Department of Neurosurgery, Mount Sinai Health System, 1468 Madison Ave, New York, NY, 10029 USA.
Department of Neurosurgery, Mount Sinai Health System, 1468 Madison Ave, New York, NY, 10029 USA.
Spine J. 2024 Mar;24(3):397-405. doi: 10.1016/j.spinee.2023.09.024. Epub 2023 Oct 4.
The field of spine research is rapidly evolving, with new research topics continually emerging. Analyzing topics and trends in the literature can provide insights into the shifting research landscape.
This study aimed to elucidate prevalent and emerging research topics and trends within The Spine Journal using a natural language processing technique called topic modeling.
We utilized BERTopic, a topic modeling technique rooted in natural language processing (NLP), to examine articles from The Spine Journal. Through this approach, we discerned topics from distinct keyword clusters and representative documents that represented the main concepts of each topic. We then used linear regression models on these topic likelihoods to trace trends over time, pinpointing both "hot" (growing in prominence) and "cold" (decreasing in prominence) topics. Additionally, we conducted an in-depth review of the trending topics in the present decade.
Our analysis led to the categorization of 3358 documents into 30 distinct topics. These topics spanned a wide range of themes, with the most commonly identified topics being "Outcome Measures," "Scoliosis," and "Intradural Lesions." Throughout the history of the journal, the three hottest topics were "Degenerative Cervical Myelopathy," "Osteoporosis," and "Opioid Use." Conversely, the coldest topics were "Intradural Lesions," "Extradural Tumors," and "Vertebral Augmentation." Within the current decade, the hottest topics were "Screw Biomechanics," "Paraspinal Muscles," and "Biologics for Fusion," whereas the cold topics were "Intraoperative Blood Loss," "Construct Biomechanics," and "Material Science."
This study accentuates the dynamic nature of spine research and the changing focus within the field. The insights gleaned from our analysis can steer future research directions, inform policy decisions, and spotlight emerging areas of interest. The implementation of NLP to synthesize and analyze vast amounts of academic literature exhibits the potential of advanced analytical techniques in comprehending the research landscape, setting a precedent for similar analyses across other medical disciplines.
脊柱研究领域发展迅速,新的研究主题不断涌现。分析文献中的主题和趋势可以深入了解研究领域的变化。
本研究旨在利用一种自然语言处理技术(称为主题建模)阐明《脊柱杂志》中流行和新兴的研究主题和趋势。
我们使用基于自然语言处理(NLP)的主题建模技术 BERTopic 来研究《脊柱杂志》的文章。通过这种方法,我们从不同的关键词群和代表每个主题主要概念的代表性文档中辨别主题。然后,我们使用线性回归模型对这些主题可能性进行跟踪,以追踪随时间推移的趋势,确定“热门”(关注度不断提高)和“冷门”(关注度不断下降)主题。此外,我们对本十年的趋势主题进行了深入审查。
我们的分析将 3358 篇论文分为 30 个不同的主题。这些主题涵盖了广泛的主题,最常见的主题是“结果测量”、“脊柱侧凸”和“椎管内病变”。纵观期刊历史,三个最热门的主题是“退行性颈髓病”、“骨质疏松症”和“阿片类药物使用”。相反,最冷的主题是“椎管内病变”、“硬膜外肿瘤”和“椎体增强”。在当前十年中,最热门的主题是“螺钉生物力学”、“脊柱旁肌肉”和“融合的生物制剂”,而最冷的主题是“术中失血量”、“构建生物力学”和“材料科学”。
本研究强调了脊柱研究的动态性质和该领域不断变化的重点。我们分析得出的见解可以指导未来的研究方向、为政策决策提供信息,并突出新兴研究领域。利用 NLP 综合和分析大量学术文献可以展示高级分析技术在理解研究领域方面的潜力,为其他医学学科的类似分析树立了榜样。