Cassia auriculata and its role in infection / inflammation: A close look on future drug discovery

Chemosphere ◽  
2022 ◽  
Vol 287 ◽  
pp. 132345
Author(s):  
Anitha Rajagopal ◽  
Subashini Rajakannu
2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Lishu Duan ◽  
Mufeng Hu ◽  
Joseph A. Tamm ◽  
Yelena Y. Grinberg ◽  
Fang Shen ◽  
...  

AbstractAlzheimer’s disease (AD) is a common neurodegenerative disease with poor prognosis. New options for drug discovery targets are needed. We developed an imaging based arrayed CRISPR method to interrogate the human genome for modulation of in vitro correlates of AD features, and used this to assess 1525 human genes related to tau aggregation, autophagy and mitochondria. This work revealed (I) a network of tau aggregation modulators including the NF-κB pathway and inflammatory signaling, (II) a correlation between mitochondrial morphology, respiratory function and transcriptomics, (III) machine learning predicted novel roles of genes and pathways in autophagic processes and (IV) individual gene function inferences and interactions among biological processes via multi-feature clustering. These studies provide a platform to interrogate underexplored aspects of AD biology and offer several specific hypotheses for future drug discovery efforts.


2019 ◽  
Vol 1 (2) ◽  
pp. FDD20
Author(s):  
Tuomas PJ Knowles

Professor Tuomas Knowles gained his PhD in biophysics from the University of Cambridge (UK) in 2007 and went on to work at Harvard University (MA, USA) before returning to Cambridge as a lecturer, gaining professorship in 2015. He is the founder and Chief Scientific Officer of Fluidic Analytics (Cambridge, UK), a biotech company developing next-generation protein analysis platforms that operate under native conditions in solution. Here he speaks to Future Drug Discovery Editor Jennifer Straiton about Fluidic Analytics' new platform Fluidity One-W, discussing how it works and what benefit it can bring to the field of drug discovery.


2004 ◽  
Vol 9 (10) ◽  
pp. 450-458 ◽  
Author(s):  
Martin Tulp ◽  
Lars Bohlin

2019 ◽  
Vol 20 (21) ◽  
pp. 5326 ◽  
Author(s):  
Guedes ◽  
Aniceto ◽  
Andrade ◽  
Salvador ◽  
Guedes

Drug discovery now faces a new challenge, where the availability of experimental data is no longer the limiting step, and instead, making sense of the data has gained a new level of importance, propelled by the extensive incorporation of cheminformatics and bioinformatics methodologies into the drug discovery and development pipeline. These enable, for example, the inference of structure-activity relationships that can be useful in the discovery of new drug candidates. One of the therapeutic applications that could benefit from this type of data mining is proteasome inhibition, given that multiple compounds have been designed and tested for the last 20 years, and this collection of data is yet to be subjected to such type of assessment. This study presents a retrospective overview of two decades of proteasome inhibitors development (680 compounds), in order to gather what could be learned from them and apply this knowledge to any future drug discovery on this subject. Our analysis focused on how different chemical descriptors coupled with statistical tools can be used to extract interesting patterns of activity. Multiple instances of the structure-activity relationship were observed in this dataset, either for isolated molecular descriptors (e.g., molecular refractivity and topological polar surface area) as well as scaffold similarity or chemical space overlap. Building a decision tree allowed the identification of two meaningful decision rules that describe the chemical parameters associated with high activity. Additionally, a characterization of the prevalence of key functional groups gives insight into global patterns followed in drug discovery projects, and highlights some systematically underexplored parts of the chemical space. The various chemical patterns identified provided useful insight that can be applied in future drug discovery projects, and give an overview of what has been done so far.


Molecules ◽  
2020 ◽  
Vol 25 (10) ◽  
pp. 2384
Author(s):  
Ali R. Elnaas ◽  
Darren Grice ◽  
Jianying Han ◽  
Yunjiang Feng ◽  
Angela Di Capua ◽  
...  

Elucidation of the mechanism of action of compounds with cellular bioactivity is important for progressing compounds into future drug development. In recent years, phenotype-based drug discovery has become the dominant approach to drug discovery over target-based drug discovery, which relies on the knowledge of a specific drug target of a disease. Still, when targeting an infectious disease via a high throughput phenotypic assay it is highly advantageous to identifying the compound’s cellular activity. A fraction derived from the plant Polyalthia sp. showed activity against Mycobacterium tuberculosis at 62.5 μge/μL. A known compound, altholactone, was identified from this fraction that showed activity towards M. tuberculosis at an minimum inhibitory concentration (MIC) of 64 μM. Retrospective analysis of a target-based screen against a TB proteome panel using native mass spectrometry established that the active fraction was bound to the mycobacterial protein Rv1466 with an estimated pseudo-Kd of 42.0 ± 6.1 µM. Our findings established Rv1466 as the potential molecular target of altholactone, which is responsible for the observed in vivo toxicity towards M. tuberculosis.


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