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1. Enhanced Bibliographic Analysis: The novel method applied in this study surpasses traditional approaches by allowing the simultaneous analysis of 12,965 papers, offering a more comprehensive and accurate overview of mental illness research.
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2. Discovery of Prevailing Research Trends: The study identifies critical keywords and thematic areas in recent mental illness research, outlining current trends and key focuses in the field.
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3. Addressing Research Gaps: Significant gaps in the literature are revealed, especially in underexplored areas of mental health, emphasizing the need for further investigation and innovation.
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1. Database Dependency: The study relies solely on the Web of Science database, which may limit the comprehensiveness of the analysis by excluding relevant papers from other databases.
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2. Keyword Selection Bias: The analysis depends on predefined keywords, which may introduce bias by potentially missing relevant papers that use different terminologies for mental illness.
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3. Static Nature of Data: The data is based on a snapshot of publications at a specific time, limiting the ability to capture evolving trends and emerging research topics in real-time.
Introduction
Mental illness is a crucial topic in psychology, garnering substantial attention from both researchers and practitioners (Richards and Stenner, Reference Richards and Stenner2022). This paper adopts an innovative bibliographic study method that enhances traditional approaches like VOSviewer (Huang et al., Reference Huang, Cheng, Yang and Chen2022). While traditional VOSviewer typically analyzes up to around 1,000 papers (Chen and Ding Reference Chen and Ding2023a), our method accommodates the analysis of up to 12,965 papers simultaneously (Table 1). This advancement allows for the capture of more relevant information and minimises errors, resulting in a more accurate and comprehensive examination of recent publications on mental illness indexed in the Web of Science database (Pranckutė, Reference Pranckutė2021).
The study systematically identifies and examines key papers published in the field of mental health, focusing on the most influential research in recent years. By employing this advanced bibliographic method (Echchakoui, Reference Echchakoui2020), the research successfully uncovers the dominant keywords associated with mental illness studies, highlighting the most critical themes that are currently shaping the field. These keywords serve as indicators of prevailing research trends and areas of focus within the broader context of mental health (Hernández-Torrano et al., Reference Hernández-Torrano, Ibrayeva, Sparks, Lim, Clementi, Almukhambetova, Nurtayev and Muratkyzy2020).
In addition to identifying significant keywords, the study also analyzes the contributions of leading researchers, universities, and countries/regions (Ding and Yang Reference Ding and Yang2022). This analysis reveals the primary contributors to the field, offering insights into the global distribution of mental illness research (Vigo et al., Reference Vigo, Jones, Atun and Thornicroft2022). The findings indicate that certain universities and research institutions are at the forefront of this area, producing a substantial portion of the literature (Shalaby and Agyapong, Reference Shalaby and Agyapong2020). Similarly, specific countries and regions are identified as major hubs for mental health research, reflecting the geographical concentration of expertise and resources dedicated to studying mental illness (Bemme and Kirmayer, Reference Bemme and Kirmayer2020).
The paper provides a comprehensive overview of the current state of mental health research, covering the progress made in understanding various mental health disorders, such as depression, anxiety, schizophrenia, and bipolar disorder. It also highlights the methodological advancements used to study these conditions. The paper identifies key gaps in the existing literature, emphasising areas where further research is needed. While significant progress has been made in understanding some disorders, others remain underexplored, necessitating more focused investigation. Additionally, the influence of major research contributors on different mental health disorders is discussed, offering a broader perspective on their impact in the field.
Additionally, the study provides a forward-looking discussion on the future directions of mental illness research. It underscores the necessity of ongoing interdisciplinary collaboration, given that mental health is a complex issue intersecting with diverse fields such as neuroscience, sociology, and public health, with particular emphasis on the integration of big data and machine learning. The paper contends that adopting innovative research approaches and methodologies is crucial for advancing our understanding of mental illness. This includes tackling the complexities and challenges involved in diagnosing, treating, and preventing these conditions effectively.
