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      The Current Research Landscape on the Artificial Intelligence Application in the Management of Depressive Disorders: A Bibliometric Analysis

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          Abstract

          Artificial intelligence (AI)-based techniques have been widely applied in depression research and treatment. Nonetheless, there is currently no systematic review or bibliometric analysis in the medical literature about the applications of AI in depression. We performed a bibliometric analysis of the current research landscape, which objectively evaluates the productivity of global researchers or institutions in this field, along with exploratory factor analysis (EFA) and latent dirichlet allocation (LDA). From 2010 onwards, the total number of papers and citations on using AI to manage depressive disorder have risen considerably. In terms of global AI research network, researchers from the United States were the major contributors to this field. Exploratory factor analysis showed that the most well-studied application of AI was the utilization of machine learning to identify clinical characteristics in depression, which accounted for more than 60% of all publications. Latent dirichlet allocation identified specific research themes, which include diagnosis accuracy, structural imaging techniques, gene testing, drug development, pattern recognition, and electroencephalography (EEG)-based diagnosis. Although the rapid development and widespread use of AI provide various benefits for both health providers and patients, interventions to enhance privacy and confidentiality issues are still limited and require further research.

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          Exploring the association between childhood and adolescent obesity and depression: a meta-analysis.

          This meta-analysis aimed to evaluate the association between childhood and adolescent obesity and depression. We systematically searched PubMed, PsycInfo, EMBASE and Science Direct for studies that compared prevalence of depression and depressive symptoms in normal weight and obese children and adolescents. Observational studies were included if they reported body mass index and assessed depression by validated instruments or diagnostic interviews. Quality assessment was performed using the Newcastle-Ottawa scale. We used the random-effect model to calculate the pooled odds ratios, standard mean differences (SMDs) and subgroup analysis. Findings for a total of 51,272 participants were pooled across 18 studies and examined. Our analyses demonstrated a positive association between childhood and adolescent obesity and depression (pooled odds ratio = 1.34, 95% confidence interval [CI]: 1.1-1.64, p = 0.005) and more severe depressive symptoms (SMD = 0.23, 95% CI: 0.025-0.44, p = 0.028) in the obese groups. Overweight subjects were not more likely to have either depression (pooled odds ratio = 1.16, 95% CI: 0.93-1.44, p = 0.19) or depressive symptoms (SMD = 0, 95% CI: -0.101 to 0.102, p = 0.997). Non-Western and female obese subjects were significantly more likely to have depression and severe depressive symptoms (p < 0.05). In conclusion, obese children and adolescents are more likely to suffer from depression and depressive symptoms, with women and non-Western people at higher risk.
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            The coming of age of artificial intelligence in medicine.

            This paper is based on a panel discussion held at the Artificial Intelligence in Medicine Europe (AIME) conference in Amsterdam, The Netherlands, in July 2007. It had been more than 15 years since Edward Shortliffe gave a talk at AIME in which he characterized artificial intelligence (AI) in medicine as being in its "adolescence" (Shortliffe EH. The adolescence of AI in medicine: will the field come of age in the '90s? Artificial Intelligence in Medicine 1993;5:93-106). In this article, the discussants reflect on medical AI research during the subsequent years and characterize the maturity and influence that has been achieved to date. Participants focus on their personal areas of expertise, ranging from clinical decision-making, reasoning under uncertainty, and knowledge representation to systems integration, translational bioinformatics, and cognitive issues in both the modeling of expertise and the creation of acceptable systems.
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              Machine Learning and Neurosurgical Outcome Prediction: A Systematic Review.

              Accurate measurement of surgical outcomes is highly desirable to optimize surgical decision-making. An important element of surgical decision making is identification of the patient cohort that will benefit from surgery before the intervention. Machine learning (ML) enables computers to learn from previous data to make accurate predictions on new data. In this systematic review, we evaluate the potential of ML for neurosurgical outcome prediction.
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                Author and article information

                Journal
                Int J Environ Res Public Health
                Int J Environ Res Public Health
                ijerph
                International Journal of Environmental Research and Public Health
                MDPI
                1661-7827
                1660-4601
                18 June 2019
                June 2019
                : 16
                : 12
                : 2150
                Affiliations
                [1 ]Institute for Preventive Medicine and Public Health, Hanoi Medical University, Hanoi 100000, Vietnam
                [2 ]Bloomberg School of Public Health, Johns Hopkins University, Baltimore, MD 21218, USA; carl.latkin@ 123456jhu.edu
                [3 ]Institute of Medical Science, University of Toronto, Toronto, ON M5S 1A8, Canada; roger.mcintyre@ 123456uhn.ca
                [4 ]Mood Disorders Psychopharmacology Unit, University Health Network, Toronto, ON M5G 2C4, Canada
                [5 ]Department of Psychiatry, University of Toronto, Toronto, ON M5T 1R8, Canada
                [6 ]Department of Toxicology and Pharmacology, University of Toronto, Toronto, ON M5S 1A8, Canada
                [7 ]Institute for Global Health Innovations, Duy Tan University, Da Nang 550000, Vietnam; haipt.ighi@ 123456gmail.com (H.T.P.); huong.ighi@ 123456gmail.com (H.L.T.N.)
                [8 ]Center of Excellence in Evidence-based Medicine, Nguyen Tat Thanh University, Ho Chi Minh City 700000, Vietnam; giang.coentt@ 123456gmail.com (G.T.V.); pcmrhcm@ 123456nus.edu.sg (R.C.M.H.)
                [9 ]Department of Psychological Medicine, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 119228, Singapore; e0012499@ 123456u.nus.edu
                [10 ]Department of Psychological Medicine, National University Hospital, Singapore 119074, Singapore; cyrushosh@ 123456gmail.com
                [11 ]Institute for Health Innovation and Technology (iHealthtech), National University of Singapore, Singapore 119077, Singapore
                Author notes
                [* ]Correspondence: bach.ipmph@ 123456gmail.com ; Tel.: +84-98-222-8662
                Author information
                https://orcid.org/0000-0001-7827-8449
                https://orcid.org/0000-0002-7931-2116
                https://orcid.org/0000-0002-3424-0753
                https://orcid.org/0000-0001-9629-4493
                Article
                ijerph-16-02150
                10.3390/ijerph16122150
                6617113
                31216619
                c26d1f39-028e-4ab0-8c71-3185b21e6d51
                © 2019 by the authors.

                Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license ( http://creativecommons.org/licenses/by/4.0/).

                History
                : 07 May 2019
                : 11 June 2019
                Categories
                Article

                Public health
                artificial intelligence,machine learning,depression,depressive disorders,bibliometric analysis

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