TY - JOUR
T1 - Mapping the Degenerative Cervical Myelopathy Research Landscape
T2 - Topic Modeling of the Literature
AU - Karabacak, Mert
AU - Jagtiani, Pemla
AU - Zipser, Carl Moritz
AU - Tetreault, Lindsay
AU - Davies, Benjamin
AU - Margetis, Konstantinos
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024
Y1 - 2024
N2 - Study Design: Topic modeling of literature. Objectives: Our study has 2 goals: (i) to clarify key themes in degenerative cervical myelopathy (DCM) research, and (ii) to evaluate the current trends in the popularity or decline of these topics. Additionally, we aim to highlight the potential of natural language processing (NLP) in facilitating research syntheses. Methods: Documents were retrieved from Scopus, preprocessed, and modeled using BERTopic, an NLP-based topic modeling method. We specified a minimum topic size of 25 documents and 50 words per topic. After the models were trained, they generated a list of topics and corresponding representative documents. We utilized linear regression models to examine trends within the identified topics. In this context, topics exhibiting increasing linear slopes were categorized as “hot topics,” while those with decreasing slopes were categorized as “cold topics”. Results: Our analysis retrieved 3510 documents that were classified into 21 different topics. The 3 most frequently occurring topics were “OPLL” (ossification of the posterior longitudinal ligament), “Anterior Fusion,” and “Surgical Outcomes.” Trend analysis revealed the hottest topics of the decade to be “Animal Models,” “DCM in the Elderly,” and “Posterior Decompression” while “Morphometric Analyses,” “Questionnaires,” and “MEP and SSEP” were identified as being the coldest topics. Conclusions: Our NLP methodology conducted a thorough and detailed analysis of DCM research, uncovering valuable insights into research trends that were otherwise difficult to discern using traditional techniques. The results provide valuable guidance for future research directions, policy considerations, and identification of emerging trends.
AB - Study Design: Topic modeling of literature. Objectives: Our study has 2 goals: (i) to clarify key themes in degenerative cervical myelopathy (DCM) research, and (ii) to evaluate the current trends in the popularity or decline of these topics. Additionally, we aim to highlight the potential of natural language processing (NLP) in facilitating research syntheses. Methods: Documents were retrieved from Scopus, preprocessed, and modeled using BERTopic, an NLP-based topic modeling method. We specified a minimum topic size of 25 documents and 50 words per topic. After the models were trained, they generated a list of topics and corresponding representative documents. We utilized linear regression models to examine trends within the identified topics. In this context, topics exhibiting increasing linear slopes were categorized as “hot topics,” while those with decreasing slopes were categorized as “cold topics”. Results: Our analysis retrieved 3510 documents that were classified into 21 different topics. The 3 most frequently occurring topics were “OPLL” (ossification of the posterior longitudinal ligament), “Anterior Fusion,” and “Surgical Outcomes.” Trend analysis revealed the hottest topics of the decade to be “Animal Models,” “DCM in the Elderly,” and “Posterior Decompression” while “Morphometric Analyses,” “Questionnaires,” and “MEP and SSEP” were identified as being the coldest topics. Conclusions: Our NLP methodology conducted a thorough and detailed analysis of DCM research, uncovering valuable insights into research trends that were otherwise difficult to discern using traditional techniques. The results provide valuable guidance for future research directions, policy considerations, and identification of emerging trends.
KW - cervical myelopathy
KW - hot topic
KW - natural language processing
KW - research trends
KW - spine
KW - topic modeling
UR - http://www.scopus.com/inward/record.url?scp=85193525832&partnerID=8YFLogxK
U2 - 10.1177/21925682241256949
DO - 10.1177/21925682241256949
M3 - Article
AN - SCOPUS:85193525832
SN - 2192-5682
JO - Global Spine Journal
JF - Global Spine Journal
ER -