Materials and methods
The study was conducted at the Social Science Divisions of the University of Oxford, UK, and in Singapore City. Using the Web of Science database (Singh et al., Reference Singh, Singh, Karmakar, Leta and Mayr2021), keywords related to mental health were searched, including terms such as ‘mental health issues’, ‘mental illness’, ‘mental health problems’, ‘mental disorders’, ‘psychological disorder’, ‘psychiatric disorder’, ‘neuropsychiatric disorder’, ‘emotional disorder’, ‘behavioral disorder’, ‘cognitive disorder’, and ‘cognitive function’.
The topic of ‘mental health problems’ has been published for decades, and the search yielded 12,965 papers (duplicates removed), as shown in Figure 1. Data were downloaded on 6th August 2024. For the analysis of productivity by countries/regions and authors, the first author was considered the primary contributor to the articles.
Results
We analysed global trends in the field of mental health research. As shown in Figure 1(A), there has been a significant increase in publications focused on ‘mental health issues’ from 2019 to 2024, compared to the total output prior to 2019. The number of publications reached 1,000 in 2021 and surged to over 3,000 by 2023. This indicates a substantial rise in the number of papers in this field over the past few years, reflecting growing interest and concern regarding mental health.
Next, we analysed the contributions of countries and regions. Figure 1(B) ranks the top 12 countries/regions that have contributed the most to mental health research. The USA leads with over 3,000 papers, followed by China, Australia, Canada, Germany, Italy, Spain, the Netherlands, India, France, Iran, and Japan. This ranking highlights the close collaboration among these nations, which has been pivotal in shaping the development of mental health research. Some countries, such as the USA, have a stronger research foundation and have been active in this field for longer, while others with larger populations and higher rates of mental health issues, like China and India, require extensive international collaboration. Figure 1(C) further shows the citation counts, revealing that publications from the USA are the most frequently cited. Figure 2 illustrates the collaborative relationships between the USA and other countries, with strong ties to France, Germany, Australia, Spain, the Netherlands, Sweden, Italy, China, Canada, and Ireland.
We also analysed the major organisations contributing to mental health research. Figure 1(E) highlights the top 30 most productive institutions in the study of mental disorders, with the University of London, Harvard University, and the University of California System standing out as particularly influential. Figure 3 illustrates the organisational collaboration network, showing that the University of Oxford collaborates with the University of London and King’s College London, while Harvard University often works with Harvard Medical School and Massachusetts General Hospital. The growing trend of collaboration, particularly international partnerships, is evident in recent years, driving progress in the field of mental health research.
Finally, we examined the most influential authors in mental health research. As Figure 1 (D) displayed, the most productive authors for whom have been published many papers from the year 1990 to August 2024, as counted in the contribution of first author. The most influential author is presented in Figure 1(F), Reiter, R J is the most influential author in mental health area, whose work is most frequently cited by other researchers. He is a prominent expert in biology known for his work exploring the relationship between biological mechanism and well-being mental health. He particularly concentrates on circadian rhythms, melatonin, chronobiology, and antioxidant properties in affecting physical and mental changes, regulating physical and mental health. For instance, he’s research team proposed that how chronobiology adjusting biology rhythms to cause mental health disorders (Sainz et al., Reference Sainz, Mayo, Rodriguez, Tan, Lopez-Burillo and Reiter2003, Hardeland et al., Reference Hardeland, Tan and Reiter2009, Cipolla-Neto et al., Reference Cipolla-Neto, Amaral, Afeche, Tan and Reiter2014). A teamwork also found that melatonin regulating biological rhythms and metabolism that speed up the apoptotic death of cancer cells (Sainz et al., Reference