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1.
J Stroke Cerebrovasc Dis ; 33(6): 107665, 2024 Jun.
Article in English | MEDLINE | ID: mdl-38412931

ABSTRACT

OBJECTIVES: This study aims to demonstrate the capacity of natural language processing and topic modeling to manage and interpret the vast quantities of scholarly publications in the landscape of stroke research. These tools can expedite the literature review process, reveal hidden themes, and track rising research areas. MATERIALS AND METHODS: Our study involved reviewing and analyzing articles published in five prestigious stroke journals, namely Stroke, International Journal of Stroke, European Stroke Journal, Translational Stroke Research, and Journal of Stroke and Cerebrovascular Diseases. The team extracted document titles, abstracts, publication years, and citation counts from the Scopus database. BERTopic was chosen as the topic modeling technique. Using linear regression models, current stroke research trends were identified. Python 3.1 was used to analyze and visualize data. RESULTS: Out of the 35,779 documents collected, 26,732 were classified into 30 categories and used for analysis. "Animal Models," "Rehabilitation," and "Reperfusion Therapy" were identified as the three most prevalent topics. Linear regression models identified "Emboli," "Medullary and Cerebellar Infarcts," and "Glucose Metabolism" as trending topics, whereas "Cerebral Venous Thrombosis," "Statins," and "Intracerebral Hemorrhage" demonstrated a weaker trend. CONCLUSIONS: The methodology can assist researchers, funders, and publishers by documenting the evolution and specialization of topics. The findings illustrate the significance of animal models, the expansion of rehabilitation research, and the centrality of reperfusion therapy. Limitations include a five-journal cap and a reliance on high-quality metadata.


Subject(s)
Bibliometrics , Data Mining , Natural Language Processing , Periodicals as Topic , Stroke , Humans , Stroke/diagnosis , Stroke/therapy , Periodicals as Topic/trends , Data Mining/trends , Biomedical Research/trends , Animals , Stroke Rehabilitation/trends
2.
Med Ref Serv Q ; 40(3): 329-336, 2021.
Article in English | MEDLINE | ID: mdl-34495798

ABSTRACT

The explosive growth of digital information in recent years has amplified the information overload experienced by today's health-care professionals. In particular, the wide variety of unstructured text makes it difficult for researchers to find meaningful data without spending a considerable amount of time reading. Text mining can be used to facilitate better discoverability and analysis, and aid researchers in identifying critical trends and connections. This column will introduce key text-mining terms, recent use cases of biomedical text mining, and current applications for this technology in medical libraries.


Subject(s)
Biomedical Research/trends , COVID-19 , Data Collection/trends , Data Mining/trends , Research Report/trends , Biomedical Research/statistics & numerical data , Data Collection/statistics & numerical data , Data Mining/statistics & numerical data , Forecasting , Humans
3.
Mil Med Res ; 8(1): 44, 2021 08 11.
Article in English | MEDLINE | ID: mdl-34380547

ABSTRACT

Many high quality studies have emerged from public databases, such as Surveillance, Epidemiology, and End Results (SEER), National Health and Nutrition Examination Survey (NHANES), The Cancer Genome Atlas (TCGA), and Medical Information Mart for Intensive Care (MIMIC); however, these data are often characterized by a high degree of dimensional heterogeneity, timeliness, scarcity, irregularity, and other characteristics, resulting in the value of these data not being fully utilized. Data-mining technology has been a frontier field in medical research, as it demonstrates excellent performance in evaluating patient risks and assisting clinical decision-making in building disease-prediction models. Therefore, data mining has unique advantages in clinical big-data research, especially in large-scale medical public databases. This article introduced the main medical public database and described the steps, tasks, and models of data mining in simple language. Additionally, we described data-mining methods along with their practical applications. The goal of this work was to aid clinical researchers in gaining a clear and intuitive understanding of the application of data-mining technology on clinical big-data in order to promote the production of research results that are beneficial to doctors and patients.


Subject(s)
Big Data , Data Mining/methods , Databases, Factual/trends , Data Mining/trends , Humans
5.
Pediatr Res ; 90(1): 212-215, 2021 07.
Article in English | MEDLINE | ID: mdl-33731817

