 33rd annual ACM conference on human factors in computing systems, pp. 3187–3196.
- Zunaira Jamil (2017). Monitoring tweets for depression to detect at-risk users. PhD thesis, Universit´e d’Ottawa/University of Ottawa.
- Yu-Ching Huang, Chieh. F. Chiang and Arbee L. Chen (2019). Predicting Depression Tendency based on Image, Text and Behavior Data from Instagram. In DATA, pp. 32–40.
- Amir H. Yazdavar, Mohammad S. Mahdavinejad, Goonmeet. Bajaj, William Romine, Amit Sheth, Amir H. Monadjemi, Krishnaprassad Thirunarayan, J. M. Meddar, A. Myers, J. Pathak, “Multimodal mental health analysis in social media”. Plos one, 15(4): e0226248, 2021.
- Bhumika Gupta, Neeraj Pokhriyal and Kamal K. Gola, “Detecting Depression in Reddit Posts using Hybrid Deep Learning Model LSTM-CNN”. In 2022 2nd International Conference on Technological Advancements in Computational Sciences (ICTACS), pp. 610–617, IEEE. 2022.
- Harnain Kour and Manoj K. Gupta, “A hybrid deep learning approach for depression prediction from user tweets using feature-rich CNN and bi-directional LSTM”. Multimedia Tools and Applications, 81(17):23649–23685, 2022.
- Tolulope M. Awoyelu, Abimbola. R. Iyanda and Sunday K. Mosaku, “Formulation of a Predictive Model for the Determination of Depression among University Students”. In Proceeding of the 14th International Conference on Smart Nations, Digital Economies and Meaningful Lives Nigerian Computer Society, (NCS.2019), pp. 098– 109, 2019.
- Panch Ratan, “What is Convolutional Neural Network Architecture?”. Analytics Vidhya, 2020. Available at: https://www.analyticsvidhya.com/blog/2020/10/what-is-the-convolutional-neural-network-architecture/.Accessed: May 27th 2023.