Sainz, Mayo, Rodriguez, Tan, Lopez-Burillo and Reiter2003). Hardeland, R and Arendt, J and de Vries, P J are also well-known in mental health research area, and they won hundreds of citations. Hardeland, R mainly focus on the effect of melatonin, He extensively examine the neuroprotective and immunomodulatory effects in protecting nerve cells, regulating sleep disorders, and metabolic syndrome to lower the risk of neurologic disease (including mood disorders, depression) due to the damage of cell recycling system brings fatal nerve disease (Hardeland, Reference Hardeland2018). Arendt, J and de Vries, P J also concentrate on their work on circadian rhythms and sleep disorders to minimise the side effects and reveal the underlying mechanisms of sleep and mental health problems. One famous study from The Lancet Psychiatry reported that sleep difficulties mediating paranoia and hallucinations, and it also contribute to explain the occurrence of mental disorders (Freeman et al., Reference Freeman, Sheaves, Goodwin, Yu, Nickless, Harrison, Emsley, Luik, Foster, Wadekar, Hinds, Gumley, Jones, Lightman, Jones, Bentall, Kinderman, Rowse, Brugha, Blagrove, Gregory, Fleming, Walklet, Glazebrook, Davies, Hollis, Haddock, John, Coulson, Fowler, Pugh, Cape, Moseley, Brown, Hughes, Obonsawin, Coker, Watkins, Schwannauer, MacMahon, Siriwardena and Espie2017). As a systematic meta-analysis study with 72 interventions (N = 8608 participants) summarised that improving sleep quality led to a greater improvements in mental health (Scott et al., Reference Scott, Webb, Martyn-St James, Rowse and Weich2021). Other studies also reported sleep disorders in 2019 novel coronavirus (COVID-19) disease outbreak (Pinto et al., Reference Pinto, van Zeller, Amorim, Pimentel, Dantas, Eusébio, Neves, Pipa, Clara, Santiago, Viana and Drummond2020), and Zhang et al., Reference Zhang, Paksarian, Lamers, Hickie, He and Merikangas(2017) found unhealthy sleep patterns increase the risk of mental health disorders. The authors listed above, who are the most influential, are also the most productive, having published numerous papers over the past decades. Figure 4 illustrates the co-authorship network, showing the collaborative relationships between these authors. For example, Bruffaerts R frequently collaborates with Kessler R C, Alonso J, Karam E G, and Sampson N A, as evidenced by the strong and tightly connected lines representing their social network ties.
Keywords from titles were extracted to conduct a bibliographic analysis. As seen in Figure 5, existing research in the mental health area mainly focused on cognitive function, cognitive therapy, cross-sectional studies, randomised trials, autism spectrum, cognitive behavioural therapy, cognitive trials, treatment, and intervention, among others. Mental health problems were strongly related to cognitive function, cognitive therapy, behavioural therapy, attention deficit hyperactivity disorder (ADHD), quality of life, psychiatric patients, children, adolescents, students, anxiety, cognitive impairment, post-traumatic stress disorder (PTSD), systematic reviews, chronic conditions, psychological symptoms, depressive patients, bipolar disorder, cognitive training or pilot studies, questionnaires, scales, Alzheimer’s disease, therapy effectiveness, paediatric autoimmune conditions, internet gaming, post-streptococcal autoimmune disorders, schizophrenia spectrum, and causal inference, among others.
Figure 6 displayed the keywords extracted from abstracts, which primarily included terms such as depression and anxiety, cross-sectional studies, patient treatment, clinical treatment, cognitive function, quality of life, cognitive effects and impairment, ADHD, bipolar disorder and schizophrenia, PTSD, intervention effects, regression relationships, brain studies, treatment effectiveness, and individual differences. Many of these keywords pertained to information about study subjects, such as participants, patients, parents, children, females, adolescents, and families. Other keywords focused on research methods, including terms like medical, psychiatric, investigated, questionnaire, measures, assessment, and interview. Additionally, several keywords centred on psychological issues themselves, such as depression and stress. Figure 6 also illustrated the connections between these keywords, demonstrating how they interrelated within the context of mental health research.
