Ognerubov, Dmitrii Viktorovich
Publications
14
Citations
111
h-index
4
Publications found: 137
Q1

A Comprehensive Survey on NOMA-Based Backscatter Communication for IoT Applications
Mondal S., Bepari D., Chandra A., Singh K., Li C., Ding Z.
Q1
IEEE Internet of Things Journal
,
2025
,
citations by CoLab: 0

Q3

Outage analysis of a content-based user pairing in NOMA
Mondal S., Choudhary S.K., Biswas U., Misra A., Bepari D.
Q3
International Journal of Electronics Letters
,
2025
,
citations by CoLab: 0

Q4

QueryAssist: Multimodal Verbal Specifications to Structured Query Conversion Model Using Word Vector-Based Semantic Analysis
Boddu S.V., Butta R.A., Sannidhi G., Yerakaraju M.V.
QueryAssist is a model designed to enhance communication with databases by transforming Telugu natural language queries, both text and speech, into SQL queries. Built for government schools of the Telugu-speaking states in India, this model utilizes Word Vectors for semantic analysis, ensuring accurate query generation. QueryAssist acts as an intuitive interface to interact with SQL databases, by addressing challenges faced by schools in accessing and utilizing data. Its standout features are its ability to comprehend Telugu queries and its error handling and refinement system. Through extensive experiments, QueryAssist has proven its effectiveness in transforming natural language queries into SQL commands. The model’s architecture, results, and its potential to improve the quality of decision-making processes within government schools are presented in this paper.
Q1

Blind Carrier Frequency Offset Estimation Techniques for Next-Generation Multicarrier Communication Systems: Challenges, Comparative Analysis, and Future Prospects
Singh S., Kumar S., Majhi S., Satija U., Yuen C.
Q1
IEEE Communications Surveys and Tutorials
,
2025
,
citations by CoLab: 1
,

Open Access
Q3

Analysis, implementation and research opportunities of radio over fiber link over the dispersive medium for next generation networks
Tamrakar B., Gupta V., Kanungo A., Verma V.K., Shukla S., Agrawal N., Singh M.K., Sinha A.
Wireless connections with high capacity, security, and affordability are becoming increasingly crucial for the growth of interactive multimedia and broadband services. A promising approach to meet this need is the use of radio frequency (RF) and optical fiber technology to distribute millimeter-wave signals. This article provides a summary of current research on the radio over fiber (RoF) technology and future uses for it in next-generation networks. Firstly, we introduce the basics of RoF technology, including its various components and architectures. We provided a comparative analysis between External Modulation Based and Direct Modulation based RoF link. On the basis of simulation analysis, the measured Q-Factor is 303.064 and 5.50 while using External and Direct modulation schemes respectively, for 1 dB/km optical fiber impairments. We also discuss the benefits and challenges of employing RoF technology in wireless access networks, highlighting the key issues that require attention for RoF technology to fully realize its potential. Afterward, we provide an extensive review of recent research on RoF technology. We examine the performance and limitations of used RoF link and identify the key research challenges in the associated field. Finally, we discuss the future directions and opportunities for research in RoF technology, our article aims to provide easy to understand of RoF technology and its impact on the next- generation networks.
Q2

Revolutionizing learning − A journey into educational games with immersive and AI technologies
Rapaka A., Dharmadhikari S.C., Kasat K., Mohan C.R., Chouhan K., Gupta M.
Q2
Entertainment Computing
,
2025
,
citations by CoLab: 8

Q2

Regular sequence graph of Noetherian normal local domain
Bhatwadekar S.M., Majithia J.
Q2
Communications in Algebra
,
2024
,
citations by CoLab: 0

