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1.
Behav Brain Res ; 463: 114885, 2024 Apr 12.
Artículo en Inglés | MEDLINE | ID: mdl-38296202

RESUMEN

The main cause of second-generation antipsychotic (SGA)-induced obesity is considered due to the antagonism of serotonin 2c receptors (5-HT2cR) and activation of ghrelin receptor type 1a (GHSR1a) signalling. It is reported that 5-HT2cR interacted with GHSR1a, however it is unknown whether one of the SGA olanzapine alters the 5-HT2cR/GHSR1a interaction, affecting orexigenic neuropeptide signalling in the hypothalamus. We found that olanzapine treatment increased average energy intake and body weight gain in mice; olanzapine treatment also increased orexigenic neuropeptide (NPY) and GHSR1a signaling molecules, pAMPK, UCP2, FOXO1 and pCREB levels in the hypothalamus. By using confocal fluorescence resonance energy transfer (FRET) technology, we found that 5-HT2cR interacted/dimerised with the GHSR1a in the hypothalamic neurons. As 5-HT2cR antagonist, both olanzapine and S242084 decreased the interaction between 5-HT2cR and GHSR1a and activated GHSR1a signaling. The 5-HT2cR agonist lorcaserin counteracted olanzapine-induced attenuation of interaction between 5-HT2cR and GHSR1a and inhibited activation of GHSR1a signalling and NPY production. These findings suggest that 5-HT2cR antagonistic effect of olanzapine in inhibition of the interaction of 5-HT2cR and GHSR1a, activation GHSR1a downstream signaling and increasing hypothalamic NPY, which may be the important neuronal molecular mechanism underlying olanzapine-induced obesity and target for prevention metabolic side effects of antipsychotic management in psychiatric disorders.


Asunto(s)
Antipsicóticos , Neuropéptidos , Animales , Ratones , Antipsicóticos/efectos adversos , Hipotálamo/metabolismo , Neuronas/metabolismo , Neuropéptidos/metabolismo , Obesidad/inducido químicamente , Obesidad/metabolismo , Olanzapina/efectos adversos
3.
Zhongguo Zhong Yao Za Zhi ; 47(13): 3658-3666, 2022 Jul.
Artículo en Chino | MEDLINE | ID: mdl-35850820

RESUMEN

This study aimed to investigate the research trend of traditional Chinese medicine(TCM) against premature ovarian fai-lure(POF) from 1989 to 2021 by bibliometrics and explore the research status, research hotspots, and advances in international co-operation, knowledge structure, and active topics.The research articles on POF published from database inception to December 28, 2021, were retrieved from Web of Science and China National Knowledge Infrastructure(CNKI) and visually analyzed for countries, journals, authors, institutions, and keywords by CiteSpace 5.8.R3.A total of 1 468 articles were included, including 217 in English and 1 251 in Chinese.Since 1989, there has been an overall upward trend in the number of articles, with China serving as the main contributor.The core authors of Chinese articles are from a cooperative team represented by FENG Yi-xuan, REN Yu-lan, LING Le-le, and TENG Xiu-xiang.BETTERLE C is the author with the highest number of published articles in this international research field.The articles are mainly published by TCM journals and universities, and Human Reproduction accounts for the highest proportion of publications in the international research(11 articles, 5.07%).In the retrieved research articles, the research contents mainly focus on the treatment methods, research methods, and mechanism of action of TCM in the treatment of POF, where "Zuogui Pills" "gene" "cell" "model" "expression", etc.are the current research hotspots. "Acupuncture" "data mining" "systematic review" "oxidative stress" "activation" may be the potential topics in the follow-up research development.Future development should focus on the scientific interpretation and analysis of the theory and practice of TCM by modern scientific and technological methods.The research on informatization, digitization, and knowledge of TCM theory and practice is pivotal to promoting the internationalization and modernization of TCM, which can help researchers explore new directions for future research and identify new perspectives for potential collaboration in the field.