Figure 7 collected the keywords of articles, which includes anxiety depression, cognitive therapy, autism spectrum, life quality, cognitive impairment, bipolar and schizophrenia, ADHD, obsessive compulsive, psychological distress, Alzheimer’s disease, PTSD, cognitive disease, machine learning, children and adolescents, magnetic resonance imaging, brain cognitive, emotional regulation, nervosa anorexia, cognitive dysfunction, chronic disease, social stigma, suicidal ideation, sleep cognitive, anxiety sleep, oxidative stress, personality psychopathology, eating disorders, diabetes type, CBT cognition, psychiatric comorbidity, eating nervosa, internet gaming, and etc.
Figure 8 presents the correlations among the keywords collected from the articles, revealing various connections that enhance our understanding of mental health disorders. Among the noteworthy links are those between ’sick’ and ‘leave’, which may indicate the relationship between mental health issues and work absence, highlighting the impact of mental illness on employment and productivity. Another significant link is between ‘DNA’ and ‘methylation’, reflecting the growing interest in the genetic and epigenetic factors associated with mental health disorders. This connection points to research exploring how molecular changes, such as DNA methylation, play a role in the onset and progression of conditions like depression and anxiety. These connections, among others highlighted in Figure 8, provide valuable insights into the complex interplay of factors involved in mental health, offering new avenues for research and potential interventions.
In a nutshell, a comprehensive bibliography contained the summarised features of publication productivity, time span, country/region, affiliation, co-authorship, authors’ contributions, citations, and so on. It provided a concise overview of the resources and key points within the field of mental health disorders, which benefited conducting an in-depth analysis of this topic.
Discussion
Categories of mental health problems
Overall, mental health problems can be categorised into externalising and internalising disorders to signify behavioural and emotional issues (Singh et al., Reference Singh, Singh, Karmakar, Leta and Mayr2021). Externalizing disorders are characterised by observable and manifest behaviours. These behaviours involve compulsive, repetitive, and aggressive impulses, including misbehaviour and delinquency (e.g., theft, deception, offensive actions, attention deficit, hyperactivity, and impulsivity). Such behaviours create difficulties for individuals in social and academic environments, as well as challenges in friendships and intimate relationships.
Internalizing disorders, on the other hand, are characterised by internal emotional distress and discomfort (Lee et al., Reference Lee, Lawrence, Bryce, Ponsford, Tan and Rossell2021). These disorders are less visible and can be difficult to recognise and articulate. For example, depression, also known as distressed symptoms, involves a loss of interest in activities, persistent sadness, and feelings of worthlessness or hopelessness. Anxiety is marked by feelings of discomfort and nervousness, ranging from mild to severe worries, desires, and fears. Often, these feelings are persistent and unavoidable. Stress refers to mental strain and tension that prompts individuals to respond to upcoming challenges and threats. Obsessive-compulsive disorder involves involuntary recurring thoughts (obsessions) and actions (compulsions) that compel individuals to perform certain activities or dwell on intrusive ideas.
Contributors to mental health problems
To explain the reasons for mental disorders, classification is useful in identifying potential factors. This can be restricted to the following aspects, though it is not limited to them: firstly, genetic factors (Arango et al., Reference Arango, Dragioti, Solmi, Cortese, Domschke, Murray, Jones, Uher, Carvalho and Reichenberg2021). Genetic predispositions, often indicated by a family history of mental illness, can impart specific traits to offspring, making them more likely to develop similar symptoms. For example, individuals with inherited genetic variations may exhibit a tendency toward negative feelings or emotions, such as anxiety, stress, distress, or bipolar disorder. A relevant case study is the identification of the COMT gene, which has been linked to various mental disorders, including schizophrenia and bipolar disorder. In addition, epigenetic mechanisms can trigger chromosome mutations due to environmental variations, which describe the mutations of heritable traits without changes in the DNA sequence (Berger et al., Reference Berger, Kouzarides, Shiekhattar and Shilatifard2009). Epigenetic regulation impacts the nervous system and proteins via altered transcription and translation processes, leading to mental hindrances or disorders (e.g., autism spectrum disorder, schizophrenia, drug addiction) due to abnormalities in chromatin remodelling (Tsankova et al., Reference Tsankova, Renthal, Kumar and Nestler2007, Chmielewska et al., Reference Chmielewska, Szyndler, Maciejak and Płaźnik2019, Miao et al., Reference Miao, Wang and Sun2020). Miao et al., Reference Miao, Wang and Sun(2020) explored the role of epigenetic functions in mental illnesses such as impaired social interactions, memory issues, depression, and stress symptoms. The interaction between genetic factors and environmental influences, as shown in epigenetic research, further emphasises the need to examine genetic predispositions in the development of mental disorders.
