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1.
Bioinformatics ; 39(9)2023 09 02.
Artículo en Inglés | MEDLINE | ID: mdl-37669154

RESUMEN

MOTIVATION: Computationally predicting major histocompatibility complex class I (MHC-I) peptide binding affinity is an important problem in immunological bioinformatics, which is also crucial for the identification of neoantigens for personalized therapeutic cancer vaccines. Recent cutting-edge deep learning-based methods for this problem cannot achieve satisfactory performance, especially for non-9-mer peptides. This is because such methods generate the input by simply concatenating the two given sequences: a peptide and (the pseudo sequence of) an MHC class I molecule, which cannot precisely capture the anchor positions of the MHC binding motif for the peptides with variable lengths. We thus developed an anchor position-aware and high-performance deep model, DeepMHCI, with a position-wise gated layer and a residual binding interaction convolution layer. This allows the model to control the information flow in peptides to be aware of anchor positions and model the interactions between peptides and the MHC pseudo (binding) sequence directly with multiple convolutional kernels. RESULTS: The performance of DeepMHCI has been thoroughly validated by extensive experiments on four benchmark datasets under various settings, such as 5-fold cross-validation, validation with the independent testing set, external HPV vaccine identification, and external CD8+ epitope identification. Experimental results with visualization of binding motifs demonstrate that DeepMHCI outperformed all competing methods, especially on non-9-mer peptides binding prediction. AVAILABILITY AND IMPLEMENTATION: DeepMHCI is publicly available at https://github.com/ZhuLab-Fudan/DeepMHCI.


Asunto(s)
Algoritmos , Benchmarking , Biología Computacional , Epítopos , Péptidos
2.
Bioinformatics ; 38(Suppl 1): i220-i228, 2022 06 24.
Artículo en Inglés | MEDLINE | ID: mdl-35758790

RESUMEN

MOTIVATION: Computationally predicting major histocompatibility complex (MHC)-peptide binding affinity is an important problem in immunological bioinformatics. Recent cutting-edge deep learning-based methods for this problem are unable to achieve satisfactory performance for MHC class II molecules. This is because such methods generate the input by simply concatenating the two given sequences: (the estimated binding core of) a peptide and (the pseudo sequence of) an MHC class II molecule, ignoring biological knowledge behind the interactions of the two molecules. We thus propose a binding core-aware deep learning-based model, DeepMHCII, with a binding interaction convolution layer, which allows to integrate all potential binding cores (in a given peptide) with the MHC pseudo (binding) sequence, through modeling the interaction with multiple convolutional kernels. RESULTS: Extensive empirical experiments with four large-scale datasets demonstrate that DeepMHCII significantly outperformed four state-of-the-art methods under numerous settings, such as 5-fold cross-validation, leave one molecule out, validation with independent testing sets and binding core prediction. All these results and visualization of the predicted binding cores indicate the effectiveness of our model, DeepMHCII, and the importance of properly modeling biological facts in deep learning for high predictive performance and efficient knowledge discovery. AVAILABILITY AND IMPLEMENTATION: DeepMHCII is publicly available at https://github.com/yourh/DeepMHCII. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Asunto(s)
Antígenos de Histocompatibilidad Clase II , Péptidos , Algoritmos , Antígenos de Histocompatibilidad Clase II/metabolismo , Péptidos/química , Unión Proteica , Transporte de Proteínas
3.
Nucleic Acids Res ; 49(W1): W469-W475, 2021 07 02.
Artículo en Inglés | MEDLINE | ID: mdl-34038555

RESUMEN

With the explosive growth of protein sequences, large-scale automated protein function prediction (AFP) is becoming challenging. A protein is usually associated with dozens of gene ontology (GO) terms. Therefore, AFP is regarded as a problem of large-scale multi-label classification. Under the learning to rank (LTR) framework, our previous NetGO tool integrated massive networks and multi-type information about protein sequences to achieve good performance by dealing with all possible GO terms (>44 000). In this work, we propose the updated version as NetGO 2.0, which further improves the performance of large-scale AFP. NetGO 2.0 also incorporates literature information by logistic regression and deep sequence information by recurrent neural network (RNN) into the framework. We generate datasets following the critical assessment of functional annotation (CAFA) protocol. Experiment results show that NetGO 2.0 outperformed NetGO significantly in biological process ontology (BPO) and cellular component ontology (CCO). In particular, NetGO 2.0 achieved a 12.6% improvement over NetGO in terms of area under precision-recall curve (AUPR) in BPO and around 2.6% in terms of $\mathbf {F_{max}}$ in CCO. These results demonstrate the benefits of incorporating text and deep sequence information for the functional annotation of BPO and CCO. The NetGO 2.0 web server is freely available at http://issubmission.sjtu.edu.cn/ng2/.


