Literature DB >> 28125523

Machine Learning-Based Classification of 38 Years of Spine-Related Literature Into 100 Research Topics.

David C Sing1, Lionel N Metz, Stefan Dudli.   

Abstract

STUDY
DESIGN: Retrospective review.
OBJECTIVE: To identify the top 100 spine research topics. SUMMARY OF BACKGROUND DATA: Recent advances in "machine learning," or computers learning without explicit instructions, have yielded broad technological advances. Topic modeling algorithms can be applied to large volumes of text to discover quantifiable themes and trends.
METHODS: Abstracts were extracted from the National Library of Medicine PubMed database from five prominent peer-reviewed spine journals (European Spine Journal [ESJ], The Spine Journal [SpineJ], Spine, Journal of Spinal Disorders and Techniques [JSDT], Journal of Neurosurgery: Spine [JNS]). Each abstract was entered into a latent Dirichlet allocation model specified to discover 100 topics, resulting in each abstract being assigned a probability of belonging in a topic. Topics were named using the five most frequently appearing terms within that topic. Significance of increasing ("hot") or decreasing ("cold") topic popularity over time was evaluated with simple linear regression.
RESULTS: From 1978 to 2015, 25,805 spine-related research articles were extracted and classified into 100 topics. Top two most published topics included "clinical, surgeons, guidelines, information, care" (n = 496 articles) and "pain, back, low, treatment, chronic" (424). Top two hot trends included "disc, cervical, replacement, level, arthroplasty" (+0.05%/yr, P < 0.001), and "minimally, invasive, approach, technique" (+0.05%/yr, P < 0.001). By journal, the most published topics were ESJ-"operative, surgery, postoperative, underwent, preoperative"; SpineJ-"clinical, surgeons, guidelines, information, care"; Spine-"pain, back, low, treatment, chronic"; JNS- "tumor, lesions, rare, present, diagnosis"; JSDT-"cervical, anterior, plate, fusion, ACDF."
CONCLUSION: Topics discovered through latent Dirichlet allocation modeling represent unbiased meaningful themes relevant to spine care. Topic dynamics can provide historical context and direction for future research for aspiring investigators and trainees interested in spine careers. Please explore https://singdc.shinyapps.io/spinetopics. LEVEL OF EVIDENCE: N A.

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Year:  2017        PMID: 28125523     DOI: 10.1097/BRS.0000000000002079

Source DB:  PubMed          Journal:  Spine (Phila Pa 1976)        ISSN: 0362-2436            Impact factor:   3.468


  5 in total

1.  Editor's Spotlight/Take 5: Can Machine Learning Algorithms Predict Which Patients Will Achieve Minimally Clinically Important Differences From Total Joint Arthroplasty?

Authors:  Seth S Leopold
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2.  Publication trends in spine research from 2007 to 2016: Comparison of the Orthopaedic Research Society Spine Section and the International Society for the Study of the Lumbar Spine.

Authors:  John T Martin; Sarah E Gullbrand; Aaron J Fields; Devina Purmessur; Ashish D Diwan; Thomas R Oxland; Kazuhiro Chiba; Farshid Guilak; Judith A Hoyland; James C Iatridis
Journal:  JOR Spine       Date:  2018-03-23

Review 3.  Artificial Intelligence Technologies in Neurosurgery: a Systematic Literature Review Using Topic Modeling. Part II: Research Objectives and Perspectives.

Authors:  G V Danilov; M A Shifrin; K V Kotik; T A Ishankulov; Yu N Orlov; A S Kulikov; A A Potapov
Journal:  Sovrem Tekhnologii Med       Date:  2020-12-28

Review 4.  Machine learning in pain research.

Authors:  Jörn Lötsch; Alfred Ultsch
Journal:  Pain       Date:  2018-04       Impact factor: 6.961

5.  Tourism research from its inception to present day: Subject area, geography, and gender distributions.

Authors:  Andrei P Kirilenko; Svetlana Stepchenkova
Journal:  PLoS One       Date:  2018-11-02       Impact factor: 3.240

  5 in total

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