Secondly, biological factors (Arango et al., Reference Arango, Dragioti, Solmi, Cortese, Domschke, Murray, Jones, Uher, Carvalho and Reichenberg2021). Mental disorders are closely related to the chemical reactions occurring in the brain. Instabilities in neurotransmitters – such as dopamine and serotonin – are strongly linked to the development of mental disorders. For example, insufficient levels of dopamine and serotonin are associated with major depressive symptoms. In addition to neurotransmitter imbalances, other biological factors such as hormonal disruptions, traumatic brain injuries, developmental delays, and brain infections can also contribute to mental health conditions. Hallucinations and illusions are classic examples that illustrate the complex interactions between biological factors and mental health, further emphasising the need for biological interventions in treating such conditions.
Thirdly, psychological causes (Da Silva et al., Reference Da Silva, Baldaçara, Cavalcante, Fasanella and Palha2020). Mindsets that focus excessively on negative aspects of life, adherence to false beliefs or outdated ideologies, and a rejection of science and education can lead to mental health challenges. Psychological factors such as these can contribute to a range of mental disorders, including anxiety, bipolar disorder, stress, PTSD, and depression. The development of these conditions can often be traced to cognitive patterns that reinforce negative thought processes and dysfunctional behaviour, which can exacerbate emotional distress and impair coping mechanisms.
Fourthly, environmental influences (Sameroff and Seifer Reference Sameroff and Seifer2021). Personal experiences, particularly adversities, traumatic events, abuse, maltreatment, lack of emotional support, and low socio-economic status, can create an environment that is conducive to mental illness. Economic inequalities, job insecurity, and limited job opportunities further compound these environmental stressors, potentially contributing to the development of mental disorders. The broader societal context in which individuals live, including exposure to poverty and violence, often shapes their mental well-being and can lead to long-term psychological distress.
Fifthly, living habits and customs can also contribute to mental disorders (Blom et al., Reference Blom, Lönn, Ekblom, Kallings, Väisänen, Hemmingsson, Andersson, Wallin, Stenling and Ekblom2021). Habits such as substance abuse, poor diet, malnutrition, and obesity can lead to emotional distress, anxiety, and eating disorders. These lifestyle factors can affect an individual’s physical health, which in turn has a significant impact on their mental health. For example, poor nutritional habits can contribute to mood fluctuations and cognitive impairments, while substance abuse can cause addiction-related mental health issues. Therefore, it is crucial to address these lifestyle factors as part of mental health prevention and treatment strategies.
Sixthly, physical health issues (Kivimäki et al., Reference Kivimäki, Batty, Pentti, Shipley, Sipilä, Nyberg, Suominen, Oksanen, Stenholm and Virtanen2020). Individuals with chronic diseases such as heart disease, diabetes, hypertension, long-lasting pain, and cancer may experience increased stress, which can exacerbate mental health issues. Furthermore, the side effects of medications used to treat physical health conditions can also contribute to mental distress. The interplay between physical health and mental well-being is complex, as individuals dealing with chronic illnesses may experience heightened vulnerability to anxiety, depression, and other mental health conditions, making integrated care essential for these patients.
