1.Alpha-synuclein Fibrils Inhibit Activation of the BDNF/ERK Signaling Loop in the mPFC to Induce Parkinson's Disease-like Alterations with Depression.
Zhuoran MA ; Yan XU ; Piaopiao LIAN ; Yi WU ; Ke LIU ; Zhaoyuan ZHANG ; Zhicheng TANG ; Xiaoman YANG ; Xuebing CAO
Neuroscience Bulletin 2025;41(6):951-969
Depression (Dep) is one of the most common concomitant symptoms of Parkinson's disease (PD), but there is a lack of detailed pathologic evidence for the occurrence of PD-Dep. Currently, the management of symptoms from both conditions using conventional pharmacological interventions remains a formidable task. In this study, we found impaired activation of extracellular signal-related kinase (ERK), reduced levels of transcription and translation, and decreased expression of brain-derived neurotrophic factor (BDNF) in the medial prefrontal cortex (mPFC) of PD-Dep rats. We demonstrated that the abnormal phosphorylation of α-synuclein (pS129) induced tropomyosin-related kinase receptor type B (TrkB) retention at the neuronal cell membrane, leading to BDNF/TrkB signaling dysfunction. We chose SEW2871 as an ameliorator to upregulate ERK phosphorylation. The results showed that PD-Dep rats exhibited improvement in behavioral manifestations of PD and depression. In addition, a reduction in pS129 was accompanied by a restoration of the function of the BDNF/ERK signaling loop in the mPFC of PD-Dep rats.
Animals
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Brain-Derived Neurotrophic Factor/metabolism*
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alpha-Synuclein/metabolism*
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Male
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Prefrontal Cortex/drug effects*
;
Rats, Sprague-Dawley
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Depression/metabolism*
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MAP Kinase Signaling System/drug effects*
;
Rats
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Parkinson Disease/metabolism*
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Receptor, trkB/metabolism*
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Phosphorylation
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Disease Models, Animal
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Signal Transduction
2.Intelligent assessment of pedicle screw canals with ultrasound based on radiomics analysis
Tianling TANG ; Yebo MA ; Huan YANG ; Changqing YE ; Youjin KONG ; Zhuochang YANG ; Chang ZHOU ; Jie SHAO ; Bingkun MENG ; Zhuoran WANG ; Jiangang CHEN ; Ziqiang CHEN
Academic Journal of Naval Medical University 2024;45(11):1362-1370
Objective To propose a classification method for ultrasound images of pedicle screw canals based on radiomics analysis,and to evaluate the integrity of the screw canal.Methods With thoracolumbar spine specimens from 4 fresh cadavers,50 pedicle screw canals were pre-established and ultrasound images of the canals were acquired.A total of 2 000 images(1 000 intact and 1 000 damaged canal samples)were selected.The dataset was randomly divided in a 4∶1 ratio using 5-fold cross-validation to form training and testing sets(consisting of 1 600 and 400 samples,respectively).Firstly,the optimal radius of the region of interest was identified using the Otsu's thresholding method,followed by feature extraction using pyradiomics.Principal component analysis and the least absolute shrinkage and selection operator algorithm were employed for dimensionality reduction and feature selection,respectively.Subsequently,3 machine learning models(support vector machine[SVM],logistic regression,and random forest)and 3 deep learning models(visual geometry group[VGG],ResNet,and Transformer)were used to classify the ultrasound images.The performance of each model was evaluated using accuracy.Results With a region of interest radius of 230 pixels,the SVM model achieved the highest classification accuracy of 96.25%.The accuracy of the VGG model was only 51.29%,while the accuracies of the logistic regression,random forest,ResNet,and Transformer models were 85.50%,80.75%,80.17%,and 75.18%,respectively.Conclusion For ultrasound images of pedicle screw canals,the machine learning model performs better than the deep learning model as a whole,and the SVM model has the best classification performance,which can be used to assist physicians in diagnosis.
3.Investigation and Analysis of Current Situation of Human Research Ethical Management in Beijing Medical and Health Institutions
Zhengjuan HU ; Shuang MU ; Meixia WANG ; Xueqin WANG ; Mingjie ZI ; Zhuoran ZHANG ; Yingwei SUN ; Xiaolong MA ; Fang LIU ; Yiting LI
Chinese Medical Ethics 2018;31(2):230-235
Through the questionnaire survey on the current situation of human research ethical management in Beijing medical and health institutions, this paper analyzed the problems existing in ethical management of Beijing medical and health institutions and put forward corresponding countermeasures and suggestions. The results showed that overall status of human research ethical management in Beijing medical and health institutions was satisfying. But the ethical management levels of different types of medical and health institutions were quite different, and medical and health institutions, health family planning administration departments and academic teams should all make corresponding contributions.
4.Thoughts on Application of Evaluation Index System on Human Research Ethics Management in Beijing Medical Institutions
Zhengjuan HU ; Yiting LI ; Fang LIU ; Xiaoxia PENG ; Yingwei SUN ; Xiaolong MA ; Mingjie ZI ; Zhuoran ZHANG ; Meixia WANG ; Shuang MU
Chinese Medical Ethics 2017;30(6):737-741
Objective:This thesis aims to construct the evaluation index system ethics management in Beijing medical institutions for application research.Method:The author applied the evaluation system which was agreed and adjusted by expert groups in four medical and health institutions.Result:After three rounds of expert groups have reached the agreement,the Evaluation Index System on Human Research Ethics Management in Beijing Medi-cal Institutions is established,which contains 6 first-class indicators,16 second-class indicators and 39 third-class indicators.The application on four medical and health institutions show that the evaluation index system is practical,operable and is of high degree of distinction.Conclusion:The evaluation index system is scientific,rea-sonable,practical and is of high degree of validity,credibility and distinction.

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