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  1. Article: Reducing the global cancer burden with gastrointestinal screening: China's 30 years practice.

    Yang, Lei / Feng, Li / Zhu, Yong / Wang, Ning / Lu, Xinpu / Gu, Fanghui / Zhang, Xiaotian / Ji, Jiafu

    Cancer biology & medicine

    2024  Volume 21, Issue 3

    MeSH term(s) Humans ; Early Detection of Cancer ; China/epidemiology ; Neoplasms/diagnosis ; Neoplasms/epidemiology
    Language English
    Publishing date 2024-03-21
    Publishing country China
    Document type Editorial
    ZDB-ID 2676322-9
    ISSN 2095-3941
    ISSN 2095-3941
    DOI 10.20892/j.issn.2095-3941.2023.0516
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: KDGene: knowledge graph completion for disease gene prediction using interactional tensor decomposition.

    Wang, Xinyan / Yang, Kuo / Jia, Ting / Gu, Fanghui / Wang, Chongyu / Xu, Kuan / Shu, Zixin / Xia, Jianan / Zhu, Qiang / Zhou, Xuezhong

    Briefings in bioinformatics

    2024  Volume 25, Issue 3

    Abstract: The accurate identification of disease-associated genes is crucial for understanding the molecular mechanisms underlying various diseases. Most current methods focus on constructing biological networks and utilizing machine learning, particularly deep ... ...

    Abstract The accurate identification of disease-associated genes is crucial for understanding the molecular mechanisms underlying various diseases. Most current methods focus on constructing biological networks and utilizing machine learning, particularly deep learning, to identify disease genes. However, these methods overlook complex relations among entities in biological knowledge graphs. Such information has been successfully applied in other areas of life science research, demonstrating their effectiveness. Knowledge graph embedding methods can learn the semantic information of different relations within the knowledge graphs. Nonetheless, the performance of existing representation learning techniques, when applied to domain-specific biological data, remains suboptimal. To solve these problems, we construct a biological knowledge graph centered on diseases and genes, and develop an end-to-end knowledge graph completion framework for disease gene prediction using interactional tensor decomposition named KDGene. KDGene incorporates an interaction module that bridges entity and relation embeddings within tensor decomposition, aiming to improve the representation of semantically similar concepts in specific domains and enhance the ability to accurately predict disease genes. Experimental results show that KDGene significantly outperforms state-of-the-art algorithms, whether existing disease gene prediction methods or knowledge graph embedding methods for general domains. Moreover, the comprehensive biological analysis of the predicted results further validates KDGene's capability to accurately identify new candidate genes. This work proposes a scalable knowledge graph completion framework to identify disease candidate genes, from which the results are promising to provide valuable references for further wet experiments. Data and source codes are available at https://github.com/2020MEAI/KDGene.
    MeSH term(s) Pattern Recognition, Automated ; Algorithms ; Biological Science Disciplines ; Machine Learning ; Semantics
    Language English
    Publishing date 2024-04-12
    Publishing country England
    Document type Journal Article
    ZDB-ID 2068142-2
    ISSN 1477-4054 ; 1467-5463
    ISSN (online) 1477-4054
    ISSN 1467-5463
    DOI 10.1093/bib/bbae161
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article: [Meta-analysis on the co-morbidity rate between tuberculosis and diabetes mellitus in China].

    Chen, Hong-guang / Liu, Min / Gu, Fang-hui

    Zhonghua liu xing bing xue za zhi = Zhonghua liuxingbingxue zazhi

    2013  Volume 34, Issue 11, Page(s) 1128–1133

    Abstract: Objective: To understand the co-morbidity rate between tuberculosis and diabetes mellitus in the mainland of China.: Methods: Based on the related literature regarding tuberculosis and diabetes mellitus published in China National Knowledge ... ...

    Abstract Objective: To understand the co-morbidity rate between tuberculosis and diabetes mellitus in the mainland of China.
    Methods: Based on the related literature regarding tuberculosis and diabetes mellitus published in China National Knowledge Infrastructure Databases (CNKI), Wangfang Databases and the Chinese Science and Technology Journal Database (VIP), PubMed and Medline in the last 13 years. Related information was extracted and the generic inverse variance model was applied to estimate the following parameters including rate of co-morbidity, differences on gender, age, results on sputum smear samples, sources and regions of the samples. Quality of the literature was evaluated through the STROBE statement and sensitivity analysis was performed to evaluate the impact of the quality.
    Results: Twenty two papers were included for Meta-analysis, with a total sample of 56 805. The combined prevalence rate of diabetes among patients with tuberculosis was 7.20% (95%CI:6.01%-8.39%). According to results from subgroup analysis, at a = 0.05 level, the comorbidity rates among subgroups as:age 40 and above (12.18%), smear positives (11.40%), samples from the hospitals (9.67%)and from the northern regions (9.13%)were higher than the subgroups as age below 40 (2.33%), with smear negative (4.00%), samples from the community level (6.10%)and from southern region (5.94%).
    Conclusion: The co-morbidity rate of tuberculosis and diabetes mellitus was high in mainland China, and were high among cases: at age 40 or above, with smear positive, from hospitals or from the northern region etc.
    MeSH term(s) China/epidemiology ; Diabetes Mellitus/epidemiology ; Humans ; Prevalence ; Tuberculosis, Pulmonary/complications ; Tuberculosis, Pulmonary/epidemiology
    Language Chinese
    Publishing date 2013-11
    Publishing country China
    Document type English Abstract ; Journal Article ; Meta-Analysis ; Research Support, Non-U.S. Gov't
    ZDB-ID 645026-x
    ISSN 0254-6450
    ISSN 0254-6450
    Database MEDical Literature Analysis and Retrieval System OnLINE

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