10 research outputs found
DrugE-Rank: Predicting Drug-Target Interactions by Learning to Rank
Identifying drug-target interactions is crucial for the success of drug discovery. Approaches based on machine learning for this problem can be divided into two types: feature-based and similarity-based methods. By utilizing the âLearning to rankâ framework, we propose a new method, DrugE-Rank, to combine these two different types of methods for improving the prediction performance of new candidate drugs and targets. DrugE-Rank is available at http://datamining-iip.fudan.edu.cn/service/DrugE-Rank/
Ătude expĂ©rimentale des interactions entre deux particules sphĂ©riques, relĂąchĂ©es dans lâeau stagnante
Lâinteraction entre des particules submergĂ©es dans lâeau, un liquide que nous utilisons dans notre vie quotidienne, est un sujet de recherche intĂ©ressant, qui a Ă©tĂ© abordĂ© dans plusieurs domaines â gĂ©nie chimique, gĂ©nie industriel, gĂ©nie Ă©nergĂ©tique, etc. Dans ce mĂ©moire, nous sommes intĂ©ressĂ©s et nous nous concentrons sur les interactions entre deux particules sphĂ©riques identiques. Les objectifs sont constituĂ©s de deux parties : ce qui est spĂ©cifique pour ce projet, contribuer Ă lâĂ©laboration dâun outil de prĂ©diction des trajectoires de deux particules sphĂ©riques, rigides, identiques, initialement immobiles, qui sont submergĂ©es ; et Ă long terme, construire un modĂšle permettant de prĂ©dire la trajectoire dâune particule ou dâune bulle dans lâeau, au sein dâun nuage dâautres particules ou bulles.
Ce projet de recherche commence par la conception et la construction du tout nouveau dispositif expĂ©rimental, dans lequel une pompe Ă vide a Ă©tĂ© utilisĂ©e afin de complĂ©ter le mĂ©canisme de fixation et de libĂ©ration de deux particules. Les expĂ©riences sont faites en utilisant plusieurs types de particules (de diffĂ©rentes tailles, de 3.175 mm Ă 9.525 mm, et de diffĂ©rentes masses volumiques, de 670 kg/m3 Ă 1410 kg/m3, dont la plage est approximativement autour de celle de lâeau) et des rĂ©sultats similaires (les trajectoires, les Ă©volutions des vitesses, etc.) sont obtenus. Pour chaque paire de particules qui sont initialement cĂŽte Ă cĂŽte sans vitesse initiale, elles commencent par sâapprocher et puis sâĂ©loignent, en accĂ©lĂ©rant (en montant ou en descendant), mais en restant dans un mĂȘme plan vertical peu aprĂšs la libĂ©ration ; pour chaque paire de particules qui sont initialement devant derriĂšre sans vitesse initiale, elles sâapprochent lĂ©gĂšrement puis celle qui est derriĂšre accĂ©lĂšre dâune façon telle que la ligne reliant leurs centres devient au fur et Ă mesure horizontale (transversale).
Ă la fin, une discussion sur lâensemble des rĂ©sultats est proposĂ©e. Un bilan de tout ce que jâai pu faire et tout ce que je nâai pas fait, des amĂ©liorations et des travaux futurs sont discutĂ©s et prĂ©sentĂ©s, pour que ce projet puisse aller plus loin dans le futur, avant dâatteindre son objectif final.----------Abstract The interaction between particles submerged in water, a liquid that we use in our daily life, is an interesting research topic, which has been addressed in several fields - chemical engineering, industrial engineering, energy engineering, etc. In this thesis, we are interested and we focus on the one between two spherical particles, which are identical. The objectives consist of two parts: what is specific for this project, contributing to the development of a tool for predicting the trajectories of two spherical, rigid, identical, initially immobile particles which are submerged; and in the long term, build a model able to predict the trajectory of a particle or a bubble in water, within a cloud of other particles or bubbles.
This research project begins with the design and construction of the brand new experimental device, in which a vacuum pump was used to complete the mechanism of attachment and release of two particles. The experiments are done using several types of particles (of diËerent sizes, from 3.175 mm to 9.525 mm, and diËerent densities, from 670 kg/m3 to 1410 kg/m3, of which the range is around that of the water) and similar results (the trajectories, the evolutions of the speeds, etc.) are obtained. Basically, for each pair of particles that are initially side to side with no initial velocity, they start by approaching and then move away, while accelerating and going up or going down, but staying in the same vertical plane shortly after the liberation ; for each pair of particles that are initially in a vertical line without initial velocity, they approach slightly and then the one behind accelerates in such a way that the line connecting their centers gradually becomes horizontal (transverse).