Q2

A Novel Approach to Detection of COVID-19 and Other Respiratory Diseases Using Autoencoder and LSTM
Malviya A., Dixit R., Shukla A., Kushwaha N.
Innumerable approaches of deep learning-based COVID-19 detection systems have been suggested by researchers in the recent past, due to their ability to process high-dimensional, complex data, leading to more accurate prediction of the COVID-19 infected patients. There is a visible dominance of Convolutional Neural Network (CNN) based models analysing chest images like X-rays and Computed Tomography (CT) scans for prediction, while the utilization of audio data for the same is less prevalent. Considering the respiratory system is one of the primary means by which the SARS-CoV-2 virus spreads, respiratory sounds are a potential biomarker for determining the presence of COVID-19. In this paper, we propose a novel approach for the detection of COVID-19 from amidst a dataset comprising of respiratory sound samples of healthy, COVID-19, and other lung diseases which are often misinterpreted as COVID-19. The approach employs an autoencoder for anomaly detection and a Long Short-Term Memory (LSTM) network for the detection of COVID-19 from amongst other lung diseases. The first stage of the model comprises an encoder-decoder-based autoencoder model with baseline reconstruction error, trained in an unsupervised environment, to reconstruct “healthy” audio signals. An LSTM based multi-class classifier is proposed for the second stage to classify the infected samples into the five classes: COVID-19, Bronchiolitis, COPD, Pneumonia and URTI. The experimental results demonstrate the efficacy of our proposed approach in detecting COVID-19 from a 5-class test set of audio samples of patients suffering from respiratory disease, with an accuracy of 98.7%, and an AUC of 1.
Q1

Optimized Compact MIMO Antenna Design: HMSIW-Based and Cavity-Backed for Enhanced Bandwidth
Pramodini B., Chaturvedi D., Darasi L., Rana G., Kumar A.
Q1
IEEE Access
,
2024
,
citations by CoLab: 2
,

Open Access
Q2

An Efficient Deep Learning Technique for Driver Drowsiness Detection
Ranjan A., Sharma S., Mate P., Verma A.
Deep learning techniques allow us to learn about a person’s behavior based on pictures and videos. Using digital cameras, the system can identify and classify a person’s behavior based on images and videos. This paper aims to present a method for detecting drivers’ drowsiness based on deep learning. To determine which transfer learning technique best suits this work, we used DenseNet169, MobileNetV2, ResNet50V2, VGG19, InceptionV3, and Xception on the dataset. The dataset used in this paper is the Driver Drowsiness Dataset (DDD), which is publicly available on Kaggle. This dataset consists of 41,790 RGB images, and each image has a size of 227 $$\times$$ 227, which has 2 classes: drowsy and not drowsy. The Drivers Drowsiness Dataset is based on the images extracted from the real-life Drowsiness dataset (RLDD). After comparing the results coming from all 6 models, the highest accuracy achieved was 100% by ResNet50V2, and various parameters are calculated like accuracy, F1 score, etc. Additionally, this work compared the results with existing methods to demonstrate its effectiveness.
Q1

Development of a QMSIW Antenna Sensor for Tumor Detection Utilizing a Hemispherical Multilayered Dielectric Breast-Shaped Phantom
Bhavani M., Chaturvedi D., Lanka T., Kumar A.
Q1
IEEE Sensors Journal
,
2024
,
citations by CoLab: 2

Q3

Synthesis and Structural Characterization of Schiff Base-Based Transition Metal Complexes
Kumar M., Mishra V., Singh R.
In this study, two complexes [Co(C7H9N3S2)2Cl2]Cl2, and [Ni(C7H9N3S2)2Cl2]Cl2 were synthesized from the ligands known as 2-Acetyl thiophene thiosemicarbazone (C7H9N3S2), respectively. C7H9N3S2 was characterized using various characterization techniques. The study of magnetic moment values (4.92 B.M. for [Co(C7H9N3S2)2Cl2]Cl2 and (2.93 for [Ni(C7H9N3S2)2Cl2]Cl2) shows that the complexes are paramagnetic with octahedral geometry. The value of electrical conductance (184 Ohm−1 cm2 mole−1 for [Co(C7H9N3S2)2Cl2]Cl2 and (173 Ohm−1 cm2 mole−1 for [Ni(C7H9N3S2)2Cl2]Cl2) suggested that ligand to metal ratio is 2:1 in its structure. In addition, the electronic spectrum analysis (8000–8650, 20,800–21,580, and 16,200–17,500 cm−1 suggested that the [Co(C7H9N3S2)2Cl2]Cl2 is spin-free octahedral complex. Similar way, the electronic spectrum values (9500–10,415, 14,200–14,940, and 23,500–24,000 cm−1 suggested that the [Ni(C7H9N3S2)2Cl2]Cl2 is in octahedral geometry. An infrared spectroscopy study showed that each equivalent ligand was attached to the metal with C=N, and C=S moiety using nitrogen and sulfur atoms. The vibration bands of νM-Cl were also observed at 325 for [Co(C7H9N3S2)2Cl2]Cl2 and 350 cm−1 [Ni(C7H9N3S2)2Cl2]Cl2. This observation confirms that Cl− ion is also coordinated with the metal ion. The article shows the synthesis and structure of new metal complexes [Co(C7H9N3S2)2Cl2]Cl2 and [Ni(C7H9N3S2)2Cl2]Cl2 based on 2-Acetyl thiophene thiosemicarbazone ligands.
Q1

