LIVIVO - The Search Portal for Life Sciences

zur deutschen Oberfläche wechseln
Advanced search

Search results

Result 1 - 10 of total 94

Search options

  1. Article ; Online: Data standards and standardization: The shortest plank of bucket for the COVID-19 containment.

    Gong, Mengchun / Jiao, Yuanshi / Gong, Yang / Liu, Li

    The Lancet regional health. Western Pacific

    2022  , Page(s) 100565

    Language English
    Publishing date 2022-08-11
    Publishing country England
    Document type Journal Article ; Review
    ISSN 2666-6065
    ISSN (online) 2666-6065
    DOI 10.1016/j.lanwpc.2022.100565
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  2. Article ; Online: The "Trinity" smart hospital construction policy promotes the development of hospitals and health management in China.

    Zhang, Guang-Wei / Gong, Mengchun / Li, Hui-Jun / Wang, Shuang / Gong, Da-Xin

    Frontiers in public health

    2023  Volume 11, Page(s) 1219407

    Abstract: Recently, in order to comprehensively promote the development of medical institutions and solve the nationwide problems in the healthcare fields, the government of China developed an innovative national policy of "Trinity" smart hospital construction, ... ...

    Abstract Recently, in order to comprehensively promote the development of medical institutions and solve the nationwide problems in the healthcare fields, the government of China developed an innovative national policy of "Trinity" smart hospital construction, which includes "smart medicine," "smart services," and "smart management". The prototype of the evaluation system has been established, and a large number of construction achievements have emerged in many hospitals. In this article, the summary of this field was performed to provide a reference for medical workers, managers of hospitals, and policymakers.
    MeSH term(s) Humans ; Delivery of Health Care ; Hospital Design and Construction ; China ; Policy ; Hospitals
    Language English
    Publishing date 2023-07-21
    Publishing country Switzerland
    Document type Journal Article ; Review ; Research Support, Non-U.S. Gov't
    ZDB-ID 2711781-9
    ISSN 2296-2565 ; 2296-2565
    ISSN (online) 2296-2565
    ISSN 2296-2565
    DOI 10.3389/fpubh.2023.1219407
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  3. Article ; Online: The “Trinity” smart hospital construction policy promotes the development of hospitals and health management in China

    Guang-Wei Zhang / Mengchun Gong / Hui-Jun Li / Shuang Wang / Da-Xin Gong

    Frontiers in Public Health, Vol

    2023  Volume 11

    Abstract: Recently, in order to comprehensively promote the development of medical institutions and solve the nationwide problems in the healthcare fields, the government of China developed an innovative national policy of “Trinity” smart hospital construction, ... ...

    Abstract Recently, in order to comprehensively promote the development of medical institutions and solve the nationwide problems in the healthcare fields, the government of China developed an innovative national policy of “Trinity” smart hospital construction, which includes “smart medicine,” “smart services,” and “smart management”. The prototype of the evaluation system has been established, and a large number of construction achievements have emerged in many hospitals. In this article, the summary of this field was performed to provide a reference for medical workers, managers of hospitals, and policymakers.
    Keywords Trinity ; smart hospital ; smart medicine ; smart services ; smart management ; Public aspects of medicine ; RA1-1270
    Language English
    Publishing date 2023-07-01T00:00:00Z
    Publisher Frontiers Media S.A.
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

    More links

    Kategorien

  4. Article ; Online: A bibliometric analysis of worldwide cancer research using machine learning methods.

    Lin, Lianghong / Liang, Likeng / Wang, Maojie / Huang, Runyue / Gong, Mengchun / Song, Guangjun / Hao, Tianyong

    Cancer innovation

    2023  Volume 2, Issue 3, Page(s) 219–232

    Abstract: With the progress and development of computer technology, applying machine learning methods to cancer research has become an important research field. To analyze the most recent research status and trends, main research topics, topic evolutions, research ...