Seventhly, accidental occurrences (Melo et al., Reference Melo, Dippenaar, Johnson, Weaver, de Assis Acurcio, Malta, Ribeiro, Júnior, Wool and Naghavi2022). Significant life events and transitions, such as divorce, car accidents, the loss of loved ones, and adapting to new challenges, can have profound effects on mental health. These events often lead to emotional distress, grief, and sometimes PTSD. The psychological impact of these occurrences can vary depending on the individual’s resilience and support system, but they are undoubtedly a contributing factor to the development of mental health conditions.
Eighthly, socio-cultural constraints (Kiselev et al., Reference Kiselev, Pfaltz, Haas, Schick, Kappen, Sijbrandij, De Graaff, Bird, Hansen and Ventevogel2020). Stigma, bias, and discrimination, as well as societal expectations, social regulations, traditions, cultural conventions, and norms, can all have significant effects on an individual’s mental well-being. The pressure to conform to societal ideals can lead to feelings of inadequacy, anxiety, and depression, particularly when individuals feel marginalised or excluded. These socio-cultural factors can create environments where mental illness is exacerbated or underrecognized, highlighting the need for societal change to support mental health awareness and acceptance.
Interventions of mental health problems
Physical therapy, psychotherapy, and chemotherapy are widely recognised as effective methods for treating mental health disorders, each contributing in distinct ways to the intervention and management of mental illnesses (Smith et al., Reference Smith, Lee, Zeleznik, Scott, Fatima, Needham and Ohtake2020). Physical therapy involves a variety of practices aimed at enhancing physical well-being, which can in turn improve mental health. These practices include yoga, exercise, massage, electrotherapy, hydrotherapy, cryotherapy, thermal therapy, therapeutic ultrasound, mindfulness, meditation, and social activities. Additional therapies such as art and music therapy, acupuncture, herbal remedies, and nutritional guidance also play a role in helping to strengthen muscles, reduce pain, and promote overall physical and mental health.
Psychotherapy, on the other hand, consists of several therapeutic approaches that target emotional and behavioural issues (Cuijpers et al., Reference Cuijpers, Donker, Weissman, Ravitz and Cristea2016). Cognitive behavioural therapy (CBT) is one of the most common forms, helping individuals reframe negative thought patterns and behaviours (Nakao, Shirotsuki and Sugaya Reference Nakao, Shirotsuki and Sugaya2021). Dialectical behaviour therapy is another widely used method, focusing on emotional regulation and interpersonal effectiveness (Comtois et al., Reference Comtois, Elwood, Holdcraft, Smith and Simpson2007). Psychodynamic therapy delves into the unconscious mind, promoting self-awareness and understanding of deeper emotional issues, while humanistic therapy emphasises self-fulfilment and personal growth, helping individuals explore and achieve their fullest potential (Leichsenring, Luyten et al., Reference Leichsenring, Luyten, Hilsenroth, Abbass, Barber, Keefe, Leweke, Rabung and Steinert2015).
Chemotherapy, in the context of mental health treatment, refers to the use of medications to manage a range of psychiatric conditions (Zare et al., Reference Zare, Bahia, Eidy, Adib and Sedighe2019). Antidepressants, antipsychotics, anxiolytics, and mood stabilisers are commonly prescribed to treat disorders such as depression, anxiety, schizophrenia, and bipolar disorder. Alongside these medications, medical devices like transcranial magnetic stimulation (Kan et al., Reference Kan, Padberg, Giron, Lin, Zhang, Brunoni and Kranz2023) and electroconvulsive therapy (Watts et al., Reference Watts, Peltzman and Shiner2021) are also utilised to provide relief for more severe or treatment-resistant conditions.
In summary, mental health disorders are generally categorised into externalising and internalising types, each influenced by a variety of internal and external factors. Understanding these contributing elements is crucial for designing effective treatment strategies and ensuring successful intervention outcomes. Through a combination of physical, psychological, and medical interventions, individuals suffering from mental health disorders can find the support they need for recovery and well-being.