An integrated GIS-MCDM framework for zoning, ranking and sensitivity analysis of municipal landfill sites
Sharma K., Tiwari R., Wadhwani A.K., Chaturvedi S.
Q1
Sustainable and Resilient Infrastructure
,
2024
,
citations by CoLab: 1

Q1

Blind CFOs Estimation by Capon Method for Multi-User MIMO-OFDMA Uplink System
Singh S., Kumar S., Majhi S., Satija U.
Q1
IEEE Signal Processing Letters
,
2024
,
citations by CoLab: 2

Q2

Automatic Cauliflower Disease Detection Using Fine-Tuning Transfer Learning Approach
Abdul Azeem N., Sharma S., Verma A.
Plants are a major food source worldwide, and to provide a healthy crop yield, they must be protected from diseases. However, checking each plant to detect and classify every type of disease can be time-consuming and would require enormous expert manual labor. These difficulties can be solved using deep learning techniques and algorithms. It can check diseased crops and even categorize the type of disease at a very early stage to prevent its further spread to other crops. This paper proposed a deep-learning approach to detect and classify cauliflower diseases. Several deep learning architectures were experimented on our selected dataset VegNet, a novel dataset containing 656 cauliflower images categorized into four classes: downy mildew, black rot, bacterial spot rot, and healthy. We analyzed the results conducted, and the best test accuracy reached was 99.25% with an F1-Score of 0.993 by NASNetMobile architecture, outperforming many other neural networks and displaying the model’s efficiency for plant disease detection.
Found
Total publications
14
Total citations
111
Citations per publication
7.93
Average publications per year
1.75
Average coauthors
13.29
Publications years
2017-2024 (8 years)
h-index
4
i10-index
2
m-index
0.5
o-index
16
g-index
10
w-index
1
Metrics description
h-index
A scientist has an h-index if h of his N publications are cited at least h times each, while the remaining (N - h) publications are cited no more than h times each.
i10-index
The number of the author's publications that received at least 10 links each.
m-index
The researcher's m-index is numerically equal to the ratio of his h-index to the number of years that have passed since the first publication.
o-index
The geometric mean of the h-index and the number of citations of the most cited article of the scientist.
g-index
For a given set of articles, sorted in descending order of the number of citations that these articles received, the g-index is the largest number such that the g most cited articles received (in total) at least g2 citations.
w-index
If w articles of a researcher have at least 10w citations each and other publications are less than 10(w+1) citations, then the researcher's w-index is equal to w.
Top-100
Fields of science
1
2
3
4
5
6
7
8
|
|
Cardiology and Cardiovascular Medicine
|
Cardiology and Cardiovascular Medicine, 8, 57.14%
Cardiology and Cardiovascular Medicine
8 publications, 57.14%
|
General Medicine
|
General Medicine, 4, 28.57%
General Medicine
4 publications, 28.57%
|
Clinical Psychology