    Abstract With the progress and development of computer technology, applying machine learning methods to cancer research has become an important research field. To analyze the most recent research status and trends, main research topics, topic evolutions, research collaborations, and potential directions of this research field, this study conducts a bibliometric analysis on 6206 research articles worldwide collected from PubMed between 2011 and 2021 concerning cancer research using machine learning methods. Python is used as a tool for bibliometric analysis, Gephi is used for social network analysis, and the Latent Dirichlet Allocation model is used for topic modeling. The trend analysis of articles not only reflects the innovative research at the intersection of machine learning and cancer but also demonstrates its vigorous development and increasing impacts. In terms of journals,
    Language English
    Publishing date 2023-04-11
    Publishing country England
    Document type Journal Article ; Review
    ISSN 2770-9183
    ISSN (online) 2770-9183
    DOI 10.1002/cai2.68
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  5. Article ; Online: Applications of digital health approaches for cardiometabolic diseases prevention and management in the Western Pacific region.

    Liang, Fengchao / Yang, Xueli / Peng, Wen / Zhen, Shihan / Cao, Wenzhe / Li, Qian / Xiao, Zhiyi / Gong, Mengchun / Wang, Youfa / Gu, Dongfeng

    The Lancet regional health. Western Pacific

    2023  Volume 43, Page(s) 100817

    Abstract: Cardiometabolic diseases (CMDs) are the major types of non-communicable diseases, contributing to huge disease burdens in the Western Pacific region (WPR). The use of digital health (dHealth) technologies, such as wearable gadgets, mobile apps, and ... ...

    Abstract Cardiometabolic diseases (CMDs) are the major types of non-communicable diseases, contributing to huge disease burdens in the Western Pacific region (WPR). The use of digital health (dHealth) technologies, such as wearable gadgets, mobile apps, and artificial intelligence (AI), facilitates interventions for CMDs prevention and treatment. Currently, most studies on dHealth and CMDs in WPR were conducted in a few high- and middle-income countries like Australia, China, Japan, the Republic of Korea, and New Zealand. Evidence indicated that dHealth services promoted early prevention by behavior interventions, and AI-based innovation brought automated diagnosis and clinical decision-support. dHealth brought facilitators for the doctor-patient interplay in the effectiveness, experience, and communication skills during healthcare services, with rapidly development during the pandemic of coronavirus disease 2019. In the future, the improvement of dHealth services in WPR needs to gain more policy support, enhance technology innovation and privacy protection, and perform cost-effectiveness research.
    Language English
    Publishing date 2023-12-01
    Publishing country England
    Document type Journal Article ; Review
    ISSN 2666-6065
    ISSN (online) 2666-6065
    DOI 10.1016/j.lanwpc.2023.100817
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  6. Article ; Online: Artificial intelligence in the risk prediction models of cardiovascular disease and development of an independent validation screening tool: a systematic review.

    Cai, Yue / Cai, Yu-Qing / Tang, Li-Ying / Wang, Yi-Han / Gong, Mengchun / Jing, Tian-Ci / Li, Hui-Jun / Li-Ling, Jesse / Hu, Wei / Yin, Zhihua / Gong, Da-Xin / Zhang, Guang-Wei

    BMC medicine

    2024  Volume 22, Issue 1, Page(s) 56

    Abstract: Background: A comprehensive overview of artificial intelligence (AI) for cardiovascular disease (CVD) prediction and a screening tool of AI models (AI-Ms) for independent external validation are lacking. This systematic review aims to identify, describe, ...

    Abstract Background: A comprehensive overview of artificial intelligence (AI) for cardiovascular disease (CVD) prediction and a screening tool of AI models (AI-Ms) for independent external validation are lacking. This systematic review aims to identify, describe, and appraise AI-Ms of CVD prediction in the general and special populations and develop a new independent validation score (IVS) for AI-Ms replicability evaluation.
    Methods: PubMed, Web of Science, Embase, and IEEE library were searched up to July 2021. Data extraction and analysis were performed for the populations, distribution, predictors, algorithms, etc. The risk of bias was evaluated with the prediction risk of bias assessment tool (PROBAST). Subsequently, we designed IVS for model replicability evaluation with five steps in five items, including transparency of algorithms, performance of models, feasibility of reproduction, risk of reproduction, and clinical implication, respectively. The review is registered in PROSPERO (No. CRD42021271789).
    Results: In 20,887 screened references, 79 articles (82.5% in 2017-2021) were included, which contained 114 datasets (67 in Europe and North America, but 0 in Africa). We identified 486 AI-Ms, of which the majority were in development (n = 380), but none of them had undergone independent external validation. A total of 66 idiographic algorithms were found; however, 36.4% were used only once and only 39.4% over three times. A large number of different predictors (range 5-52,000, median 21) and large-span sample size (range 80-3,660,000, median 4466) were observed. All models were at high risk of bias according to PROBAST, primarily due to the incorrect use of statistical methods. IVS analysis confirmed only 10 models as "recommended"; however, 281 and 187 were "not recommended" and "warning," respectively.
    Conclusion: AI has led the digital revolution in the field of CVD prediction, but is still in the early stage of development as the defects of research design, report, and evaluation systems. The IVS we developed may contribute to independent external validation and the development of this field.
    MeSH term(s) Humans ; Artificial Intelligence ; Cardiovascular Diseases/diagnosis ; Cardiovascular Diseases/epidemiology ; Algorithms ; Africa ; Europe
    Language English
    Publishing date 2024-02-05
    Publishing country England
    Document type Systematic Review ; Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 2131669-7
    ISSN 1741-7015 ; 1741-7015
    ISSN (online) 1741-7015
    ISSN 1741-7015
    DOI 10.1186/s12916-024-03273-7
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  7. Article: Innovation in Informatics to Improve Clinical Care and Drug Accessibility for Rare Diseases in China.

