0% Complete
صفحه اصلی
/
اولین همایش بین المللی هوش مصنوعی
From Nodes to Themes: A Social Network Analysis and Thematic Progress in the field of Biomedical Ontologies
نویسندگان :
Elaheh Hosseini
1
Maral Alipour Tehrani
2
Hadi Zare Marzouni
3
1- Department of Information Science, Faculty of Education and Psychology, Alzahra University Tehran, Iran
2- Department of Information Science, Faculty of Education and Psychology, Alzahra University Tehran, Iran
3- Qaen Faculty of Medical Sciences Birjand University of Medical Science Birjand, Iran
کلمات کلیدی :
Social Network Analysis،Thematic Evolution،Biomedical Ontologies،Biblioshiny،Bioinformatics،Gene ontology
چکیده :
The paper aimed to analyze the thematic evolution and various networks of intellectual structures in the field of biomedical ontologies during 2014-2023. This applied research used an analytical and descriptive method, co-word techniques, and social network analysis. A web-based interface of bibliometrix, Microsoft Excel, and VOSviewer software were used for descriptive bibliometric study, data analysis, and network structure visualization. The period from mid-2020 to mid-2021 presented an increased dissemination of significant and prominent keywords within the overlay network in the field. Five major topic clusters were identified based on a co-occurrence network. These clusters labeled ‘gene ontology’, ‘biomedical informatics focusing on AI techniques’, ‘bioinformatics applications in biomarker discovery’, ‘protein interaction networks in Alzheimer's proteomics’, and ‘network-based molecular mechanism’. Basic clusters were ’gene ontology’, ‘bioinformatics’, and ‘gene expression’. Moreover, five clusters experienced significant developments between 2023 and 2024, namely ‘bioinformatics’, ‘deep learning’, ‘machine learning’, ‘transcriptome’, and ‘network pharmacology’. These topics are the latest and hottest concepts in this field. Clusters, namely ‘deep learning’,’ machine learning, and ‘ontology’ were recognized as niche and the most well-developed themes. The most mature and mainstream thematic clusters were namely ‘transcriptome’, ’prognosis’, and ‘rna-seq’. The most undeveloped and chaotic themes were ‘network pharmacology’ and ‘molecular docking’.
لیست مقالات
لیست مقالات بایگانی شده
Potential of machine learning algorithms for predicting the properties of medium-density fiberboard (MDF): preliminary results
Rahim Mohebbi Gargari - Ali Shalbafan - Seyed Jalil Alavi - Maryam Amirmazlaghni - Seyed Hamzeh Sadatnejad - Heiko Thoemen
Empowering Decision-Making in Venture Investments: A Systematic Review of Machine Learning Applications for Predicting Startup Success
Seyed Mohammad Javad Toghraee - Hadi Nilforoushan - Nafiseh Sanaee
Data Mining's Role in Crafting Intelligent Recommender Systems: A Systematic Review
Pourya Rahat - Amir Reza Asnafi
Strategies and Future Horizons of Innovative Entrepreneurship in AI-Based Programming
Milad Ghiasspour
Efficient and Accurate Fairness Verification for Quantum Variational Circuits
Sajjad Hashemian Meymandi - Mohammad Saeed Arvenaghi
Exploring AI Techniques in the Identification and Control of Marine Vehicles
Milad Baghban
Damage Prediction of RC Columns Using Machine Learning Algorithms
Amirali Abdolmaleki - Shima Mahboubi
Reconstruction of ECoG signals in response to visual stimuli using a model based on convolutional and regression networks.
Mohammad Amin Lotfi - Kimiya ٍEghbal - Fateneh Zareayan Jahromy
Early Detection of Congestive Heart Failure in Coronary Artery Disease Patients Using ECG Based Hybrid CNN-LSTM Model
Seyyed Ali Zendehbad - Farinaz Azari - Hadi Dehbovid
The progression of artificial intelligence toward applicability in biomaterial and tissue engineering
Maryam Tamimi - Hamid Mahdavi
بیشتر
ثمین همایش، سامانه مدیریت کنفرانس ها و جشنواره ها - نگارش 42.5.4