Skip to main content
Enterprise AI Analysis: Research status, hotspots and perspectives of artificial intelligence applied to pain management: a bibliometric and visual analysis

BIBLIOMETRIC & VISUAL ANALYSIS | JUNE 28, 2025

Research status, hotspots and perspectives of artificial intelligence applied to pain management: a bibliometric and visual analysis

Background With the advent of big data, artificial intelligence (AI) is rapidly emerging as a promising avenue for pain management research. Integrating big data analytics, machine learning, and intelligent algorithms within AI can facilitate several significant advancements in healthcare. These include the ability to provide clinical diagnoses of pain, risk prediction, and the development of precision medicine. The number of articles on the application of AI to pain management is on the rise. However, there needs to be more information regarding the quality of the research output in this area, as well as the current hotspots and trends in research. At the same time, no bibliometric metrics have been identified that assess scientific progress in this area. In order to gain an understanding of the current status and potential future directions in the application of AI within the field of pain management, it is first necessary to undertake a visual and analytical study of the relevant research. Objectives A bibliometric and visual analysis was conducted to identify research hotspots and trends in the application of AI in pain management over the past 30 years. Methods The data information source was the SCI-EXPANDED subset database of the WOS database. A manual search was conducted of all articles and reviews from the database's inception to June 29, 2024. The search was limited to English language sources. A bibliometric analysis was conducted using VOSviewer, CiteSpace, and Bibliometrix (an R-Tool of R-Studio). The analysis encompassed a range of aspects related to the global publication status of papers in the field, including countries and regions, institutions, authors, journals, keywords, and co-cited references. Results A total of 970 published papers were obtained for this study. The articles were published in 496 journals by 5679 authors affiliated with 2030 academic institutions in 84 countries or regions. From 2014 to 2024, there was a gradual increase in the number of papers published within this field, with 97% of the total published papers. The United States and China contribute the most to this growth. The most prominent research institutions are Harvard University, the University of California system, and Harvard Medical School. At the author level, Mork, Paul Jarle, Bach, and Kerstin of the Norwegian University of Science & Technology (NTNU) were identified as the authors with the highest research output. Breiman, L. of the University of California, Berkeley, emerged as the most influential author, exhibiting the highest co-citation frequency. From the perspective of journals, the Journal of Medical Internet Research, Scientific Reports, PAIN, PLOS ONE, and SPINE are the primary core journals in the field. They have a high number of published papers and co-citation frequency. Furthermore, of the 46,170 co-cited references, Loetsch J's “Machine learning in pain research,” published in PAIN in 2018, had the highest number of co-citations, thus making it the most influential article in the study. Combining keywords and co-cited references for analysis leads to the conclusion that using AI for accurate clinical monitoring and risk prediction, clinical diagnosis and classification, and providing personalized treatment plans and care measures for pain has become a current research hotspot and a future trend. Machine learning, deep learning, artificial neural networks, and clinical decision support systems in artificial intelligence are frequently mentioned and commonly used to build predictive models. These are also hot research topics and trends in the field. Conclusions The field of research on using AI for pain management is experiencing unprecedented growth and develop- ment. This study offers a novel perspective on applying AI to pain management, which may inform researchers' selection of potential journals and institutions to collaborate with. Furthermore, this study furnishes researchers with the requisite data to comprehend the present state of research, research focal points, and research tendencies in this field, thereby facilitating the implementation of AI in pain management.

Executive Impact: AI in Pain Management

This bibliometric analysis reveals the rapidly evolving landscape of Artificial Intelligence in pain management. Key findings indicate significant growth in publications, robust international collaboration, and a clear shift towards clinical application and personalized treatment strategies. AI technologies like machine learning and deep learning are at the forefront, driving advancements in risk prediction, diagnosis, and patient care.

0 Authors Involved
0 Institutions Engaged
0 Countries/Regions
0 Published Papers

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Artificial intelligence is profoundly impacting pain management, shifting from theoretical exploration to practical clinical integration. This section explores how AI, through machine learning, deep learning, and advanced analytics, is transforming pain diagnosis, risk prediction, and personalized treatment.