ABSTRACT

BACKGROUND: Pediatric research is a diverse field that is constantly growing. Current machine learning advancements have prompted a technique termed text-mining. In text-mining, information is extracted from texts using algorithms. This technique can be applied to analyze trends and to investigate the dynamics in a research field. We aimed to use text-mining to provide a high-level analysis of pediatric literature over the past two decades. METHODS: We retrieved all available MEDLINE/PubMed annual data sets until December 31, 2018. Included studies were categorized into topics using text-mining. RESULTS: Two hundred and twenty-five journals were categorized as Pediatrics, Perinatology, and Child Health based on Scimago ranking for medicine journals. We included 201,141 pediatric papers published between 1999 and 2018. The most frequently cited publications were clinical guidelines and meta-analyses. We found that there is a shift in the trend of topics. Epidemiological studies are gaining more publications while other topics are relatively decreasing. CONCLUSIONS: The topics in pediatric literature have shifted in the past two decades, reflecting changing trends in the field. Text-mining enables analysis of trends in publications and can serve as a high-level academic tool. IMPACT: Text-mining enables analysis of trends in publications and can serve as a high-level academic tool. This is the first study using text-mining techniques to analyze pediatric publications. Our findings indicate that text-mining techniques enable better understanding of trends in publications and should be implemented when analyzing research.


Subject(s)
Data Mining/trends , Pediatrics , Algorithms , Humans , PubMed , Publications/trends
6.
PLoS One ; 16(3): e0248335, 2021.
Article in English | MEDLINE | ID: mdl-33684153

ABSTRACT

Over a decade ago, we introduced Anne O'Tate, a free, public web-based tool http://arrowsmith.psych.uic.edu/cgi-bin/arrowsmith_uic/AnneOTate.cgi to support user-driven summarization, drill-down and mining of search results from PubMed, the leading search engine for biomedical literature. A set of hotlinked buttons allows the user to sort and rank retrieved articles according to important words in titles and abstracts; topics; author names; affiliations; journal names; publication year; and clustered by topic. Any result can be further mined by choosing any other button, and small search results can be expanded to include related articles. It has been deployed continuously, serving a wide range of biomedical users and needs, and over time has also served as a platform to support the creation of new tools that address additional needs. Here we describe the current, greatly expanded implementation of Anne O'Tate, which has added additional buttons to provide new functionalities: We now allow users to sort and rank search results by important phrases contained in titles and abstracts; the number of authors listed on the article; and pairs of topics that co-occur significantly more than chance. We also display articles according to NLM-indexed publication types, as well as according to 50 different publication types and study designs as predicted by a novel machine learning-based model. Furthermore, users can import search results into two new tools: e) Mine the Gap!, which identifies pairs of topics that are under-represented within set of the search results, and f) Citation Cloud, which for any given article, allows users to visualize the set of articles that cite it; that are cited by it; that are co-cited with it; and that are bibliographically coupled to it. We invite the scientific community to explore how Anne O'Tate can assist in analyzing biomedical literature, in a variety of use cases.


Subject(s)
Abstracting and Indexing , Data Mining/trends , PubMed/trends , Search Engine , Humans , Software
7.
Trends Parasitol ; 37(4): 267-272, 2021 04.
Article in English | MEDLINE | ID: mdl-33547010

ABSTRACT

Digital data (internet queries, page views, social media posts, images) are accumulating online at increasing rates. Tools for compiling these data and extracting their metadata are now readily available. We highlight the possibilities and limitations of internet data to reveal patterns in host-parasite interactions and encourage parasitologists to embrace iParasitology.


Subject(s)
Data Mining , Parasitology , Data Mining/trends , Host-Parasite Interactions , Internet , Parasitology/methods , Parasitology/trends
8.
PLoS One ; 15(12): e0242253, 2020.
Article in English | MEDLINE | ID: mdl-33259475

ABSTRACT

The aims are to explore the construction of the knowledge management model for engineering cost consulting enterprises, and to expand the application of data mining techniques and machine learning methods in constructing knowledge management model. Through a questionnaire survey, the construction of the knowledge management model of construction-related enterprises and engineering cost consulting enterprises is discussed. First, through the analysis and discussion of ontology-based data mining (OBDM) algorithm and association analysis (Apriori) algorithm, a data mining algorithm (ML-AR algorithm) on account of ontology-based multilayer association and machine learning is proposed. The performance of the various algorithms is compared and analyzed. Second, based on the knowledge management level, analysis and statistics are conducted on the levels of knowledge acquisition, sharing, storage, and innovation. Finally, according to the foregoing, the knowledge management model based on engineering cost consulting enterprises is built and analyzed. The results show that the reliability coefficient of this questionnaire is above 0.8, and the average extracted value is above 0.7, verifying excellent reliability and validity. The efficiency of the ML-AR algorithm at both the number of transactions and the support level is better than the other two algorithms, which is expected to be applied to the enterprise knowledge management model. There is a positive correlation between each level of knowledge management; among them, the positive correlation between knowledge acquisition and knowledge sharing is the strongest. The enterprise knowledge management model has a positive impact on promoting organizational innovation capability and industrial development. The research work provides a direction for the development of enterprise knowledge management and the improvement of innovation ability.


