From Data to Hope: Deep Neural Network-Based Prediction of Poisoning (DNNPPS) Suicide Cases.

IF 1.3 4区 医学 Q4 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Iranian Journal of Public Health Pub Date : 2024-12-01
Houriyeh Ehtemam, Mohammad Mehdi Ghaemi, Fahimeh Ghasemian, Kambiz Bahaadinbeigy, Shabnam Sadeghi-Esfahlani, Alireza Sanaei, Hassan Shirvani
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引用次数: 0

Abstract

Background: Suicide is a critical global issue with profound social and economic consequences. Implementing effective prevention strategies is essential to alleviate these impacts. Deep neural network (DNN) algorithms have gained significant traction in health sectors for their predictive capability. We looked at the potential of DNNs to predict suicide cases.

Methods: A descriptive-analytical, cross-sectional study was conducted to analyze suicide data using a deep neural network predictive prevention system (DNNPPS). The analysis utilized a suicide dataset comprising 1,500 data points, provided by a health research center in Kerman, Iran, spanning the years 2019-2022.

Results: Factors such as history of psychiatric hospitals, days of the week, and job were identified as the most important risk factors for predicting suicide attempts. Promising results were obtained by applying the DNNPPS model to a dataset of 1453 individuals with a history of suicide. The problem was approached as a binary classification task, with suicide history as the target variable. We performed preprocessing techniques, including class balancing, and constructed a DNN model using a sequential architecture with four dense layers.

Conclusion: The success of the DNN algorithm depends on the quality and quantity of data, as well as the model's architecture. High-quality data should be accurate, representative, and relevant, while a large dataset enables the DNN to learn more features. In our study, the DNNPPS model performed well, achieving an F1-score of 91%, which indicates high accuracy in predicting suicide cases and a good balance between precision and recall.

从数据到希望:基于深度神经网络的中毒(DNNPPS)自杀案例预测。
背景:自杀是一个严重的全球性问题,具有深远的社会和经济后果。实施有效的预防战略对于减轻这些影响至关重要。深度神经网络(DNN)算法因其预测能力在卫生部门获得了显著的吸引力。我们研究了深层神经网络预测自杀案件的潜力。方法:采用深度神经网络预测预防系统(DNNPPS)对自杀数据进行描述性分析和横断面研究。该分析利用了由伊朗克尔曼卫生研究中心提供的包括1500个数据点的自杀数据集,时间跨度为2019-2022年。结果:精神病院病史、每周工作天数和工作是预测自杀企图最重要的危险因素。通过将DNNPPS模型应用于1453名有自杀史的人的数据集,获得了令人鼓舞的结果。以自杀史为目标变量,将该问题作为一个二元分类任务来处理。我们执行了预处理技术,包括类平衡,并使用具有四个密集层的顺序架构构建了DNN模型。结论:DNN算法的成功取决于数据的质量和数量,以及模型的体系结构。高质量的数据应该是准确的、代表性的和相关的,而一个大的数据集可以使深度神经网络学习更多的特征。在我们的研究中,DNNPPS模型表现良好,达到了91%的f1分,这表明DNNPPS模型预测自杀案件的准确率很高,并且在准确率和召回率之间取得了很好的平衡。
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来源期刊
Iranian Journal of Public Health
Iranian Journal of Public Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
2.20
自引率
7.10%
发文量
300
审稿时长
3-8 weeks
期刊介绍: Iranian Journal of Public Health has been continuously published since 1971, as the only Journal in all health domains, with wide distribution (including WHO in Geneva and Cairo) in two languages (English and Persian). From 2001 issue, the Journal is published only in English language. During the last 41 years more than 2000 scientific research papers, results of health activities, surveys and services, have been published in this Journal. To meet the increasing demand of respected researchers, as of January 2012, the Journal is published monthly. I wish this will assist to promote the level of global knowledge. The main topics that the Journal would welcome are: Bioethics, Disaster and Health, Entomology, Epidemiology, Health and Environment, Health Economics, Health Services, Immunology, Medical Genetics, Mental Health, Microbiology, Nutrition and Food Safety, Occupational Health, Oral Health. We would be very delighted to receive your Original papers, Review Articles, Short communications, Case reports and Scientific Letters to the Editor on the above men­tioned research areas.
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