Asunto(s)
Proteínas/fisiología , Programas Informáticos , Factor de Unión a CCAAT/química , Factor de Unión a CCAAT/metabolismo , Proteínas de Caenorhabditis elegans/química , Proteínas de Caenorhabditis elegans/metabolismo , Secuenciación de Nucleótidos de Alto Rendimiento , Redes Neurales de la Computación , Dominios Proteicos , Proteínas/clasificación , Proteínas/metabolismo , Análisis de Secuencia de Proteína
4.
Int J Mol Sci ; 24(24)2023 Dec 18.
Artículo en Inglés | MEDLINE | ID: mdl-38139432

RESUMEN

Maintenance of proteome integrity is essential for cell function and survival in changing cellular and environmental conditions. The endoplasmic reticulum (ER) is the major site for the synthesis of secretory and membrane proteins. However, the accumulation of unfolded or misfolded proteins can perturb ER protein homeostasis, leading to ER stress and compromising cellular function. Eukaryotic organisms have evolved sophisticated and conserved protein quality control systems to ensure protein folding fidelity via the unfolded protein response (UPR) and to eliminate potentially harmful proteins via ER-associated degradation (ERAD) and ER-phagy. In this review, we summarize recent advances in our understanding of the mechanisms of ER protein homeostasis in plants and discuss the crosstalk between different quality control systems. Finally, we will address unanswered questions in this field.


Asunto(s)
Proteostasis , Respuesta de Proteína Desplegada , Estrés del Retículo Endoplásmico/fisiología , Retículo Endoplásmico/metabolismo , Plantas/metabolismo , Proteínas de la Membrana/metabolismo
5.
Bioinformatics ; 37(Suppl_1): i262-i271, 2021 07 12.
Artículo en Inglés | MEDLINE | ID: mdl-34252926

RESUMEN

MOTIVATION: Automated function prediction (AFP) of proteins is a large-scale multi-label classification problem. Two limitations of most network-based methods for AFP are (i) a single model must be trained for each species and (ii) protein sequence information is totally ignored. These limitations cause weaker performance than sequence-based methods. Thus, the challenge is how to develop a powerful network-based method for AFP to overcome these limitations. RESULTS: We propose DeepGraphGO, an end-to-end, multispecies graph neural network-based method for AFP, which makes the most of both protein sequence and high-order protein network information. Our multispecies strategy allows one single model to be trained for all species, indicating a larger number of training samples than existing methods. Extensive experiments with a large-scale dataset show that DeepGraphGO outperforms a number of competing state-of-the-art methods significantly, including DeepGOPlus and three representative network-based methods: GeneMANIA, deepNF and clusDCA. We further confirm the effectiveness of our multispecies strategy and the advantage of DeepGraphGO over so-called difficult proteins. Finally, we integrate DeepGraphGO into the state-of-the-art ensemble method, NetGO, as a component and achieve a further performance improvement. AVAILABILITY AND IMPLEMENTATION: https://github.com/yourh/DeepGraphGO. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Asunto(s)
Redes Neurales de la Computación , Proteínas , Secuencia de Aminoácidos
6.
Bioinformatics ; 37(5): 684-692, 2021 05 05.
Artículo en Inglés | MEDLINE | ID: mdl-32976559