    Liu, Peng / Gong, Mengchun / Li, Jie / Baynam, Gareth / Zhu, Weiguo / Zhu, Yicheng / Chen, Limeng / Gu, Weihong / Zhang, Shuyang

    Frontiers in pharmacology

    2021  Volume 12, Page(s) 719415

    Abstract: Background: ...

    Abstract Background:
    Language English
    Publishing date 2021-10-15
    Publishing country Switzerland
    Document type Journal Article
    ZDB-ID 2587355-6
    ISSN 1663-9812
    ISSN 1663-9812
    DOI 10.3389/fphar.2021.719415
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  8. Article: State of the Art of Machine Learning-Enabled Clinical Decision Support in Intensive Care Units: Literature Review.

    Hong, Na / Liu, Chun / Gao, Jianwei / Han, Lin / Chang, Fengxiang / Gong, Mengchun / Su, Longxiang

    JMIR medical informatics

    2022  Volume 10, Issue 3, Page(s) e28781

    Abstract: Background: Modern clinical care in intensive care units is full of rich data, and machine learning has great potential to support clinical decision-making. The development of intelligent machine learning-based clinical decision support systems is ... ...

    Abstract Background: Modern clinical care in intensive care units is full of rich data, and machine learning has great potential to support clinical decision-making. The development of intelligent machine learning-based clinical decision support systems is facing great opportunities and challenges. Clinical decision support systems may directly help clinicians accurately diagnose, predict outcomes, identify risk events, or decide treatments at the point of care.
    Objective: We aimed to review the research and application of machine learning-enabled clinical decision support studies in intensive care units to help clinicians, researchers, developers, and policy makers better understand the advantages and limitations of machine learning-supported diagnosis, outcome prediction, risk event identification, and intensive care unit point-of-care recommendations.
    Methods: We searched papers published in the PubMed database between January 1980 and October 2020. We defined selection criteria to identify papers that focused on machine learning-enabled clinical decision support studies in intensive care units and reviewed the following aspects: research topics, study cohorts, machine learning models, analysis variables, and evaluation metrics.
    Results: A total of 643 papers were collected, and using our selection criteria, 97 studies were found. Studies were categorized into 4 topics-monitoring, detection, and diagnosis (13/97, 13.4%), early identification of clinical events (32/97, 33.0%), outcome prediction and prognosis assessment (46/97, 47.6%), and treatment decision (6/97, 6.2%). Of the 97 papers, 82 (84.5%) studies used data from adult patients, 9 (9.3%) studies used data from pediatric patients, and 6 (6.2%) studies used data from neonates. We found that 65 (67.0%) studies used data from a single center, and 32 (33.0%) studies used a multicenter data set; 88 (90.7%) studies used supervised learning, 3 (3.1%) studies used unsupervised learning, and 6 (6.2%) studies used reinforcement learning. Clinical variable categories, starting with the most frequently used, were demographic (n=74), laboratory values (n=59), vital signs (n=55), scores (n=48), ventilation parameters (n=43), comorbidities (n=27), medications (n=18), outcome (n=14), fluid balance (n=13), nonmedicine therapy (n=10), symptoms (n=7), and medical history (n=4). The most frequently adopted evaluation metrics for clinical data modeling studies included area under the receiver operating characteristic curve (n=61), sensitivity (n=51), specificity (n=41), accuracy (n=29), and positive predictive value (n=23).
    Conclusions: Early identification of clinical and outcome prediction and prognosis assessment contributed to approximately 80% of studies included in this review. Using new algorithms to solve intensive care unit clinical problems by developing reinforcement learning, active learning, and time-series analysis methods for clinical decision support will be greater development prospects in the future.
    Language English
    Publishing date 2022-03-03
    Publishing country Canada
    Document type Journal Article ; Review
    ZDB-ID 2798261-0
    ISSN 2291-9694
    ISSN 2291-9694
    DOI 10.2196/28781
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  9. Article ; Online: Artificial Intelligence-Based Pharmacovigilance in the Setting of Limited Resources.