|
Clinical Psychology, 2, 14.29%
Clinical Psychology
2 publications, 14.29%
|
Psychiatry and Mental health
|
Psychiatry and Mental health, 2, 14.29%
Psychiatry and Mental health
2 publications, 14.29%
|
Neurology (clinical)
|
Neurology (clinical), 2, 14.29%
Neurology (clinical)
2 publications, 14.29%
|
Surgery
|
Surgery, 1, 7.14%
Surgery
1 publication, 7.14%
|
Education
|
Education, 1, 7.14%
Education
1 publication, 7.14%
|
Radiology, Nuclear Medicine and imaging
|
Radiology, Nuclear Medicine and imaging, 1, 7.14%
Radiology, Nuclear Medicine and imaging
1 publication, 7.14%
|
1
2
3
4
5
6
7
8
|
Journals
1
2
|
|
Nevrologiya, Neiropsikhiatriya, Psikhosomatika
2 publications, 14.29%
|
|
Journal of radiology and nuclear medicine (Vestnik rentgenologii i radiologii)
2 publications, 14.29%
|
|
CJC Open
1 publication, 7.14%
|
|
Clinical Research in Cardiology
1 publication, 7.14%
|
|
Kardiologiya i Serdechno-Sosudistaya Khirurgiya
1 publication, 7.14%
|
|
Circulation: Cardiovascular Interventions
1 publication, 7.14%
|
|
Profilakticheskaya Meditsina
1 publication, 7.14%
|
|
Kardiologiya
1 publication, 7.14%
|
|
Cardiovascular Therapy and Prevention (Russian Federation)
1 publication, 7.14%
|
|
Russian Journal of Cardiology
1 publication, 7.14%
|
|
Journal of Interventional Cardiology
1 publication, 7.14%
|
|
Kardiologicheskii vestnik
1 publication, 7.14%
|
|
1
2
|
Citing journals
2
4
6
8
10
12
|
|
JACC: Cardiovascular Interventions
12 citations, 10.81%
|
|
Clinical Research in Cardiology
7 citations, 6.31%
|
|
Journal of Clinical Medicine
6 citations, 5.41%
|
|
JACC: Clinical Electrophysiology
4 citations, 3.6%
|
|
International Journal of Cardiology
3 citations, 2.7%
|
|
Echocardiography
3 citations, 2.7%
|
|
Nevrologiya, Neiropsikhiatriya, Psikhosomatika
3 citations, 2.7%
|
|
Journal of Personalized Medicine
2 citations, 1.8%
|
|
Journal of the American Heart Association
2 citations, 1.8%
|
|
Zhurnal Nevrologii i Psikhiatrii imeni S.S. Korsakova
2 citations, 1.8%
|
|
Journal of Cardiovascular Medicine
2 citations, 1.8%
|
|
PACE - Pacing and Clinical Electrophysiology
2 citations, 1.8%
|
|
Frontiers in Cardiovascular Medicine
2 citations, 1.8%
|
|
Journal of Vascular Access
2 citations, 1.8%
|
|
EuroIntervention
2 citations, 1.8%
|
|
Catheterization and Cardiovascular Interventions
2 citations, 1.8%
|
|
Future Cardiology
2 citations, 1.8%
|
|
Journal of Cardiovascular Development and Disease
2 citations, 1.8%
|
|
Meditsinskiy sovet = Medical Council
2 citations, 1.8%
|
|
JACC Advances
2 citations, 1.8%
|
|
The Siberian Journal of Clinical and Experimental Medicine
2 citations, 1.8%
|
|
Journal not defined
|
Journal not defined, 1, 0.9%
Journal not defined
1 citation, 0.9%
|
Frontiers in Neurology
1 citation, 0.9%
|
|
CJC Open
1 citation, 0.9%
|
|
Innovations: Technology and Techniques in Cardiothoracic and Vascular Surgery
1 citation, 0.9%
|
|
BMC Cardiovascular Disorders
1 citation, 0.9%
|
|
Nature Reviews Cardiology
1 citation, 0.9%
|
|
Nervenheilkunde
1 citation, 0.9%
|
|
Cardiovascular Engineering and Technology
