856 research outputs found

    Study on TCM Syndrome Identification Modes of Coronary Heart Disease Based on Data Mining

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    Coronary heart disease (CHD) is one of the most important types of heart disease because of its high incidence and high mortality. TCM has played an important role in the treatment of CHD. Syndrome differentiation based on information from traditional four diagnostic methods has met challenges and questions with the rapid development and wide application of system biology. In this paper, methods of complex network and CHAID decision tree were applied to identify the TCM core syndromes of patients with CHD, and to establish TCM syndrome identification modes of CHD based on biological parameters. At the same time, external validation modes were also constructed to confirm the identification modes

    Artificial Intelligence in Oral Health

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    This Special Issue is intended to lay the foundation of AI applications focusing on oral health, including general dentistry, periodontology, implantology, oral surgery, oral radiology, orthodontics, and prosthodontics, among others

    Network Pharmacology Approaches for Understanding Traditional Chinese Medicine

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    Traditional Chinese medicine (TCM) has obvious efficacy on disease treatments and is a valuable source for novel drug discovery. However, the underlying mechanism of the pharmacological effects of TCM remains unknown because TCM is a complex system with multiple herbs and ingredients coming together as a prescription. Therefore, it is urgent to apply computational tools to TCM to understand the underlying mechanism of TCM theories at the molecular level and use advanced network algorithms to explore potential effective ingredients and illustrate the principles of TCM in system biological aspects. In this thesis, we aim to understand the underlying mechanism of actions in complex TCM systems at the molecular level by bioinformatics and computational tools. In study Ⅰ, a machine learning framework was developed to predict the meridians of the herbs and ingredients. Finally, we achieved high accuracy of the meridians prediction for herbs and ingredients, suggesting an association between meridians and the molecular features of ingredients and herbs, especially the most important features for machine learning models. Secondly, we proposed a novel network approach to study the TCM formulae by quantifying the degree of interactions of pairwise herb pairs in study Ⅱ using five network distance methods, including the closest, shortest, central, kernel, as well as separation. We demonstrated that the distance of top herb pairs is shorter than that of random herb pairs, suggesting a strong interaction in the human interactome. In addition, center methods at the ingredient level outperformed the other methods. It hints to us that the central ingredients play an important role in the herbs. Thirdly, we explored the associations between herbs or ingredients and their important biological characteristics in study III, such as properties, meridians, structures, or targets via clusters from community analysis of the multipartite network. We found that herbal medicines among the same clusters tend to be more similar in the properties, meridians. Similarly, ingredients from the same cluster are more similar in structure and protein target. In summary, this thesis intends to build a bridge between the TCM system and modern medicinal systems using computational tools, including the machine learning model for meridian theory, network modelling for TCM formulae, as well as multipartite network analysis for herbal medicines and their ingredients. We demonstrated that applying novel computational approaches on the integrated high-throughput omics would provide insights for TCM and accelerate the novel drug discovery as well as repurposing from TCM.Perinteinen kiinalainen lÀÀketiede (TCM) on ilmeinen tehokkuus taudin hoidoissa ja on arvokas lĂ€hde uuden lÀÀkkeen löytĂ€miseen. TCM: n farmakologisten vaikutusten taustalla oleva mekanismi pysyy kuitenkin tuntemattomassa, koska TCM on monimutkainen jĂ€rjestelmĂ€, jossa on useita yrttejĂ€ ja ainesosia, jotka tulevat yhteen reseptilÀÀkkeeksi. Siksi on kiireellistĂ€ soveltaa Laskennallisia työkaluja TCM: lle ymmĂ€rtĂ€mÀÀn TCM-teorioiden taustalla oleva mekanismi molekyylitasolla ja kĂ€yttĂ€vĂ€t kehittyneitĂ€ verkkoalgoritmeja tutkimaan mahdollisia tehokkaita ainesosia ja havainnollistavat TCM: n periaatteita jĂ€rjestelmĂ€n biologisissa nĂ€kökohdissa. TĂ€ssĂ€ opinnĂ€ytetyössĂ€ pyrimme ymmĂ€rtĂ€mÀÀn monimutkaisten TCM-jĂ€rjestelmien toimintamekanismia molekyylitasolla bioinformaattilla ja laskennallisilla työkaluilla. Tutkimuksessa kehitettiin koneen oppimiskehystĂ€ yrttien ja ainesosien meridialaisista. Lopuksi saavutimme korkean tarkkuuden meridiaaneista yrtteistĂ€ ja ainesosista, mikĂ€ viittaa meridiaaneihin ja ainesosien ja yrtteihin liittyvien molekyylipiirin vĂ€lillĂ€, erityisesti koneen oppimismalleihin tĂ€rkeimmĂ€t ominaisuudet. Toiseksi ehdoimme uuden verkon lĂ€hestymistavan TCM-kaavojen tutkimiseksi kvantitoimisella vuorovaikutteisten yrttiparien vuorovaikutuksen tutkimuksessa ⅱ kĂ€yttĂ€mĂ€llĂ€ viisi verkkoetĂ€isyyttĂ€, mukaan lukien lĂ€hin, lyhyt, keskus, ydin sekĂ€ erottaminen. Osoitimme, ettĂ€ ylĂ€-yrttiparien etĂ€isyys on lyhyempi kuin satunnaisten yrttiparien, mikĂ€ viittaa voimakkaaseen vuorovaikutukseen ihmisellĂ€ vuorovaikutteisesti. LisĂ€ksi Center-menetelmĂ€t ainesosan tasolla ylittivĂ€t muut menetelmĂ€t. Se vihjeitĂ€ meille, ettĂ€ keskeiset ainesosat ovat tĂ€rkeĂ€ssĂ€ asemassa yrtteissĂ€. Kolmanneksi tutkimme yrttien tai ainesosien vĂ€lisiĂ€ yhdistyksiĂ€ ja niiden tĂ€rkeitĂ€ biologisia ominaisuuksia tutkimuksessa III, kuten ominaisuudet, meridiaanit, rakenteet tai tavoitteet klustereiden kautta moniparite-verkoston yhteisön analyysistĂ€. Löysimme, ettĂ€ kasviperĂ€iset lÀÀkkeet samoilla klusterien keskuudessa ovat yleensĂ€ samankaltaisia ominaisuuksissa, meridiaaneissa. Samoin saman klusterin ainesosat ovat samankaltaisempia rakenteissa ja proteiinin tavoitteessa. Yhteenvetona tĂ€mĂ€ opinnĂ€ytetyö aikoo rakentaa silta TCM-jĂ€rjestelmĂ€n ja nykyaikaisten lÀÀkevalmisteiden vĂ€lillĂ€ laskentatyökaluilla, mukaan lukien Meridian-teorian koneen oppimismalli, TCM-kaavojen verkkomallinnus sekĂ€ kasviperĂ€iset lÀÀkkeet ja niiden ainesosat Osoitimme, ettĂ€ uusien laskennallisten lĂ€hestymistapojen soveltaminen integroidulle korkean suorituskyvyttömiehille tarjosivat TCM: n nĂ€kemyksiĂ€ ja nopeuttaisivat romaanin huumeiden löytöÀ sekĂ€ toistuvat TCM: stĂ€