97% of all AI in pain management papers published since 2014

Enterprise Process Flow

Data Collection & Pre-processing
AI Model Training (ML/DL)
Pain Diagnosis & Classification
Risk Prediction & Prognosis
Personalized Treatment Planning
Continuous Monitoring & Care
AI Application Area Traditional Approach AI-Enhanced Approach
Diagnosis & Classification
  • Subjective patient reports
  • Limited objective markers
  • Physician experience-based
  • Multimodal data integration (imaging, physiological signals)
  • Pattern recognition for accurate pain types
  • AI-assisted clinical decision support systems
Risk Prediction
  • Statistical models with limited variables
  • General population risk factors
  • Less predictive power for chronicity
  • Machine learning models (LASSO regression)
  • Early identification of high-risk patients
  • Prediction of chronic post-operative pain
Treatment Planning
  • Standardized protocols
  • Trial-and-error approach
  • Limited personalization
  • Personalized AI-CBT-CP
  • Optimized resource allocation
  • Dynamic treatment adjustments based on patient response

Current research trends in AI for pain management are heavily focused on practical clinical applications. Key areas include the development of sophisticated predictive models, enhanced diagnostic tools, and systems for personalized patient care. Machine learning and deep learning are foundational technologies driving these innovations.

286 Machine Learning mentions, highest among keywords

Case Study: AI-Powered Pain Assessment in Emergency Departments

Context: Acute pain in emergency settings requires rapid and accurate assessment for timely intervention.

AI Solution: Researchers developed machine learning algorithms to analyze physiological indicators and clinical data for patients presenting with acute non-traumatic chest pain. This model aimed to predict critical care outcomes and improve risk stratification.

Impact: The model demonstrated significant potential for identifying patients at high risk, improving decision-making for non-coronary artery testing, and optimizing resource allocation. This enhances precision and efficiency in acute pain management, directly influencing patient safety and outcomes.

Technologies: LASSO regression, multimodal data integration.

Despite significant advancements, the application of AI in pain management faces challenges, particularly concerning data heterogeneity, interoperability, and the need for robust clinical validation. Future directions emphasize interdisciplinary collaboration, ethical considerations, and expanding AI's role across diverse pain typologies for truly personalized care.

0.8882 Modularity Q-value, indicating strong clustering structure
Area Current Challenge Future Direction with AI
Data Heterogeneity Lack of standardized pain descriptors and stratified patient subgroups hinders generalizability. Systematic stratification of pain types and patient demographics; integration with IASP-standardized terminology.
Clinical Validation Limited systematic clinical trials and long-term observational studies for AI efficacy. Implementation of randomized controlled trials and evidence-based studies to validate AI models.
Interdisciplinary Integration Siloed research efforts between computer science, medicine, psychology. Promoting synergistic innovation across medicine, computer science, psychology, and economics; addressing ethical/societal acceptance.

Quantify Your AI Impact

Estimate the potential savings and reclaimed hours by integrating AI into your pain management workflows.

Estimated Annual Savings $0
Estimated Hours Reclaimed Annually 0

Your AI Implementation Roadmap

Our structured approach ensures a seamless and effective integration of AI into your pain management systems.

Phase 1: Discovery & Strategy

Assess current pain management workflows, identify AI opportunities, define objectives, and develop a tailored AI strategy and roadmap.

Phase 2: Data Integration & Model Development

Integrate diverse data sources (EHR, imaging, wearables), design and train custom machine learning models for diagnosis, prediction, and personalization.

Phase 3: System Deployment & Pilot

Deploy AI solutions within a controlled environment, conduct pilot testing, and gather feedback for refinement and optimization.

Phase 4: Full-Scale Rollout & Continuous Optimization

Scale the AI solutions across your organization, establish monitoring protocols, and implement continuous learning and improvement cycles.

Ready to Transform Pain Management with AI?

Schedule a personalized consultation to discuss how these AI strategies can be implemented in your organization to improve patient outcomes and operational efficiency.

Ready to Get Started?

Book Your Free Consultation.

Let's Discuss Your AI Strategy!

Lets Discuss Your Needs


AI Consultation Booking