1 citation, 0.9%
|
|
Journal of Cardiovascular Translational Research
1 citation, 0.9%
|
|
European Heart Journal
1 citation, 0.9%
|
|
Cardiovascular Intervention and Therapeutics
1 citation, 0.9%
|
|
Current Radiology Reports
1 citation, 0.9%
|
|
Journal of Geriatric Cardiology
1 citation, 0.9%
|
|
Journal of Cardiothoracic Surgery
1 citation, 0.9%
|
|
Circulation Journal
1 citation, 0.9%
|
|
Revista Espanola de Cardiologia
1 citation, 0.9%
|
|
Circulation: Cardiovascular Interventions
1 citation, 0.9%
|
|
Archives des Maladies du Coeur et des Vaisseaux - Pratique
1 citation, 0.9%
|
|
Revista española de cardiología (English ed.)
1 citation, 0.9%
|
|
Journal of Cardiology
1 citation, 0.9%
|
|
Profilakticheskaya Meditsina
1 citation, 0.9%
|
|
Thrombosis and Haemostasis
1 citation, 0.9%
|
|
Physics of Fluids
1 citation, 0.9%
|
|
European Heart Journal Cardiovascular Imaging
1 citation, 0.9%
|
|
Journal of Arrhythmia
1 citation, 0.9%
|
|
Cardiology in Review
1 citation, 0.9%
|
|
Russian Journal of Cardiology
1 citation, 0.9%
|
|
European Radiology
1 citation, 0.9%
|
|
Progress in Cardiovascular Diseases
1 citation, 0.9%
|
|
Europace
1 citation, 0.9%
|
|
Lecture Notes in Bioengineering
1 citation, 0.9%
|
|
Medicine (United States)
1 citation, 0.9%
|
|
Journal of Interventional Cardiology
1 citation, 0.9%
|
|
European Heart Journal - Case Reports
1 citation, 0.9%
|
|
Radiology
1 citation, 0.9%
|
|
Canadian Journal of Cardiology
1 citation, 0.9%
|
|
Heart International
1 citation, 0.9%
|
|
Coronary Artery Disease
1 citation, 0.9%
|
|
Journal of Interventional Cardiac Electrophysiology
1 citation, 0.9%
|
|
Cureus
1 citation, 0.9%
|
|
Bulletin of the Medical Institute REAVIZ (REHABILITATION DOCTOR AND HEALTH)
1 citation, 0.9%
|
|
Journal of the Society for Cardiovascular Angiography & Interventions
1 citation, 0.9%
|
|
CASE
1 citation, 0.9%
|
|
Aktuelle Kardiologie
1 citation, 0.9%
|
|
Journal of Cardiovascular Intervention
1 citation, 0.9%
|
|
Show all (36 more) | |
2
4
6
8
10
12
|
Publishers
1
2
3
|
|
Media Sphere Publishing House
3 publications, 21.43%
|
|
Silicea - Poligraf, LLC
2 publications, 14.29%
|
|
Luchevaya Diagnostika
2 publications, 14.29%
|
|
IMA Press, LLC
2 publications, 14.29%
|
|
Springer Nature
1 publication, 7.14%
|
|
Wiley
1 publication, 7.14%
|
|
Elsevier
1 publication, 7.14%
|
|
Ovid Technologies (Wolters Kluwer Health)
1 publication, 7.14%
|
|
APO Society of Specialists in Heart Failure
1 publication, 7.14%
|
|
1
2
3
|
Organizations from articles
2
4
6
8
10
|
|
National Medical Research Center of Cardiology
10 publications, 71.43%
|
|
Organization not defined
|
Organization not defined, 4, 28.57%
Organization not defined
4 publications, 28.57%
|
University Hospital Bonn
3 publications, 21.43%
|
|
Sechenov First Moscow State Medical University
2 publications, 14.29%
|
|
E.A. Vagner Perm State Medical University
2 publications, 14.29%
|
|
Pirogov Russian National Research Medical University
2 publications, 14.29%
|
|
University Hospital of Bern
2 publications, 14.29%
|
|
Copenhagen University Hospital
2 publications, 14.29%