RESUMEN

MOTIVATION: With the rapid increase of biomedical articles, large-scale automatic Medical Subject Headings (MeSH) indexing has become increasingly important. FullMeSH, the only method for large-scale MeSH indexing with full text, suffers from three major drawbacks: FullMeSH (i) uses Learning To Rank, which is time-consuming, (ii) can capture some pre-defined sections only in full text and (iii) ignores the whole MEDLINE database. RESULTS: We propose a computationally lighter, full text and deep-learning-based MeSH indexing method, BERTMeSH, which is flexible for section organization in full text. BERTMeSH has two technologies: (i) the state-of-the-art pre-trained deep contextual representation, Bidirectional Encoder Representations from Transformers (BERT), which makes BERTMeSH capture deep semantics of full text. (ii) A transfer learning strategy for using both full text in PubMed Central (PMC) and title and abstract (only and no full text) in MEDLINE, to take advantages of both. In our experiments, BERTMeSH was pre-trained with 3 million MEDLINE citations and trained on ∼1.5 million full texts in PMC. BERTMeSH outperformed various cutting-edge baselines. For example, for 20 K test articles of PMC, BERTMeSH achieved a Micro F-measure of 69.2%, which was 6.3% higher than FullMeSH with the difference being statistically significant. Also prediction of 20 K test articles needed 5 min by BERTMeSH, while it took more than 10 h by FullMeSH, proving the computational efficiency of BERTMeSH. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Asunto(s)
Indización y Redacción de Resúmenes , Medical Subject Headings , MEDLINE , PubMed , Semántica
7.
Bioinformatics ; 36(5): 1533-1541, 2020 03 01.
Artículo en Inglés | MEDLINE | ID: mdl-31596475

RESUMEN

MOTIVATION: With the rapidly growing biomedical literature, automatically indexing biomedical articles by Medical Subject Heading (MeSH), namely MeSH indexing, has become increasingly important for facilitating hypothesis generation and knowledge discovery. Over the past years, many large-scale MeSH indexing approaches have been proposed, such as Medical Text Indexer, MeSHLabeler, DeepMeSH and MeSHProbeNet. However, the performance of these methods is hampered by using limited information, i.e. only the title and abstract of biomedical articles. RESULTS: We propose FullMeSH, a large-scale MeSH indexing method taking advantage of the recent increase in the availability of full text articles. Compared to DeepMeSH and other state-of-the-art methods, FullMeSH has three novelties: (i) Instead of using a full text as a whole, FullMeSH segments it into several sections with their normalized titles in order to distinguish their contributions to the overall performance. (ii) FullMeSH integrates the evidence from different sections in a 'learning to rank' framework by combining the sparse and deep semantic representations. (iii) FullMeSH trains an Attention-based Convolutional Neural Network for each section, which achieves better performance on infrequent MeSH headings. FullMeSH has been developed and empirically trained on the entire set of 1.4 million full-text articles in the PubMed Central Open Access subset. It achieved a Micro F-measure of 66.76% on a test set of 10 000 articles, which was 3.3% and 6.4% higher than DeepMeSH and MeSHLabeler, respectively. Furthermore, FullMeSH demonstrated an average improvement of 4.7% over DeepMeSH for indexing Check Tags, a set of most frequently indexed MeSH headings. AVAILABILITY AND IMPLEMENTATION: The software is available upon request. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Asunto(s)
Indización y Redacción de Resúmenes , Medical Subject Headings , MEDLINE , PubMed , Semántica , Programas Informáticos
8.
Nucleic Acids Res ; 47(W1): W379-W387, 2019 07 02.
Artículo en Inglés | MEDLINE | ID: mdl-31106361

RESUMEN

Automated function prediction (AFP) of proteins is of great significance in biology. AFP can be regarded as a problem of the large-scale multi-label classification where a protein can be associated with multiple gene ontology terms as its labels. Based on our GOLabeler-a state-of-the-art method for the third critical assessment of functional annotation (CAFA3), in this paper we propose NetGO, a web server that is able to further improve the performance of the large-scale AFP by incorporating massive protein-protein network information. Specifically, the advantages of NetGO are threefold in using network information: (i) NetGO relies on a powerful learning to rank framework from machine learning to effectively integrate both sequence and network information of proteins; (ii) NetGO uses the massive network information of all species (>2000) in STRING (other than only some specific species) and (iii) NetGO still can use network information to annotate a protein by homology transfer, even if it is not contained in STRING. Separating training and testing data with the same time-delayed settings of CAFA, we comprehensively examined the performance of NetGO. Experimental results have clearly demonstrated that NetGO significantly outperforms GOLabeler and other competing methods. The NetGO web server is freely available at http://issubmission.sjtu.edu.cn/netgo/.


