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Phillip G. D. Ward

Researcher at Monash University

Publications -  65
Citations -  655

Phillip G. D. Ward is an academic researcher from Monash University. The author has contributed to research in topics: Medicine & Resting state fMRI. The author has an hindex of 10, co-authored 58 publications receiving 382 citations. Previous affiliations of Phillip G. D. Ward include Australian Research Council & La Trobe University.

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Longitudinal evaluation of iron concentration and atrophy in the dentate nuclei in friedreich ataxia.

TL;DR: The dentate nuclei of the cerebellum are characteristic sites of neurodegeneration in the disease, but little is known of the longitudinal progression of abnormalities in these structures.
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Simultaneous task-based BOLD-fMRI and [18-F] FDG functional PET for measurement of neuronal metabolism in the human visual cortex

TL;DR: Results demonstrate that the hierarchical block design, together with the infusion FDG‐PET technique, enabled both modalities to track task‐related neural responses with high temporal resolution, and has the potential to provide novel insights into haemodynamic and metabolic interactions that underlie cognition in health and disease.
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Calibrating hourly rainfall-runoff models with daily forcings for streamflow forecasting applications in meso-scale catchments

TL;DR: The hypothesis that simple disaggregation of daily rainfall data to hourly data, combined with hourly streamflow data, can be used to establish efficient hourly rainfall-runoff models is tested.
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Factors associated with brain ageing - a systematic review.

TL;DR: In this article, a systematic review of evidence for an association between lifestyle, health factors and diseases in adult populations, with brain ageing was conducted in accordance with the PRISMA guidelines.
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Combining images and anatomical knowledge to improve automated vein segmentation in MRI

TL;DR: The accuracy of automated vein segmentation derived from the composite vein image was overwhelmingly superior to segmentations derived from SWI or QSM alone.