Fourier ptychographic microscopy is a recent imaging technique that overcomes the limitations of conventional optics. The images it produces are particularly fine a nd s uper-resolved. T hey a re a lso v ery r ich, s ince they are bimodal (intensity and phase images) compared with conventional microscopy. FPM therefore holds great promise for a whole range of medical applications.In this work, the potential of this microscopy is explored by considering the biological application of automatic diagnosis of malaria on a stained blood smear. We report that an appreciable improvement in the classification o f p arasitized r ed b lood c ells i s o btained w hen i ntensity a nd p hase i mages a re j ointly e xploited in a deep convolutionnal neural network, compared to that obtained with intensity images alone. We also show that such joint exploitation considerably relaxes the constraints relative to the choice of microscope objective. In particular, an objective lens with a numerical aperture as low as 0.2 can be used with little degradation in classification p erformance. The performances obtained are close to those obtained with a conventional resolution microscope equiped with a 0.9 numerical aperture objective. This can be highly desirable for the realization of rapid diagnostic system, which requires access to large fields o f view.