    ISMAC: An Intelligent System for Customized Clinical Case Management and Analysis

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    Clinical cases are primary and vital evidence for Traditional Chinese Medicine (TCM) clinical research. A great deal of medical knowledge is hidden in the clinical cases of the highly experienced TCM practitioner. With a deep Chinese culture background and years of clinical experience, an experienced TCM specialist usually has his or her unique clinical pattern and diagnosis idea. Preserving huge clinical cases of experienced TCM practitioners as well as exploring the inherent knowledge is then an important but arduous task. The novel system ISMAC (Intelligent System for Management and Analysis of Clinical Cases in TCM) is designed and implemented for customized management and intelligent analysis of TCM clinical data. Customized templates with standard and expert-standard symptoms, diseases, syndromes, and Chinese Medince Formula (CMF) are constructed in ISMAC, according to the clinical diagnosis and treatment characteristic of each TCM specialist. With these templates, clinical cases are archived in order to maintain their original characteristics. Varying data analysis and mining methods, grouped as Basic Analysis, Association Rule, Feature Reduction, Cluster, Pattern Classification, and Pattern Prediction, are implemented in the system. With a flexible dataset retrieval mechanism, ISMAC is a powerful and convenient system for clinical case analysis and clinical knowledge discovery

    Salivary Secretory Disorders, Inducing Drugs, and Clinical Management

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    Background: Salivary secretory disorders can be the result of a wide range of factors. Their prevalence and negative effects on the patient's quality of life oblige the clinician to confront the issue. Aim: To review the salivary secretory disorders, inducing drugs and their clinical management. Methods: In this article, a literature search of these dysfunctions was conducted with the assistance of a research librarian in the MEDLINE/PubMed Database. Results: Xerostomia, or dry mouth syndrome, can be caused by medication, systemic diseases such as Sjögren's Syndrome, glandular pathologies, and radiotherapy of the head and neck. Treatment of dry mouth is aimed at both minimizing its symptoms and preventing oral complications with the employment of sialogogues and topical acting substances. Sialorrhea and drooling, are mainly due to medication or neurological systemic disease. There are various therapeutic, pharmacologic, and surgical alternatives for its management. The pharmacology of most of the substances employed for the treatment of salivary disorders is well-known. Nevertheless, in some cases a significant improvement in salivary function has not been observed after their administration. Conclusion: At present, there are numerous frequently prescribed drugs whose unwanted effects include some kind of salivary disorder. In addition, the differing pathologic mechanisms, and the great variety of existing treatments hinder the clinical management of these patients. The authors have designed an algorithm to facilitate the decision making process when physicians, oral surgeons, or dentists face these salivary dysfunctions

    Non-invasive detection of anemia using lip mucosa images transfer learning convolutional neural networks

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    Anemia is defined as a drop in the number of erythrocytes or hemoglobin concentration below normal levels in healthy people. The increase in paleness of the skin might vary based on the color of the skin, although there is currently no quantifiable measurement. The pallor of the skin is best visible in locations where the cuticle is thin, such as the interior of the mouth, lips, or conjunctiva. This work focuses on anemia-related pallors and their relationship to blood count values and artificial intelligence. In this study, a deep learning approach using transfer learning and Convolutional Neural Networks (CNN) was implemented in which VGG16, Xception, MobileNet, and ResNet50 architectures, were pre-trained to predict anemia using lip mucous images. A total of 138 volunteers (100 women and 38 men) participated in the work to develop the dataset that contains two image classes: healthy and anemic. Image processing was first performed on a single frame with only the mouth area visible, data argumentation was preformed, and then CNN models were applied to classify the dataset lip images. Statistical metrics were employed to discriminate the performance of the models in terms of Accuracy, Precision, Recal, and F1 Score. Among the CNN algorithms used, Xception was found to categorize the lip images with 99.28% accuracy, providing the best results. The other CNN architectures had accuracies of 96.38% for MobileNet, 95.65% for ResNet %, and 92.39% for VGG16. Our findings show that anemia may be diagnosed using deep learning approaches from a single lip image. This data set will be enhanced in the future to allow for real-time classification

    In silico approaches in the study of traditional Chinese herbal medicine

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    Ph.DDOCTOR OF PHILOSOPH
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