A Pharmaceutical Paradigm for Cardiovascular Composite Risk Assessment Using Novel Radiogenomics Risk Predictors in Precision Explainable Artificial Intelligence Framework: Clinical Trial Tool.
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Laura E. Mantella | E. Isenovic | K. Paraskevas | A. Johri | Z. Ruzsa | M. Al-Maini | N. N. Khanna | John R. Laird | Manudeep K. Kalra | M. Maindarkar | Jasjit S. Suri | Vijay Rathore | Mostafa M. Fouda | Andrew N. Nicolaides | Narpinder Singh | Luca Saba | Seemant Chaturvedi | J. F. E. Fernandes | Vijay Viswanathan | A. Nicolaides | L. Saba | Mustafa Al-Maini | Zoltán Ruzsa
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