|
|
Aarhus University Hospital
2 publications, 14.29%
|
|
Harvard University
2 publications, 14.29%
|
|
Brigham and Women's Hospital
2 publications, 14.29%
|
|
University Hospital Würzburg
2 publications, 14.29%
|
|
University Hospital Düsseldorf
2 publications, 14.29%
|
|
Hospital Clínic de Barcelona
2 publications, 14.29%
|
|
Research Center of Neurology
1 publication, 7.14%
|
|
Istituti di Ricovero e Cura a Carattere Scientifico
1 publication, 7.14%
|
|
University of Milan
1 publication, 7.14%
|
|
IRCCS Humanitas Research Hospital
1 publication, 7.14%
|
|
Humanitas University
1 publication, 7.14%
|
|
Centro Cardiologico Monzino
1 publication, 7.14%
|
|
Maria Cecilia Hospital
1 publication, 7.14%
|
|
Université Laval
1 publication, 7.14%
|
|
Cardiovascular Center Frankfurt
1 publication, 7.14%
|
|
2
4
6
8
10
|
Countries from articles
2
4
6
8
10
|
|
Russia
|
Russia, 10, 71.43%
Russia
10 publications, 71.43%
|
Country not defined
|
Country not defined, 7, 50%
Country not defined
7 publications, 50%
|
Germany
|
Germany, 3, 21.43%
Germany
3 publications, 21.43%
|
Italy
|
Italy, 3, 21.43%
Italy
3 publications, 21.43%
|
Canada
|
Canada, 3, 21.43%
Canada
3 publications, 21.43%
|
France
|
France, 2, 14.29%
France
2 publications, 14.29%
|
USA
|
USA, 2, 14.29%
USA
2 publications, 14.29%
|
Denmark
|
Denmark, 2, 14.29%
Denmark
2 publications, 14.29%
|
Spain
|
Spain, 2, 14.29%
Spain
2 publications, 14.29%
|
Switzerland
|
Switzerland, 2, 14.29%
Switzerland
2 publications, 14.29%
|
Czech Republic
|
Czech Republic, 1, 7.14%
Czech Republic
1 publication, 7.14%
|
2
4
6
8
10
|
Citing organizations
5
10
15
20
25
30
|
|
Organization not defined
|
Organization not defined, 29, 26.13%
Organization not defined
29 citations, 26.13%
|
Aarhus University Hospital
12 citations, 10.81%
|
|
Université Laval
9 citations, 8.11%
|
|
Hospital Clínic de Barcelona
7 citations, 6.31%
|
|
University Hospital of Bern
6 citations, 5.41%
|
|
University Hospital Bonn
6 citations, 5.41%
|
|
Mayo Clinic
6 citations, 5.41%
|
|
National Medical Research Center of Cardiology
5 citations, 4.5%
|
|
Copenhagen University Hospital
5 citations, 4.5%
|
|
Cardiovascular Center Frankfurt
5 citations, 4.5%
|
|
E.A. Vagner Perm State Medical University
4 citations, 3.6%
|
|
IRCCS Humanitas Research Hospital
4 citations, 3.6%
|
|
Harvard University
4 citations, 3.6%
|
|
German Centre for Cardiovascular Research
4 citations, 3.6%
|
|
People's Liberation Army General Hospital and Medical School (301 Hospital)
4 citations, 3.6%
|
|
Research Center of Neurology
3 citations, 2.7%
|
|
Aalborg University
3 citations, 2.7%
|
|
Sorbonne University
3 citations, 2.7%
|
|
Chang Gung University
3 citations, 2.7%
|
|
Humanitas University
3 citations, 2.7%
|
|
Vanderbilt University
3 citations, 2.7%
|
|
Charité - Universitätsmedizin Berlin
3 citations, 2.7%
|
|
University Hospital Würzburg
3 citations, 2.7%
|
|
University Hospital Düsseldorf
3 citations, 2.7%
|
|
Pirogov Russian National Research Medical University
2 citations, 1.8%
|
|
University of Bordeaux
2 citations, 1.8%
|
|
