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Integrative toxicogenomics: Advancing precision medicine and toxicology through artificial intelligence and OMICs technology

Biomedicine & Pharmacotherapy 2023 131 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 55 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Ajay Vikram Singh, Vaisali Chandrasekar, Vaisali Chandrasekar, Peter Laux Namuna Paudel, Namuna Paudel, Peter Laux Andreas Luch, Peter Laux Andreas Luch, Andreas Luch, Andreas Luch, Peter Laux Donato Gemmati, Veronica Tisato, Andreas Luch, Kirti S. Prabhu, Kirti S. Prabhu, Shahab Uddin, Sarada Prasad Dakua, Andreas Luch, Peter Laux Andreas Luch, Peter Laux

Summary

Researchers reviewed how artificial intelligence combined with genomics (the study of genes) and multi-omics data is advancing personalized medicine and toxicology, enabling faster, more accurate predictions of how individuals will respond to drugs or toxic exposures. These tools could eventually help assess risks from environmental contaminants like microplastics based on a person's unique genetic makeup.

More information about a person's genetic makeup, drug response, multi-omics response, and genomic response is now available leading to a gradual shift towards personalized treatment. Additionally, the promotion of non-animal testing has fueled the computational toxicogenomics as a pivotal part of the next-gen risk assessment paradigm. Artificial Intelligence (AI) has the potential to provid new ways analyzing the patient data and making predictions about treatment outcomes or toxicity. As personalized medicine and toxicogenomics involve huge data processing, AI can expedite this process by providing powerful data processing, analysis, and interpretation algorithms. AI can process and integrate a multitude of data including genome data, patient records, clinical data and identify patterns to derive predictive models anticipating clinical outcomes and assessing the risk of any personalized medicine approaches. In this article, we have studied the current trends and future perspectives in personalized medicine & toxicology, the role of toxicogenomics in connecting the two fields, and the impact of AI on personalized medicine & toxicology. In this work, we also study the key challenges and limitations in personalized medicine, toxicogenomics, and AI in order to fully realize their potential.

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