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Michael Mayo

Showing results (1-10 of 38) with videos related to

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Bio Systems|July 19, 2005
Learning Petri net models of non-linear gene interactionsMichael Mayo
Computers in Biology and Medicine|March 29, 2022
Predicting glucose level with an adapted branch predictorTomas Koutny, Michael Mayo
Artificial Intelligence in Medicine|February 25, 2019
A survey of neural network-based cancer prediction models from microarray dataMaisa Daoud, Michael Mayo
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|February 7, 2012
Pulmonary diffusional screening and the scaling laws of mammalian metabolic ratesChen Hou, Michael Mayo
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|March 10, 2012
Diffusional screening in treelike spaces: an exactly solvable diffusion-reaction modelMichael Mayo, Stefan Gheorghiu, Peter Pfeifer
The New Zealand Medical Journal|November 9, 2018
Privacy protection for health information research in New Zealand district health boardsVithya Yogarajan, Michael Mayo, Bernhard Pfahringer
Plos One|December 3, 2019
Glycemic-aware metrics and oversampling techniques for predicting blood glucose levels using machine learningMichael Mayo, Lynne Chepulis, Ryan G Paul
The New Zealand Medical Journal|June 21, 2022
Symptoms associated with colorectal cancer in patients referred to secondary careMalgorzata Hirsz, Lyn Hunt, Michael Mayo, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|October 15, 2014
Top-level dynamics and the regulated gene response of feed-forward loop transcriptional motifsMichael Mayo, Ahmed Abdelzaher, Edward J Perkins, et al.
Clinical & Experimental Ophthalmology|October 27, 2023
Predicting ophthalmic clinic non-attendance using machine learning: Development and validation of models using nationwide dataFinley Breeze, Ruhella R Hossain, Michael Mayo, et al.
Pageof 4

Showing results (1-10 of 38) with videos related to

Sort By:
Pageof 4
Bio Systems|July 19, 2005
Learning Petri net models of non-linear gene interactionsMichael Mayo
Computers in Biology and Medicine|March 29, 2022
Predicting glucose level with an adapted branch predictorTomas Koutny, Michael Mayo
Artificial Intelligence in Medicine|February 25, 2019
A survey of neural network-based cancer prediction models from microarray dataMaisa Daoud, Michael Mayo
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|February 7, 2012
Pulmonary diffusional screening and the scaling laws of mammalian metabolic ratesChen Hou, Michael Mayo
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|March 10, 2012
Diffusional screening in treelike spaces: an exactly solvable diffusion-reaction modelMichael Mayo, Stefan Gheorghiu, Peter Pfeifer
The New Zealand Medical Journal|November 9, 2018
Privacy protection for health information research in New Zealand district health boardsVithya Yogarajan, Michael Mayo, Bernhard Pfahringer
Plos One|December 3, 2019
Glycemic-aware metrics and oversampling techniques for predicting blood glucose levels using machine learningMichael Mayo, Lynne Chepulis, Ryan G Paul
The New Zealand Medical Journal|June 21, 2022
Symptoms associated with colorectal cancer in patients referred to secondary careMalgorzata Hirsz, Lyn Hunt, Michael Mayo, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|October 15, 2014
Top-level dynamics and the regulated gene response of feed-forward loop transcriptional motifsMichael Mayo, Ahmed Abdelzaher, Edward J Perkins, et al.
Clinical & Experimental Ophthalmology|October 27, 2023
Predicting ophthalmic clinic non-attendance using machine learning: Development and validation of models using nationwide dataFinley Breeze, Ruhella R Hossain, Michael Mayo, et al.
Pageof 4