Sahlgrenska University Hospital
2 citations, 1.8%
|
|
University Hospital of Zürich
2 citations, 1.8%
|
|
University of Bern
2 citations, 1.8%
|
|
Imperial College London
2 citations, 1.8%
|
|
Second Military Medical University
2 citations, 1.8%
|
|
University of Liverpool
2 citations, 1.8%
|
|
Massachusetts Institute of Technology
2 citations, 1.8%
|
|
National Yang Ming Chiao Tung University
2 citations, 1.8%
|
|
Fondazione Toscana Gabriele Monasterio
2 citations, 1.8%
|
|
Tokyo Medical and Dental University
2 citations, 1.8%
|
|
Yonsei University
2 citations, 1.8%
|
|
Seoul National University Hospital
2 citations, 1.8%
|
|
Taipei Veterans General Hospital
2 citations, 1.8%
|
|
Berlin Institute of Health at Charité - Universitätsmedizin Berlin
2 citations, 1.8%
|
|
Icahn School of Medicine at Mount Sinai
2 citations, 1.8%
|
|
University Medical Center of the Johannes Gutenberg University Mainz
2 citations, 1.8%
|
|
University Hospital of Giessen and Marburg
2 citations, 1.8%
|
|
Amsterdam University Medical Center
2 citations, 1.8%
|
|
Kurashiki Central Hospital
2 citations, 1.8%
|
|
Hospital of the Holy Cross and Saint Paul
2 citations, 1.8%
|
|
Centro de Investigación en Red en Enfermedades Cardiovasculares
2 citations, 1.8%
|
|
Health Research Institute of the Balearic Islands
2 citations, 1.8%
|
|
Vilnius University
2 citations, 1.8%
|
|
Lomonosov Moscow State University
1 citation, 0.9%
|
|
National Research University Higher School of Economics
1 citation, 0.9%
|
|
Sechenov First Moscow State Medical University
1 citation, 0.9%
|
|
Peoples' Friendship University of Russia
1 citation, 0.9%
|
|
Russian University of Medicine
1 citation, 0.9%
|
|
Kuban State Medical University
1 citation, 0.9%
|
|
Sclifosovsky Research Institute for Emergency Medicine
1 citation, 0.9%
|
|
Tongji University
1 citation, 0.9%
|
|
Technical University of Munich
1 citation, 0.9%
|
|
Heidelberg University
1 citation, 0.9%
|
|
Wuhan University
1 citation, 0.9%
|
|
University of Zurich
1 citation, 0.9%
|
|
Chongqing Medical University
1 citation, 0.9%
|
|
Geneva University Hospitals
1 citation, 0.9%
|
|
National Sun Yat-sen University
1 citation, 0.9%
|
|
Università della Svizzera italiana
1 citation, 0.9%
|
|
University Hospital of Basel
1 citation, 0.9%
|
|
Istituti di Ricovero e Cura a Carattere Scientifico
1 citation, 0.9%
|
|
University of Milan
1 citation, 0.9%
|
|
Medical University of Graz
1 citation, 0.9%
|
|
Imperial College Healthcare NHS Trust
1 citation, 0.9%
|
|
Shanghai University of Traditional Chinese Medicine
1 citation, 0.9%
|
|
Liverpool John Moores University
1 citation, 0.9%
|
|
University of Manchester
1 citation, 0.9%
|
|
National Taiwan University
1 citation, 0.9%
|
|
National Taiwan University Hospital
1 citation, 0.9%
|
|
Drexel University
1 citation, 0.9%
|
|
University of Parma
1 citation, 0.9%
|
|
Sant'Anna School of Advanced Studies
1 citation, 0.9%
|
|
Maria Cecilia Hospital
1 citation, 0.9%
|
|
Kore University of Enna
1 citation, 0.9%
|
|
Alfred Health
1 citation, 0.9%
|
|
Columbia University
1 citation, 0.9%
|
|