Asunto(s)
Terapia por Acupuntura , Insuficiencia Ovárica Primaria , Bibliometría , China , Femenino , Humanos , Medicina Tradicional China , Insuficiencia Ovárica Primaria/tratamiento farmacológico , Publicaciones
4.
Cancer ; 128(11): 2138-2147, 2022 06 01.
Artículo en Inglés | MEDLINE | ID: mdl-35315510

RESUMEN

BACKGROUND: Patients with refractory central nervous system leukemia (CNSL) have a dismal prognosis and lack effective therapy. Case reports have shown that sorafenib is effective against brain metastases, including leukemia. METHODS: To explore the efficacy of sorafenib combined with conventional therapies for refractory CNSL, a phase 2 study was conducted. The primary end point was the complete remission rate (CRR) within 8 weeks of treatment. Secondary end points included the overall response rate (ORR), event-free survival (EFS), overall survival (OS), and adverse events (AEs). RESULTS: Twenty-six patients with refractory CNSL were enrolled; they included 17 with isolated CNSL, 7 with hematological relapse, and 2 with another extramedullary relapse. After 8 weeks of treatment, 21 patients achieved complete remission, 2 achieved partial remission, and 3 achieved no remission for a CRR of 80.8% (95% CI, 62.1%-91.5%) and an ORR of 88.5% (95% CI, 71.0%-96.0%). Twenty patients survived, and 6 died. The 2-year EFS and OS rates were 75.0% (95% CI, 54.5%-88.3%) and 76.9% (95% CI, 54.2%-90.4%), respectively. Six patients experienced grade 3 or 4 treatment-related AEs, including moderate chronic graft-vs-host disease (n = 3), grade 3 or 4 acute graft-vs-host disease (n = 2), and grade 3 skin rash (n = 1). No treatment-related deaths occurred during the therapy of refractory CNSL. CONCLUSIONS: Sorafenib combined with conventional therapies is effective and safe for refractory CNSL. LAY SUMMARY: Sorafenib combined with conventional therapies is effective and safe for refractory central nervous system leukemia.


Asunto(s)
Neoplasias del Sistema Nervioso Central , Enfermedad Injerto contra Huésped , Leucemia , Sistema Nervioso Central , Neoplasias del Sistema Nervioso Central/tratamiento farmacológico , Humanos , Recurrencia , Estudios Retrospectivos , Sorafenib
5.
Zhongguo Zhong Yao Za Zhi ; 46(20): 5233-5239, 2021 Oct.
Artículo en Chino | MEDLINE | ID: mdl-34738424

RESUMEN

Data mining is an important method to obtain the key information from a large amount of data, and it is widely applied in the research on the modernization of traditional Chinese medicine(TCM). The compatibility law of herbs is a key issue in the research of TCM prescriptions. This reflects the flexibility and effectiveness of TCM prescriptions, and it is also a crucial link to the development of TCM modernization. Therefore, it is the core purpose of the research on TCM prescriptions to find the compatibility law of herbs and clarify the scientific connotation. Data mining, as an effective method and an important approach, has formed a standardized system in the research of compatibility law of herbs, which can reveal the relationship between different Chinese herbs and summarize the internal rules in compatibility. Two hundred and twenty two effective papers were sorted out and categorized in this article. The results showed that data mining was mainly applied in finding the core Chinese herb pairs, summarizing the utility and attributes of TCM prescriptions, revealing the relationship between prescriptions, Chinese herbs and syndromes, finding the optimal dose of Chinese herbs, and producing the new prescriptions. The problems of data mining in research of herbs compatibility rules were summarized, and its development and trend in current researches were discussed in this article to provide useful references for the in-depth study of data mining in the compatibility law of Chinese herbs.


Asunto(s)
Medicamentos Herbarios Chinos , Medicina Tradicional China , Minería de Datos , Humanos , Prescripciones , Síndrome
6.
J Integr Med ; 19(5): 395-407, 2021 09.
Artículo en Inglés | MEDLINE | ID: mdl-34462241

