Xenobiotic chemicals and their metabolites are mainly excreted out of our bodies by the urinary tract through the urine. Chemical-induced urinary tract toxicity is one of the main reasons that cause failure during drug development, and it is a common adverse event for medications, natural supplements, and environmental chemicals. Despite its importance, there are only a few <i>in silico</i> models for assessing urinary tract toxicity for a large number of compounds with diverse chemical structures. Here, we developed a series of qualitative and quantitative structure–activity relationship (QSAR) models for predicting urinary tract toxicity. In our study, the recursive feature elimination method incorporated with random forests (RFE-RF) was ...
The failure to predict kidney toxicity of new chemical entities early in the development process bef...
Chemical toxicity assessment is important to public health since numerous chemicals are being used d...
By predicting ERα bioactivity and mining the potential relationship between Absorption, Distribution...
The assessment of major organ toxicities through in silico predictive models plays a crucial role in...
Animal testing alone cannot practically evaluate the health hazard posed by tens of thousands of env...
It is currently known that the high power of a drug does not fully determine its efficacy. Several p...
Toxicity prediction is very important to public health. Among its many applications, toxicity predic...
Toxicology studies are subject to several concerns, and they raise the importance of an early detect...
The increasing use of Machine Learning (ML) in the drug and food industry is undeniable and it is im...
This Document is Protected by copyright and was first published by Frontiers. All rights reserved. i...
YesTwo approaches for the prediction of which of two vehicles will result in lower toxicity for anti...
In recent times, machine learning has become increasingly prominent in predictive toxicology as it h...
We created earlier a large machine‐readable database of 10,000 chemicals and 800,000 associated stud...
Background: With a constant increase in the number of new chemicals synthesized every year, it becom...
The toxicological screening of the numerous chemicals that we are exposed to requires significant co...
The failure to predict kidney toxicity of new chemical entities early in the development process bef...
Chemical toxicity assessment is important to public health since numerous chemicals are being used d...
By predicting ERα bioactivity and mining the potential relationship between Absorption, Distribution...
The assessment of major organ toxicities through in silico predictive models plays a crucial role in...
Animal testing alone cannot practically evaluate the health hazard posed by tens of thousands of env...
It is currently known that the high power of a drug does not fully determine its efficacy. Several p...
Toxicity prediction is very important to public health. Among its many applications, toxicity predic...
Toxicology studies are subject to several concerns, and they raise the importance of an early detect...
The increasing use of Machine Learning (ML) in the drug and food industry is undeniable and it is im...
This Document is Protected by copyright and was first published by Frontiers. All rights reserved. i...
YesTwo approaches for the prediction of which of two vehicles will result in lower toxicity for anti...
In recent times, machine learning has become increasingly prominent in predictive toxicology as it h...
We created earlier a large machine‐readable database of 10,000 chemicals and 800,000 associated stud...
Background: With a constant increase in the number of new chemicals synthesized every year, it becom...
The toxicological screening of the numerous chemicals that we are exposed to requires significant co...
The failure to predict kidney toxicity of new chemical entities early in the development process bef...
Chemical toxicity assessment is important to public health since numerous chemicals are being used d...
By predicting ERα bioactivity and mining the potential relationship between Absorption, Distribution...