Kyungpook National University
1 citation, 0.9%
|
|
Pusan National University
1 citation, 0.9%
|
|
University of Hong Kong
1 citation, 0.9%
|
|
Pusan National University Yangsan Hospital
1 citation, 0.9%
|
|
Kyungpook National University Hospital
1 citation, 0.9%
|
|
Case Western Reserve University
1 citation, 0.9%
|
|
University of Washington
1 citation, 0.9%
|
|
Brigham and Women's Hospital
1 citation, 0.9%
|
|
University of California, Los Angeles
1 citation, 0.9%
|
|
Rush University Medical Center
1 citation, 0.9%
|
|
Friedrich Schiller University Jena
1 citation, 0.9%
|
|
Keio University
1 citation, 0.9%
|
|
National and Kapodistrian University of Athens
1 citation, 0.9%
|
|
Aristotle University of Thessaloniki
1 citation, 0.9%
|
|
University of Thessaly
1 citation, 0.9%
|
|
General University Hospital of Patras
1 citation, 0.9%
|
|
University of Cologne
1 citation, 0.9%
|
|
University of Illinois Urbana-Champaign
1 citation, 0.9%
|
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Show all (70 more) | |
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30
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Citing countries
5
10
15
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30
35
|
|
Country not defined
|
Country not defined, 35, 31.53%
Country not defined
35 citations, 31.53%
|
USA
|
USA, 22, 19.82%
USA
22 citations, 19.82%
|
Germany
|
Germany, 17, 15.32%
Germany
17 citations, 15.32%
|
Denmark
|
Denmark, 16, 14.41%
Denmark
16 citations, 14.41%
|
Canada
|
Canada, 14, 12.61%
Canada
14 citations, 12.61%
|
Russia
|
Russia, 12, 10.81%
Russia
12 citations, 10.81%
|
Spain
|
Spain, 12, 10.81%
Spain
12 citations, 10.81%
|
Italy
|
Italy, 12, 10.81%
Italy
12 citations, 10.81%
|
China
|
China, 11, 9.91%
China
11 citations, 9.91%
|
France
|
France, 10, 9.01%
France
10 citations, 9.01%
|
Switzerland
|
Switzerland, 9, 8.11%
Switzerland
9 citations, 8.11%
|
United Kingdom
|
United Kingdom, 6, 5.41%
United Kingdom
6 citations, 5.41%
|
Japan
|
Japan, 5, 4.5%
Japan
5 citations, 4.5%
|
Belgium
|
Belgium, 4, 3.6%
Belgium
4 citations, 3.6%
|
Netherlands
|
Netherlands, 4, 3.6%
Netherlands
4 citations, 3.6%
|
Austria
|
Austria, 3, 2.7%
Austria
3 citations, 2.7%
|
Greece
|
Greece, 3, 2.7%
Greece
3 citations, 2.7%
|
Republic of Korea
|
Republic of Korea, 3, 2.7%
Republic of Korea
3 citations, 2.7%
|
Portugal
|
Portugal, 2, 1.8%
Portugal
2 citations, 1.8%
|
Lithuania
|
Lithuania, 2, 1.8%
Lithuania
2 citations, 1.8%
|
Singapore
|
Singapore, 2, 1.8%
Singapore
2 citations, 1.8%
|
Thailand
|
Thailand, 2, 1.8%
Thailand
2 citations, 1.8%
|
Sweden
|
Sweden, 2, 1.8%
Sweden
2 citations, 1.8%
|
Australia
|
Australia, 1, 0.9%
Australia
1 citation, 0.9%
|
India
|
India, 1, 0.9%
India
1 citation, 0.9%
|
Poland
|
Poland, 1, 0.9%
Poland
1 citation, 0.9%
|
Croatia
|
Croatia, 1, 0.9%
Croatia
1 citation, 0.9%
|
Czech Republic
|
Czech Republic, 1, 0.9%
Czech Republic
1 citation, 0.9%
|
Ecuador
|
Ecuador, 1, 0.9%
Ecuador
1 citation, 0.9%
|
5
10
15
20
25
30
35
|
- We do not take into account publications without a DOI.
- Statistics recalculated daily.