Subject(s)
Industrial Development/trends , Inventions/trends , Knowledge Management , Machine Learning/trends , Data Mining/trends , Efficiency , Humans , Organizational Innovation
9.
Br J Hosp Med (Lond) ; 81(9): 1-4, 2020 Sep 02.
Article in English | MEDLINE | ID: mdl-32990086

ABSTRACT

Predictive analytics refers to technology that uses patterns in large datasets to predict future events and inform decisions. This article considers the challenges of this technology and how these should be considered, before incorporating this technology into healthcare settings.


Subject(s)
Data Mining , Decision Support Systems, Clinical/standards , Delivery of Health Care , Probability , Public Health , Bias , Clinical Decision Rules , Data Mining/methods , Data Mining/trends , Data Science/methods , Data Science/trends , Decision Support Techniques , Delivery of Health Care/standards , Delivery of Health Care/trends , Humans , Inventions , Public Health/methods , Public Health/trends , Quality Improvement
10.
Eur J Pharmacol ; 888: 173466, 2020 Dec 05.
Article in English | MEDLINE | ID: mdl-32798507

ABSTRACT

Resveratrol is a polyphenolic antioxidant derived from plant products such as grapes. Previous studies explored the effects of resveratrol on pulmonary hypertension (PH). However, systematic research on the exact mechanism of action of resveratrol is still lacking; in particular, our knowledge on the molecule-gene interaction is limited. In this study, systematic pharmacology and bioinformatic approaches were employed to identify the potential targets of resveratrol for treating PH. Furthermore, core genes were identified by constructing a protein-protein interaction network and by conducting topology analyses. The results showed that the effect of resveratrol may be closely associated with targets such as AKT serine/threonine kinase 1 (AKT1), mitogen-activated protein kinase 3 (MAPK3), Sirtuin-1 (SIRT1) and proto-oncogene tyrosine-protein kinase Src (SRC), as well as biological processes such as cell proliferation, inflammatory response, and redox balance. The present study systematically elucidates the mechanisms by which resveratrol alleviates PH and provides a new perspective on drug research for this disease.


Subject(s)
Antioxidants/therapeutic use , Gene Regulatory Networks/genetics , Hypertension, Pulmonary/drug therapy , Hypertension, Pulmonary/genetics , Resveratrol/therapeutic use , Technology, Pharmaceutical/methods , Antioxidants/metabolism , Antioxidants/pharmacology , Data Mining/methods , Data Mining/trends , Gene Regulatory Networks/drug effects , Humans , Hypertension, Pulmonary/metabolism , Mitogen-Activated Protein Kinase 3/genetics , Mitogen-Activated Protein Kinase 3/metabolism , Molecular Docking Simulation/methods , Molecular Docking Simulation/trends , Proto-Oncogene Mas , Resveratrol/metabolism , Resveratrol/pharmacology , Sirtuin 1/genetics , Sirtuin 1/metabolism , Technology, Pharmaceutical/trends
11.
J Cardiovasc Pharmacol Ther ; 25(5): 379-390, 2020 09.
Article in English | MEDLINE | ID: mdl-32495652

ABSTRACT

Despite substantial advances in the study, treatment, and prevention of cardiovascular disease, numerous challenges relating to optimally screening, diagnosing, and managing patients remain. Simultaneous improvements in computing power, data storage, and data analytics have led to the development of new techniques to address these challenges. One powerful tool to this end is machine learning (ML), which aims to algorithmically identify and represent structure within data. Machine learning's ability to efficiently analyze large and highly complex data sets make it a desirable investigative approach in modern biomedical research. Despite this potential and enormous public and private sector investment, few prospective studies have demonstrated improved clinical outcomes from this technology. This is particularly true in cardiology, despite its emphasis on objective, data-driven results. This threatens to stifle ML's growth and use in mainstream medicine. We outline the current state of ML in cardiology and outline methods through which impactful and sustainable ML research can occur. Following these steps can ensure ML reaches its potential as a transformative technology in medicine.


Subject(s)
Cardiology/trends , Data Mining/trends , Machine Learning/trends , Deep Learning/trends , Diagnosis, Computer-Assisted/trends , Diffusion of Innovation , Forecasting , Humans , Therapy, Computer-Assisted/trends
12.
Biomed Pharmacother ; 129: 110445, 2020 Sep.
Article in English | MEDLINE | ID: mdl-32593132

ABSTRACT

Precision medicine is a new therapeutic concept and method emerging in recent years. The rapid development of precision medicine is driven by the development of omics related technology, biological information and big data science. Precision medicine is provided to implement precise and personalized treatment for diseases and specific patients. Precision medicine is commonly used in the diagnosis, treatment and prevention of various diseases. This review introduces the application of precision medicine in eight systematic diseases of the human body, and systematically presenting the current situation of precision medicine. At the same time, the shortcomings and limitations of precision medicine are pointed out. Finally, we prospect the development of precision medicine.


