Bioengineering for polycyclic aromatic hydrocarbon degradation by Mycobacterium litorale: Statistical and artificial neural network (ANN) approach

Chemometrics and Intelligent Laboratory Systems - Tập 159 - Trang 155-163 - 2016
Dushyant R. Dudhagara1, Rahul K. Rajpara1, Jwalant K. Bhatt1, Haren B. Gosai1, Bharti P. Dave1
1Department of Life Sciences, Maharaja Krishnakumarsinhji Bhavnagar University, Bhavnagar 364001, Gujarat India

Tài liệu tham khảo

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