Asunto(s)
Biología Computacional/métodos , Aprendizaje Automático , Anotación de Secuencia Molecular , Proteínas/química , Programas Informáticos , Secuencia de Aminoácidos , Animales , Benchmarking , Bases de Datos de Proteínas , Ontología de Genes , Humanos , Internet , Modelos Moleculares , Plantas/genética , Células Procariotas/metabolismo , Mapeo de Interacción de Proteínas , Proteínas/fisiología , Alineación de Secuencia , Análisis de Secuencia de Proteína , Homología de Secuencia de Aminoácido , Relación Estructura-Actividad
9.
Bioinformatics ; 34(14): 2465-2473, 2018 07 15.
Artículo en Inglés | MEDLINE | ID: mdl-29522145

RESUMEN

Motivation: Gene Ontology (GO) has been widely used to annotate functions of proteins and understand their biological roles. Currently only <1% of >70 million proteins in UniProtKB have experimental GO annotations, implying the strong necessity of automated function prediction (AFP) of proteins, where AFP is a hard multilabel classification problem due to one protein with a diverse number of GO terms. Most of these proteins have only sequences as input information, indicating the importance of sequence-based AFP (SAFP: sequences are the only input). Furthermore, homology-based SAFP tools are competitive in AFP competitions, while they do not necessarily work well for so-called difficult proteins, which have <60% sequence identity to proteins with annotations already. Thus, the vital and challenging problem now is how to develop a method for SAFP, particularly for difficult proteins. Methods: The key of this method is to extract not only homology information but also diverse, deep-rooted information/evidence from sequence inputs and integrate them into a predictor in a both effective and efficient manner. We propose GOLabeler, which integrates five component classifiers, trained from different features, including GO term frequency, sequence alignment, amino acid trigram, domains and motifs, and biophysical properties, etc., in the framework of learning to rank (LTR), a paradigm of machine learning, especially powerful for multilabel classification. Results: The empirical results obtained by examining GOLabeler extensively and thoroughly by using large-scale datasets revealed numerous favorable aspects of GOLabeler, including significant performance advantage over state-of-the-art AFP methods. Availability and implementation: http://datamining-iip.fudan.edu.cn/golabeler. Supplementary information: Supplementary data are available at Bioinformatics online.


Asunto(s)
Biología Computacional/métodos , Proteínas/metabolismo , Análisis de Secuencia de Proteína/métodos , Programas Informáticos , Secuencia de Aminoácidos , Animales , Eucariontes/metabolismo , Ontología de Genes , Humanos , Aprendizaje Automático , Anotación de Secuencia Molecular , Elementos Estructurales de las Proteínas , Proteínas/fisiología , Alineación de Secuencia
10.
Methods ; 145: 82-90, 2018 08 01.
Artículo en Inglés | MEDLINE | ID: mdl-29883746

RESUMEN

As of April 2018, UniProtKB has collected more than 115 million protein sequences. Less than 0.15% of these proteins, however, have been associated with experimental GO annotations. As such, the use of automatic protein function prediction (AFP) to reduce this huge gap becomes increasingly important. The previous studies conclude that sequence homology based methods are highly effective in AFP. In addition, mining motif, domain, and functional information from protein sequences has been found very helpful for AFP. Other than sequences, alternative information sources such as text, however, may be useful for AFP as well. Instead of using BOW (bag of words) representation in traditional text-based AFP, we propose a new method called DeepText2GO that relies on deep semantic text representation, together with different kinds of available protein information such as sequence homology, families, domains, and motifs, to improve large-scale AFP. Furthermore, DeepText2GO integrates text-based methods with sequence-based ones by means of a consensus approach. Extensive experiments on the benchmark dataset extracted from UniProt/SwissProt have demonstrated that DeepText2GO significantly outperformed both text-based and sequence-based methods, validating its superiority.


Asunto(s)
Minería de Datos/métodos , Ontología de Genes , Proteínas/metabolismo , Análisis de Secuencia de Proteína/métodos , Animales , Biología Computacional/métodos , Eucariontes/metabolismo , Humanos , Aprendizaje Automático , Proteínas/fisiología , Semántica
11.
Bioinformatics ; 32(12): i70-i79, 2016 06 15.
Artículo en Inglés | MEDLINE | ID: mdl-27307646