RESUMEN

OBJECTIVE: By optimizing the extreme learning machine network with particle swarm optimization, we established a syndrome classification and prediction model for primary liver cancer (PLC), classified and predicted the syndrome diagnosis of medical record data for PLC and compared and analyzed the prediction results with different algorithms and the clinical diagnosis results. This paper provides modern technical support for clinical diagnosis and treatment, and improves the objectivity, accuracy and rigor of the classification of traditional Chinese medicine (TCM) syndromes. METHODS: From three top-level TCM hospitals in Nanchang, 10,602 electronic medical records from patients with PLC were collected, dating from January 2009 to May 2020. We removed the electronic medical records of 542 cases of syndromes and adopted the cross-validation method in the remaining 10,060 electronic medical records, which were randomly divided into a training set and a test set. Based on fuzzy mathematics theory, we quantified the syndrome-related factors of TCM symptoms and signs, and information from the TCM four diagnostic methods. Next, using an extreme learning machine network with particle swarm optimization, we constructed a neural network syndrome classification and prediction model that used "TCM symptoms + signs + tongue diagnosis information + pulse diagnosis information" as input, and PLC syndrome as output. This approach was used to mine the nonlinear relationship between clinical data in electronic medical records and different syndrome types. The accuracy rate of classification was used to compare this model to other machine learning classification models. RESULTS: The classification accuracy rate of the model developed here was 86.26%. The classification accuracy rates of models using support vector machine and Bayesian networks were 82.79% and 85.84%, respectively. The classification accuracy rates of the models for all syndromes in this paper were between 82.15% and 93.82%. CONCLUSION: Compared with the case of data processed using traditional binary inputs, the experiment shows that the medical record data processed by fuzzy mathematics was more accurate, and closer to clinical findings. In addition, the model developed here was more refined, more accurate, and quicker than other classification models. This model provides reliable diagnosis for clinical treatment of PLC and a method to study of the rules of syndrome differentiation and treatment in TCM.


Asunto(s)
Neoplasias Hepáticas , Redes Neurales de la Computación , Teorema de Bayes , Humanos , Neoplasias Hepáticas/diagnóstico , Aprendizaje Automático , Síndrome
7.
Artículo en Inglés | MEDLINE | ID: mdl-30911319

RESUMEN

AIMS: Using both data mining and network pharmacology methods, this paper aims to construct a molecule-target-disease network for medicines used for treating mastitis, mine out targets, and signaling pathways related to mastitis and explore the mechanism of Chinese materia medica (CMM) prescriptions in treating mastitis. METHODS: A total of 131 CMM prescriptions for treating mastitis were collected from clinical practice and related literatures. A database of prescriptions for treating mastitis (DPTM) was then constructed. Based on data mining method, Traditional Chinese Medicine Inheritance Support System (TCMISS) was employed to mine out high-frequency CMM and key CMM combinations in DPTM. Subsequently, TCM Systems Pharmacology Database and Analysis Platform (TCMSP) and Traditional Chinese Medicine Information Database (TCM-ID) were searched for the targets of ingredients of high-frequency CMM. Then, Bioinformatics Analysis Tool for Molecular Mechanism of TCM (BATMAN-TCM) was searched for diseases and signaling pathways corresponding to the targets of key CMM combinations. The obtained results were denoted as results 1. In addition, human disease database MalaCards was searched for targets and signaling pathways related to mastitis. The obtained results were denoted as results 2. Results 1 and 2 were compared to obtain targets and signaling pathways included in both results, namely, mastitis-related targets of TCMs and mastitis-related signaling pathways that CMM involves in. Then, the biological functions of these targets and signaling pathways were investigated, on which basis the mechanism of CMM prescriptions in treating mastitis was explored. RESULTS: A total of 12 key TCM combinations were identified. Taraxaci Herba, Glycyrrhizae Radix et Rhizoma, Paeoniae Radix Alba, semen citri reticulatae, etc. were CMM with the highest frequency of use for treating mastitis. The potential targets of these high-frequency CMM in treating mastitis were intercellular adhesion molecule 1 (ICAM-1), interleukin-6 (IL-6), lipopolysaccharide binding protein (LBP), and lactotransferrin. The potential signaling pathways that key CMM combinations may involve in during mastitis treatment were NF-κB signaling pathway, immune system, PI3K/Akt signaling pathway, and TNF signaling pathway. CONCLUSIONS: From a perspective of network pharmacology, molecule-target-disease analysis may serve as an entry point for the research of mechanism of CMM. On this basis, we studied the mechanism of CMM prescriptions in treating mastitis by data mining and comparison of results. Our work thus provides a new idea and method for studying the working mechanism of CMM prescriptions.

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