Limitations to solutions: big data and machine learning on mental health
The analysis conducted highlights the intricate complexity of mental illness, emphasising the need for innovative approaches to enhance our understanding and treatment of these conditions. A thorough review of the literature reveals several limitations in the current field of mental health research. These limitations include: (1) the lack of systematic summaries of texts and data, (2) the occasional overemphasis on specific discoveries related to mental illness, and (3) the reliance on the subjective experience of mental health professionals, which can introduce unavoidable human error into diagnoses and treatment plans (Bradford et al., Reference Bradford, Meyer, Khan, Giardina and Singh2024).
Addressing these limitations, this study introduces a novel perspective on the potential of big data and machine learning in advancing mental health research (Al Banna et al., Reference Al Banna, Ghosh, Nahian, Kaiser, Mahmud, Taher, Hossain and Andersson2023). The application of these technologies, which have already shown substantial benefits in fields such as facial recognition (Al Banna et al., Reference Al Banna, Ghosh, Nahian, Kaiser, Mahmud, Taher, Hossain and Andersson2023), autonomous driving (Bachute and Subhedar, Reference Bachute and Subhedar2021), and species distribution prediction (Chen and Ding, Reference Chen and Ding2022), presents a transformative opportunity for mental health.
Firstly, the establishment of a comprehensive database incorporating diverse human information – such as age, education, family background, dietary habits, physical measurements, and psychological conditions – could provide a robust resource for mental health research. This extensive dataset would enable researchers to capture the multifaceted nature of mental disorders and better understand the complex interplay of various contributing factors.
Utilising machine learning models, such as neural networks, on this enriched dataset could significantly enhance predictive accuracy for mental health conditions (Su et al., Reference Su, Xu, Pathak and Wang2020). Machine learning algorithms have the capability to identify patterns and correlations that traditional research methods might overlook. By training these models with large-scale data, researchers can develop more precise tools for predicting mental health issues and identifying individuals at risk, thereby enabling earlier and more targeted interventions.
Moreover, the integration of machine learning into mental health research facilitates the development of early intervention strategies (Chekroud et al., Reference Chekroud, Bondar, Delgadillo, Doherty, Wasil, Fokkema, Cohen, Belgrave, DeRubeis and Iniesta2021). Predictive models could forecast the onset of mental health disorders before they fully manifest, allowing for timely and personalised treatment plans. This proactive approach has the potential to substantially improve patient outcomes by addressing issues at an early stage, thus reducing the severity of mental health disorders.
The potential of big data and machine learning in mental health research is profound (Koppe et al., Reference Koppe, Meyer-Lindenberg and Durstewitz2021). These technologies offer the capacity to process and analyse vast amounts of data, uncovering insights that can drive innovative treatment solutions and deepen our understanding of mental illnesses. As the field of mental health research continues to evolve, the application of these technologies promises to revolutionise our approach by providing more accurate diagnoses, personalised treatment options, and ultimately, enhanced mental health outcomes.
Conclusion
In conclusion, mental illness remains a critical area of academic research, and this study has utilised the latest bibliographic methods to explore this field comprehensively. Through our analysis, we identified the primary mental disorders and the predominant research methodologies within this domain. The study highlights key trends and influential figures, providing a clear picture of the current landscape of mental health research. Furthermore, the discussion points to promising future directions, emphasising the significant potential of big data and machine learning technologies. These advanced tools offer the capability to uncover deeper insights and enhance the precision of mental health research, ultimately leading to more effective interventions and treatment strategies. By leveraging these technological advancements, researchers can address existing gaps, explore new avenues of inquiry, and contribute to a more nuanced understanding of mental illnesses. This approach not only enriches the field but also holds the promise of improving mental health outcomes on a broader scale.
Data availability
Data supporting this study are available from the corresponding author.
Funding statement
None.
Competing interests
None.