Subject(s)
Big Data , Computational Biology/trends , Data Mining/trends , Diagnosis, Computer-Assisted/trends , Precision Medicine/trends , Systems Integration , Therapy, Computer-Assisted/trends , Diffusion of Innovation , Genomics/trends , Humans , Metabolomics/trends
14.
Eur J Mass Spectrom (Chichester) ; 26(3): 165-174, 2020 Jun.
Article in English | MEDLINE | ID: mdl-32276547

ABSTRACT

Data normalization is a big challenge in quantitative metabolomics approaches, whether targeted or untargeted. Without proper normalization, the mass-spectrometry and spectroscopy data can provide erroneous, sub-optimal data, which can lead to misleading and confusing biological results and thereby result in failed application to human healthcare, clinical, and other research avenues. To address this issue, a number of statistical approaches and software tools have been proposed in the literature and implemented over the years, thereby providing a multitude of approaches to choose from - either sample-based or data-based normalization strategies. In recent years, new dedicated software tools for metabolomics data normalization have surfaced as well. In this account article, I summarize the existing approaches and the new discoveries and research findings in this area of metabolomics data normalization, and I introduce some recent tools that aid in data normalization.


Subject(s)
Data Analysis , Data Mining/standards , Metabolomics/standards , Animals , Data Mining/methods , Data Mining/trends , Humans , Mass Spectrometry/standards , Software
16.
Disaster Med Public Health Prep ; 14(3): 352-359, 2020 06.
Article in English | MEDLINE | ID: mdl-31610817

ABSTRACT

Every year, there are larger and more severe disasters and health organizations are struggling to respond with services to keep public health systems running. Making decisions with limited health information can negatively affect response activities and impact morbidity and mortality. An overarching challenge is getting the right health information to the right health service personnel at the right time. As responding agencies engage in social media (eg, Twitter, Facebook) to communicate with the public, new opportunities emerge to leverage this non-traditional information for improved situational awareness. Transforming these big data is dependent on computers to process and filter content for health information categories relevant to health responders. To enable a more health-focused approach to social media analysis during disasters, 2 major research challenges should be addressed: (1) advancing methodologies to extract relevant information for health services and creating dynamic knowledge bases that address both the global and US disaster contexts, and (2) expanding social media research for disaster informatics to focus on health response activities. There is a lack of attention on health-focused social media research beyond epidemiologic surveillance. Future research will require approaches that address challenges of domain-aware, including multilingual language understanding in artificial intelligence for disaster health information extraction. New research will need to focus on the primary goal of health providers, whose priority is to get the right health information to the right medical and public health service personnel at the right time.


Subject(s)
Civil Defense/methods , Data Mining/methods , Public Health/methods , Social Media/trends , Civil Defense/trends , Data Mining/trends , Humans , Public Health/trends , Social Media/statistics & numerical data
17.
Clin Pharmacol Ther ; 107(4): 886-902, 2020 04.
Article in English | MEDLINE | ID: mdl-31863452

ABSTRACT

Clinical translation of drug-drug interaction (DDI) studies is limited, and knowledge gaps across different types of DDI evidence make it difficult to consolidate and link them to clinical consequences. Consequently, we developed information retrieval (IR) models to retrieve DDI and drug-gene interaction (DGI) evidence from 25 million PubMed abstracts and distinguish DDI evidence into in vitro pharmacokinetic (PK), clinical PK, and clinical pharmacodynamic (PD) studies for US Food and Drug Administration (FDA) approved and withdrawn drugs. Additionally, information extraction models were developed to extract DDI-pairs and DGI-pairs from the IR-retrieved abstracts. An overlapping analysis identified 986 unique DDI-pairs between all 3 types of evidence. Another 2,157 and 13,012 DDI-pairs and 3,173 DGI-pairs were identified from known clinical PK/PD DDI, clinical PD DDI, and DGI evidence, respectively. By integrating DDI and DGI evidence, we discovered 119 and 18 new pharmacogenetic hypotheses associated with CYP3A and CYP2D6, respectively. Some of these DGI evidence can also aid us in understanding DDI mechanisms.


Subject(s)
Data Mining/methods , Drug Interactions/physiology , Knowledge Discovery/methods , Pharmacogenetics/methods , Translational Research, Biomedical/methods , United States Food and Drug Administration , Data Mining/trends , Humans , Pharmacogenetics/trends , Translational Research, Biomedical/trends , United States , United States Food and Drug Administration/trends
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