RESUMEN

MOTIVATION: Medical Subject Headings (MeSH) indexing, which is to assign a set of MeSH main headings to citations, is crucial for many important tasks in biomedical text mining and information retrieval. Large-scale MeSH indexing has two challenging aspects: the citation side and MeSH side. For the citation side, all existing methods, including Medical Text Indexer (MTI) by National Library of Medicine and the state-of-the-art method, MeSHLabeler, deal with text by bag-of-words, which cannot capture semantic and context-dependent information well. METHODS: We propose DeepMeSH that incorporates deep semantic information for large-scale MeSH indexing. It addresses the two challenges in both citation and MeSH sides. The citation side challenge is solved by a new deep semantic representation, D2V-TFIDF, which concatenates both sparse and dense semantic representations. The MeSH side challenge is solved by using the 'learning to rank' framework of MeSHLabeler, which integrates various types of evidence generated from the new semantic representation. RESULTS: DeepMeSH achieved a Micro F-measure of 0.6323, 2% higher than 0.6218 of MeSHLabeler and 12% higher than 0.5637 of MTI, for BioASQ3 challenge data with 6000 citations. AVAILABILITY AND IMPLEMENTATION: The software is available upon request. CONTACT: zhusf@fudan.edu.cn SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Asunto(s)
Medical Subject Headings , Semántica , Programas Informáticos , Indización y Redacción de Resúmenes , Minería de Datos , MEDLINE , National Library of Medicine (U.S.) , Estados Unidos
12.
Nat Commun ; 15(1): 585, 2024 Jan 17.
Artículo en Inglés | MEDLINE | ID: mdl-38233391

RESUMEN

Contig binning plays a crucial role in metagenomic data analysis by grouping contigs from the same or closely related genomes. However, existing binning methods face challenges in practical applications due to the diversity of data types and the difficulties in efficiently integrating heterogeneous information. Here, we introduce COMEBin, a binning method based on contrastive multi-view representation learning. COMEBin utilizes data augmentation to generate multiple fragments (views) of each contig and obtains high-quality embeddings of heterogeneous features (sequence coverage and k-mer distribution) through contrastive learning. Experimental results on multiple simulated and real datasets demonstrate that COMEBin outperforms state-of-the-art binning methods, particularly in recovering near-complete genomes from real environmental samples. COMEBin outperforms other binning methods remarkably when integrated into metagenomic analysis pipelines, including the recovery of potentially pathogenic antibiotic-resistant bacteria (PARB) and moderate or higher quality bins containing potential biosynthetic gene clusters (BGCs).


Asunto(s)
Metagenoma , Metagenómica , Metagenoma/genética , Metagenómica/métodos , Algoritmos , Análisis de Secuencia de ADN/métodos
13.
Nat Commun ; 15(1): 2775, 2024 Mar 30.
Artículo en Inglés | MEDLINE | ID: mdl-38555371

RESUMEN

Homologous protein search is one of the most commonly used methods for protein annotation and analysis. Compared to structure search, detecting distant evolutionary relationships from sequences alone remains challenging. Here we propose PLMSearch (Protein Language Model), a homologous protein search method with only sequences as input. PLMSearch uses deep representations from a pre-trained protein language model and trains the similarity prediction model with a large number of real structure similarity. This enables PLMSearch to capture the remote homology information concealed behind the sequences. Extensive experimental results show that PLMSearch can search millions of query-target protein pairs in seconds like MMseqs2 while increasing the sensitivity by more than threefold, and is comparable to state-of-the-art structure search methods. In particular, unlike traditional sequence search methods, PLMSearch can recall most remote homology pairs with dissimilar sequences but similar structures. PLMSearch is freely available at https://dmiip.sjtu.edu.cn/PLMSearch .


Asunto(s)
Evolución Biológica , Proteínas , Proteínas/química , Anotación de Secuencia Molecular , Algoritmos , Análisis de Secuencia de Proteína
14.
Genome Biol ; 24(1): 1, 2023 01 06.
Artículo en Inglés | MEDLINE | ID: mdl-36609515

RESUMEN

Binning aims to recover microbial genomes from metagenomic data. For complex metagenomic communities, the available binning methods are far from satisfactory, which usually do not fully use different types of features and important biological knowledge. We developed a novel ensemble binner, MetaBinner, which generates component results with multiple types of features by k-means and uses single-copy gene information for initialization. It then employs a two-stage ensemble strategy based on single-copy genes to integrate the component results efficiently and effectively. Extensive experimental results on three large-scale simulated datasets and one real-world dataset demonstrate that MetaBinner outperforms the state-of-the-art binners significantly.


