Predictive Toxicology and Toxicogenomics of Potassium Sorbate-Gene-Diseases Association
Subject Areas :
Journal of Chemical Health Risks
K. Shanmuga Priya
1
,
V. Pushpa Rani
2
,
A. Anitha Nancy
3
1 - Centre for Environmental and Medical Sciences, PG & Research, Department of Advanced Zoology & Biotechnology, Loyola Institute of Frontier Energy (LIFE), Loyola College, University of Madras, Chennai, India-600034
2 - Centre for Environmental and Medical Sciences, PG & Research, Department of Advanced Zoology & Biotechnology, Loyola Institute of Frontier Energy (LIFE), Loyola College, University of Madras, Chennai, India-600034
3 - Centre for Environmental and Medical Sciences, PG & Research, Department of Advanced Zoology & Biotechnology, Loyola Institute of Frontier Energy (LIFE), Loyola College, University of Madras, Chennai, India-600034
Received: 2021-07-13
Accepted : 2021-11-08
Published : 2021-10-01
Keywords:
References:
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