At the end we discuss the experimental results. A review of all that I have been able to do and all that I have not done, improvements and future work are discussed and presented, so that this project can go further in the future, before reaching its final goal
Tenovin 3 induces apoptosis and ferroptosis in EGFR 19del non small cell lung cancer cells
Abstract Epidermal growth factor receptor (EGFR) exon 19 deletion is a major driver for the drug resistance of non-small cell lung cancer (NSCLC). Identification small inhibitor capable of selectively inhibiting EGFR-19del NSCLC is a desirable strategy to overcome drug resistance in NSCLC. This study aims to screen an inhibitor for EGFR exon 19 deletion cells and explore its underlying mechanism. High through-put screen was conducted to identify an inhibitor for EGFR-19del NSCLC cells. And tenovin-3 was identified as a selective inhibitor of PC9 cells, an EGFR-19del NSCLC cells. Tenovin-3 showed particular inhibition effect on PC9 cells proliferation through inducing apoptosis and ferroptosis. Mechanistically, tenovin-3 might induce the apoptosis and ferroptosis of PC9 cells through mitochondrial pathway, as indicated by the change of VDAC1 and cytochrome c (cyt c). And bioinformatics analyses showed that the expression levels of SLC7A11 and CPX4 were correlated with NSCLC patientâs survival. Our findings provide evidences for tenovin-3 to be developed into a novel candidate agent for NSCLC with EGFR exon 19 deletion. Our study also suggests that inducing ferroptosis may be a therapeutic strategy for NSCLC with EGFR exon 19 deletion
Chromosome-scale assembly and whole-genome sequencing of 266 giant panda roundworms provide insights into their evolution, adaptation and potential drug targets
Helminth diseases have long been a threat to the health of humans and animals. Roundworms are important organisms for studying parasitic mechanisms, disease transmission and prevention. The study of parasites in the giant panda is of importance for understanding how roundworms adapt to the host. Here, we report a highâquality chromosomeâscale genome of Baylisascaris schroederi with a genome size of 253.60 Mb and 19,262 predicted proteinâcoding genes. We found that gene families related to epidermal chitin synthesis and environmental information processes in the roundworm genome have expanded significantly. Furthermore, we demonstrated unique genes involved in essential amino acid metabolism in the B. schroederi genome, inferred to be essential for the adaptation to the giant pandaâspecific diet. In addition, under different deworming pressures, we found that four resistanceârelated genes (glcâ1, nrfâ6, breâ4 and cedâ7) were under strong positive selection in a captive population. Finally, 23 known drug targets and 47 potential drug target proteins were identified. The genome provides a unique reference for inferring the early evolution of roundworms and their adaptation to the host. Population genetic analysis and drug sensitivity prediction provide insights revealing the impact of deworming history on population genetic structure of importance for disease prevention
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Crowdsourced estimation of cognitive decline and resilience in Alzheimer's disease.
Identifying accurate biomarkers of cognitive decline is essential for advancing early diagnosis and prevention therapies in Alzheimer's disease. The Alzheimer's disease DREAM Challenge was designed as a computational crowdsourced project to benchmark the current state-of-the-art in predicting cognitive outcomes in Alzheimer's disease based on high dimensional, publicly available genetic and structural imaging data. This meta-analysis failed to identify a meaningful predictor developed from either data modality, suggesting that alternate approaches should be considered for prediction of cognitive performance
Crowdsourced estimation of cognitive decline and resilience in Alzheimer's disease
Identifying accurate biomarkers of cognitive decline is essential for advancing early diagnosis and prevention therapies in Alzheimer's disease. The Alzheimer's disease DREAM Challenge was designed as a computational crowdsourced project to benchmark the current state-of-the-art in predicting cognitive outcomes in Alzheimer's disease based on high dimensional, publicly available genetic and structural imaging data. This meta-analysis failed to identify a meaningful predictor developed from either data modality, suggesting that alternate approaches should be considered for prediction of cognitive performance