Asunto(s)
Algoritmos , Microbiota , Microbiota/genética , Metagenoma , Genoma Microbiano , Metagenómica/métodos , Análisis de Secuencia de ADN
15.
Genomics Proteomics Bioinformatics ; 21(2): 349-358, 2023 04.
Artículo en Inglés | MEDLINE | ID: mdl-37075830

RESUMEN

As one of the state-of-the-art automated function prediction (AFP) methods, NetGO 2.0 integrates multi-source information to improve the performance. However, it mainly utilizes the proteins with experimentally supported functional annotations without leveraging valuable information from a vast number of unannotated proteins. Recently, protein language models have been proposed to learn informative representations [e.g., Evolutionary Scale Modeling (ESM)-1b embedding] from protein sequences based on self-supervision. Here, we represented each protein by ESM-1b and used logistic regression (LR) to train a new model, LR-ESM, for AFP. The experimental results showed that LR-ESM achieved comparable performance with the best-performing component of NetGO 2.0. Therefore, by incorporating LR-ESM into NetGO 2.0, we developed NetGO 3.0 to improve the performance of AFP extensively. NetGO 3.0 is freely accessible at https://dmiip.sjtu.edu.cn/ng3.0.


Asunto(s)
alfa-Fetoproteínas , Secuencia de Aminoácidos
16.
NAR Genom Bioinform ; 3(3): lqab066, 2021 Sep.
Artículo en Inglés | MEDLINE | ID: mdl-34377977

RESUMEN

Antibiotic resistance in bacteria limits the effect of corresponding antibiotics, and the classification of antibiotic resistance genes (ARGs) is important for the treatment of bacterial infections and for understanding the dynamics of microbial communities. Although several methods have been developed to classify ARGs, none of them work well when the ARGs diverge from those in the reference ARG databases. We develop a novel method, ARG-SHINE, for ARG classification. ARG-SHINE utilizes state-of-the-art learning to rank machine learning approach to ensemble three component methods with different features, including sequence homology, protein domain/family/motif and raw amino acid sequences for the deep convolutional neural network. Compared with other methods, ARG-SHINE achieves better performance on two benchmark datasets in terms of accuracy, macro-average f1-score and weighted-average f1-score. ARG-SHINE is used to classify newly discovered ARGs through functional screening and achieves high prediction accuracy. ARG-SHINE is freely available at https://github.com/ziyewang/ARG_SHINE.

17.
PDA J Pharm Sci Technol ; 62(1): 32-45, 2008.
Artículo en Inglés | MEDLINE | ID: mdl-18402366

RESUMEN

A novel formulation of puerarin was studied. Puerarin submicron emulsion was prepared by complex phase inversion-high-pressure homogenization technology. Characterization, distribution of drug in emulsion, short-term stability, and pharmacokinetics of emulsion were evaluated. The mean diameter and zeta potential of puerarin emulsion were 188.14 nm and -29.45 mv, respectively. The distribution range of puerarin emulsion was very narrow. The concentration of puerarin in the interfacial surface, oil droplet, water, and liposome-micelles were 7.821, 1.079, 0.637 and 0.423 mg/mL, respectively. Puerarin submicron emulsion was stable for a period of 3 months. The area under the whole blood concentration-time curve of rabbits after intravenous administration of puerarin emulsion was 1.718-fold higher than that of rabbits of intravenous administration of puerarin (P < 0.05). And compared with the puerarin group, the elimination rate of puerarin emulsion group was significantly decreased (P < 0.05), and the biological half-life and the mean retention time of puerarin emulsion were markedly increased (P < 0.05).