    Liang, Likeng / Hu, Jifa / Sun, Gang / Hong, Na / Wu, Ge / He, Yuejun / Li, Yong / Hao, Tianyong / Liu, Li / Gong, Mengchun

    Drug safety

    2022  Volume 45, Issue 5, Page(s) 511–519

    Abstract: With the rapid development of artificial intelligence (AI) technologies, and the large amount of pharmacovigilance-related data stored in an electronic manner, data-driven automatic methods need to be urgently applied to all aspects of pharmacovigilance ... ...

    Abstract With the rapid development of artificial intelligence (AI) technologies, and the large amount of pharmacovigilance-related data stored in an electronic manner, data-driven automatic methods need to be urgently applied to all aspects of pharmacovigilance to assist healthcare professionals. However, the quantity and quality of data directly affect the performance of AI, and there are particular challenges to implementing AI in limited-resource settings. Analyzing challenges and solutions for AI-based pharmacovigilance in resource-limited settings can improve pharmacovigilance frameworks and capabilities in these settings. In this review, we summarize the challenges into four categories: establishing a database for an AI-based pharmacovigilance system, lack of human resources, weak AI technology and insufficient government support. This study also discusses possible solutions and future perspectives on AI-based pharmacovigilance in resource-limited settings.
    MeSH term(s) Artificial Intelligence ; Databases, Factual ; Health Personnel ; Humans ; Pharmacovigilance ; Technology
    Language English
    Publishing date 2022-05-17
    Publishing country New Zealand
    Document type Journal Article ; Review ; Research Support, Non-U.S. Gov't
    ZDB-ID 1018059-x
    ISSN 1179-1942 ; 0114-5916
    ISSN (online) 1179-1942
    ISSN 0114-5916
    DOI 10.1007/s40264-022-01170-7
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

  10. Article ; Online: Application of informatics in cancer research and clinical practice: Opportunities and challenges.

    Hong, Na / Sun, Gang / Zuo, Xiuran / Chen, Meng / Liu, Li / Wang, Jiani / Feng, Xiaobin / Shi, Wenzhao / Gong, Mengchun / Ma, Pengcheng

    Cancer innovation

    2022  Volume 1, Issue 1, Page(s) 80–91

    Abstract: Cancer informatics has significantly progressed in the big data era. We summarize the application of informatics approaches to the cancer domain from both the informatics perspective (e.g., data management and data science) and the clinical perspective ( ... ...

    Abstract Cancer informatics has significantly progressed in the big data era. We summarize the application of informatics approaches to the cancer domain from both the informatics perspective (e.g., data management and data science) and the clinical perspective (e.g., cancer screening, risk assessment, diagnosis, treatment, and prognosis). We discuss various informatics methods and tools that are widely applied in cancer research and practices, such as cancer databases, data standards, terminologies, high-throughput omics data mining, machine-learning algorithms, artificial intelligence imaging, and intelligent radiation. We also address the informatics challenges within the cancer field that pursue better treatment decisions and patient outcomes, and focus on how informatics can provide opportunities for cancer research and practices. Finally, we conclude that the interdisciplinary nature of cancer informatics and collaborations are major drivers for future research and applications in clinical practices. It is hoped that this review is instrumental for cancer researchers and clinicians with its informatics-specific insights.
    Language English
    Publishing date 2022-06-15
    Publishing country England
    Document type Journal Article ; Review
    ISSN 2770-9183
    ISSN (online) 2770-9183
    DOI 10.1002/cai2.9
    Database MEDical Literature Analysis and Retrieval System OnLINE

    More links

    Kategorien

To top