Research Trends of Artificial Intelligence in Lung Cancer: A Combined Approach of Analysis With Latent Dirichlet Allocation and HJ-Biplot Statistical Methods.

IF 2 Q3 RESPIRATORY SYSTEM Pulmonary Medicine Pub Date : 2024-12-04 eCollection Date: 2024-01-01 DOI:10.1155/pm/5911646
Javier De La Hoz-M, Karime Montes-Escobar, Viorkis Pérez-Ortiz
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Abstract

Lung cancer (LC) remains one of the leading causes of cancer-related mortality worldwide. With recent technological advances, artificial intelligence (AI) has begun to play a crucial role in improving diagnostic and treatment methods. It is crucial to understand how AI has integrated into LC research and to identify the main areas of focus. The aim of the study was to provide an updated insight into the role of AI in LC research, analyzing evolving topics, geographical distribution, and contributions to journals. The study explores research trends in AI applied to LC through a novel approach combining latent Dirichlet allocation (LDA) topic modeling with the HJ-Biplot statistical technique. A growing interest in AI applications in LC oncology was observed, reflected in a significant increase in publications, especially after 2017, coinciding with the availability of computing resources. Frontiers in Oncology leads in publishing AI-related LC research, reflecting rigorous investigation in the field. Geographically, China and the United States lead in contributions, attributed to significant investment in R&D and corporate sector involvement. LDA analysis highlights key research areas such as pulmonary nodule detection, patient prognosis prediction, and clinical decision support systems, demonstrating the impact of AI in improving LC outcomes. DL and AI emerge as prominent trends, focusing on radiomics and feature selection, promising better decision-making in LC care. The increase in AI-driven research covers various topics, including data analysis methodologies, tumor characterization, and predictive methods, indicating a concerted effort to advance LC research. HJ-Biplot visualization reveals thematic clustering, illustrating temporal and geographical associations and highlighting the influence of high-impact journals and countries with advanced research capabilities. This multivariate approach offers insights into global collaboration dynamics and specialization, emphasizing the evolving role of AI in LC research and diagnosis.

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人工智能在肺癌中的研究趋势:潜在Dirichlet分配与HJ-Biplot统计方法的联合分析。
肺癌(LC)仍然是全球癌症相关死亡的主要原因之一。随着近年来的技术进步,人工智能(AI)开始在改善诊断和治疗方法方面发挥关键作用。了解人工智能如何融入LC研究并确定主要关注领域至关重要。这项研究的目的是为人工智能在LC研究中的作用提供最新的见解,分析不断发展的主题、地理分布和对期刊的贡献。本研究通过将潜在狄利克雷分配(latent Dirichlet allocation, LDA)主题建模与HJ-Biplot统计技术相结合的新方法,探讨了人工智能应用于LC的研究趋势。人们对LC肿瘤学中人工智能应用的兴趣日益浓厚,这反映在出版物的显著增加上,特别是在2017年之后,与计算资源的可用性相一致。《肿瘤学前沿》在发表人工智能相关LC研究方面处于领先地位,反映了该领域的严谨研究。从地理上看,中国和美国在贡献方面领先,这归因于在研发方面的大量投资和企业部门的参与。LDA分析强调了肺结节检测、患者预后预测和临床决策支持系统等关键研究领域,展示了人工智能在改善LC预后方面的影响。DL和AI成为突出的趋势,专注于放射组学和特征选择,有望在LC护理中做出更好的决策。人工智能驱动研究的增加涵盖了各种主题,包括数据分析方法、肿瘤表征和预测方法,表明了推进LC研究的一致努力。HJ-Biplot可视化显示专题聚类,说明时间和地理关联,突出高影响力期刊和具有先进研究能力的国家的影响。这种多变量方法提供了对全球协作动态和专业化的见解,强调了人工智能在LC研究和诊断中的不断发展的作用。
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来源期刊
Pulmonary Medicine
Pulmonary Medicine RESPIRATORY SYSTEM-
CiteScore
10.20
自引率
0.00%
发文量
4
审稿时长
14 weeks
期刊最新文献
Use of Lung Volume Recruitment Technique in Patients With Chronic Respiratory Disease Among Brazilian Health Professionals. Research Trends of Artificial Intelligence in Lung Cancer: A Combined Approach of Analysis With Latent Dirichlet Allocation and HJ-Biplot Statistical Methods. Practice Variations in the Diagnosis and Treatment of Pulmonary Embolism. The Impact of COVID-19 Pandemic on Respiratory Syncytial Virus Infection in Children. Dual-Task Performance in Individuals With Chronic Obstructive Pulmonary Disease: A Systematic Review With Meta-Analysis.
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