Asunto(s)
Isoflavonas/farmacocinética , Vasodilatadores/farmacocinética , Animales , Área Bajo la Curva , Química Farmacéutica , Sistemas de Liberación de Medicamentos , Emulsiones , Semivida , Isoflavonas/administración & dosificación , Isoflavonas/sangre , Masculino , Tasa de Depuración Metabólica , Tamaño de la Partícula , Conejos , Espectroscopía Infrarroja por Transformada de Fourier , Distribución Tisular , Vasodilatadores/administración & dosificación , Vasodilatadores/sangre
18.
J Chromatogr Sci ; 45(6): 350-3, 2007 Jul.
Artículo en Inglés | MEDLINE | ID: mdl-17626724

RESUMEN

A normal-phase high-performance liquid chromatographic method with diode array UV detection is developed for the simultaneous quantitation of four lignan compounds in Herpetospermum caudigerum. This analysis provides a good resolution and reproducibility. Chromatography is carried out with a mobile phase of N-hexane-dichlormethane-methanol (42.5:42.5:5, v/v) at a flow rate of 1.0 mL/min. UV detection is performed at 280 nm. The calibration curve for lignans concentration is linear over the range of 2.10 to 42.0 microg/mL, 15.26 to 305.2 microg/mL, 6.15 to 123.0 microg/mL, and 6.24 to 124.8 microg/mL, respectively. The limit of quantitation and detection for compounds 1, 2, 3, and 4 is 1.31, 2.74, 2.63, and 2.17 microg/mL and 0.28, 0.25, 0.27, and 0.31 microg/mL, respectively. The validation data show that the assay is sensitive, specific, accurate, and reproducible for the simultaneous quantitation of four compounds. This rapid method is therefore appropriate to quantitate these lignans in Herpetospermum caudigerum.


Asunto(s)
Cromatografía Líquida de Alta Presión/métodos , Cucurbitaceae/química , Lignanos/análisis , Calibración , Reproducibilidad de los Resultados , Sensibilidad y Especificidad
19.
Yao Xue Xue Bao ; 42(6): 649-55, 2007 Jun.
Artículo en Zh | MEDLINE | ID: mdl-17702404

RESUMEN

To decrease the hemolysis side effect of puerarin, the basic formula and preparation of puerarin submicron emulsion were optimized and the physicochemical properties were evaluated. Puerarin submicron emulsions were prepared by phase inversion-ultrasound combining with phospholipids complexes technology. The effects of preparative parameters, such as emulsification time, stirring velocity and ultrasound time, on mean diameter, span of dispersity, entrapment efficiency and overall desirability were investigated. The three dimensional response surface graphs were produced by second-order polynomial and liner equation, which predict the optimal experiment conditions. All response variables were found to be greatly dependent on three independent variables. Second-order polynomial equations were fitter than liner equations for this study. The optimal emulsification time, stirring velocity and ultrasound time was 15 min, 2 000 r x min(-1), 30 min, respectively. The mean diameter, span of dispersity, entrapment efficiency, drug content and zeta potential of emulsions prepared by the method were 228.23 nm, 0.628 4, 84. 32%, 9.98 mg x mL(-1), - 29.03 mV, respectively. Puerarin submicron emulsion was prepared by the optimized preparation method. The narrow particle diameter distribution, high envelopment efficacy and good stability were obtained. The physicochemical properties were suitable for the requirement of the intravenous emulsion.


Asunto(s)
Isoflavonas/administración & dosificación , Emulsiones , Isoflavonas/química , Tamaño de la Partícula
20.
Chem Pharm Bull (Tokyo) ; 54(11): 1592-4, 2006 Nov.
Artículo en Inglés | MEDLINE | ID: mdl-17077559

RESUMEN

From the ethanol extract of the seeds of Herpetospermum caudigerum wall, one new lignan compound 1, was isolated and characterized along with three known compounds 2, 3 and 4. The structure elucidation of the isolated new compound was performed on the basis of spectroscopic and chemical evidence. The structures of known compounds were determined by comparison of spectral data and physical data with those previously reported. The activity inhibiting hepatitis b virus was evaluated. Preliminary studies showed that compound 1 and 2 displayed promising inhibitory potential against hepatitis b virus.


Asunto(s)
Antivirales/farmacología , Cucurbitaceae/química , Virus de la Hepatitis B/efectos de los fármacos , Extractos Vegetales/farmacología , Plantas Medicinales/química , Antivirales/química , Antivirales/aislamiento & purificación , Línea Celular Tumoral , ADN/efectos de los fármacos , Relación Dosis-Respuesta a Droga , Humanos , Ligandos , Pruebas de Sensibilidad Microbiana , Conformación Molecular , Extractos Vegetales/química , Extractos Vegetales/aislamiento & purificación , Semillas/química , Especificidad de la Especie , Estereoisomerismo , Factores de Tiempo , Células Tumorales Cultivadas
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