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1.
J Cheminform ; 15(1): 115, 2023 Nov 28.
Article in English | MEDLINE | ID: mdl-38017550

ABSTRACT

The discovery and utilization of natural products derived from endophytic microorganisms have garnered significant attention in pharmaceutical research. While remarkable progress has been made in this field each year, the absence of dedicated open-access databases for endophytic microorganism natural products research is evident. To address the increasing demand for mining and sharing of data resources related to endophytic microorganism natural products, this study introduces EMNPD, a comprehensive endophytic microorganism natural products database comprising manually curated data. Currently, EMNPD offers 6632 natural products from 1017 endophytic microorganisms, targeting 1286 entities (including 94 proteins, 282 cell lines, and 910 species) with 91 diverse bioactivities. It encompasses the physico-chemical properties of natural products, ADMET information, quantitative activity data with their potency, natural products contents with diverse fermentation conditions, systematic taxonomy, and links to various well-established databases. EMNPD aims to function as an open-access knowledge repository for the study of endophytic microorganisms and their natural products, thereby facilitating drug discovery research and exploration of bioactive substances. The database can be accessed at http://emnpd.idrblab.cn/ without the need for registration, enabling researchers to freely download the data. EMNPD is expected to become a valuable resource in the field of endophytic microorganism natural products and contribute to future drug development endeavors.

2.
Comput Biol Med ; 154: 106446, 2023 03.
Article in English | MEDLINE | ID: mdl-36680931

ABSTRACT

New drug discovery is inseparable from the discovery of drug targets, and the vast majority of the known targets are proteins. At the same time, proteins are essential structural and functional elements of living cells necessary for the maintenance of all forms of life. Therefore, protein functions have become the focus of many pharmacological and biological studies. Traditional experimental techniques are no longer adequate for rapidly growing annotation of protein sequences, and approaches to protein function prediction using computational methods have emerged and flourished. A significant trend has been to use machine learning to achieve this goal. In this review, approaches to protein function prediction based on the sequence, structure, protein-protein interaction (PPI) networks, and fusion of multi-information sources are discussed. The current status of research on protein function prediction using machine learning is considered, and existing challenges and prominent breakthroughs are discussed to provide ideas and methods for future studies.


Subject(s)
Machine Learning , Proteins , Proteins/chemistry , Protein Interaction Maps
3.
Comput Biol Med ; 152: 106440, 2023 01.
Article in English | MEDLINE | ID: mdl-36543002

ABSTRACT

The study of drug-target protein interaction is a key step in drug research. In recent years, machine learning techniques have become attractive for research, including drug research, due to their automated nature, predictive power, and expected efficiency. Protein representation is a key step in the study of drug-target protein interaction by machine learning, which plays a fundamental role in the ultimate accomplishment of accurate research. With the progress of machine learning, protein representation methods have gradually attracted attention and have consequently developed rapidly. Therefore, in this review, we systematically classify current protein representation methods, comprehensively review them, and discuss the latest advances of interest. According to the information extraction methods and information sources, these representation methods are generally divided into structure and sequence-based representation methods. Each primary class can be further divided into specific subcategories. As for the particular representation methods involve both traditional and the latest approaches. This review contains a comprehensive assessment of the various methods which researchers can use as a reference for their specific protein-related research requirements, including drug research.


Subject(s)
Machine Learning , Proteins , Information Storage and Retrieval
4.
Biomed Environ Sci ; 19(5): 405-8, 2006 Oct.
Article in English | MEDLINE | ID: mdl-17190196

ABSTRACT

OBJECTIVE: To predict the impact of MF radiation on human health. METHODS: The vertical distribution of field intensity was estimated by analogism on the basis of measured values from simulation measurement. RESULTS: A kind of analogism on the basis of geometric proportion decay pattern is put forward in the essay. It showed that with increasing of height the field intensity increased according to geometric proportion law. CONCLUSION: This geometric proportion prediction model can be used to estimate the impact of MF radiation on inhabited environment, and can act as a reference pattern in predicting the environmental impact level of MF radiation.


Subject(s)
Electromagnetic Phenomena , Environment , Models, Biological , Radiation
5.
Biomed Environ Sci ; 18(5): 345-8, 2005 Oct.
Article in English | MEDLINE | ID: mdl-16370319

ABSTRACT

OBJECTIVE: To establish the model of indoor air pollution forecast for decoration. METHODS: The model was based on the balance model for diffusing mass. RESULTS: The data between testing concentration and estimating concentration were compared. The maximal error was less than 30% and average error was 14.6%. CONCLUSION: The model can easily predict whether the pollution for decoration exceeds the standard and how long the room is decorated.


Subject(s)
Air Pollution, Indoor , Interior Design and Furnishings , Models, Theoretical , Forecasting , Time Factors , Ventilation
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