Applying a new quantitative global breast MRI feature analysis scheme to assess tumor response to chemotherapy

To develop a new quantitative global kinetic breast magnetic resonance imaging (MRI) features analysis scheme and assess its feasibility to assess tumor response to neoadjuvant chemotherapy.

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