Robotics & Machine Learning Daily News2024,Issue(Feb.13) :109-109.DOI:10.1007/s00204-023-03666-2

Findings from Johns Hopkins University Provides New Data about Artificial Intelligence [Artificial Intelligence (Ai)-it’s the End of the Tox As We Know It (And I Feel Fine)]

Robotics & Machine Learning Daily News2024,Issue(Feb.13) :109-109.DOI:10.1007/s00204-023-03666-2

Findings from Johns Hopkins University Provides New Data about Artificial Intelligence [Artificial Intelligence (Ai)-it’s the End of the Tox As We Know It (And I Feel Fine)]

扫码查看

Abstract

Researchers detail new data in Artificial Intelligence. According to news reporting from Baltimore, Maryland, by NewsRx journalists, research stated, “The rapid progress of AI impacts diverse scientific disciplines, including toxicology, and has the potential to transform chemical safety evaluation. Toxicology has evolved from an empirical science focused on observing apical outcomes of chemical exposure, to a data-rich field ripe for AI integration.” Funders for this research include Directorate-General for Research and Innovation, European Union (EU), National Institutes of Health (NIH) - USA. The news correspondents obtained a quote from the research from Johns Hopkins University, “The volume, variety and velocity of toxicological data from legacy studies, literature, high-throughput assays, sensor technologies and omics approaches create opportunities but also complexities that AI can help address. In particular, machine learning is well suited to handle and integrate large, heterogeneous datasets that are both structured and unstructured-a key challenge in modern toxicology. AI methods like deep neural networks, large language models, and natural language processing have successfully predicted toxicity endpoints, analyzed high-throughput data, extracted facts from literature, and generated synthetic data. Beyond automating data capture, analysis, and prediction, AI techniques show promise for accelerating quantitative risk assessment by providing probabilistic outputs to capture uncertainties. AI also enables explanation methods to unravel mechanisms and increase trust in modeled predictions. However, issues like model interpretability, data biases, and transparency currently limit regulatory endorsement of AI. Multidisciplinary collaboration is needed to ensure development of interpretable, robust, and human-centered AI systems. Rather than just automating human tasks at scale, transformative AI can catalyze innovation in how evidence is gathered, data are generated, hypotheses are formed and tested, and tasks are performed to usher new paradigms in chemical safety assessment.”

Key words

Baltimore/Maryland/United States/North and Central America/Artificial Intelligence/Emerging Technologies/Machine Learning/Johns Hopkins University

引用本文复制引用

出版年

2024
Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
被引量1
参考文献量96
段落导航相关论文