Original paper

Machine learning for mixture toxicity analysis based on high-throughput printing technology

Volume: 207, Pages: 120299 - 120299
Published: Jan 1, 2020
Abstract
Analysis on mixture toxicity (Mix-tox) of the multi-chemical space is constantly followed with interest for many researchers. Conventional toxicity tests with time-consuming and costly operations make researchers can only establish some toxicity prediction models aiming to a limited sampling dimension. The rapid development of machine learning (ML) algorithm will accelerate the exploration of many fields involving toxicity analysis. Rather than...
Paper Details
Title
Machine learning for mixture toxicity analysis based on high-throughput printing technology
Published Date
Jan 1, 2020
Journal
Volume
207
Pages
120299 - 120299
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